RPUG 2024 Speakers Bios and Abstracts

  • Session 0.1: TPF-5(399) Distresses Pooled Fund Meeting by Andy Mergenmeier (FHWA)
    Lead Presenter’s Bio:
    Andy Mergenmeier is a Senior Pavement and Materials Engineer with the FHWA. His primary responsibilities include pavement surface characteristics measurement and analysis, construction materials acceptance, and pavement construction. He is the FHWA liaison to the American Association of State Highway and Transportation Officials (AASHTO) Committee on Materials and Pavements Technical Section responsible for management of pavement measurement standards including pavement profiling, friction, rutting and cracking. He is managing the pooled fund study, TPF-5(299)/(399), Improving the Quality of Pavement Surface Distress and Transverse Profile Data Collection and Analysis, which he will be discussing this morning. Andy is the Field Project Engineer for the FHWA Friction Management Program project that includes demonstrating continuous friction measurement technologies within the framework of a friction management program. He came to this position in 2007 after 7 years as the state of Virginia’s Department of Transportation’s (VDOT) State Materials Engineer. At VDOT he was responsible for overseeing preliminary engineering and construction functions, such as, pavement design and construction materials acceptance and testing programs. Before VDOT, Mr. Mergenmeier worked for the FHWA for 15 years in various locations throughout the US. Mr. Mergenmeier is a Civil Engineering graduate from the University of Kansas, and a Registered Professional Engineer.
    Abstract:
    Improving the Quality of Pavement Surface Distress and Transverse Profile Data Collection and Analysis – Pooled Fund Meeting. This meeting is for its members and all others interested in this subject.
  • Session 0.2: TPF-5(463) Friction Pooled Fund Meeting by Edgar D. de León Izeppi (VTTI)
    Lead Presenter’s Bio:

    Abstract:
    This is a TPF-5(463) Friction Pooled Fund Meeting to discuss the TPF’s friction studies.

    All TPF members and friends are welcome!

  • Session 1: Session moderator by John Senger (IDOT)
    Lead Presenter’s Bio:
    John is the Bureau Chief of Research at the Illinois Department of Transportation. John previously served IDOT as the Engineer of Pavement Technology. He manages the Illinois Certification and Research Track in southern Illinois. John enjoys long walks through the hardware store and the smooth sounds of a table saw.
    Abstract:
  • Session 1.1: Welcome by John Senger (IDOT)
    Lead Presenter’s Bio:
    John is the Bureau Chief of Research at the Illinois Department of Transportation. John previously served IDOT as the Engineer of Pavement Technology. He manages the Illinois Certification and Research Track in southern Illinois. John enjoys long walks through the hardware store and the smooth sounds of a table saw.
    Abstract:
  • Session 1.2: Keynotes by Bouzid Choubane (NCPP)
    Lead Presenter’s Bio:

    Abstract:

  • Session 1.3: Keynotes by Charles Holzschuher (FDOT)
    Lead Presenter’s Bio:
    Charles Holzschuher is the State Pavement Systems Engineer with the Florida Department of Transportation (FDOT). He has a Master’s in Civil Engineering from the University of Florida. He has been with FDOT for over 24 years assessing materials, performance, and safety of Florida’s roadways. During this time, he has managed numerous Statewide Department Programs including Pavement Performance Section, Structures Materials Laboratory, Pavement Management, Pavement Condition Survey, Smoothness Acceptance for Construction, Friction Evaluation, Pavement Marking Management, and Pre-Design testing
    Abstract:
  • Session 1.4: Vendors’ oral introduction by David Kepniss (LMI)
    Lead Presenter’s Bio:

    Abstract:

  • Session 2: Session moderator by John Andrews (Powel Engineering)
    Lead Presenter’s Bio:

    Abstract:

  • Session 2.1: Evaluating the relationships between different testing systems used on roadways to measure friction and macrotexture on state highway agencies to assess similar friction characteristics (microtexture and macrotexture) by Edgar D. de León Izeppi(VTTI), Gerardo W. Flintsch, Ross McCarthy, and Harikrishnan Nair
    Lead Presenter’s Bio:

    Abstract:
    An important emphasis of the implementation of Pavement Friction Management Programs (PFMP) is the accreditation of the devices used to measure friction and texture. PFMPs involve the regular monitoring of network pavement friction and the use of friction and macrotexture thresholds that are linked to key safety performance measures. This presentation will show the first effort to compare texture and skid resistance measurements taken with various devices at the Illinois DOT Certification and Research Track (ICART) facility in May 2023. This project was organized by the Transportation Pooled Fund TPF-5 (463) Managing the Pavement Properties for Improved Safety, with the collaboration of a variety of devices from various DOT and private equipment operators.
    The goal of this project is to use the results of this research effort to begin a process to implement accreditations of the various state agencies for their data collection. The process will need to complete intermediate qualifications (repeatability and reproducibility) that will allow the certification of the devices used in the comparisons made by the TPF-5(463) Pooled Fund.


  • Session 2.2: Establishing a Validation Procedure for Continuous Friction Measurement Equipment by Chris Young (ARRB Systems)
    Lead Presenter’s Bio:

    Abstract:
    With most fatal motor vehicle accidents resulting from roadway departures, pavement surface friction has become an essential and critical metric to measure for identifying hazardous (actual and potential) locations on a road network. As Continuous Friction Measurement Equipment (CFME) becomes more readily available for network and project level safety assessments in the United States, the need for a validation procedure is becoming more prevalent. While testing protocols have been generated, questions remain regarding the application of the data.
    This presentation is intended to share recent efforts to work with Road Agencies to develop procedures for testing repeatability together with relationships to known metrics. With a predefined experimental factorial, repeat runs on a variety of known pavement surfacing types provides the framework for this effort. Initial testing has been conducted on a closed track to provide a more controlled testing environment. In addition, two different tire types have been included in the initial evaluation to assess the impact of this important factor on the test results.
    Initial repeatability findings will be presented along with future testing initiatives being proposed with the objective of working towards a more unified and accepted validation/verification process that is recognized and accepted by the industry.
    Hopefully through this presentation additional ideas and suggestions for improvement can be gathered.


  • Session 2.3: Texture Signature Performance and Evaluation by Everett Schmitz (Pathways)
    Lead Presenter’s Bio:

    Abstract:
    An industry demand for contactless and non-destructive pavement friction evaluation has existed for many years. This presentation will review the continued development of a texture evaluation system to corelate pavement texture to pavement friction measurements.
    Pavement core data samples from several contributing state agencies have been evaluated and compared to correlating pavement friction data to develop a method of using laser-based data sampling to generate a relationship between pavement texture and pavement friction values. A method of evaluating texture characteristics at high speeds would prove to be very useful in the pavement performance and safety industry where traditional skid testing and friction testing on large roadway networks isn’t cost effective or feasible.

