基于物理信息高斯过程回归的刀具磨损监测

IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Journal of Manufacturing Systems Pub Date : 2024-09-10 DOI:10.1016/j.jmsy.2024.09.001
Mingjian Sun , Xianding Wang , Kai Guo , Xiaoming Huang , Jie Sun , Duo Li , Tao Huang
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引用次数: 0

摘要

刀具磨损监测(TWM)在保障产品质量和提高加工效率方面发挥着至关重要的作用。刀具磨损监测技术主要包括基于物理的模型和数据驱动方法。然而,在简化或理想化条件下建立的物理模型难以捕捉加工过程的复杂性。此外,数据驱动方法的预测效果在很大程度上取决于标注数据的数量。为了解决这些问题,我们提出了一种混合驱动的物理信息高斯过程回归模型(PIGPR)。首先,提出了一种基于特征适配性分析和高斯加权移动平均滤波的健康指标构建策略,以消除测量信号中的干扰和冗余,提高监测效率。其次,建立了一个新颖的刀具磨损显式物理模型,其确定系数至少为 0.98。在此基础上,采用健康指标和提出的先验物理模型来约束高斯过程回归(GPR)的均值函数,将数据挖掘与物理模型相结合,为混合模型的关键物理领域知识提供预测指导。第三,采用网格搜索算法优化模型参数,自适应识别刀具磨损条件,并给出 95 % 的预测置信区间,以提供更高的可靠性。最后,九组不同切削设置的实验证实了 PIGPR 模型的可靠性。研究结果表明,建议的混合方法显著提高了刀具磨损的预测精度,达到了 0.997 的准确度。与完全由数据驱动的 GPR 模型相比,95 % 置信区间的宽度和方差分别减少了 46.44 % 和 60.80 %,这表明结合先验物理知识可显著提高预测的平稳性和可靠性。
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Tool wear monitoring based on physics-informed Gaussian process regression

Tool Wear Monitoring (TWM) plays a vital role in safeguarding product quality and enhancing machining efficiency. TWM technology mainly includes physics-based models and data-driven methods. However, physical models established under simplified or idealized conditions struggle to capture the complexity of machining processes. Moreover, the predictive efficacy of data-driven methods is heavily contingent upon the quantity of labeled data available. Addressing these issues, a hybrid-driven physics-informed Gaussian process regression model (PIGPR) is proposed. First, a health indicator construction strategy based on feature fitness analysis and Gaussian weighted moving average filtering is proposed to eliminate interference and redundancy in the measurement signal and improve monitoring efficiency. Second, a novel explicit physical model of tool wear was developed, with a determination coefficient of at least 0.98. On this basis, health indicator and proposed priori physical models are employed to constrain the mean function of the Gaussian process regression (GPR), combining data mining and physical models to provide prediction guidance for key physical domain knowledge for the hybrid model. Third, grid search algorithm is used to optimize the model parameters, adaptively identify tool wear conditions, and 95 % prediction confidence interval is given to provide more reliability. Finally, nine sets of experiments with varying cutting settings confirmed the PIGPR model's dependability. The findings demonstrate that the suggested hybrid approach significantly enhances the prediction precision of tool wear, achieving an accuracy of 0.997. Compared to the solely data-driven GPR model, the width and variance of the 95 % confidence interval decreased by 46.44 % and 60.80 %, respectively, which demonstrates that incorporating prior physical knowledge significantly enhances the smoothness and reliability of predictions.

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来源期刊
Journal of Manufacturing Systems
Journal of Manufacturing Systems 工程技术-工程:工业
CiteScore
23.30
自引率
13.20%
发文量
216
审稿时长
25 days
期刊介绍: The Journal of Manufacturing Systems is dedicated to showcasing cutting-edge fundamental and applied research in manufacturing at the systems level. Encompassing products, equipment, people, information, control, and support functions, manufacturing systems play a pivotal role in the economical and competitive development, production, delivery, and total lifecycle of products, meeting market and societal needs. With a commitment to publishing archival scholarly literature, the journal strives to advance the state of the art in manufacturing systems and foster innovation in crafting efficient, robust, and sustainable manufacturing systems. The focus extends from equipment-level considerations to the broader scope of the extended enterprise. The Journal welcomes research addressing challenges across various scales, including nano, micro, and macro-scale manufacturing, and spanning diverse sectors such as aerospace, automotive, energy, and medical device manufacturing.
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