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Short-Time Traffic Flow Prediction Using Fuzzy Wavelet Neural Network Based on Master-Slave PSO

机译:基于主奴隶PSO的模糊小波神经网络的短时交通流量预测

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A particle swarm optimization (PSO) algorithm with master-slave structure is proposed to train fuzzy wavelet neural network which be used to predict short-time traffic flow. The PSO algorithm is formulated in a form of hierarchical structure. The global search is performed at the master level, while the local search is carried out at the slave level. Through the harmonizing mechanism between master and slave level, the algorithm can execute global exact search without relying on complex coding operators. The simulation results demonstrate the proposed model can improve prediction accuracy, compared with BP based training techniques
机译:提出了一种具有主从结构的粒子群优化(PSO)算法,用于培训用于预测短时流量流量的模糊小波神经网络。 PSO算法以分层结构的形式配制。全局搜索在主级执行,而本地搜索是在从级别执行的。通过主站和从级之间的协调机制,算法可以执行全局精确搜索,而无需依赖复杂的编码运算符。仿真结果证明了所提出的模型可以提高预测精度,与基于BP的训练技术相比

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