  • Session 2.4: Application of Artificial Neural Network in Predicting Pavement Macrotexture by Behrokh Bazmara (Vtech), Flintsch, W.G., de León Izeppi, E., Golalipour, A. and Boz, I.
    Lead Presenter’s Bio:

    Abstract:
    Highway safety depends on significant factors, especially pavement friction and macrotexture. According to the Federal Highway Administration inadequate frictional properties can result in serious injuries, particularly on high-speed roadways. Research shows macrotexture improves wet friction by facilitating water drainage from tire-pavement surfaces and a significant association between higher macrotexture and lower crash rates. This research investigates the use of Artificial Neural Network (ANN), which may allow a more comprehensive assessment of pavement safety, for developing a macrotexture prediction model by using aggregate properties, mix volumetrics, and construction parameters. A variety of mix type characteristics, including open-graded friction course (OGFC), dense-graded (DGAC) and gap-graded (i.e., Stone Matrix Asphalt), with higher and lower macrotexture values were evaluated as contributors of macrotexture. The study analyzed the use of the available aggregate properties, binder content (Pb), and mix volumetrics to predict expected field macrotexture, within a year of construction, in five states in the United States. The ANN model includes 21 predictor variables in the input layer, a single hidden layer (Composition of linear and non-linear functions), and one output as the predicted macrotexture. Subsequently, the average method was constructed through 100 iterations, with 33 percent holdback proportion on dataset to explore the best model which resulted in the most appropriate goodness-of-fit for almost 80 percent. A sensitivity analysis validates the significance of predictor trends.

  • Session 2.5: Are automated distress surveys with high repeatability and reproducibility really possible on statewide projects? by Danilo Balzarini (ICC)
    Lead Presenter’s Bio:
    Danilo Balzarini is a senior project engineer, with a Ph.D. in civil engineering. He started his career as a consultant at the Florida Department of transportation, where he managed the HPMS data processing and analysis. He then continued focusing on data quality assurance and control, while developing innovative solutions for analysis and pavement management. He now manages diverse projects, from pavement distress data collection for DOTs, large municipalities, and airfields, to assets, GPR and retroreflective data.
    Abstract:
    Are automated distress surveys with high repeatability and reproducibility really possible on statewide projects? This case study will show how the 2021 data from 3 different companies (company A, B, and C), collected respectively for 3 different State DOTs (State A, B, and C) and for a large municipality (M) compares with the 2022 data collected by company D for the same networks. A year-to-year comparison of every pavement distress has been conducted for every road collected in these 3 states, for a total amount of over 34,000 miles. This presentation will discuss the challenges encountered and present the lessons learned during the process. The aim of this case study is to identify the distresses that are less repeatable when comparing data from different vendors and explore working solutions that could produce higher year-over-year consistency, providing a solid foundation for robust performance measurement, forward planning, and consistency of pavement data collected for PMS and HPMS purposes. Note: all vendors and agencies will be kept anonymous.
  • Session 2.6: Deterioration Analysis Using Macrotexture and Aggregate Loss Indicators from Multi-Timestamp 3D Pavement Surface Data by Ryan Salameh(GTECH), Pingzhou (Lucas) Yu, and Yichang (James) Tsai
    Lead Presenter’s Bio:
    Ryan Salameh is a PhD candidate at the School of Civil and Environmental Engineering (CEE) at Georgia Tech (GT), specializing in Infrastructure Systems Engineering. As an active member of the GT Smart City Infrastructure Lab, Ryan has contributed to several research projects funded by prominent state and national transportation entities including USDOT, NCHRP, FHWA, Georgia DOT, and Texas DOT. Ryan’s research aims to optimize highway system management to improve its condition, safety, and reliability by leveraging sensor technology, big data analytics, and artificial intelligence. Specifically, his research focuses on using data obtained from 3D laser imaging systems to optimize pavement predictive maintenance decision-making at the project level, especially for high-traffic volume routes.
    Abstract:
    Raveling distress, also known as aggregate loss or surface disintegration, is a commonly encountered distress on asphalt pavements, especially those with an open-graded friction course (OGFC) surfaces. This distress impacts the pavement’s durability, causing poor ride quality,
    increased road-tire noise, shorter pavement life, and higher safety concerns due to hydroplaning and the risk of loose stones breaking the vehicles’ windshield glass. While several studies have been conducted for automated raveling assessment using 3D pavement surface data to replace
    manual approaches, to our knowledge, there is no study that has analyzed the individual raveling distress field deterioration behavior using multi-timestamp pavement performance data based on 3D pavement surface data. The objective of this study is to evaluate the feasibility of using
    selected macrotexture indicators and aggregate loss indicators extracted from real-world, large- scale 3D pavement surface dataset to study the long-term pavement field raveling deterioration behavior. The performance of the selected indicators was evaluated in monitoring the raveling condition progression over time. Spatial-temporal deterioration analysis was conducted on
    selected OGFC pavement segments on Georgia’s interstate highways using data collected by the Georgia Tech Sensing Vehicle between 2014 and 2019. The study revealed that aggregate loss
    indicators performed better than macrotexture indicators in consistently monitoring the progression of raveling distress deterioration over time. This study provides a foundation for future research on raveling deterioration analysis using 3D pavement surface data.
  • Session 2.62: Session moderator by Thad Bauer (SDDOT)
    Lead Presenter’s Bio:

    Abstract:

  • Session 2.621: 3D Reconstruction of Pavement Surface Texture by Mohammad Fakhreddine(U IL), Imad L. Al-Qadi, Mani Golparvar-Fard, and Fangyu Liu
    Lead Presenter’s Bio:

    Abstract:
    According to the 2021 ASCE infrastructure report card, 43% of the road network in the United States is in poor or mediocre condition. This would jeopardize road safety and increase crashes and fatalities that incur social and economic costs. Among the leading causes of vehicle crashes is insufficient pavement friction. Therefore, highway agencies usually monitor highway network to for pavement friction change to intervene when necessary. Pavement surface texture influences pavement friction characteristics, and is typically monitored at a network level using laser systems. However, these systems are expensive, require high technical knowledge to maintain and operate, and may be prone to data collection errors such as noise. Hence, texture measurements have been limited. With the emergence of image-based 3D reconstruction methods, known as photogrammetry, an effective network-level monitoring could be achieved. Photogrammetry relies on cost-efficient 2D images that could be captured using smartphones, DSLR cameras, or drones. To date, most of the high-resolution pavement texture using image-based methods has been limited to small-scale pavement sections. In this work, obtaining texture information at a network level is proposed, while addressing the aforementioned limitations. The challenges of photogrammetry such as scaling, georeferencing, 3D geometry inaccuracies, and automatic texture extraction and calculation will be discussed.

