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Design of multisensor fusion-based tool condition monitoring system in end milling

机译:基于多传感器融合的立铣刀状态监测系统设计

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摘要

Recent advancement in signal processing and information technology has resulted in the use of multiple sensors for the effective monitoring of tool conditions, which is the most crucial feedback information to the process controller. Interestingly, the abundance of data collected from multiple sensors allows us to employ various techniques such as feature extraction, selection, and classification methods for generating such crucial information. While the use of multiple sensors has improved the accuracy in the classification of tool conditions, design of tool condition monitoring system (TCM) for reduced complexity and increased robustness has been rarely studied. Therefore, this paper studies the design of effective multisensor-based TCM when machining 4340 steel by using a multilayer-coated and multiflute carbide end mill cutter. Multiple sensors tested in this paper include force, vibration, acoustic emission, and spindle power sensor for the time and frequency domain data. In addition, two feature selection methods and three classifiers with a machine ensemble technique are considered as design components. Importantly, different fusion methods are evaluated in this paper: (1) decision level fusion and (2) feature level fusion. The experimental results show that the design of TCM based on the feature level fusion can significantly improve the accuracy of the tool condition classification. It is also shown that the highest accuracy can be achieved by using force, vibration, and acoustic emission sensor together with correlation-based feature selection method and majority voting machine ensemble.
机译:信号处理和信息技术的最新发展已导致使用多个传感器来有效监视工具状态,这是对过程控制器最关键的反馈信息。有趣的是,从多个传感器收集的大量数据使我们能够采用各种技术(例如特征提取,选择和分类方法)来生成此类关键信息。虽然使用多个传感器提高了刀具状态分类的准确性,但很少研究用于降低复杂性和增强鲁棒性的刀具状态监视系统(TCM)的设计。因此,本文研究了使用多层涂层多刃硬质合金立铣刀加工4340钢时基于有效的基于多传感器的TCM的设计。本文测试的多个传感器包括用于时域和频域数据的力,振动,声发射和主轴功率传感器。另外,将两种特征选择方法和三种采用机器集成技术的分类器视为设计组件。重要的是,本文对不同的融合方法进行了评估:(1)决策级融合和(2)特征级融合。实验结果表明,基于特征层次融合的中医设计可以显着提高刀具状态分类的准确性。还表明,通过将力,振动和声发射传感器与基于相关的特征选择方法和多数表决器集成一起使用,可以实现最高的精度。

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