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Machine ensemble approach for simultaneous detection of transient and gradual abnormalities in end milling using multisensor fusion

机译:使用多传感器融合同时检测立铣中的瞬态和渐变异常的机器集成方法

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In a fully automated manufacturing environment, instant detection of the cutting tool condition is essential for the improved productivity and cost effectiveness. This paper studies a tool condition monitoring system (TCM) via machine learning (ML) and machine ensemble (ME) approach to investigate the effectiveness of multisensor fusion technique when machining 4340 steel with multilayer coated and multiflute carbide end mill cutter. In this study, 135 different features are extracted from multiple sensor signals of force, vibration, acoustic emission and spindle power in the time and frequency domain by using data acquisition and signal processing module. Then, a correlation-based feature selection technique (CFS) evaluates the significance of these features along with machining parameters collected from machining experiments. Next, an optimal feature subset is computed for various assorted combinations of sensors. Finally, machine ensemble methods based on majority voting and stacked generalization are studied for the selected features to classify not only flank wear but also breakage and chipping. It has been found in this paper that the stacked generalization ensemble can ensure the highest accuracy in tool condition monitoring. In addition, it has been shown that the support vector machine (SVM) outperforms other ML algorithms in most cases tested.
机译:在全自动生产环境中,即时检测切削刀具状况对于提高生产率和成本效益至关重要。本文通过机器学习(ML)和机器集成(ME)方法研究了一种刀具状态监测系统(TCM),以研究多传感器融合技术在用多层涂层和多刃硬质合金立铣刀加工4340钢时的有效性。在这项研究中,通过使用数据采集和信号处理模块,从时域和频域的力,振动,声发射和主轴功率的多个传感器信号中提取了135个不同的特征。然后,基于相关的特征选择技术(CFS)评估这些特征的重要性以及从加工实验中收集的加工参数。接下来,针对传感器的各种组合计算最佳特征子集。最后,针对所选特征,研究了基于多数投票和堆叠泛化的机器集成方法,不仅对后刀面磨损进行分类,而且对断裂和碎裂进行分类。在本文中发现,堆叠泛化集成可以确保工具状态监视中的最高准确性。此外,已经证明,在大多数测试情况下,支持向量机(SVM)的性能均优于其他ML算法。

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