  • Session 2.622: JPCP Slab-based Spatial-Temporal Deterioration Analysis using Multi-Timestamp 3D Pavement Surface Data by Ryan Salameh(GATech), and Yichang (James) Tsai
    Lead Presenter’s Bio:
    Ryan Salameh is a PhD candidate at the School of Civil and Environmental Engineering (CEE) at Georgia Tech (GT), specializing in Infrastructure Systems Engineering. As an active member of the GT Smart City Infrastructure Lab, Ryan has contributed to several research projects funded by prominent state and national transportation entities including USDOT, NCHRP, FHWA, Georgia DOT, and Texas DOT. Ryan’s research aims to optimize highway system management to improve its condition, safety, and reliability by leveraging sensor technology, big data analytics, and artificial intelligence. Specifically, his research focuses on using data obtained from 3D laser imaging systems to optimize pavement predictive maintenance decision-making at the project level, especially for high-traffic volume routes.
    Abstract:
    3D laser pavement imaging technology represents a pivotal advancement in pavement condition assessment for highway agencies and reshapes their maintenance and rehabilitation decision-
    making methodologies. In the context of Jointed Plain Concrete Pavements (JPCP), this
    technology enables the extraction of slab-level conditions with high granularity, providing accurate surface distresses such as cracking states and severity levels, joint faulting
    measurements, etc. Collecting this data across successive timestamps, paired with the appropriate slab-based data registration, permits rigorous and systematic monitoring of slab-level conditions. This can support both micro-level (slab) and macro-level (0.1-mile or 1-mile segments)
    deterioration analyses, paving the way for in-depth spatial-temporal analysis and pattern recognition. Based on this analytical framework, enhanced slab-based condition prediction
    models can be developed with improved reliability and robustness, while leveraging advanced Machine Learning modeling techniques. These models are crucial in optimizing maintenance and rehabilitation strategies for JPCP, enabling agencies to judiciously decide between applying
    individual slab replacement treatment (localized patching) or implementing complete lane reconstruction (new pavement). This presentation illustrates these principles by showcasing 3D pavement data collected over a span of six years by the Georgia Tech Sensing Van on Georgia’s interstate routes.
  • Session 2.623: Aligning Ride Quality Measurement with Road User Experience by Michael Nieminen (ICC)
    Lead Presenter’s Bio:

    Abstract:
    New profiling systems overcome the ‘low speed problem’ with traditional inertial profilers, allowing valid profile and roughness (IRI) to be collected on all roads regardless of traffic conditions, signals, and stop signs. Research has found that ride quality is the single most important characteristic to road users. Learn how new technology allows DOT, county, and municipal agencies to be informed of end-user perception of the condition of every segment in the network.

  • Session 2.624: Automated crack detection using line laser scanners in Sweden and development of new surface defect parameters by Martin Wiström (Ramboll)
    Lead Presenter’s Bio:

    Abstract:
    In Sweden road profiling surveys are conducted yearly on roughly 80 000 kilometres of road in combination with mobile mapping surveys. The surveys are performed with two different types of systems, where one of them has capabilities of mapping asphalt cracking. In this presentation a brief description of the survey program and the method of data collection will be given. The main topic is sharing the experiences of the analysis and reporting of cracking data from the four years the survey program has been running, along with findings from the yearly verification tests and procedures.
    Within the survey contract development and testing has been performed on an extended analysis of the parameters ravelling and patching, with several tests performed on different types of asphalts and conditions. The findings of these tests are presented and discussed as a further insight on the possibilities of automated mapping of surface distresses.

  • Session 3: Session moderator by Steven Hale (NVDOT)
    Lead Presenter’s Bio:
    Steve Hale has worked for the Nevada Department of Transportation for 25 years with the last 3 years serving as an Assistant Construction Engineer for the Construction Division. He also serves on the RPUG steering committee with past roles as Secretary, Vice Chair and Chair. Steve graduated from the University of Nevada, Reno in 1998 with a Bachelor’s degree in Civil Engineering and is a registered Professional Engineer in the State of Nevada. Steve is the father of three upstanding young adults; Baylee (Age 23), Michael (Age 21), and Natalie (Age 17). He is also in a relationship with the love of his life, Tanya. Steve is a native Nevadan and enjoys all that Nevada has to offer. His hobbies include playing golf, exercising, going to the movies, spending quality time with the people he cares about, and travelling.
    Abstract:
  • Session 3.1: Energy-Based Noncontact Tire-Pavement Friction Models by Ahmad Alhasan (ARA)
    Lead Presenter’s Bio:
    Ahmad is a Principal Engineer and the research and technology deployment group leader at ARA with over 10 years of industry and academic experience. He specializes in pavement friction and surface characterization, pavement performance evaluation and management, geotechnical asset management, and statistical analysis and probability theory with AI applications. Ahmad has led numerous research and forensics evaluation projects and authored over 60 technical papers, webinars, and research reports in a wide range of topical areas.
    Abstract:
    This is an topic regarding Energy-Based Noncontact Tire-Pavement Friction Models. Although the general concept was introduced during RPUG last year, there were very limited measurements and findings exploring this model. This study discusses a recently completed project exploring the implementation of Energy-Based Friction Models for multiple devices and multiple surfaces and provides more formal discussion on the framework and the derivation of the model. I hope this study will provide new insights to the body of knowledge in non-contact tire-pavement friction models and help the practice move forward
  • Session 3.2: Smart Tire Sensors for Verifying Accuracy of Continuous Friction Measuring Equipment (CFME) by Richard Ji (FAA)
    Lead Presenter’s Bio:
    Richard Y. Ji is a project manager at the FAA airport pavement R&D branch. Dr. Ji’s responsibility is managing and overseeing the FAA funded projects (Runway friction, Airfield reflective Cracking support, and NDT for airport pavement) at the FAA National Airport Pavement Test Facility (NAPTF). Dr. Ji received his doctoral degree in Civil Engineering from Michigan State University in 2005, with specialization in pavement design and analysis. Dr. Ji is an active member of professional and technical organizations including the Transportation Research Board (TRB), American Society of Civil Engineers (ASCE), and National Cooperative Highway Research Program (NCHRP). He is a registered professional Engineer since 2007.
    Abstract:
    Different friction test devices are available in the market to measure longitudinal tire-pavement friction at fixed or variable slip ratios. Continuous Friction Measuring Equipment (CFME) is used for monitoring airfield pavement friction as specified by FAA Advisory Circular (AC) 150/5320-12. The FAA has approved various CFME devices for their uses in friction measurement on the runway surface, but the consistency of friction measurements across CFME has been reported to be inadequate. The accuracy of friction measurement using CFME is affected by many different factors, such as tire rubber deformation, slip ratio, pavement surface texture, water depth, surface contaminant, temperature, and speed, etc. field measurements will be conducted using CFME tires instrumented with sensors to compare friction measurements from CFME readings and smart tire sensors.

    A study was initiated by FAA to validate the CFME friction coefficient using the smart sensor technology. With the smart tire sensors, tire-pavement contact behavior, such as contact pressure distributions, as well as frictional and lateral forces, can be identified based on the combination of sensor measurements. By interpreting sensor measurements based on the developed sensor model and extracted sensor signal cycle, valid tire-pavement contact parameters (pavement friction coefficient) can be derived in field tests.

  • Session 3.3: Continuous Tire-Pavement Friction and Macrotexture: Left vs. Right Wheel Paths by Isaac Briskin(WDM), Daniel Galvez, and Ryland Potter
    Lead Presenter’s Bio:

    Abstract:
    Continuous tire-pavement friction and macrotexture have been established as key contributors to road safety. Research published by Virginia Polytechnic Institute and State University and Federal Highway Administration [Characterizing Road Safety Performance using Pavement Friction, Flintsch et al] verified a strong statistical relationship between higher friction and macrotexture and lower crash rates. The continuous tire-pavement friction and macrotexture in this research and previously published research used SCRIM® data collected in the left wheel path to establish these relationships. Thus, there is an open question as to whether the data being collected in the left wheel path is significantly different from the data collected in the right wheel path. This presentation compares continuous tire-pavement friction and macrotexture data collected in both the left and right wheel paths. To compare left and right wheel path data, WDM USA surveyed Kentucky Transportation Cabinet (KYTC)-maintained roads using the SCRIM®, collecting continuous tire-pavement friction, macrotexture, roughness, and road geometry features (e.g. direction of turn, curve radius, grade, cross-slope) data, summarized at 0.005-mile increments. Additional network features included in the analysis such as AADT and lane count were provided by KYTC. Comparisons of left and right wheel path data were performed in a variety of geometry and network settings, and analyzed using a combination of parametric, and non-parametric analyses, including standard normal distribution outlier detection, Mann-Whitney U tests, and ANOVA.

