基于混沌理论的短期交通流预测研究

Jin Wang, Q. Shi, Huapu Lu
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引用次数: 11

摘要

交通流量预测由于其在its部署的理论和实证方面的重要性,在当前文献中引起了很大的兴趣。过去已经提出了许多模型和方法。但它们大多将交通系统视为线性系统,并利用线性理论对交通流进行预测。实际上,交通系统是一个非线性系统,交通流数据具有混沌性。在本文中,我们尝试用混沌理论来预测短期内的交通流。通常所采集的数据中存在噪声,降低了预测精度。因此本文在预测前对数据进行了小波变换降噪处理。以上海延安高架桥上每隔5分钟采集一次的电感回路数据为实验对象。最后得出结论,基于相空间重构的技术可以用于短期内的交通流预测。预测结果准确可靠。
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The study of short-term traffic flow forecasting based on theory of chaos
Traffic flow forecasting has attracted much interest in current literature because of its importance in both the theoretical and empirical aspects of ITS deployment. Many models and methods have been presented in the past. But most of them regard the transportation system as the linear system and using the linear theory to predict the traffic flow. In fact, transportation system is a nonlinear system and traffic flow data exhibits chaotic properties. In this paper, we try to use the chaos theory to forecast the traffic flow in a short-term. Usually there is noise in the collected data which decrease the forecasting precision. So we denoise the data using wavelet transform before forecasting in this paper. The experiment is performed for inductance loop data collected in five minutes interval from the viaduct of Yan'an road in Shanghai in China. And at last our study concludes that techniques based on phase space reconstruction can be used to predict the traffic flow in a short-term. Furthermore, the prediction result is accurate and reliable.
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