基于改进图注意力网络的复杂制造系统产品质量建模

    Product Quality Modeling for Complex Manufacturing Systems Based on an Improved Graph Attention Network

    • 摘要: 针对复杂制造系统产品质量建模问题面临的多工序间非线性依赖、复杂结构关系、远距离误差传递以及生产过程工程知识不足等关键挑战,本文提出了一种基于改进的图注意力网络的建模方法——ICLF-GAT。首先,采用数据驱动的深度学习框架,可避免对先验物理知识的依赖;其次,基于图注意力网络(GAT)构建制造系统有向图模型,可有效捕捉工序间的复杂结构特征和非线性依赖关系;在此基础上,创新性地提出层间对比损失过滤机制,通过动态评估和筛选节点特征质量,可显著缓解深层GAT中的过平滑问题,大幅提升针对远距离节点间误差传递的建模能力;最后,通过设计目标注意力解码器,进一步增强对系统整体复杂依赖关系的建模精度。仿真实验和实际工业案例的分析结果表明,ICLF-GAT的均方根误差(RMSE)较现有基准方法有显著降低,特别是在远距离误差传递建模方面具有突出优势。

       

      Abstract: To tackle the key challenges in product quality modeling for complex manufacturing systems—such as nonlinear dependencies across multiple processes, intricate structural relationships, long-range error propagation, and the absence of engineering knowledge on the production process—this paper proposes an improved graph attention network modeling method called ICLF-GAT (Inter-layer Contrastive Loss Filtering Graph Attention Network). The method systematically addresses these issues: it adopts a data-driven deep learning framework that eliminates dependence on prior physical knowledge; constructs a directed graph model of the manufacturing system based on Graph Attention Networks (GAT) to effectively capture complex structural features and nonlinear dependencies between processes; introduces an inter-layer contrastive loss filtering mechanism that dynamically evaluates and filters the quality of node features to significantly mitigate the over-smoothing problem in deep GATs and enhance long-range error propagation modeling; and designs a target attention decoder to further improve the accuracy in modeling complex system-wide dependencies. The results in the simulation experiments and a real-world industrial case show that ICLF-GAT significantly reduces Root Mean Squared Error (RMSE) compared to existing benchmark methods, particularly excelling in long-range error propagation tasks.

       

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