  • Session 3.4: Compare CA portable skid tester (PST) against CFMEs by Baron Colbert (Caltrans)
    Lead Presenter’s Bio:
    With more than a decade of civil engineering experience, Dr. Colbert has been with Atlas Technical Consultants since 2019. He supports client objectives and initiatives with his strong interpersonal management and communication skills. He has thorough knowledge of transportation roadway materials, testing methods, and has managed mobile laboratories. Dr. Colbert has provided technical expertise and recommendations in support of the California Department of Transportation (Caltrans) Materials Testing and Engineering Services (METS) for the improvement of project delivery including specifications and program risk and opportunity assessments. He currently has an active role in assisting with the implementation and Certification of Stop-and-Go Inertial Profilers. In addition, Dr. Colbert has experience providing recommendations to resolve materials and technology related issues to state agencies and industry partners.
    Abstract:
    The California portable skid tester (CA PST) is widely used by the California Department of Transportation (Caltrans) for friction testing on limited access pavement surfaces e.g., Portland cement concrete (PCC), methacrylate, and polyester, which includes bridge decks without approach slabs. However, recent technology has been brought to market measuring friction continuously, referred as continuous friction measurement equipment (CFME).
    The main objective is to compare the performance and correlation of the CA PST with three CFMEs (two-wheeled type A, two-wheeled type B, three-wheeled type A) to identify an alternate friction test method. Testing was conducted both in laboratory settings and on field sections.
    Analysis of the data reached the following conclusions and recommendations:
    • The three wheeled type A CFME exhibited a higher ratio of usable data (90%) compared to the two-wheeled type A (60%) and B (70%) CFMEs.
    • In all cases, CFMEs showed the same trend as the CA PST when determining skid resistance among the methacrylate, polyester, and PCC surfaces.
    • The three-wheeled type A CFME exhibited excellent repeatability, coefficient of variation (COV) ≤10%, while two-wheeled type A and B CFMEs exhibit good repeatability, 10% < COV ≤15%. • The three-wheeled type A CFME exhibited the highest R2 value of 0.73 versus CA PST, two-wheeled type A and B CFMEs exhibited R2 values of 0.68, and 0.60 respectively for laboratory measurements. • The three-wheeled type A CFME exhibited the highest R2 value of 0.75 versus CA PST, while the two-wheeled type A and B CFMEs exhibited R2 values of 0.15, and 0.19 respectively for field measurements. • It was recommended steel plates and 3M tapes be used to assess future CFMEs on a wide range of friction surfaces in the laboratory and field data be collected using the CA PST and CFMEs to widen the range of field friction values.

  • Session 3.5: Implementation of Relative Performance Targets in a New State PMS Using Deighton’s dTIMS Platform by Alex Bernier(Uconn), MDShaidur Rahman, and Daniel Weymouth
    Lead Presenter’s Bio:
    Alex is the Program Director at the Connecticut Advanced Pavement Lab at the University of Connecticut. A past graduate of UConn and New England native (originally from Maine), Alex brings 7 years of experience as an airport engineer focusing on pavement design and construction at airports across North America from Canada to the Caribbean, including runway pavements in New York and Boston. At the CAP Lab, Alex’s work is focused on improving Statewide Pavement Management systems, pushing the envelope of project-level forensic analysis with Ground Penetrating RADAR, and advanced pavement mixture performance testing – he is heavily involved in the state’s implementation of Balanced Mix Design drawing from his graduate research in fracture mechanics. Alex delivers a pragmatic blend of academic research and practical experience in design and construction to ensure his work at the CAP lab has value to the research sponsors.

    Abstract:
    In work previously presented at RPUG, CT DOT in partnership with UConn developed a new relative pavement condition rating system for the State Network. Performance curves based on network condition data for IRI, Rutting, Wheel path and Non-wheel path cracking. The new system then rated pavement condition by comparing a given section to an ‘expected’ performance for a that section’s age and either type (flexible vs. composite) or Functional Class. In continued efforts, the research team has developed a completely new PMS system using dTIMs Business Analytics from Deighton.
    The team built this new PMS from the ground up with new triggers, resets, and analysis expressions within the platform. This presentation highlights the challenges, benefits and outcomes seen by the research team as they move towards full implementation of this framework. The team’s hope is that this will serve as an example of reconstructing a PMS with the same tools currently available (condition data, dTIMs ©) but with models and responses more in tune with an agency’s current needs.
  • Session 4: Session moderator by Bouzid Choubane (NCPP)
    Lead Presenter’s Bio:

    Abstract:

  • Session 4.1: How FDOT is using machine learning to detect Raveling from LCMS Images by Mateo Carvajal(FDOT), Noah Borelli, Charles Holzschuher, and William Bryant
    Lead Presenter’s Bio:
    Mateo Carvajal is a Civil Engineer from the University of Cauca in Colombia, with a master’s degree in Pavements Engineering from the University of Nevada, Reno. Mr. Carvajal joined the Applied Research Associates (ARA) team working on-site at the FDOT State Materials Office in January 2019. As the activity coordinator for the statewide pavement acceptance and project performance program, he was tasked with scheduling high-speed laser profiler testing and reporting for FDOT’s newly constructed and on-service pavements. Mr. Carvajal has been the activity coordinator for the LCMS Data Analysis program since March 2020. He is proficient in analyzing and reporting pavement condition data and is skilled in the use of software tools such as ICC Connect, LCMS RoadInspect, WinRp, VBA, Python, SQL, and more. Since he joined ARA and the SMO team, he has developed numerous software applications that are now integral to daily data analysis, processing, and quality control. Prior to his move to the US, Mr. Carvajal worked on the Colombian Mechanistic-Empirical Pavement Design Guide (MEPDG) and at the National Roads Institute, where he gained experience with non-destructive testing equipment, including FWD and GPR.
    Abstract:
    The Florida Department of Transportation (FDOT) is leveraging machine learning technology to detect raveling, the dislodging of aggregate particles from an asphalt pavement surface, from images captured by the Laser Crack Measurement System (LCMS). This is a critical factor in the calculation of FDOT’s crack rating, which is essential for assessing pavement condition and maintenance requirements.
    The methodology employed for raveling detection involves the use of machine learning techniques, more specifically, a method known as Random Forest (RF). RF is a popular machine learning algorithm that operates by constructing multiple decision trees during training and outputting the class that is the mode of the classes for classification. The RF technique was trained and tested on a dataset comprising over 3,000 3D images of pavement data. The Random Forest classifier demonstrated superior performance when compared to other machine learning techniques such as AdaBoost and Support Vector Classifier (SVC), with precision values averaging 84%.
    This innovative approach allows for a safer and more efficient assessment of roadway raveling conditions, replacing traditional manual visual inspection methods that are time-consuming, subjective, and hazardous to data collectors.
    The use of machine learning in this context represents a significant advancement in pavement management. It enables FDOT to proactively address raveling, suggesting improvements such as friction course-only repairs. This not only enhances road safety and longevity but also leads to cost savings and improved efficiency in road maintenance.
  • Session 4.2: Panel Discussion on Texture by Brian L. Schleppi (VIHSC), Mandli, WDM, SSI, Pavemetrics, and Pathways
    Lead Presenter’s Bio:

