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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Data driven hybrid fuzzy model for short-term traffic flow prediction
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Data driven hybrid fuzzy model for short-term traffic flow prediction

机译:短期交通流量预测的数据驱动混合模糊模型

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摘要

Traffic flow prediction can not only improve the reasonability of the managers' decision-making and road planning effectively, but also provide helpful suggestions for travelers to avoid traffic congestion. In order to further improve the prediction accuracy of traffic flow, this study presents one data driven hybrid model for short-term traffic flow prediction. This hybrid model firstly extracts the periodicity pattern from the traffic flow data, then, constructs the functionally weighted single-input-rule-modules connected fuzzy inference system (FWSIRM-FIS) for the residual data after removing the periodicity pattern from the original data, and finally, generates the final prediction results through integrating the periodicity pattern and the output from the FWSIRM-FIS model. The partial autocorrelation function (PACF) method is adopted to determine the optimal inputs for the data driven FWSIRM-FIS model, and the iterative least square method is utilized to train the parameters of the FWSIRM-FIS. Furthermore, three detailed experiments on traffic flow prediction are made, and comprehensive comparisons with three popular artificial intelligence methods are done to verify the effectiveness and advantages of the proposed hybrid model. According to five comparison indices, the proposed hybrid model can achieve the best prediction performance, although with much less fuzzy rules. The error histograms also verify that the proposed hybrid model has the smallest prediction errors comparing to the three comparative methods. The hybrid approach proposed in this study can also be extended to some other applications which have periodicity patterns, e.g. the traveling time estimate and the electricity load forecasting.
机译:交通流量预测不仅可以有效提高管理人员决策和道路规划的合理性,而且还为旅行者提供有用的建议,以避免交通拥堵。为了进一步提高交通流量的预测准确性,本研究提出了一种用于短期交通流量预测的一个数据驱动的混合模型。该混合模型首先从业务流数据中提取周期性模式,然后,在从原始数据中删除周期性模式之后,将功能加权的单输入规则模块连接的模糊推理系统(FWSIRM-FIS)构造了用于残差数据,最后,通过集成周期性模式和来自FWSIGM-FIS模型的输出来生成最终预测结果。采用部分自相关函数(PACF)方法来确定数据驱动的FWSIRM-FIS模型的最佳输入,并且利用迭代最小二乘法来训练FWSIGM-FIS的参数。此外,制定了三个关于交通流量预测的详细实验,并进行了三种流行人工智能方法的全面比较来验证所提出的混合模型的有效性和优点。根据五个比较指数,所提出的混合模型可以实现最佳预测性能,尽管具有更少的模糊规则。误差直方图还验证所提出的混合模型具有与三种比较方法相比的最小预测误差。本研究中提出的混合方法也可以扩展到具有周期性模式的其他一些应用,例如,旅行时间估计和电力负荷预测。

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