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The actual traffic prediction method based on particle swarm optimisation and wavelet neural network

机译:基于粒子群优化和小波神经网络的实际交通预测方法

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摘要

For the congestion phenomena of networks, it has been provided with a new prediction method for service flow (based on Particle Swarm Optimisation and Wavelet Neural Network Prediction PSOWNNP). Firstly, this method is using the wavelet exchange to resolve the service flow, and using its wavelet coefficient and metric coefficient as the sample data. Secondly, training the sample data is using the neural network method of the particle swarm optimisation in which it is applying the wavelet model for construction, and the prediction data for service flow will be obtained from this. At the same time, the prediction methods of wavelet neural network and BP neural network for particle swarm optimisation are analysed and compared through the simulation experiment, and the result for indicating the performance of AWNNP method is relatively good, with a tolerance of 17.21%.
机译:对于网络拥塞现象,已经提供了一种用于服务流程的新预测方法(基于粒子群优化和小波神经网络预测PSOWNNP)。首先,该方法使用小波交换来解析服务流程,并使用其小波系数和度量系数作为样本数据。其次,训练样品数据使用的是粒子群优化的神经网络方法,其中它施加用于结构的小波模型,并且将从其获得服务流程的预测数据。同时,通过仿真实验分析并比较了小波神经网络和粒子群优化BP神经网络的预测方法,结果表明AWNNP方法性能相对较好,具有17.21%的公差。

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