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首页> 外文期刊>Transportation Research Part B: Methodological >Traffic signal timing optimisation based on genetic algorithm approach, including drivers' routing
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Traffic signal timing optimisation based on genetic algorithm approach, including drivers' routing

机译:基于遗传算法的交通信号定时优化,包括驾驶员选路

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摘要

The genetic algorithm approach to solve traffic signal control and traffic assignment problem is used to tackle the optimisation of signal timings with stochastic user equilibrium link flows. Signal timing is defined by the common network cycle time, the green time for each signal stage, and the offsets between the junctions. The system performance index is defined as the sum of a weighted linear combination of delay and number of stops per unit time for all traffic streams, which is evaluated by the traffic model of TRANSYT [User guide to TRANSYT, version 8, TRRL Report LR888, Transport and Road Research Laboratory, Crowthorne, 1980]. Stochastic user equilibrium assignment is formulated as an equivalent minimisation problem and solved by way of the Path Flow Estimator (PFE). The objective function adopted is the network performance index (PI) and its use for the Genetic Algorithm (GA) is the inversion of the network PI, called the fitness function. By integrating the genetic algorithms, traffic assignment and traffic control, the GATRANSPFE (Genetic Algorithm, TRANSYT and the PFE), solves the equilibrium network design problem. The performance of the GATRANSPFE is illustrated and compared with mutually consistent (MC) solution using numerical example. The computation results show that the GA approach is efficient and much simpler than previous heuristic algorithm. Furthermore, results from the test road network have shown that the values of the performance index were significantly improved relative to the MC.
机译:解决交通信号控制和交通分配问题的遗传算法方法被用于解决具有随机用户平衡链路流的信号定时的优化。信号时序由公共网络周期时间,每个信号级的绿色时间以及结点之间的偏移量定义。系统性能指标定义为所有流量的延迟和每单位时间的停止次数的加权线性组合的总和,该总和由TRANSYT的流量模型评估[TRANSYT用户指南,版本8,TRRL报告LR888,运输和道路研究实验室,克罗索恩,1980年]。随机用户均衡分配被公式化为等效的最小化问题,并通过路径流量估算器(PFE)解决。所采用的目标函数是网络性能指标(PI),其在遗传算法(GA)中的使用是网络PI的反演,称为适应度函数。通过集成遗传算法,流量分配和流量控制,GATRANSPFE(遗传算法,TRANSYT和PFE)解决了均衡网络设计问题。举例说明了GATRANSPFE的性能,并与相互一致的(MC)解决方案进行了比较。计算结果表明,遗传算法比以前的启发式算法更有效,更简单。此外,测试道路网络的结果表明,性能指标的值相对于MC有了显着提高。

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