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ITE Western District 2012 Annual Meeting
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
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High-Resolution Event Data
ITE Western District 2012 Annual Meeting
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ITE Western District 2012 Annual Meeting
SMART-SIGNAL Terminal Box DAC ITE Western District 2012 Annual Meeting
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Trunk Highway 55 and Boone Ave (Golden Valley, MN)
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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 However, traffic arrivals are usually hard to predict or measure. Therefore, a network of intersections would become oversaturated when the system is overloaded with heavy demand which exceeds the total capacity of the network
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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
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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
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Measure T-OSI & S-OSI T-OSI: S-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
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T-OSI & S-OSI Measure Using High-Resolution Traffic Event Data
ITE Western District 2012 Annual Meeting
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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
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Queue Length Estimation
Utilize the data collected by advance detector Identify Critical Points: A, B, C Point A: Shockwave v1 arrives to detector, indicating traffic state changes from (qa,ka) to (0,kj) Point B: Shockwave v2 arrives to detector, indicating traffic state changes from (0,kj) to (qm,km) Point C: Shockwave v3 arrives to detector, indicating traffic state changes from (qm,km) to (qa,ka) Identify from high-resolution event-based data Vehicle Gap Detector occupied time Point A: Long occupy time (>3 sec) or occupancy > 1 for 3 sec Point B: Occupy time changes to normal value (< 1 sec) or occupancy changes to less than 1 Point C: Large gap time (>2.5) or occupancy = 0 for about 3 sec
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Break Point Identification from High-Resolution Detector Data
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ITE Western District 2012 Annual Meeting
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
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SOSI: Identify Queue-over-detector (QOD) Caused by Spillover
Due to cyclic signal timing, vehicles slow down and stop for red phase or joining the queue, and then resume travel as the light turns green or queue is clear. Such deceleration-stop-acceleration process rapidly changes the occupancy at some locations. In other words, if a vehicle stays on the detector during the queuing process, the occupancy is significantly changed because of the relatively prolonged detector occupation time. We call this phenomenon as “Queue-Over-Detector” (QOD). This phenomenon is clearly indicated in the high-resolution data by large occupation time (2 sec, for example) or occupancy being 100% for several seconds. Generally, there are two kinds of QOD in signalized arterials: the first is caused by cyclic signal timing, i.e. the red phase; the second is because the queue spills back from downstream intersections, i.e. spillover. If the second QOD has been identified, the oversaturation at an arterial/route can be diagnosed.
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S-OSI: Identification of Spillover
Identify QOD-II. High-resolution data. Rhode Island phase 6 ITE Western District 2012 Annual Meeting
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Managing Oversaturation: A Simple Forward-Backward Procedure
ITE Western District 2012 Annual Meeting
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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
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ITE Western District 2012 Annual Meeting
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
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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
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ITE Western District 2012 Annual Meeting
TOSI > 0 Extending green ITE Western District 2012 Annual Meeting
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ITE Western District 2012 Annual Meeting
SOSI > 0 Reducing red at the downstream intersection ITE Western District 2012 Annual Meeting
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ITE Western District 2012 Annual Meeting
SOSI > 0 Gating (Reducing traffic arrivals & giving green to other approaches) ITE Western District 2012 Annual Meeting
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ITE Western District 2012 Annual Meeting
Handling Spillover ITE Western District 2012 Annual Meeting
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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
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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
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Simulation Test 22 intersections, Pasadena, CA Offline control
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ITE Western District 2012 Annual Meeting
Simulation Test TOSI/SOSI Changes Fair Oaks Ave SB Colorado Blvd. WB ITE Western District 2012 Annual Meeting
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ITE Western District 2012 Annual Meeting
Future Work The Fundamental Diagram: Congestion Safety Environment Control ITE Western District 2012 Annual Meeting
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