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A swarm intelligent method for traffic light scheduling: application to real urban traffic networks

机译:群智能交通灯调度方法:在实际城市交通网络中的应用

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Traffic lights play an important role nowadays for solving complex and serious urban traffic problems. How to optimize the schedule of hundreds of traffic lights has become a challenging and exciting problem. This paper proposes an inner and outer cellular automaton mechanism combined with particle swarm optimization (IOCA-PSO) method to achieve a dynamic and real-time optimization scheduling of urban traffic lights. The IOCA-PSO method includes the inner cellular model (ICM), the outer cellular model (OCM), and the fitness function. Our work can be divided into following parts: (1) Concise basic transition rules and affiliated transition rules are proposed in ICM, which can help the proposed phase cycle planning (PCP) algorithm achieve a globally sophisticated scheduling and offer effective solutions for different traffic problems; (2) Benefited from the combination of cellular automaton (CA) and particle swarm optimization (PSO), the proposed inner and outer cellular PSO (IOPSO) algorithm in OCM offers a strong search ability to find out the optimal timing control; (3) The proposed fitness function can evaluate and conduct the optimization of traffic lights' scheduling dynamically for different aims by adjusting parameters. Extensive experiments show that, compared with the PSO method, the genetic algorithm method and the RANDOM method in real cases, IOCA-PSO presents distinct improvements under different traffic conditions, which shows a high adaptability of the proposed method in urban traffic network scales under different traffic flow states, intersection numbers, and vehicle numbers.
机译:如今,交通信号灯在解决复杂而严重的城市交通问题中起着重要作用。如何优化数百个交通信号灯的时间表已成为一个充满挑战和令人兴奋的问题。本文提出了一种结合粒子群优化(IOCA-PSO)方法的内外细胞自动机机制,实现了城市交通信号灯的动态实时优化调度。 IOCA-PSO方法包括内部细胞模型(ICM),外部细胞模型(OCM)和适应度函数。我们的工作可以分为以下几部分:(1)在ICM中提出了简洁的基本过渡规则和相关的过渡规则,这可以帮助提出的相周期规划(PCP)算法实现全局复杂的调度,并为不同的交通问题提供有效的解决方案; (2)受益于细胞自动机(CA)和粒子群优化(PSO)的结合,在OCM中提出的内部和外部细胞PSO(IOPSO)算法提供了强大的搜索能力,可以找到最佳时序控制; (3)提出的适应度函数可以通过调整参数动态评估和进行针对不同目标的交通信号灯调度的优化。大量实验表明,与实际情况下的PSO方法,遗传算法和RANDOM方法相比,IOCA-PSO在不同的交通条件下都有明显的改进,表明该方法在不同交通量级的城市交通网络中具有很高的适应性。交通状态,路口编号和车辆编号。

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