    Abstract:

  • Session 4.3: Open Discussion using online polling software by Steve Karamihas (APTech)
    Lead Presenter’s Bio:

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  • Session 5: Session moderator by Colin McClenahen (PennDOT)
    Lead Presenter’s Bio:

    Abstract:

  • Session 5.1: We are Finally in the 21st Century: An Update from the Nevada Department of Transportation by Steve Hale (NVDOT)
    Lead Presenter’s Bio:
    Steve Hale has worked for the Nevada Department of Transportation for 25 years with the last 3 years serving as an Assistant Construction Engineer for the Construction Division. He also serves on the RPUG steering committee with past roles as Secretary, Vice Chair and Chair. Steve graduated from the University of Nevada, Reno in 1998 with a Bachelor’s degree in Civil Engineering and is a registered Professional Engineer in the State of Nevada. Steve is the father of three upstanding young adults; Baylee (Age 23), Michael (Age 21), and Natalie (Age 17). He is also in a relationship with the love of his life, Tanya. Steve is a native Nevadan and enjoys all that Nevada has to offer. His hobbies include playing golf, exercising, going to the movies, spending quality time with the people he cares about, and travelling.
    Abstract:
    During the 2016 RPUG annual meeting, the Nevada Department of Transportation (NDOT) presented “We are Finally in the 21st Century” which discussed the NDOT’s switch from profile index (PRI) to the International Roughness Index (IRI) for construction acceptance. This presentation will provide an update to the former by discussing specification changes over the last 8 years, the establishment of an inertial profiler certification program, equipment upgrades, project successes and failures, and lessons learned from our experience.
  • Session 5.2: All Speed Profiler (ASP) by Everett Schmitz (Pathways)
    Lead Presenter’s Bio:

    Abstract:
    To date, the use of traditional vehicle mounted inertial road profilers have a limited ability to measure longitudinal profile data for IRI calculations while traveling at both high and slow speeds, while braking and accelerating, while turning, and resuming from a stop. This presentation will cover testing and implementation of an All Speed Profiler capable of measuring and reporting IRI at all speeds (0 MPH -75+ MPH) and various driving habits. This system will be useful for measuring IRI found during normal driving patterns while traversing urban traffic conditions: braking, accelerating, turning, slow movement, periods of stopped traffic, periods of stop and go traffic, etc…
    Test data collected with the All Speed Profiler has shown a high level of confidence when compared to data collected from a walking profiler, matching >94% accuracy and repeatability. Testing performed includes procedures outlined in the provisional AASHTO R56 “Standard Practice for Certification of Inertial Profiling Systems”, as well as a variety of simulated urban traffic driving conditions and habits. The Pathway Services Inc. All Speed Profiler system can be installed on a typical consumer host vehicle and can be operated in normal driving conditions on highways and roads, on all common asphalt and concrete pavement types.


  • Session 5.3: Application of ProVAL SAM Grinding Simulation for Cold Planning by Jeff McGowan (Shelly Sands)
    Lead Presenter’s Bio:
    Jeff McGowan is the Aggregate & Smoothness Assurance Supervisor for Mar-Zane/Shelly & Sands Inc. As a graduate of Muskingum College with a BS in biology, he is tasked with managing aggregate quality analysis as well as data analysis/submittal of pavement profiles with respect to smoothness. He is a 25-year veteran of the construction industry. Through hard work, out-of-the-box thinking, and an unrivaled supporting cast, he has become a leader in his respective fields. He enjoys spending time with his family, playing golf, and traveling.
    Abstract:
    To consider cold planning or milling as a “smoothness opportunity”, the milling machine must be outfitted with grade referencing technology. Existing pavement inertial profiler data files provide all the information required to address longitudinal profile deficiencies. A user can analyze the 2D profiler elevation data in conjunction with the localized roughness plot to make longitudinal profile corrections. Spikes in localized roughness can be isolated and the accompanying elevations can be extracted to strategically variable depth mill to a grade that will yield a smooth pavement or transition. In addition to modeling diamond grinder operation in the SAM of the ProVAL software, it can also roughly approximate milling machine removal to predict IRI improvement.
    Process Implementation:
    1. Collect Existing Pavement Surface Profiles
    2. Localized Roughness Analysis And Corrective Simulation(s)
    3. Corrective Plan Layout In The Field
    4. Execution With Both Manual And Automated Grade Control On The Milling Machine
    Conclusion:
    Within our company, we have worked extensively with our milling subcontractor to provide our asphalt paving crews with a profile milled surface. We have experienced better pavement smoothness values, a reduction in localized roughness violations, tighter yields with respect to plan quantity, and less re-work. In my department, we exclusively use the data files generated by our inertial profiler(s) to formulate a plan to address roughness features well in advance of the project start date. This approach has helped us address smoothness issues on multi-year projects that go through several winter cycles, rough transitions at project limit joints or structures, and a host of other miscellaneous issues associated with the existing pavement conditions. We have countless success stories and have garnered respect and confidence from the agencies for which we are performing the work.

  • Session 5.4: Caltrans Stop-and-Go Profiler Implementation by Baron Colbert(Caltrans), and Nick Schaffer
    Lead Presenter’s Bio:
    With more than a decade of civil engineering experience, Dr. Colbert has been with Atlas Technical Consultants since 2019. He supports client objectives and initiatives with his strong interpersonal management and communication skills. He has thorough knowledge of transportation roadway materials, testing methods, and has managed mobile laboratories. Dr. Colbert has provided technical expertise and recommendations in support of the California Department of Transportation (Caltrans) Materials Testing and Engineering Services (METS) for the improvement of project delivery including specifications and program risk and opportunity assessments. He currently has an active role in assisting with the implementation and Certification of Stop-and-Go Inertial Profilers. In addition, Dr. Colbert has experience providing recommendations to resolve materials and technology related issues to state agencies and industry partners.
    Abstract:
    Caltrans and Industry have identified the Stop-and-Go inertial profiler (IP) for improving IP operator and travelling public safety for IP field applications. As an early adopter for Stop-and-Go IP implementation, certifications are administered jointly by Caltrans Inertial Profiler Certification Program (IPCP), a subset of the department’s Independent Assurance Program and the University of California Pavement Research Center (UCPRC) at Davis.
    The previous test method for IPs didn’t accommodate the use of Stop-and-Go IPs or account for Stop-and-Go IP ability to conduct surveys under 15 mph with minimal error. A joint Caltrans and Industry ad-hoc group was formed to address this gap by updating California Test (CT) 387, “Method of Test for Operation, Calibration and Operator Certification of Inertial Profilers”. The predominant reason for the update was to address added cost and safety concerns of IP surveys in urban areas. Pilot certification run concepts were derived from previous studies establishing the expected IP accuracy and repeatability. Four staged speed profiles were added to CT 387 including: low speed, braking, and creep. Pilot qualification runs at the certification track (two different models of stop-and-go IPs from one manufacturer) along with side-by-side field testing (five profiling systems) demonstrated that Stop-and-Go IPs provided statistically comparable results to conventional IPs (±5%). Based on this analysis and the CT 387 updates, the ad-hoc group recommended submitting a decision document to the Caltrans Pavement and Materials Partnering Committee (PMPC) Asphalt Task Group (ATG) and Concrete Task Group (CTG) allowing Stop-and-Go IP use and the development of a draft Construction Procedure Directive (CPD) to implement Stop-and-Go IP on current projects. Preliminary data analysis has begun from the first Stop-and-Go IP certification runs in 2024. This presentation discusses the motivation for updating CT 387, pilot certification and field comparison results, and considerations of stakeholder impact from the agency perspective
  • Session 5.5: Detection of Road Profile Measurement Errors by Steve Karamihas (APTech)
    Lead Presenter’s Bio:

