A Heuristic Approach for Multi-Path Signal Progression Considering Traffic Flow Uncertainty
Abstract
:1. Introduction
- The above study does not consider the uncertainty of traffic flow. The model is significantly affected by changes in traffic flow, and the green bandwidth in the model is sensitive to changes in traffic flow.
- The optimized signal scheme in the model can only adapt to a certain traffic scenario. If it needs to be extended to multiple scenarios, the coordination control strategy needs to be changed according to the time-varying traffic. If the switching frequency of the signal scheme is low, it delays the current traffic demand; if it is high, it results in a heavy burden for drivers and increases the cost of traffic control.
- With respect to average flow [16,17,18], this method uses the average value of all traffic flow samples in a sampling interval as the data input. Heydecker (1987) pointed out that if the variability of traffic flow was significant as compared with the timing obtained by considering this variability, optimizing signal timing relative to average flow could cause considerable additional delays [19]. For small variability, using average traffic flow in traditional calculation methods only results in a small loss of average performance (efficiency). It can be seen that the model is significantly affected by the volatility of traffic data, and it is difficult to represent the overall performance of traffic flow in a period of time only by taking the average value as the data input.
- Regarding maximum flow [20,21], This method selects the maximum value of all traffic flow samples in a sampling interval as the data input. Obviously, this method takes the time of maximum system load (maximum flow) as the research object. If the observation value of the highest flow is used, the solution of the model may be too conservative. More green light time may be allocated to the worst case of the system, resulting in a waste of the average performance (efficiency).
2. Problem Formulation
2.1. Two-Way Progression Model
2.2. Key Research Points of Multi-Path Progression
- (1)
- Consider the uncertainty of traffic flow
- (2)
- Consider the collaborative optimization of multiple path bandwidth, rather than only the arterial direction
- (3)
- Concurrently optimizing the signal phase sequence and offsets
3. Methodology
4. Case Study
5. Sensitivity Analyses
5.1. Efficiency-Stability Coefficient and Bandwidth
5.2. Average Traffic Flow and Delay
5.3. Fluctuation of Traffic Flow and Delay
6. Conclusions
- (1)
- The mean, standard deviation (MSD-) model performs well in the standard deviation and maximum value of each index on the premise of less deterioration of delay, parking times, average speed, and other indicators, thus, significantly improving the stability of the overall operation effect. Among them, the deterioration degree of the average value of each index is only 3.32%. The results of the comparison analysis shows that the standard deviation of the overall index is improved by 45.4%, and the maximum value is improved by 13.2%.
- (2)
- As compared with the traditional MAXBAND model and the MSD-r = 1 model, the average standard deviation (MSD-) model performs better in the stability of the mean, standard deviation, maximum, and other indicators of delay when the mean and standard deviation of traffic flow fluctuates, and the overall stability of the model is superior.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Symbol | Description |
---|---|
The weighting factor for the outbound (inbound) path | |
( | The flow for the outbound (inbound) path i (veh/h) |
The green duration that the outbound (inbound) path can obtain at intersection (s) | |
The dummy variable, indicates that the phase of path at intersection is green | |
The duration of phase at intersection (s) | |
The dummy variable, indicates that the phase m is before phase n in the same cycle of intersection | |
The offset of intersection (s) | |
The red duration at the left(right) side of the green bands for path (s) | |
The travel time between intersection and downstream intersection (s) | |
The integer variables represent the number of cycles | |
