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汽车半主动悬架的神经网络控制
引用本文:邱浩,熊智.汽车半主动悬架的神经网络控制[J].应用科学学报,2008,26(1):85-88.
作者姓名:邱浩  熊智
作者单位:1.深圳职业技术学院 汽车与交通学院,广东 深圳 518055;;2.南京航空航天大学 导航研究中心,江苏 南京 210016
基金项目:广东省科技计划资助项目(No.2005810201014)
摘    要:针对目前标准BP神经网络的缺点,提出基于高阶导数的多记忆BP算法,将能量函数的 阶导数与最速下降方向相结合,构造出一个新的最速下降方向,从而提高了神经网络的学习速度。证明了该算法相对于传统梯度算法的快速性,然后给出了该算法的实现方法,并进行了算例仿真。为了证明其实效性,设计了汽车半主动悬架神经网络控制器。结果证明,该算法便捷、实用、有效。

关 键 词:神经网络  BP算法  高阶导数    悬架  
文章编号:0255-8297(2008)00-0085-04
收稿时间:2007-07-09
修稿时间:2007-11-14

Neural Network Control for Semi-active Suspension Automobile
QIU Hao,XIONG Zhi.Neural Network Control for Semi-active Suspension Automobile[J].Journal of Applied Sciences,2008,26(1):85-88.
Authors:QIU Hao  XIONG Zhi
Institution:1. School of Automotive and Transportation, Shenzhen Polytechnic College, Shenzhen 518055, China;2. Research Center of Navigation, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China
Abstract:Regarding drawbacks of the standard BP algorithm algorithm is proposed. It combines the n-th order of energy , a high-order derivative based multiple memory BP function with the direction of the fastest decline to construct a new direction of the fastest decline, and improve the learning speed of the neural network. The new algorithm is compared with the traditional gradient algorithm to show its high computation speed. Implementation of the new algorithm is given. Finally a neural network controller is designed to optimize the performance of the automobile suspension. The result shows that the new algorithm is convenient and effective.
Keywords:neural network  BP algorithm  high order derivative  suspension
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