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Traffic flow time series prediction based on statistics learning theory

机译:基于统计学习理论的交通流时间序列预测

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摘要

For intelligent transportation systems, a new traffic flow time series prognostication is proposed in this paper. Compared with classical methods, support vector machine has a good generalize ability for limited training samples, which has a characteristic of rapid convergence and avoiding the local minimum. At the end of this paper, the simulation experiment for the traffic flow of one practice crossing proves the validity and efficiency and high application value in traffic flow prediction.
机译:对于智能交通系统,本文提出了一种新的交通流时间序列预后。与古典方法相比,支持向量机具有良好的概括有限训练样本的能力,这具有快速收敛的特征,避免局部最小值。在本文末尾,一个练习交叉路交通流量的仿真实验证明了交通流量预测中的有效性和效率和高应用价值。

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