The initial queue cleaning time at intersection of path (s) | |
The occurrence probability of scenario | |
The weight coefficient | |
P() | The set of outbound (inbound) paths |
The set of intersections passed by the path | |
A large positive number, which can keep the inequality true when phase in the path is not green | |
The set of the traffic situation |
Intersection | Intersection 1 | Intersection 2 | Intersection 3 | Intersection 4 | Intersection 5 | Intersection 6 | |||||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Direction | Turn | AVG | SD | MIN | MAX | AVG | SD | MIN | MAX | AVG | SD | MIN | MAX | AVG | SD | MIN | MAX | AVG | SD | MIN | MAX | AVG | SD | MIN | MAX |
N-S | LT | 425 | 35 | 300 | 550 | 395 | 45 | 350 | 545 | 390 | 45 | 305 | 495 | 505 | 25 | 395 | 605 | 225 | 15 | 205 | 290 | 270 | 25 | 350 | 460 |
TH | 475 | 40 | 450 | 650 | 445 | 55 | 400 | 645 | 345 | 30 | 305 | 395 | 625 | 20 | 495 | 705 | 345 | 25 | 305 | 390 | 475 | 35 | 455 | 510 | |
RT | 340 | 75 | 300 | 400 | 325 | 90 | 250 | 445 | 330 | 15 | 305 | 395 | 340 | 45 | 295 | 405 | 240 | 35 | 205 | 310 | 360 | 40 | 305 | 460 | |
S-N | LT | 305 | 25 | 250 | 400 | 435 | 45 | 350 | 595 | 340 | 25 | 210 | 445 | 545 | 50 | 445 | 755 | 345 | 60 | 205 | 440 | 440 | 55 | 400 | 560 |
TH | 410 | 25 | 350 | 450 | 465 | 25 | 450 | 495 | 390 | 40 | 315 | 495 | 475 | 35 | 445 | 555 | 415 | 75 | 305 | 495 | 460 | 15 | 400 | 560 | |
RT | 345 | 15 | 300 | 400 | 395 | 85 | 300 | 445 | 370 | 45 | 325 | 395 | 440 | 40 | 295 | 655 | 415 | 35 | 305 | 490 | 280 | 20 | 255 | 310 | |
W-E | LT | 265 | 70 | 300 | 400 | 260 | 25 | 200 | 295 | 305 | 55 | 215 | 345 | 280 | 45 | 195 | 355 | 250 | 60 | 205 | 310 | 320 | 15 | 250 | 410 |
TH | 315 | 75 | 250 | 400 | 445 | 45 | 400 | 495 | 290 | 70 | 225 | 395 | 275 | 55 | 395 | 455 | 290 | 75 | 205 | 400 | 365 | 90 | 350 | 410 | |
RT | 245 | 45 | 200 | 300 | 400 | 30 | 350 | 445 | 365 | 15 | 260 | 395 | 325 | 60 | 295 | 405 | 255 | 35 | 255 | 290 | 350 | 100 | 330 | 410 | |
E-W | LT | 345 | 60 | 200 | 450 | 265 | 50 | 200 | 345 | 400 | 25 | 275 | 345 | 275 | 75 | 245 | 405 | 365 | 20 | 305 | 440 | 270 | 25 | 200 | 310 |
TH | 365 | 35 | 300 | 450 | 390 | 45 | 350 | 495 | 290 | 45 | 250 | 345 | 385 | 20 | 345 | 555 | 285 | 45 | 255 | 440 | 390 | 45 | 320 | 460 | |
RT | 255 | 45 | 200 | 300 | 315 | 90 | 250 | 395 | 310 | 20 | 260 | 345 | 380 | 25 | 295 | 455 | 345 | 25 | 255 | 410 | 400 | 20 | 300 | 510 |
Index | MAXBAND | |||
---|---|---|---|---|
Path-flow delay (s) | Average | 69.80 | 63.94 | 66.10 |
Standard deviation | 13.29 | 11.20 | 6.06 | |
Maximum | 143.25 | 128.67 | 111.68 | |
Stops | Average | 1.25 | 1.02 | 1.12 |
Standard deviation | 5.21 | 4.25 | 3.55 | |
Maximum | 1.73 | 1.56 | 1.18 | |
Speed (km/h) | Average | 38.34 | 50.14 | 50.25 |
Standard deviation | 10.60 | 8.71 | 5.89 | |
Maximum | 56.26 | 59.31 | 67.23 |
Sensitivity Analysis Experiment | |||
---|---|---|---|
1 | 2 | 3 | |
Variable | Efficiency -stability coefficient | Average flow | The standard deviation of flow |
Scenario(s) | Sensitivity analysis between efficiency -stability coefficient and delay | Sensitivity Analysis between mean traffic flow and delay | Sensitivity analysis between fluctuation and delay of traffic flow |
Model(s) | MSD- | MSD- | MSD- |
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Hai, T.; Ren, G.; Chen, W.; Cao, Q.; Dong, C. A Heuristic Approach for Multi-Path Signal Progression Considering Traffic Flow Uncertainty. Mathematics 2023, 11, 377. https://doi.org/10.3390/math11020377
Hai T, Ren G, Chen W, Cao Q, Dong C. A Heuristic Approach for Multi-Path Signal Progression Considering Traffic Flow Uncertainty. Mathematics. 2023; 11(2):377. https://doi.org/10.3390/math11020377
Chicago/Turabian StyleHai, Tianrui, Gang Ren, Weihan Chen, Qi Cao, and Changyin Dong. 2023. "A Heuristic Approach for Multi-Path Signal Progression Considering Traffic Flow Uncertainty" Mathematics 11, no. 2: 377. https://doi.org/10.3390/math11020377
APA StyleHai, T., Ren, G., Chen, W., Cao, Q., & Dong, C. (2023). A Heuristic Approach for Multi-Path Signal Progression Considering Traffic Flow Uncertainty. Mathematics, 11(2), 377. https://doi.org/10.3390/math11020377