    Abstract:
    This presentation reviews standard methods of checking inertial profilers for measurement errors, including: the block test, the bounce test, repeatability testing, and comparison to a reference profile. The presentation demonstrates the effect of some common error types that have appeared in production profilers recently, such as signal loss, signal delay, sensor noise, and gain errors using sensor signals measured by the FHWA Urban and Low-Speed Profiler. The effect of these errors on the bounce test (IRI, look of the trace), IRI of measured profiles, and cross correlation are demonstrated. An example is provided that demonstrates the need to conduct repeatability testing at two measurement speeds to catch some types of errors. Testing at two speeds is recommended for control section measurements.

  • Session 6: Session moderator by Nathan Kebede (Michael Baker)
    Lead Presenter’s Bio:

    Abstract:

  • Session 6.1: Illinois Certification and Research Track by John Senger (IDOT)
    Lead Presenter’s Bio:
    John is the Bureau Chief of Research at the Illinois Department of Transportation. John previously served IDOT as the Engineer of Pavement Technology. He manages the Illinois Certification and Research Track in southern Illinois. John enjoys long walks through the hardware store and the smooth sounds of a table saw.
    Abstract:
    The Illinois Certification and Research Track opened its doors in 2023 for anyone that wanted certification of inertial profiler systems. Over 50 pieces of equipment were certified at ICART in 2023. This paper will discuss some of the challenges present with profiler certification and reciprocity with other agencies. As ICART moves toward a regional certification center and a host to several research projects, there are several topics that need to be discussed at the national level to determine what is truly needed in a regional center. An important function of the Illinois Research and Test Track (ICART) is profiler comparison and certification of production profile measurement devices. ICART also provides a venue for research-level profiler comparison studies. This presentation is intended to open a discussion of research priorities and potential profiler comparison experiments that may be executed in the fall at ICART. Potential activities include: (1) benchmarking potential reference profile measurement devices, (2) certification of profilers for operation at low speed, during braking, and through stops, and (3) regional profiler certification of high-speed profilers and lightweight profilers. The presentation proposes a vision for a large profiler comparison experiment that includes accuracy testing based on the BP, repeatability testing per AASHTO R 56, and testing of stop-and-go profilers using methods proposed for AASHTO R 56. The presentation also proposes testing and analysis procedures as a basis for discussion.
  • Session 6.2: ICART by Cindy MacDonald(Mandli), and John Senger
    Lead Presenter’s Bio:

    Abstract:
    The launch of the Illinois Department of Transportation’s ICART track presents a convenient and controlled environment for certifying inertial profiler systems, significantly shaping the advancement and refinement of industry standards. Beyond providing a dedicated space away from public roadways for testing, this track plays a vital role in driving the evolution of recognized norms within the transportation sector.

    Recognizing the pivotal role of this facility, Mandli Communications extensively utilizes it for testing and certifying our 3D inertial profilers to adhere to AASHTO R 56 standards. This certification is imperative for meeting third-party certification requirements essential for adhering to state contract requirements. With multiple asphalt friction sections and a concrete lane, the ICART track allows for a comprehensive representation of road surfaces during certification processes. Certifications encompass assessments of repeatability of IRI, accuracy of the systems, block and bounce tests, and the confirmation of faulting values.

    This abstract looks to highlight the critical importance of ICART’s facilities in ensuring compliance with stringent certification requirements, ultimately enabling vendors to meet state contract requirements while maintaining high standards of performance.
    The comprehensive nature of certifications conducted on the ICART track demonstrates its role in accurately assessing the capabilities of inertial profiler systems, thereby contributing to safer and more efficient transportation infrastructure.

  • Session 6.3: Key Findings Regarding Cross Correlation by Steve Karamihas (APTech)
    Lead Presenter’s Bio:

    Abstract:
    This presentation addresses practical considerations that have arisen recently when using cross correlation at profiler round-ups and at profiler certification testing. Particular emphasis is given to the reduction in cross correlation scores caused by errors in longitudinal distance measurement. The presentation reviews the details of a procedure for accounting for longitudinal distance measurement errors during cross correlation analysis, which was used in profiler round-ups in 2004, 2009, 2010, 2013, and 2015. The presentation also addresses the effect of high-pass filtering on cross correlation, and the link between cross correlation level and expected agreement in IRI.

  • Session 6.41: Session moderator by Stephanie Weigel (NDDOT)
    Lead Presenter’s Bio:

    Abstract:

  • Session 6.411: Quantifying Longevity of Shotblasting Friction and Texture Improvements by Boris Goenaga(NCSU), Paul Rogers, and Shane Underwood
    Lead Presenter’s Bio:

    Abstract:
    Shot blasting is a preservation technique for asphalt pavements that is usually applied to restore texture and friction. The improvement in friction and texture characteristics achieved with blasting is directly associated with the surface mix and the type of aggregate. Although some researchers have evaluated the initial friction and texture improvements obtained after shotblasting a surface and have calculated the temporal variation of friction and texture after the treatment, most of these studies were conducted on accelerated test track facilities. Hence, this study examines the changes in friction and texture following the application of shotblasting to five different asphalt pavements. The primary aim is to assess both the immediate impact and the lasting effects of the treatment. To achieve this, the pavements selected were in good surface condition when the treatment was applied. The pavements were then divided into two sections: one treated with shot-blasting, and the other serving as a control section with no modifications. Friction and texture measurements were taken at various time points after construction in both sections, providing data to quantify the impact and duration of the shotblasting treatment. In terms of friction, the longevity of the shotblasting appears to be 1.2 years, and for texture, the longevity was closer to 3 years. However, in one of the sites surface texture components were affected by a deicing operation conducted 1 year after shotblasting, which may have influenced, especially in terms of friction, the observed trend in the second and third year. The results of this study will inform the use of shotblasting as a surface treatment to improve skid resistance.

