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Driver pre-accident behavior pattern recognition based on dynamic radial basis function neural network

机译:基于动态径向基函数神经网络的驾驶员事故前行为模式识别

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摘要

In this article, driver's pre-accident behavior mode is systematically studied by means of combining the use of regional mapping error function with conditions of the resource distribution network and utilizing dynamic radial primary function neural network and its training method for pattern recognition. As is proved in this study, this method can not only improve the velocity of network training, reduce network structure, but also improve the properties of network generalization and the precision rate of pattern recognition. Simulated result preferably coincides with the measured result, which improves the adoptive method and the established model in this study to be right.
机译:本文通过将区域映射误差函数的使用与资源分配网络的条件相结合,利用动态径向主函数神经网络及其模式识别训练方法,系统地研究了驾驶员的事故前行为模式。研究表明,该方法不仅可以提高网络训练的速度,减少网络结构,而且可以提高网络泛化的性能和模式识别的准确率。模拟结果最好与测量结果相吻合,这将改进本研究中的采用方法和建立的模型是正确的。

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