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Chatter Prediction in End Milling by FNN Model with Pruning

机译:基于FNN模型的端铣颤振预测。

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摘要

This paper is concerned with a study of chatter prediction in high-speed end milling operations. Chatter vibration occurring in mechanical machining gives rise to poor surface finish and dimensional inaccuracy in machined parts, reduction of tool life, and even damages machine tools. Various studies of its prediction and avoidance have been carried out over the last several decades. The purpose of this study is to develop an expert system for predicting chatter vibrations in high-speed end milling using wavelet transform and fuzzy neural network models with pruning. The FNN model employed here uses a pruning process which reduces a neural network to its most effective size. The amount of learning for convergence of a pruned network is reduced in comparison with an initial network. The proposed method is applied to a jig grinding machine, and the results demonstrate the effectiveness of the chatter prediction procedure.
机译:本文涉及对高速立铣操作中的颤动预测的研究。机械加工中发生的颤振会导致较差的表面光洁度和加工零件的尺寸误差,缩短刀具寿命,甚至损坏机床。在过去的几十年中,已经对其预测和避免进行了各种研究。这项研究的目的是开发一种专家系统,该系统使用小波变换和带有修剪功能的模糊神经网络模型来预测高速立铣中的颤动振动。这里采用的FNN模型使用修剪过程,将神经网络缩小到最有效的大小。与初始网络相比,减少了用于修剪网络收敛的学习量。将该方法应用于夹具磨床,结果证明了颤振预测程序的有效性。

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