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Short-Term Traffic Flow Forecasting Method Based on LSSVM Model Optimized by GA-PSO Hybrid Algorithm

机译:GA-PSO混合算法优化的基于LSSVM模型的短期交通流量预测方法

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Short-term traffic flow forecasting is one of the key issues in the field of dynamic traffic control and management. Because of the uncertainty and nonlinearity, short-term traffic flow forecasting remains a challenging task. In order to improve the accuracy of short-term traffic flow forecasting, a short-term traffic flow forecasting method based on LSSVM model optimized by GA-PSO hybrid algorithm is put forward. Firstly, the LSSVM model is constructed with combined kernel function. Then the GA-PSO hybrid optimization algorithm is designed to optimize the kernel function parameters efficiently and effectively. Finally, case validation is carried out using inductive loop data collected from the north-south viaduct in Shanghai. The experimental results demonstrate that the proposed GA-PSO-LSSVM model is superior to comparative method.
机译:短期交通流量预测是动态交通控制和管理领域的关键问题之一。由于不确定性和非线性,短期交通流量预测仍然是一项艰巨的任务。为了提高短期交通流量预测的准确性,提出了一种基于GAS-PSO混合算法优化的LSSVM模型的短期交通流量预测方法。首先,结合核函数构造LSSVM模型。然后设计GA-PSO混合优化算法,以高效,高效地优化内核功能参数。最后,使用从上海南北高架桥收集的感应回路数据进行案例验证。实验结果表明,所提出的GA-PSO-LSSVM模型优于比较方法。

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