1 / 28

Applications of High-Resolution Traffic Event Data: Managing Oversaturated Arterials

Applications of High-Resolution Traffic Event Data: Managing Oversaturated Arterials. Dr. Xinkai Wu, Assistant Professor Department of Civil Engineering California State Polytechnic University Pomona. High-Resolution Event Data. Terminal Box. SMART-SIGNAL. DAC.

livia
Download Presentation

Applications of High-Resolution Traffic Event Data: Managing Oversaturated Arterials

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Applications of High-Resolution Traffic Event Data: Managing Oversaturated Arterials Dr. Xinkai Wu, Assistant Professor Department of Civil Engineering California State Polytechnic University Pomona ITE Western District 2012 Annual Meeting

  2. High-Resolution Event Data ITE Western District 2012 Annual Meeting

  3. Terminal Box SMART-SIGNAL DAC ITE Western District 2012 Annual Meeting

  4. Trunk Highway 55 and Boone Ave (Golden Valley, MN) ITE Western District 2012 Annual Meeting

  5. Oversaturation Gazis (1963): An oversaturated intersection is defined as one in which the demand exceeds the capacity. Little research has been conducted on the identification and quantification of oversaturated conditions Mostly qualitative and incomplete

  6. Detrimental Effects Temporally, characterized by a residual queue at the end of cycle. Residual vehicles cannot be discharged due to insufficient green splits Creating detrimental effects on the following cycle by occupying a portion of green time. Spatially, characterized by a spill-over from a downstream intersection. Vehicles cannot be discharged even in green phase due to spill-over Creating detrimental effects by reducing useable green time for upstream movements

  7. Oversaturation Severity Index (OSI) • OSI: the ratio between unusable green time and total available green time in a cycle. • Further differentiate OSI into T-OSI and S-OSI. • Temporal dimension (T-OSI) • The “unusable” green: because of the residual queue from the last cycle • Spatial dimension (S-OSI) • The “unusable” green: because of the downstream blockage

  8. Measure T-OSI & S-OSI • T-OSI: • Estimate the length of residual queue at the end of cycle • S-OSI: • Identify spillover • Calculate the reduction of green time of upstream intersections

  9. T-OSI & S-OSI Measure Using High-Resolution Traffic Event Data ITE Western District 2012 Annual Meeting

  10. Queue Length Estimation • Instead of traditional input-output approach, we estimate queue length by taking advantage of queue discharge process • Based on LWR shockwave theory

  11. Queue Length Estimation Utilize the data collected by advance detector Identify Critical Points: A, B, C

  12. Break Point Identification from High-Resolution Detector Data

  13. Field Tests • Test Site: TH55 (6 intersections) • Independently evaluated by Alliant Engineering, Inc. • At Rhode Island Ave. • Three morning peaks (7:00am-9:00am) • Jul. 23rd, 2008 • Occ. 29th, 2008 • Dec. 10th, 2008 ITE Western District 2012 Annual Meeting

  14. SOSI: Identify Queue-over-detector (QOD) Caused by Spillover

  15. S-OSI: Identification of Spillover Identify QOD-II. High-resolution data. ITE Western District 2012 Annual Meeting

  16. Managing Oversaturation: A Simple Forward-Backward Procedure ITE Western District 2012 Annual Meeting

  17. A Simple Forward-Backward Procedure • Based on TOSI and SOSI measurements • Respond and mitigate traffic congestion quickly • Simple and effective • Reactive ITE Western District 2012 Annual Meeting

  18. Problem Setting • N intersections along an oversaturated path • At control period t, decisions are made according to the average TOSI and SOSI values at the control period t-1, i.e., ITE Western District 2012 Annual Meeting

  19. Basic Mitigation Strategies • The TOSI and SOSI values can help identify the causes of arterial traffic congestion • Positive SOSI indicates the spill-back of downstream queue • Positive TOSI indicates that the available green time is insufficient for queue discharge • Therefore for a single intersection, three basic strategies can be applied. ITE Western District 2012 Annual Meeting

  20. TOSI > 0 • Extending green ITE Western District 2012 Annual Meeting

  21. SOSI > 0 • Reducing red at the downstream intersection ITE Western District 2012 Annual Meeting

  22. SOSI > 0 • Gating (Reducing traffic arrivals & giving green to other approaches) ITE Western District 2012 Annual Meeting

  23. Handling Spillover ITE Western District 2012 Annual Meeting

  24. Forward-Backward Procedure • Forward Process (Seeking the available green) • Follow the flow direction to eliminate spillovers and residual queues • Boundary condition ITE Western District 2012 Annual Meeting

  25. Forward-Backward Procedure • Backward Process (Gating or metering) • Follow the opposing flow direction to check the arc capacity • Boundary condition ITE Western District 2012 Annual Meeting

  26. Simulation Test • 22 intersections, Pasadena, CA • Offline control

  27. Simulation Test • TOSI/SOSI Changes Fair Oaks Ave SB Colorado Blvd. WB ITE Western District 2012 Annual Meeting

  28. Future Work • The Fundamental Diagram: Congestion • Safety • Environment • Control ITE Western District 2012 Annual Meeting

More Related