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基于进化神经网络的曲面磨削表面粗糙度预测
引用本文:张永宏,胡德金,张凯,徐俊杰.基于进化神经网络的曲面磨削表面粗糙度预测[J].上海交通大学学报,2005,39(3):373-376.
作者姓名:张永宏  胡德金  张凯  徐俊杰
作者单位:上海交通大学,机械与动力工程学院,上海,200030;上海交通大学,机械与动力工程学院,上海,200030;上海交通大学,机械与动力工程学院,上海,200030;上海交通大学,机械与动力工程学院,上海,200030
基金项目:上海市科委重点科技资助项目(021111125)
摘    要:将人工神经网络技术引入曲面磨削加工领域,介绍了利用BP算法建立的曲面磨削表面粗糙度随磨削用量变化的进化神经网络预测模型.针对BP算法存在收敛速度慢、容易陷入局部极小值及全局搜索能力弱等缺陷,采用遗传算法训练BP神经网络,取代了一些传统的学习算法,设计了基于进化神经网络的学习算法.实验和仿真结果表明,基于进化计算的BP神经网络不仅可以克服单纯使用BP网络易陷入局部极小等问题,而且预测精度较高。

关 键 词:进化神经网络  遗传算法  曲面磨削  表面粗糙度  预测
文章编号:1006-2467(2005)03-0373-04
修稿时间:2004年3月8日

Prediction of the Surface Roughness in Curve Grinding Based on Evolutionary Neural Networks
ZHANG Yong-hong,HU De-jin,ZHANG Kai,XU Jun-jie.Prediction of the Surface Roughness in Curve Grinding Based on Evolutionary Neural Networks[J].Journal of Shanghai Jiaotong University,2005,39(3):373-376.
Authors:ZHANG Yong-hong  HU De-jin  ZHANG Kai  XU Jun-jie
Abstract:Artificial neural networks were introduced in the area of curve grinding. The prediction model of surface roughness in curve grinding based on back propagation (BP) algorithm was proposed. There are some disadvantages in BP algorithm, such as low rate of convergence, easily falling into local minimum point and weak global search capability. In order to settle these problems, a genetic algorithm was used to train BP neural network to replace classical learning algorithms. An evolutionary neural network learning algorithm was founded. The results of simulations and experiments show that the evolutionary neural network based genetic algorithm can effectively overcome the problem of falling into local minimum point. This method can get higher accuracy of predictions.
Keywords:evolutionary neural network  genetic algorithm  curve grinding  surface roughness  prediction
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