Cooperative control method for multi-intersection signal lamp based on Q value migration depth reinforcement learning

A multi-intersection and reinforcement learning technology, applied in the field of multi-intersection signal light cooperative control based on Q-value transfer deep reinforcement learning, can solve the lack of multi-intersection signal lights coordination strategy, the algorithm depends on the intersection structure, and the difficulty of traffic state feature extraction, etc. question

Active Publication Date: 2019-04-02
DALIAN UNIV OF TECH
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Problems solved by technology

[0009] Aiming at the problems that the traditional signal light control method has difficulty in extracting traffic state features, the lack of effective collaborative strategies among signal lights at multiple intersections, and the algorithm relies too much on the intersection structure, etc., the present invention proposes a cooperative deep Q network with Q value migration (QT -CDQN) for coordinated control of signal lights at multiple intersections

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  • Cooperative control method for multi-intersection signal lamp based on Q value migration depth reinforcement learning
  • Cooperative control method for multi-intersection signal lamp based on Q value migration depth reinforcement learning
  • Cooperative control method for multi-intersection signal lamp based on Q value migration depth reinforcement learning

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Embodiment Construction

[0042] The invention provides a multi-intersection signal light cooperative control method based on Q value transfer deep reinforcement learning. The specific embodiments discussed are merely illustrative of implementations of the invention, and do not limit the scope of the invention. Embodiments of the present invention will be described in detail below in conjunction with the accompanying drawings, specifically including the following steps:

[0043] 1. Schematic diagram of four intersections. The application of the present invention is not limited to the structure of the intersection, with figure 1 Take the irregular four-way intersection as an example, where intersection 3 is a four-way intersection, and the others are three-way intersections. Each intersection has a signal light to control the passage of vehicles. Three-way intersections and four-way intersections have three and four roads entering the intersection, respectively, and each road has two lanes. Depending...

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Abstract

The invention provides a cooperative control method for multi-intersection signal lamp based on Q value migration depth reinforcement learning, and belongs to the crossing field of machine learning and intelligent traffic. A multi-intersection traffic network of an area is modeled into a multi-Agent system firstly. Each Agent simultaneously considers the influence of adjacent Agent actions at themost recent moment in the learning strategy process, so that multiple Agents can cooperatively conduct signal lamp control of multi-intersection. Each Agent adaptively controls one intersection through a deep Q network, and a network input is a discrete traffic state code of the original state information of the corresponding intersection. An optimal action Q value of the adjacent Agent at the most recent moment is transferred to the loss function of the network in the process of learning. The cooperative control method for multi-intersection signal lamp based on the Q value migration depth reinforcement learning can improve the traffic flow of the regional road network and the utilization rate of the road and can reduce the queuing length of the vehicle to relieve the traffic jam, and hasno limitation on the structure of each intersection.

Description

technical field [0001] The invention belongs to the intersecting field of machine learning and intelligent transportation, and relates to a multi-intersection signal lamp cooperative control method based on Q-value migration deep reinforcement learning. Background technique [0002] Traffic congestion has become an urgent challenge for urban traffic, but the existing infrastructure road facilities are difficult to expand due to space, environmental and economic constraints. Therefore, the optimal control of traffic lights is one of the effective ways to solve this problem. Through the adaptive control of signal lights, the traffic of the regional road network can be optimized to reduce congestion and carbon dioxide emissions. [0003] At present, different machine learning methods have been used in the research of urban traffic light control, mainly including fuzzy logic, evolutionary algorithm and dynamic programming. Control based on fuzzy logic usually establishes a set...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G08G1/081G06N3/04
CPCG08G1/081G06N3/045
Inventor 葛宏伟宋玉美
Owner DALIAN UNIV OF TECH
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