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首页> 外文期刊>Transactions of the Canadian Society for Mechanical Engineering >Influence of surface roughness in turning process - an analysis using artificial neural network
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Influence of surface roughness in turning process - an analysis using artificial neural network

机译:表面粗糙度在转弯过程中的影响 - 使用人工神经网络的分析

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摘要

This paper presents methodology to identify the surface roughness value in CNC machining process using a soft computing approach. The aim of this paper is to achieve a roughness accuracy value above 95% and reduce the error rate to below 5% by using an artificial neural network. An artificial neural network method was selected to improve the time of inspection. Fourier transformation method will be used to extract the turning workpiece image, which is the squared value of the major frequency and principal component magnitude. Primary machining parameters such as feed rate, depth of cut, speed, frequency range, gray scale value, and conventional measurement value feed are used as the training input in the artificial neural network. Based on the training sample, the artificial neural network generates the vision measurement value for the testing samples that is compared to the stylus probe measurement value to predict the error rate and accuracy. The novelty of this work is to create an effective methodology using artificial neural network techniques to detect surface roughness errors of materials used in manufacturing industries.
机译:本文介绍了使用软计算方法识别CNC加工过程中的表面粗糙度值的方法。本文的目的是通过使用人工神经网络实现高于95%以上的粗糙度精度值95%,并将误差率降低到5%以下。选择人工神经网络方法以改善检查时间。傅里叶变换方法将用于提取转动工件图像,这是主要频率和主要成分幅度的平方值。主要加工参数,如进料速率,切割深度,速度,频率范围,灰度值和传统的测量值进料用作人工神经网络中的训练输入。基于训练样本,人工神经网络产生测试样本的视觉测量值,该测量值与触控笔探针测量值相比以预测误差率和准确性。这项工作的新颖性是利用人工神经网络技术创建有效方法,以检测制造业中使用的材料的表面粗糙度误差。

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