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Seasonal adjustment in a SVR with chaotic simulated annealing algorithm traffic flow forecasting model

机译:SVR中基于混沌模拟退火算法的交通流量预测模型的季节调整

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Inter-urban traffic flow forecasting has been one of most important issues in the research on road traffic congestion. However, the traffic flow forecasting involves a rather complex nonlinear data pattern, particularly during daily peak periods, traffic flow data reveals cyclic (seasonal) trend. The support vector regression model (SVR) has been widely used to solve nonlinear time series problems. This investigation presents a traffic flow forecasting model by employing seasonal adjustment to deal with the cyclic (seasonal) traffic flow, in addition, the chaotic simulated annealing algorithm is also applied to optimize the three parameters of a SVR model, namely SSVRCSA, to forecast inter-urban traffic flow. A numerical example of traffic flow values from northern Taiwan is used to elucidate the forecasting performance. The results indicate that the proposed model yields more accurate forecasting results than the seasonal autoregressive integrated moving average (SARIMA), back-propagation neural network (BPNN), and seasonal Holt-Winters (SHW) models.
机译:城市间交通流量预测一直是道路交通拥堵研究中最重要的问题之一。但是,交通流量预测涉及相当复杂的非线性数据模式,尤其是在每日高峰时段,交通流量数据显示出周期性(季节性)趋势。支持向量回归模型(SVR)已被广泛用于解决非线性时间序列问题。这项研究提出了一种通过季节性调整来处理周期性(季节性)交通流量的交通流量预测模型,此外,混沌模拟退火算法还被用于优化SVR模型的三个参数,即SSVRCSA,以预测-城市交通流量。来自台湾北部的交通流量值的数值示例用于阐明预测性能。结果表明,与季节性自回归综合移动平均线(SARIMA),反向传播神经网络(BPNN)和季节性Holt-Winters(SHW)模型相比,该模型产生的预测结果更为准确。

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