车削过程在线监测的神经网络方法

R. G. Khanchustambham, G.M. Zhang
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引用次数: 16

摘要

提出了一种基于传感器的智能决策系统在线监测框架。这样的监控系统对来自传感器的检测信号进行解释,提取相关信息,并决定适当的控制动作。重点介绍了如何应用神经网络进行信息处理,以及如何识别加工过程中的异常。实现了一个原型监控系统。为了检测信号,设计了一种力传感器,并将其用于实时车削操作。提出了一种基于前馈反向传播算法的神经网络监测仪。监视器通过检测到的切削力信号和测量的表面光洁度来训练。所开发的监视器具有优越的学习和噪声抑制能力,可以在高级陶瓷材料加工过程中监测切削力和表面光洁度的成功率很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural network approach to on-line monitoring of a turning process
A framework for sensor-based intelligent decision-making systems to perform online monitoring is proposed. Such a monitoring system interprets the detected signals from the sensors, extracts the relevant information, and decides on the appropriate control action. Emphasis is given to applying neural networks to perform information processing, and to recognizing the process abnormalities in machining operations. A prototype monitoring system is implemented. For signal detection, an instrumented force transducer is designed and used in a real-time turning operation. A neural network monitor, based on a feedforward backpropagation algorithm, is developed. The monitor is trained by the detected cutting force signal and measured surface finish. The superior learning and noise suppression abilities of the developed monitor enable high success rates for monitoring the cutting force and the quality of surface finish under the machining of advanced ceramic materials.<>
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