  • Session 6.413: Multi-temporal Pavement Image Registration for Pavement Distress Deterioration Analysis by Zhongyu Yang(GATech), and Yi-Chang (James) Tsai
    Lead Presenter’s Bio:

    Abstract:
    The advancement of pavement imaging technologies, such as 3D laser systems, has revolutionized pavement condition surveys, shifting from manual to automated evaluation methods. State Departments of Transportation (DOTs), including GDOT, TxDOT, and Caltrans, have amassed extensive pavement image collections over several years. These images are pivotal for monitoring pavement distress, such as crack propagation and deterioration, but their effective utilization is hindered by challenges in accurately aligning multi-temporal images in consistent regions. It is impossible and difficult to achieve accurate and reliable pavement deterioration analysis if the consistent regions among different years cannot be ensured. This study introduces a novel three-stage coarse-to-fine methodology for Multi-Temporal Pavement Image Registration (PIR). This methodology efficiently aligns pavement images from different time periods, enabling consistent monitoring and analysis of pavement deterioration. Tested on a dataset from US-80 spanning 11 years with varied cracking patterns, the methodology demonstrates high efficiency and accuracy in registering images across multiple years, offering adaptable accuracy levels for various applications. This innovative approach aids transportation engineers in analyzing pavement deterioration using historical images, supports the Long-Term Pavement Performance (LTPP) program, and contributes to the calibration of the Mechanistic Empirical Pavement Design Guide (MEPDG) models. This presentation illustrates 1) the framework of the developed multi-temporal pavement image registration methodology, 2) preliminary results of registered multi-temporal pavement images on US-80 across 11 years, and 3) potential applications of multi-temporal pavement image registration results for more accurate pavement deterioration analysis and optimized pavement treatment decision-making.

  • Session 6.414: Investigation of Relationship between Macrotexture and Percent Embedment in Chip Seals using Image Processing by Brian Moon(ARA), Ahmad Alhasan, Hyung Lee and John Senger
    Lead Presenter’s Bio:

    Abstract:
    Chip seal application is a common practice for maintenance and preservation of deteriorated pavements. Chip seal application is mainly used to seal the fine cracks on a pavement surface and to prevent water intrusion into the pavement foundation, thereby extending the life span of the existing pavement. Although quality assurance (QA) is critical, there is no well- established agreement on quantitative QA procedures for Chip seal treatment. One of the practices used by many State highway agencies is to estimate the percent embedment (PE) by pulling some of the chips after construction, which is relying on visual examine. However, this practice does not guarantee representative samples and lacks consistency and objectivity because there are no specifications on how to measure PE from retrieved aggregates. Therefore, this study investigates the use of several image-based and laser-based assessment procedures to estimate and quantify the percent embedment (PE) as a quality assurance tool for chip seals. The analysis procedures included side-view image analysis for measuring PE, surface texture evaluation and its correlation to PE values, and image-texture analysis of overhead surface measurements to estimate PE. The analysis showed that the correlations between the different PE estimation methods are relatively weak, indicating the various methods provide different information and may relate to different characteristics

  • Session 7: Session moderator by Christy Poon-Atkins (FHWA)
    Lead Presenter’s Bio:

    Abstract:

  • Session 7.1: From 2D to 3D – the Future of ProVAL by George Chang (Transtec Group)
    Lead Presenter’s Bio:
    Dr. George Chang is an expert on pavement smoothness, intelligent compaction, and construction technologies. Dr. Chang founded the International Society for Intelligent Construction (ISIC). His research, teaching, specification development, and software tools (such as ProVAL and Veta) have helped make significant technological advancements in the above fields.
    Abstract:
    The ProVAL software – profile viewing and analysis – has been used by many agencies and industries since 2001. ProVAL serves as the common platform to implement AASHTO standards (R 54, R 56, etc.) and ASTM standards (E950, E2560, etc.) in agencies’ pavement smoothness specifications for construction acceptance and profiler certification. For the past 24 years, ProVAL has included many analysis modules for 2D longitudinal pavement profile analysis for all aspects of analyses. Starting in 2024, ProVAL Clarity 1.0 – a ProVAL family software – will import and analyze 2D and 3D pavement image files to implement the AASHTO MP 47 PSI data standard. The next steps are to implement other AASHTO transverse pavement profile certification standards (PP 106 – 111) in ProVAL Clarity. With the upcoming joint pooled fund study that merges TPF-5(354) and TPF-5(499), the future of ProVAL will turn into a suite of software as a standard platform for implementing the current and future 2D and 3D pavement profile standards. Beyond the standards are the limitless opportunities from the 2D plus 3D synergy for keeping ProVAL evolving to facilitate the management of current and future pavement surface characteristic (PSC) technologies certification, data quality assurance, and more.
  • Session 7.2: Evaluation on Surface Characteristics of Florida’s Concrete Test Road and Longitudinally Grooved Concrete Project by Charles Holzschuher (FDOT)
    Lead Presenter’s Bio:
    Charles Holzschuher is the State Pavement Systems Engineer with the Florida Department of Transportation (FDOT). He has a Master’s in Civil Engineering from the University of Florida. He has been with FDOT for over 24 years assessing materials, performance, and safety of Florida’s roadways. During this time, he has managed numerous Statewide Department Programs including Pavement Performance Section, Structures Materials Laboratory, Pavement Management, Pavement Condition Survey, Smoothness Acceptance for Construction, Friction Evaluation, Pavement Marking Management, and Pre-Design testing
    Abstract:
    The subject study was initiated with the primary objective of evaluating surface characteristics of the Florida Concrete Test Road. Three different surface textures, namely longitudinal diamond grinding (LDG), next generation concrete surface (NGCS), and FDOT’s bridge deck surfacing which is the combination of LDG and transverse grooving, were applied to the test road. Friction, macrotexture, noise, and smoothness were evaluated. Results showed that the bridge deck texture has the highest friction and mean profile depth (MPD), followed by NGCS and LDG. Compared to LDG, the MPD for NGCS was increased by more than 40% on average, which indicates NGCS has a better chance of reducing hydroplaning. Results from noise testing indicated that there was no significant difference on tire-pavement interface noise among the three textures. However, wayside noise test showed that NGCS and LDG were approximately 3dBA quieter than the bridge deck texture. Smoothness test showed that all three textures provide excellent ride quality and there is no significant difference on international roughness index (IRI). A case study on longitudinal grooving at I-95 concrete pavement in Brevard County showed that both friction and MPD were increased significantly after longitudinal grooving. On average, friction was increased by more than 30% and macrotexture in terms of MPD was increased by more than 60%.
  • Session 7.3: HPMS Pavement Data Reporting and Recent Status by Max Grogg (APTech)
    Lead Presenter’s Bio:
    Mr. Grogg has served as a Senior Engineer for Applied Pavement Technology for 6 years working on various pavement design, materials quality, and pavement and asset management projects. Before that he worked for the Federal Highway Administration for over 32 years in various offices where he worked on a wide range of pavement technologies and practices with various States as well as the administration of the Federal-aid Highway Program. Mr. Grogg has a B.S. in Civil Engineering from the Missouri University of Science and Technology and an M.S. from the University of Illinois. He is a registered professional engineer in the State of Virginia.
    Abstract:
    The Federal Highway Administration (FHWA) created the Highway Performance Monitoring System (HPMS) in 1978 to collect information from the State Transportation Departments (States) regarding the extent, condition, performance, use, and operating characteristics of the nation’s roadways on an annual basis. Information submitted to the HPMS supports the FHWA responsibilities to Congress, the Administration, and the American public, and is used for the apportionment of Federal-aid highway funds and supporting various initiatives such as Transportation Performance Management (TPM). Data from HPMS are published annually by the FHWA and are used as a key data source for a variety of FHWA business processes. In particular, this presentation focuses on the pavement data item requirements of International Roughness Index (IRI) and the distress items of rutting, faulting, and cracking percent. Recent data statistics and system status will be noted as well.
  • Session 7.4: What is and What’s New with TRB AKP50? by Brian L. Schleppi (VIHSC)
    Lead Presenter’s Bio:

    Abstract:
    This presentation will discuss the role of the Transportation Research Board’s (TRB’s) Standing Committee on Pavement Surface Characteristics and Vehicle Interaction Properties, AKP50, in the surface characteristics world. It will contain a brief overview of what TRB is and what this specific committee does and how it can be mutually beneficial with RPUG and the greater RPUG community. It will cover committee functions, responsibilities of friends and members of the committee, and the committee’s role in the research identification, funding, work, dissemination of results and implementation processes. In addition, it will go over recent committee member rotation, development of the committee’s new three-year Triennial Strategic Plan (TSP) and the focus areas and topics it intends to help advance. It will also highlight the current Research Needs Statements (RNSs) the committee has developed and is advancing for NCHRP or other project funding.

