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一种基于变异传播效应表示与分析的知识增强图学习特征选择方法,用于以人为本的制造系统

A knowledge empowered graph learning feature selection method based on variation propagation effect representation and analysis for human-centric manufacturing systems

International Journal of Production Research · 2024
被引 3
ABS 3

中文导读

提出一种结合过程知识图谱的特征选择方法,通过表示制造变异传播过程并评估特征重要性,在四个指标上比前沿方法提升18%、16%、18%和33%,帮助人类控制制造系统质量。

Abstract

As the construction goals of manufacturing systems shift from Industry 4.0 to Industry 5.0, the development goals of manufacturing systems have also shifted from technology driven to human-centric. Feature Selection (FS) of manufacturing systems plays an important role in helping human control and upgrade manufacturing system quality. However, due to the propagation of variations in manufacturing systems, traditional FS methods cannot accurately select the key features that have an important disturbance to quality indicator. In this paper, a process knowledge-enabled FS method is proposed to obtain key features of quality indictor (QI) that would cause bias of prediction model accuracy. Firstly, a process representation learning algorithm embedded in the process knowledge graph is proposed, which represents the manufacturing variation propagation process during the manufacturing process. Secondly, a feature importance evaluation algorithm based on disturbance intensity judgment rules is proposed to evaluate the importance of process features. Finally, the top k important features are selected as key features based on feature importance ranking. Experimental results demonstrate the proposed method outperforms state-of-art and classic methods in four evaluated indicators. Moreover, the four indicators of MSE, MAE, RMSE, and R2 have respectively increased by 18%, 16%, 18%, and 33% with 7 features compared to the cutting-edge method.

制造系统特征选择知识图谱图学习质量指标