Coating chambers create thin layers that improve the mechanical and optical surface properties in jewelry production using physical vapor deposition. In such a process, evaporated material condensates on the walls of such chambers and, over time, causes mechanical defects and unstable processes. As a result, manufacturers perform extensive maintenance procedures to reduce production loss. Current rule-based maintenance strategies neglect the impact of specific recipes and the actual condition of the vacuum chamber. Our overall goal is to predict the future condition of the coating chamber to allow cost and quality optimized maintenance of the equipment. This paper describes the derivation of a novel health indicator that serves as a step toward condition-based maintenance for coating chambers. We indirectly use gas emissions of the chamber's contamination to evaluate the machine's condition. Our approach relies on process data and does not require additional hardware installation. Further, we evaluated multiple machine learning algorithms for a condition-based forecast of the health indicator that also reflects production planning. Our results show that models based on decision trees are the most effective and outperform all three benchmarks, improving at least $0.22$ in the mean average error. Our work paves the way for cost and quality optimized maintenance of coating applications.
翻译:装饰室在利用物理蒸气沉降物进行珠宝生产的机械和光学表面特性的细层形成细层,用物理蒸汽沉降来改善珠宝生产的机械和光学表面特性。在这一过程中,蒸发材料凝固在这种容器的墙壁上,并随着时间的推移造成机械缺陷和不稳定过程。因此,制造商实施广泛的维护程序以减少生产损失。目前的基于规则的维护战略忽视了特定配方的影响和真空室的实际状况。我们的总体目标是预测涂层室的未来状况,以便能以最优化的方式对设备进行成本和质量的维护。本文描述了一种新的健康指标的衍生情况,该指标是朝着对涂层室进行基于条件的维护迈出的一步。我们间接利用室内污染气体排放来评估机器的状况。我们的方法依靠工艺数据,而不需要额外的硬件安装。此外,我们评估了多种机器学习算法,以基于条件的预测健康指标也反映了生产规划。我们的结果表明,基于决策树的模型是最有效、最优于所有三个基准,在平均错误中至少改进了0.22美元。我们的工作为成本和质量最佳维护大衣铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺铺。