基于混沌模拟退火算法的季节性SVR交通流预测学习新方法

Shaofei Liu, Ying Lin, Chao Luo, Weiye Shi
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引用次数: 3

摘要

城市交通流预测一直是国际上道路交通拥堵研究的热点问题之一。然而,城市间交通流难以准确预测,因为交通流预测过程涉及较为复杂的非线性数据模型,特别是在日高峰时段,交通流数据呈现周期性(季节性)趋势。近年来,支持向量回归(SVR)被广泛应用于求解非线性回归和时间序列问题。本文将混沌理论与模拟退火算法相结合,对相关向量机的核参数进行了优化。然而,目前还没有公认的处理周期(季节)趋势时间序列的SVR模型。本文提出了一种结合季节支持向量回归模型和混沌模拟退火算法(SSVRCSA)的城市间交通流预测模型。在以往的研究中,使用混沌序列和模拟退火算法的支持向量回归显示出其优势,可以有效地避免陷入局部最优。实验结果表明,所提出的SSVRCSA模型的预测结果比其他方法更准确。本研究最终提出了一种混合季节支持向量回归模型和混沌云模拟退火算法(SSVRCCSA)的预测模型,以获得更准确的预测性能。实验结果表明,所提出的SSVRCCSA模型比其他方法具有更高的精度。
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A Novel Learning Method for Traffic Flow Forecasting by Seasonal SVR with Chaotic Simulated Annealing Algorithm
The prediction of traffic flow in cities has always been one of the most important issues in the study of road traffic congestion in the world. However, it is difficult to accurately predict the traffic flow between cities, because the traffic flow prediction process involves a more complex nonlinear data model, especially during the daily peak hours, the traffic flow data presents a cycle Sexual (seasonal) trends. In recent years, support vector regression (SVR) has been widely used to solve nonlinear regression and time series problems. This paper uses a combination of chaos theory and simulated annealing algorithm to optimize the kernel parameters of the correlation vector machine. However, for the time being, there is no recognized SVR model to deal with cyclical (seasonal) trend time series. This paper proposes a traffic flow prediction model, which combines seasonal support vector regression model and chaotic simulated annealing algorithm (SSVRCSA) to predict the traffic flow between cities. Under previous research, support vector regression using chaotic sequence and simulated annealing algorithm has shown its advantages, which can effectively avoid falling into local optimal. Experimental results show that the proposed SSVRCSA model can produce more accurate prediction results than other alternative methods. This research finally proposed a prediction model that blends the seasonal support vector regression model and the chaotic cloud simulated annealing algorithm (SSVRCCSA) to obtain more accurate prediction performance. The experimental results show that the proposed SSVRCCSA model is more accurate than other methods.
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