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A method for tool condition monitoring based on sensor fusion

机译:基于传感器融合的刀具状态监测方法

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摘要

This paper presents a multi-sensor information fusion method for tool condition monitoring (TCM) using acoustic emission and cutting sound as monitoring signals. In order to make the cutting state in experiments closer to that in actual production, the traditional data acquisition method was improved. Using time-frequency analysis methods and multi-fractal theories, each kind of signal was filtered and their features were extracted according to characteristics respectively. The decision level fusion method was used for realizing information fusion by the model of support vector machines (SVMs) ensemble. Its base layer composes of two models of SVMs for regression (SVRs). Before training, the two SVRs were optimized by multiple population genetic algorithm including input features selection and model parameters optimization. Its decision layer is a model of SVM for classification or SVR, which is used for the combined decision according to the sub-decisions of SVRs in the base layer. The test results of SVMs ensemble show that the method can be used effectively for classification of tool wear condition and prediction of tool wear quantity. It can make information of the two sensors complement each other and is better than methods using a single sensor for TCM.
机译:本文提出了一种基于声发射和切削声作为监测信号的刀具状态监测(TCM)多传感器信息融合方法。为了使实验中的切削状态更接近实际生产中的切削状态,对传统的数据采集方法进行了改进。利用时频分析方法和多重分形理论,对每种信号进行滤波,并根据特征分别提取特征。决策级融合方法通过支持向量机(SVM)集成模型实现信息融合。它的基础层由两个SVM回归模型(SVR)组成。在训练之前,通过多种群遗传算法对两个SVR进行了优化,包括输入特征选择和模型参数优化。它的决策层是用于分类的SVM模型或SVR,根据基础层中SVR的子决策用于组合决策。支持向量机的综合测试结果表明,该方法可有效地用于工具磨损状况的分类和工具磨损量的预测。它可以使两个传感器的信息相互补充,并且优于使用单个传感器进行中医的方法。

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