A Review of Research on Intersection Control Based on Connected Vehicles and Data-Driven Intelligent Approaches
Abstract
:1. Introduction
2. Data Perception for Intersection
3. Conventional Adaptive Control Methods of Intersections
3.1. Introduction to Adaptive Signal Control System
- (1)
- Offline optimization method. The typical representative of this method is the TRANSYT system. TRANSYT is a simulation/optimization model and serves as an informal international standard. The timing scheme is based on the historical data of the transportation network, and mainly uses computer modeling, optimization and simulation techniques. The objective function of this method mainly uses the number of stops and delay times as indicators, and uses the blind mountain climbing method to optimize the phase difference and green light time [44].
- (2)
- Online plan selection method. This method is typically represented by the SCAT (Sydney coordinated adaptive traffic) system. It uses offline optimization to optimize several timing schemes corresponding to different traffic flows on the road network, and uses class saturation and comprehensive traffic for optimization selection.
- (3)
- Online scheme generation method. The typical representative of this method is the SCOOT (split, cycle and offset optimization technique) system. It consists of a traffic prediction model and timing parameter optimization. The traffic model is processed online, and directly calculates a series of parameters and operating indicators based on real-time feedback concerning traffic conditions on the road network.
- (1)
- Centralized traffic signal control system. All signals in the control area are connected, and the entire system is controlled centrally by the control center. The centralized control system has only one control center, and each intersection is directly connected to the control center, forming a star structure on the topology. In this structure, each intersection executes the control strategy formulated by the control center, while at the same time, each intersection transmits its own traffic information to the control center in real-time, and the control center adjusts the control scheme based on the traffic information of each intersection [45,46]. The use of centralized control makes greater requirements of the control center system. Errors in the central system will cause the entire system to be paralyzed. Therefore, the robustness of the centralized system is poor. The SCOOT system is a centralized traffic signal control system [47].
- (2)
- Distributed traffic signal control system. The distributed control system is mainly composed of three levels: the general control center, the sub-control center and the intersection. Among them, the general control center is responsible for the overall scheduling of the system, the coordination of the tasks of the sub-control centers and the handling of global affairs. It has the highest control ability and priority. The sub-control center is responsible for the formulation of management signal strategies and other functions at the intersections of the area or the main road, and the intersections are responsible for tasks such as collecting traffic information at their locations and implementing control strategies [48]. The distributed control structure improves the reliability of the system. The existing control system SCATS (Sydney coordinated adaptive traffic system) belongs to the distributed control structure [49].
3.2. Model-Based Traffic Control
3.3. Traffic Control Based on Intelligent Computing
3.3.1. Fuzzy Logic
3.3.2. Neural Network
3.3.3. Group Intelligence
3.4. Data-Driven Traffic Control
3.4.1. Reinforcement Learning
3.4.2. Adaptive Dynamic Programming
4. Development Trends of Adaptive Signal Control for Intersections in Future Traffic Environments
4.1. Data-Driven RL Control
4.2. Research on Traffic Control Based on Adaptive Performance Optimization
4.3. Research on Traffic Control Based on the Environment of CV
4.4. Multiple Intersection Control Based on CV Environment
5. Discussion
Author Contributions
Funding
Conflicts of Interest
References
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Stages | Technologies | Time |
---|---|---|
6 | Super system: Artificial intelligence technology (self-learning ability based on experience) | now |
5 | Enhanced features of stage 4 (OPACV, RHODES) | 1992 |
4 | Distributed adaptive control system (OPAC, DP based method) | 1983 |
3 | Centralized control with online optimization scheme (SCOOT) | 1981 |
2 | Distributed control, knowledge selection (SCAT) online optimization | 1979 |
1 | Mixed control of basic fixed time control and inductive control | 1969 |
Control Method | Algorithm | Traffic Data Collection | Input | Output | Objective Function | Control Type |
---|---|---|---|---|---|---|
MBC | CPI/ GWB | Loop | travel time/density/ queue length | C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay | F |
Intelligent computing | Fuzzy logic/Neural network/Group Intelligence | Loop/ V2X | travel time/density/queue length | Phase/ C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay | B |
Data-driven control | RL/ADP | Loop/ V2X/intelligent cameras | travel time/density/queue length | Phase/ C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay/ | B |
Data-driven RL control | DQN | Loop/V2/Intelligent cameras/CV | travel time/density/queue length | Phase/ C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay/stop times | B |
Adaptive performance optimization | JTA/ Peripheral control | Loop/V2X | travel time/density/queue length | Phase/ C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay/stop times/bus delay | B |
Environment of CV | EVLS/GTR | Loop/V2/Intelligent cameras/CV | travel time/density/queue length/vehicle trajectory | Phase/ C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay/Reducing fuel consumption/pollutant emission/bus delay | B |
Multiple intersection control | QCOMBO | Loop/V2X/CV/Intelligent cameras | travel time/density/queue length vehicle trajectory | Phase/ C-S-O | Minimizing the queue length/the average waiting time/the total travel time/the delay/Reducing the stop number and delay/Reducing fuel consumption/pollutant emission | B |
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Gao, K.; Huang, S.; Xie, J.; Xiong, N.N.; Du, R. A Review of Research on Intersection Control Based on Connected Vehicles and Data-Driven Intelligent Approaches. Electronics 2020, 9, 885. https://doi.org/10.3390/electronics9060885
Gao K, Huang S, Xie J, Xiong NN, Du R. A Review of Research on Intersection Control Based on Connected Vehicles and Data-Driven Intelligent Approaches. Electronics. 2020; 9(6):885. https://doi.org/10.3390/electronics9060885
Chicago/Turabian StyleGao, Kai, Shuo Huang, Jin Xie, Neal N. Xiong, and Ronghua Du. 2020. "A Review of Research on Intersection Control Based on Connected Vehicles and Data-Driven Intelligent Approaches" Electronics 9, no. 6: 885. https://doi.org/10.3390/electronics9060885
APA StyleGao, K., Huang, S., Xie, J., Xiong, N. N., & Du, R. (2020). A Review of Research on Intersection Control Based on Connected Vehicles and Data-Driven Intelligent Approaches. Electronics, 9(6), 885. https://doi.org/10.3390/electronics9060885