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Feature extraction and selection from acoustic emission signals with an application in grinding wheel condition monitoring

机译:从声发射信号中提取和选择特征,并将其应用于砂轮状态监测

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Feature extraction and feature selection are two important issues in sensor-based condition monitoring of any engineering systems. In this study, acoustic emission signals were first collected during grinding operations, next processed by autoregressive modeling or discrete wavelet decomposition for feature extraction, and then the best feature subsets are found by three different feature selection methods, including two proposed ant colony optimization (ACO)-based method and the famous sequential forward floating selection method. Posing monitoring as a classification problem, the evaluation is carried out by the wrapper approach with four different algorithms serving as the classifier. Empirical test results were shown to illustrate the effectiveness of feature extraction and feature selection methods.
机译:特征提取和特征选择是任何工程系统基于传感器的状态监视中的两个重要问题。在这项研究中,首先在研磨操作期间收集声发射信号,然后通过自回归建模或离散小波分解进行处理以进行特征提取,然后通过三种不同的特征选择方法(包括两种拟议的蚁群优化(ACO))找到最佳特征子集)方法和著名的顺序前向浮动选择方法。将监视作为分类问题,通过包装方法使用四种不同的算法作为分类器进行评估。实验结果表明了特征提取和特征选择方法的有效性。

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