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Performance evaluation of feedforward neural networks for modeling a vehicle to pole central collision

机译:用于将车辆建模到极中心碰撞的前馈神经网络的性能评估

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Artificial Neural Networks (ANNs) have strong potential in modeling nonlinear systems. This paper presents application of a feedforward neural network which utilizes back-propagation learning algorithm, in the area of modeling a vehicle to pole central collision. Kinematics of a typical mid-size vehicle impacting a rigid pole is reproduced by the means of neural networks approach. Firstly, a network is trained with the appropriate data set (acceleration, velocity, and displacement) and subsequently it is tested and simulated. We also provide a comparison concerning the efficiency and performance of each ANN created in this research. It is judged which of them generates the most satisfactory output in the shortest time.
机译:人工神经网络(ANNS)在建模非线性系统中具有很强的潜力。本文介绍了利用反向传播学习算法的前馈神经网络的应用,该算法在建模车辆到极中心碰撞的区域中。通过神经网络方法的方法再现典型中型车辆的典型中型车辆的运动学。首先,通过适当的数据集(加速度,速度和位移)培训网络,随后进行测试和模拟。我们还提供了关于本研究创建的每个ANN的效率和性能的比较。判断出哪些在最短的时间内产生最令人满意的输出。

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