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Bottleneck Identification and Calibration for Corridor Management Planning Xuegang (Jeff) Ban Lianyu Chu Hamed Benouar California Center for Innovative Transportation (CCIT) University of California – Berkeley January 22, 2007
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2 Outline Introduction Bottleneck Identification Bottleneck Calibration A Real World Example Concluding Remarks
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3 Introduction Corridor Management Corridor Management Planning Integrated Corridor Management Micro-simulation in Corridor Management Performance Evaluation Improvement Scenario Evaluations Bottleneck Analysis Definition: Locations that capacity less or demand greater than other locations. Identification: Queue length and duration Calibration in Micro-simulation
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4 Bottleneck Identification Current Practice HICOMP, PeMS Proposed Method Binary Speed Contour Map (BSCM) via Percentile Speeds Assumption: bottleneck area if v<=v th Why are Percentile Speeds? Probability of a location being a bottleneck Flexibility of identifying bottlenecks Reliability compared with single “typical” day or average speeds p-th percentile speed
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5 Bottleneck Identification (Cont.) Speed Contour Map Represented as S(i, t) Incident Average No-Incident 15% 50%85%
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6 Bottleneck Identification (Cont.) Binary Speed Contour Map (BSCM) BS(i, t) = 1, if S(i, t) <= v th, 0, otherwise Bottleneck(s) can be identified automatically via BSCM V th = 35mph
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7 Bottleneck Calibration Current Practice FHWA Micro-Simulation Guideline: Visual Assessment Proposed Method - A Three Step-Process 1. Visual Assessment 2. Area Matching 3. Actual Speed Matching Three Levels of Details for Calibrating Bottlenecks
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8 Step 1. Visual Assessment Purpose Make sure the number of bottlenecks, their locations and areas roughly match Qualitative and no quantitative measures can be defined Observed Data Simulation Data
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9 Step 2: Bottleneck Area Matching Purpose Match bottleneck locations and areas using BSCMs Quantitative Measure C 1 Area Matching Criteria: Overlapping Area Union Area C1 = 90.5%
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10 Step 3: Actual Speeds Matching Purpose Match Detailed Bottleneck Speeds using both SCMs and BSCMs Quantitative Measure C2 Actual Speed Matching Criteria: Observed DataSimulation Data C2 = 64.2%Union Area
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11 A Real World Example I-880 in the San Francisco Bay Area One of the series of studies for Corridor Management Planning On-going project and the results presented here are interim The Example I-880 NB, AM Peak hours (6:30 AM – 9:30 AM) Observed data: 20 typical weekdays (Tuesday – Thursday) Double loop detectors with spacing ¼ mile Simulation Tool Paramics
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12 The Study Area
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13 Calibration Results – Flow and Travel Time Calibration is satisfactory for matching flow and travel times
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14 Calibration Results – Bottlenecks Bottlenecks? Observed Data Simulation Data
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15 Calibration Results – Bottlenecks Bottlenecks? C1= 24.2%, C2 =42.5% Observed Data Simulation Data
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16 Concluding Remarks Conclusions Percentile speeds was used to conduct bottleneck analysis Proposed an automatic bottleneck identification method based on binary speed contour maps Developed a three-step process for bottleneck calibration: visual assessment, area matching, and actual speed matching Defined quantitative measures for bottleneck calibration Enhancement to current micro-simulation calibration practice Future Study Using data from single loops (occupancy) Procedure for calibration
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