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Tool health monitoring using airborne acoustic emission and a PSO-optimized neural network

机译:使用空机声发射和PSO优化神经网络的刀具健康监测

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Tool condition monitoring is in major focus nowadays in order to reduce production downtime due to breakdown maintenance, as timely detection of tool wear reduces the production cost. The paper provides an approach to monitor tool health for a CNC turning process using airborne acoustic emission and a PSO (Particle Swarm Optimization) optimized back-propagation neural network. Acoustic signals for good, average, and worn-out tools are recorded through a microphone. Back-propagation neural network are then trained and optimized using PSO algorithm to classify the tool health. PSO-optimized back-propagation neural network shows better performance for tool health classification as compared to simple back-propagation neural networks.
机译:刀具状况监测现在处于主要重点,以便由于击穿维护而降低生产停机时间,随着刀具磨损的及时检测降低了生产成本。本文提供了一种使用空机声发射和PSO(粒子群优化)优化的背传播神经网络来监测CNC转动过程的工具健康方法。用于良好,平均和磨损工具的声学信号通过麦克风记录。然后使用PSO算法培训并优化后传播神经网络以对刀具运行进行分类。与简单的背传播神经网络相比,PSO优化的背传播神经网络显示出更好的工具健康分类性能。

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