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基于人工智能算法的最优加工表面粗糙度预测研究
引用本文:刘思志,安立宝,陈佳.基于人工智能算法的最优加工表面粗糙度预测研究[J].机床与液压,2017,45(19):69-73.
作者姓名:刘思志  安立宝  陈佳
作者单位:华北理工大学机械工程学院,河北唐山,063009
基金项目:河北省引进海外高层次人才 "百人计划" 资助项目
摘    要:以切削速度、进给量、切削深度、刀尖圆弧半径为设计变量,采用正交试验法进行了立方氮化硼(CBN)刀具干式车削冷作模具钢Cr12MoV的试验研究。利用神经网络的非线性拟合能力和遗传算法的全局寻优能力,建立了加工表面粗糙度预测模型并获得了使表面粗糙度达到最优的切削用量与刀尖圆弧半径组合。利用遗传算法获得的最优表面粗糙度值比田口方法和切削试验所获得的最佳表面粗糙度值分别降低了7.1%和17.2%。文中所采用的方法也为切削加工中刀具磨损、切削力和残余应力等问题的建模与参数优化提供理论参考。

关 键 词:表面粗糙度  田口方法  人工智能  神经网络  遗传算法  预测  参数优化

Prediction Investigate of Optimal Machining Surface Roughness Based on Artificial Intelligence Algorithms
LIU Sizhi,AN Libao,CHEN Jia.Prediction Investigate of Optimal Machining Surface Roughness Based on Artificial Intelligence Algorithms[J].Machine Tool & Hydraulics,2017,45(19):69-73.
Authors:LIU Sizhi  AN Libao  CHEN Jia
Abstract:Dry turning of Cr12MoV cold work die steel with cubic boron nitride (CBN) cutting tools is experimentally investigated using Taguchi orthogonal experiment method , in which the cutting speed , feed rate, depth of cut, and tool nose radius were considered as design variables .By making use of the nonlinear fitting ability of neural networks , coupled with the global searching ability of genetic algorithms, a model for predicting the machining surface roughness was established and an optimal combination of cutting parameters and tool nose radius giving the optimal surface roughness was found .The value of the optimal surface roughness obtained by genetic al-gorithms was reduced by 7.1%and 17.2%, respectively , as compared to the values of the optimal surface roughness obtained from the Taguchi method and turning experiments .The method used here provides theoretical reference for the modeling and parameter optimiza -tion of tool wear , cutting force and residual stress , and other problems in cutting process .
Keywords:Surface roughness  Taguchi method  Artificial intelligence  Neural network  Genetic algorithms  Prediction  Param-eter optimization
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