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Stochastic Optimization Method for Coordinated Actuated Traffic Control May 16, 2008 Joyoung Lee and Byungkyu “Brian” Park, Ph.D Presented at VISSIM UGM.

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Presentation on theme: "Stochastic Optimization Method for Coordinated Actuated Traffic Control May 16, 2008 Joyoung Lee and Byungkyu “Brian” Park, Ph.D Presented at VISSIM UGM."— Presentation transcript:

1 Stochastic Optimization Method for Coordinated Actuated Traffic Control May 16, 2008 Joyoung Lee and Byungkyu “Brian” Park, Ph.D Presented at VISSIM UGM Philadelphia, PA

2 Outline Research Purpose Past Research Controller Setting Optimization Practical Implementation Conclusions and Recommendations

3 Purpose  Apply a stochastic optimization method (SOM) to an arterial network in Northern Virginia  Improve the SOM Performance by VISSIM and Shuffled Frog Leaping Algorithm (SFLA)  Quantify the benefits of SOM via before-and-after study Research Purpose

4 Past Research Calibration / Validation Field vs. Uncalibrated Model Field vs. Calibrated Model Park, B. And Won, J. (2006)

5 Controller settings optimization Traffic signal controller settings to be optimized  Cycle length  Green splits  Offsets  Phase sequence  Recall mode GA + CORSIM GA + VISSIM

6 Controller settings optimization It works! Yun, I., and Park, B.(2008)

7 Controller setting optimization However, it creates a huge search space.  Total parameters per intersection (standard NEMA 8 phases) =Offset + 8×MaxGreen+8×MinGreen+4×MajorPhaseSequence +4XMinorPhaseSequence+8XAmber+8XRed+8XVehicleExt. +8XOtherDectorSettings….  Offset is a killer. The combination of offsets for a corridor with N intersections =(CycleLength-1)^(N-1) It requires the exponential amount of computation time as the number of parameters linearly increases.

8 Practical Implementation An opportunity  Virginia Northern Region Operation Project A 6-mile long Coordinated-Actuated Corridor with 16 Intersections Apply SOM and Obtain optimal plans for  Mid-day  PM(in progress) Field Implementation by SOM optimal plans Benefit assessment by Before/After study

9 Study Corridor Lee Jackson Mem. Hwy & Rugby Rd. John Mosby Hwy. & Pleasant Valley Rd.

10 Network Calibration Efforts Data Collection  Volume Data Video recording on the Entry/Exit Points of Route 50  Travel Time Data Probe vehicles with a GPS receiver  Existing Signal Plan Data Virginia Northern Region Operation Calibration  Latin Hypercube Sampling 200 Samples 5 replications for each sample 16 target parameters

11 Network Calibration Mid-day Westbound

12 Network Calibration Mid-day Eastbound

13 Optimization Efforts Distributed Computing Environment  Master-Slave type DCE  a VISSIM simulation / a Processor  Distributed.NET Remoting Master Slave Processor#1 Processor#2

14 Optimization Efforts Genetic Algorithm  Famous  Challenging for huge search space cases. Shuffled Frog Leaping Algorithm (SFLA)  A heuristic algorithm based on an evolutionary algorithm  Perform both local search and global search

15 Optimization Efforts Genetic Algorithm Optimal(684.2) The best(=693)

16 Optimization Efforts Shuffled Frog Leaping Algorithm (SFLA)

17 Traffic Signal Settings Optimization Parameters Optimized  Cycle Length  Offsets  Minimum & maximum green times  Yellow and Red  Extension time  Phase Sequences  Lock Modes (Red Lock, Yellow Lock)  Recall Modes( Vehicle Recall, Max Recall)

18 Optimization Results Target Parameters and Field Constraints Fixed Parameters - Cycle Length(MD:150sec, PM:200sec) - Yellow and Red time (5~7 sec) Target Parameters - Offset - Min Green - Max Green - Extension time

19 Optimization Results VISSIM Evaluation Scenarios  FieldSetting : Current field controller setting.  SYNCHRO : SYNCHRO’s optimal setting.  Optimized : SOM’s optimal setting free from field constraints

20 Optimization Results Midday Optimization

21 Optimization Results PM-Peak Optimization

22 Optimization Results Total Travel Time (Veh-hours) ScenarioMeanSt.Dev.p-value Midday Field734.021.81 0.000 Optimized708.516.27 Gain(%)25.5 (3.5%)- PM-Peak Field1549.038.4 0.000 Optimized1517.028.6 Gain(%)32 (2.1%)-

23 Conclusions and Recommendations Conclusions  SOM improves. Field settings  3.5% of Mid-Day total travel time (Vehicle-Hours)  2.1% of PM-Peak total travel time (Vehicle-Hours) SYNCHRO  7.5% of Mid-Day  8.8% of PM-Peak  SFLA seems working. Reduce total evaluations Obtain better solution than GA

24 Conclusions and Recommendations Recommendations  Calibration/validation process should be embedded in SOM.  SOM can be applicable for the signal plan of coordinated-actuated traffic control  Optimization on advanced settings should be employed.

25 Thank you Questions & Comments


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