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Fault Diagnosis of Single Point Cutting Tool through Vibration Signal using Decision Tree Algorithm

机译:使用决策树算法振动信号通过振动信号诊断单点切割工具

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Tool condition monitoring in machining plays a crucial role in modem manufacturing systems, finding tool wear state in early with the help of monitoring system will reduce downtime and excessive power drawing while machining. It increases machining quality as well as surface finish of machined components, reduces wear and tear of the machine and its components and hence increases machining efficiency. Vibration analysis of mechanical systems can be used to identify the tool condition to distinguish good and worn tool. This paper uses the vibration signals acquired using the accelerometer in a lathe with fresh and simulated worn tool for the fault diagnosis using machine learning techniques for online tool condition monitoring. Statistical features are obtained from vibration signal. Significant features were chosen from J48 algorithm, which is used as a classifier too. The significant features were given as input for the classifier and the accuracies of classification were examined. Results of (J48) algorithm were used to classify the condition of tool, also found its accuracy as of 89.38%.
机译:机械加工的工具状态监测在调制解调器制造系统中起着至关重要的作用,在提前寻找工具磨损状态,在监控系统的帮助下将减少加工时的停机时间和过度电源。它增加加工质量以及机加工组件的表面光洁度,减少了机器及其组件的磨损,从而提高了加工效率。机械系统的振动分析可用于识别刀具条件以区分良好和磨损的工具。本文使用使用机器学习技术使用车床内使用加速度计的振动信号在车床中使用的用于故障诊断,用于使用机器学习技术进行在线工具状态监控。从振动信号获得统计特征。从J48算法中选择了显着的特征,该算法也用作分类器。作为分类器的输入给出了显着的特征,检查了分类的准确性。 (J48)算法的结果用于对工具的状况进行分类,还发现其精度为89.38%。

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