  • Session 8: Session moderator by John Senger (IDOT)
    Lead Presenter’s Bio:
    John is the Bureau Chief of Research at the Illinois Department of Transportation. John previously served IDOT as the Engineer of Pavement Technology. He manages the Illinois Certification and Research Track in southern Illinois. John enjoys long walks through the hardware store and the smooth sounds of a table saw.
    Abstract:
  • Session 8.1: FDOT Implementation of the Automated Condition Survey by William Bryant (FDOT)
    Lead Presenter’s Bio:
    William (Thad) Bryant is the State Pavement Evaluation Manager with the Florida Department of Transportation (FDOT). He has been with FDOT for over 28 years assessing the performance, materials, and condition of Florida’s roadways. Along with his current role, he has managed and served as the State Pavement Assessment Administrator, and the State Pavement Condition Survey Administrator. He has an in-depth knowledge of the concepts, principles, and analytical techniques used to predict pavement performance. He has been the key player in innovating and automating new developments, processes, and databases for FDOT. In his career, he has developed multiple fundamental software applications that are now an integral part of analyzing and reporting pavement data. Areas of expertise are pavement evaluation, pavement condition, inertial profiling, and ground penetrating radar.
    Abstract:
    The Pavement Condition Unit collects, processes, and analyzes the information on the condition and performance of the State Roadway System on an annual basis. The information provided by such a Pavement Condition Survey (PCS) program has been critical to the Department’s effort to support informed highway planning, policy and decision-making. The condition survey is traditionally performed in terms of varying levels and amounts of specific distresses, namely, (1) ride, (2) rutting, and (3) cracking. Once the data collection process is completed, the data is then sent to each of the appropriate District Offices for review and verification. Thereafter, the data is submitted to the Central Pavement Management Office, which is responsible for the final processing and analyses as well as for making the data available for use by the Department, and other entities for pavement management purposes. Automated Pavement Condition Survey: The Department has implemented several technological advances to automate its pavement condition data collection as appropriate evaluation techniques and accurate measurements are crucial in the management of its transportation infrastructure systems. Advances in sensor and inertial navigation technologies are providing significant enhancement to the functionality of related equipment. Such evaluation methodologies would allow us to capitalize on the large amount of valuable information that can be offered by the state-of-the art equipment. Consequently, the way ahead is to have the condition of a roadway be solely based on direct and automated measurement from state-of-the art equipment such as the Automated Laser Crack Measuring System (seen in Figure 1 below). Such an approach would certainly eliminate subjectivity and enhance productivity, safety and repeatability. It would also enhance pavement performance forecasting.
  • Session 8.2: Comparing Road Condition Indexes using Automated PCI, PASER and PSCI Methods on Standard LCMS Road Condition Data Outputs by John Laurent (Pavemetrics)
    Lead Presenter’s Bio:

    Abstract:
    This presentation will focus on comparing the performance (repeatability and accuracy) of different road condition indices (PCI, PASER, PSCI) when used to summarize detailed distress data (IRI, cracking, rutting, etc.,) that was automatically extracted from 1mm resolution 3D LCMS scans.
    Brief descriptions of the road condition indices (PCI, PASER, PSCI) will be presented. The method used to automate the condition calculations from the standard LCMS outputs will also be exposed in detail.
    In order to compare the results of the different methods, three 200m road segments of low, medium and high roughness (IRI) values were scanned three times each. No care was taken to start and stop the scans at exactly the same places so as to allow a few meters of variance between the scans. Each 200m road segment was further divided into 10 meter sections. Each 10m road section was processed in order to automatically extract all of the road surface characteristics from the LCMS data. Finally the different indices were used to summarize the same road condition data for each road section of each of the three scans of each 200m road segment. In conclusion it will be shown that there are significant differences in the results depending on what classification method is used even if each method is evaluating the exact same surface defects. Some methods will also be shown to demonstrate high variance between the results from the multiple runs of the same road segments.


  • Session 8.3: Value of Asset Lifecycle Management Integration by Maximillian Ovett (Trimble)
    Lead Presenter’s Bio:

    Abstract:
    Currently, several transportation agencies implement smoothness specifications that include incentives and disincentives for contractors. In most cases the values and ranges for these incentives and disincentives are based on experience and judgment. It is important that agencies validate the value of paying bonuses by addressing the following questions: (a) Are smooth pavements really extending the life of the pavement and, if so, by how much?, (b) Is it financially worth it?, (c) Are rough pavements decreasing the life of the pavement and, if so, by how much?, and finally, (d) Is the agency penalizing the contractor adequately or excessively?
    The complete integration of full lifecycle management of pavements from as-designed to as-constructed to as-maintained and operated can provide valuable information that will improve decision making and efficiency.
    This abstract will present some examples of valuable information being produced by surveys and construction technology today, and which can benefit any transportation agency.
    (1) The total cost over the life of the asset; (2) Evaluate the impact of the initial International; (3)roughness Index or smoothness on the pavement performance. (4) Evaluate the impact of new specifications or test procedures used in construction projects. (5) Assess the impact of different construction techniques on pavement performance. (6) Compare the performance of the different pavement types and mix types. The list above provides some examples of valuable information that can improve decision making and lead to significant savings for the agencies.

  • Session 8.4: RPUG Business Meeting by John Senger (IDOT)
    Lead Presenter’s Bio:
    John is the Bureau Chief of Research at the Illinois Department of Transportation. John previously served IDOT as the Engineer of Pavement Technology. He manages the Illinois Certification and Research Track in southern Illinois. John enjoys long walks through the hardware store and the smooth sounds of a table saw.
    Abstract:
  • Session 9.1: TPF-5(354) Profile Pooled Fund Meeting by Thad Bauer (SDDOT)
    Lead Presenter’s Bio:

    Abstract:
    Improving the Quality of Highway Profile Measurement – Pooled Fund Meeting
    This meeting is for its members and all others interested in this field.

  • Session 9.2: ProVAL Workshop by George Chang(Transtec Group), and Dave Merritt
    Lead Presenter’s Bio:
    Dr. George Chang is an expert on pavement smoothness, intelligent compaction, and construction technologies. Dr. Chang founded the International Society for Intelligent Construction (ISIC). His research, teaching, specification development, and software tools (such as ProVAL and Veta) have helped make significant technological advancements in the above fields.
    Abstract:
    This workshop is hands-on and focuses on ProVAL software exercises. All participants need to bring their laptop computer preinstalled with ProVAL 4.0.