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Tool wear predictive model based on least squares support vector machines

机译:基于最小二乘支持向量机的刀具磨损预测模型

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The development of tool wear monitoring system for machining processes has been well recognised in industry due to the ever-increased demand for product quality and productivity improvement. This paper presents a new tool wear predictive model by combination of least squares support vector machines (LS-SVM) and principal component analysis (PCA) technique. The corresponding tool wear monitoring system is developed based on the platform of PXI and LabVIEW. PCA is firstly proposed to extract features from multiple sensory signals acquired from machining processes. Then, LS-SVM-based tool wear prediction model is constructed by learning correlation between extracted features and actual tool wear. The effectiveness of proposed predictive model and corresponding tool wear monitoring system is demonstrated by experimental results from broaching trials.
机译:由于对产品质量和生产率提高的需求不断增长,用于加工过程的刀具磨损监控系统的开发已在业界获得广泛认可。本文结合最小二乘支持向量机(LS-SVM)和主成分分析(PCA)技术提出了一种新的刀具磨损预测模型。基于PXI和LabVIEW的平台开发了相应的刀具磨损监测系统。首先提出PCA来从加工过程中获取的多个传感信号中提取特征。然后,通过学习提取的特征与实际刀具磨损之间的相关性,构建基于LS-SVM的刀具磨损预测模型。拉削试验的实验结果证明了所提出的预测模型和相应的刀具磨损监测系统的有效性。

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