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CNC internal data based incremental cost-sensitive support vector machine method for tool breakage monitoring in end milling

机译:基于CNC内部数据的增量成本敏感支持向量机方法,用于立铣刀中的刀具破损监测

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摘要

A tool breakage monitoring (TBM) system needs to detect tool breakage promptly in an unattended automation workshop. Traditional TBM systems that employ external sensors to acquire diagnostic signals such as spindle power for making judgments are inconvenient since extra sensors should be installed. Moreover, the signals from the external sensors are independent of the computer numerical control (CNC) system, and it is difficult to label them with the corresponding machining task information so that the target data can be segmented automatically. This paper proposes an incremental cost-sensitive support vector machine (ICSSVM) tool breakage monitoring method based on CNC internal data, which is inherently machining-task labeled and can be accessed directly from the CNC system without extra sensors. To satisfy the dataset’s integrity at the initial stage of model training, a simulation method that is based on the actual tool breakage characteristics is applied to generate simulated tool breakage data. The ICSSVM method combines cost-sensitive SVM (CSSVM) and modified incremental SVM (ISVM) to solve the imbalanced classification problem, which increases the misclassification probability of the minority class, train the model incrementally from the absence of samples, and guarantee high algorithm efficiency as the size of the dataset increases. It is proved that the ICSSVM algorithm has better algorithmic efficiency compared to the batch cost-sensitive SVM (BCSSVM). It is also proved that the ICSSVM algorithm has better imbalanced classification performance than batch SVM (BSVM), as assessed by the receiver operator characteristic (ROC) curves. The industrial practicability of the proposed method is verified by actual machining with a CNC system integrated with the TBM module.
机译:刀具破损监控(TBM)系统需要在无人值守的自动化车间中迅速检测刀具破损。传统的TBM系统采用外部传感器来获取诊断信号(例如主轴功率)来做出判断是不方便的,因为应该安装额外的传感器。此外,来自外部传感器的信号独立于计算机数控(CNC)系统,并且很难用相应的加工任务信息对其进行标记,从而可以自动分割目标数据。本文提出了一种基于CNC内部数据的增量成本敏感型支持向量机(ICSSVM)刀具破损监测方法,该方法固有地带有加工任务标签,可以直接从CNC系统访问,而无需额外的传感器。为了在模型训练的初始阶段满足数据集的完整性,将基于实际刀具破损特性的模拟方法应用于生成模拟刀具破损数据。 ICSSVM方法结合了成本敏感的SVM(CSSVM)和改进的增量SVM(ISVM)来解决不平衡分类问题,这增加了少数类的错误分类概率,从没有样本的情况下逐步训练模型,并确保了高算法效率随着数据集大小的增加。事实证明,与批量成本敏感型支持向量机(BCSSVM)相比,ICSSVM算法具有更好的算法效率。还证明了ICSSVM算法比批处理SVM(BSVM)具有更好的不平衡分类性能,这是通过接收方操作员特征(ROC)曲线评估得出的。通过与TBM模块集成的CNC系统进行实际加工,验证了该方法的工业实用性。

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