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An Intelligent Control Method for Urban Traffic Signal Based on Fuzzy Neural Network

机译:基于模糊神经网络的城市交通信号智能控制方法

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The paper presents a traffic signal control method using a layer-structured fuzzy neural network (FNN) for learning rules of fuzzy logic control system. The FNN has advantages of both fuzzy expert system (fuzzy reasoning) and artificial neural network (self-study). The system is not needed to build the model of traffic flow for signal control approach at an intersection, it can be successfully trained to adapt different traffic flow and different conditions at the intersection based on the real-time data, this significantly reduces a lot of effort of extracting traffic expert's knowledge into fuzzy if-then rules. In order to get better dynamic response and reduce the computing capacity, the weights of FNN are optimized and the step length for self-study is modified based on fuzzy logic. Compared with traditional fuzzy control plan for traffic signal, the proposed FNN algorithm shows better performances and adaptability.
机译:本文介绍了一种流量信号控制方法,使用层结构模糊神经网络(FNN),用于学习模糊逻辑控制系统规则。 FNN具有模糊专家系统(模糊推理)和人工神经网络(自学)的优点。该系统不需要在交叉路口中构建信号控制方法的流量模型,可以成功培训,以基于实时数据来适应交叉口的不同流量和不同条件,这显着减少了很多将交通专家知识提取为模糊IF-DEL规则的努力。为了获得更好的动态响应并降低计算能力,优化了FNN的权重,并基于模糊逻辑修改了自学的步长。与交通信号传统模糊控制计划相比,所提出的FNN算法显示出更好的性能和适应性。

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