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A condition monitoring approach for machining process based on control chart pattern recognition with dynamically-sized observation windows

机译:基于控制图模式识别和动态观察窗的加工过程状态监测方法

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摘要

In the manufacturing of metallic parts, the machining process is a critical factor for ensuring product quality. Machining condition monitoring is essential for the intelligent process. Existing machining condition monitoring approaches usually detect abnormal conditions for a fixed machining procedure, which is unrealistic and impractical for real practical applications. In this paper, a novel generalized machining condition monitoring approach based on control chart pattern recognition (CCPR) with dynamically-sized observation windows for online data is proposed. More precisely, two critical issues are addressed. First, the development of a CCPR model that handles patterns with stochastic sample size. Second, a procedure for selecting the window size for detecting abnormal machining conditions. An information fusion framework is implemented to assist the machining conditions monitoring by combining data from multiple sensors and multiple sized observation windows. Experiments are conducted to validate the feasibility of the proposed approach for two machining processes with the different cutting parameters. The results demonstrate the applicability of the proposed approach for conducting condition monitoring for machining process under different machining environments as needed in practice.
机译:在金属零件的制造中,机加工工艺是确保产品质量的关键因素。加工状态监控对于智能过程至关重要。现有的加工状态监视方法通常针对固定的加工程序检测异常状态,这对于实际的实际应用是不现实且不切实际的。本文提出了一种基于控制图模式识别(CCPR)的动态加工状态监测方法,该方法具有动态尺寸的在线数据观察窗。更准确地说,解决了两个关键问题。首先,开发一种CCPR模型,该模型可处理具有随机样本大小的模式。其次,选择用于检测异常加工条件的窗口尺寸的过程。通过组合来自多个传感器和多个尺寸观察窗的数据,实现了信息融合框架来辅助监控加工条件。进行实验以验证所提出的方法在具有不同切削参数的两种加工过程中的可行性。结果证明了所提出的方法在实践中根据需要在不同的加工环境下进行加工过程状态监测的适用性。

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