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An Intelligent Grinding Wheel Wear Monitoring System Based on Acoustic Emission

机译:基于声发射的智能磨轮磨损监控系统

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Acoustic emission (AE) signals can provide tool condition that is critical to effective process control. However, how to process the data and extract useful information are challenging tasks. This paper presented an intelligent grinding wheel wear monitoring system which was embedded in a surface grinding machine. An AE sensor was used to collect the grinding signals. The grinding wheel wear condition features were extracted by a proposed novel method based on statistics analysis of the average wavelet decomposition coefficient. The detailed signal characteristics during different wear condition are described. A BP neural network was used to classify the conditions of the grinding wheel wear. The inputs of the neural network were the three extracted features, and the outputs were three different states of grinding wheel condition, namely primary wear, intermediate wear and serious wear. The intelligent monitoring system was evaluated through grinding experiments. The results indicate that the effectiveness of the proposed method for extracting features of AE signals and developed intelligent grinding wheel wear monitoring system are satisfied.
机译:声发射(AE)信号可以提供对有效过程控制至关重要的工具条件。但是,如何处理数据并提取有用信息是具有挑战性的任务。本文提出了一种智能磨轮磨损监控系统,嵌入在表面磨床中。使用AE传感器来收集研磨信号。基于平均小波分解系数的统计分析,通过提出的新方法提取研磨轮磨损条件特征。描述了不同磨损条件的详细信号特性。 BP神经网络用于分类砂轮磨损的条件。神经网络的输入是三个提取的特征,输出是砂轮条件的三种不同状态,即初级磨损,中间磨损和严重磨损。通过研磨实验评估智能监控系统。结果表明,满足了提取AE信号特征和开发智能磨轮磨损监测系统的提取方法的有效性。

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