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Dimensionality Reduction of Sensorial Features by Principal Component Analysis for ANN Machine Learning in Tool Condition Monitoring of CFRP Drilling

机译:基于主成分分析的CFRP钻具状态监测中基于主成分分析的传感特征降维

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With the aim to perform sensor monitoring of tool conditions in drilling of stacks made of two carbon fiber reinforced plastic (CFRP) laminates, a machine learning procedure based on the acquisition and processing of thrust force, torque, acoustic emission and vibration sensor signals during drilling is developed. From the acquired sensor signals, multiple sensorial features are extracted to feed artificial neural network-based machine learning paradigms, and an advanced feature extraction methodology based on Principal Component Analysis (PCA) is implemented to decrease the dimensionality of sensorial features via linear projection of the original features into a new space. By feeding artificial neural networks with the PCA features, the diagnosis of tool flank wear is accurately carried out.
机译:为了在由两个碳纤维增强塑料(CFRP)层压板制成的烟囱钻孔中执行工具状态的传感器监控,基于钻孔过程中推力,扭矩,声发射和振动传感器信号的采集和处理的机器学习程序被开发。从获取的传感器信号中,提取多个感觉特征以提供基于人工神经网络的机器学习范例,并基于主成分分析(PCA)实施了先进的特征提取方法,以通过线性投影降低感觉特征的维数。将原有功能带入新的空间。通过为PCA功能提供人工神经网络,可以准确地进行刀具侧面磨损的诊断。

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