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Operationalization of a Machine Learning and Fuzzy Inference-Based Defect Prediction Case Study in a Holonic Manufacturing System

机译:整体制造系统中机器学习的操作和基于模糊推理的缺陷预测案例研究

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Industry 4.0 capabilities have enabled manufacturers to collect and analyze smart manufacturing data across a broad array of diverse domains including but not limited to scheduling, production, maintenance, process, and quality. This development necessarily proceeds in a logical sequence by which first the organization develops the capability to capture and store this data and, at best concurrently but frequently lagging, develops and refines the competencies to analyze and effectively utilize it. This research presents an applied case study in surface mount technology (SMT) manufacture of printed circuit board (PCB) assemblies. Parametric data captured at the solder paste inspection (SPI) station is analyzed with machine learning models to identify patterns and relationships that can be harnessed to preempt electrical defects at downline inspection stations. This project is enabled by the recent conclusion of an Industrial Internet of Things (IIoT) capability enhancement at the manufacturing facility from which the data is drawn and is the logical next step in achieving value from the newly-available smart manufacturing data. The operationalization of this analysis is contextualized within the product-resource-order-staff architecture (PROSA) of a Holonic Manufacturing Systems (HMS). A Trigger Holon is nested between the Resource Holarchy and Product Holarchy that, at scheduling, distributes implementation instructions for the defect-prediction model. The Defect Prediction Holon is containerized within the Product Holarchy and provides instructions for corrective action when the model flags a record as exhibiting increased probability of a downline electrical defect.
机译:工业4.0功能使制造商能够在广泛的不同领域中收集和分析智能制造数据,包括但不限于计划,生产,维护,过程和质量。这种发展必定是按照逻辑顺序进行的,首先,组织将开发捕获和存储此数据的能力,并且最好同时并发但经常滞后地发展和完善分析和有效利用它的能力。这项研究提出了在印刷电路板(PCB)组件的表面贴装技术(SMT)制造中的应用案例研究。使用机器学习模型对在焊膏检查(SPI)站捕获的参数数据进行分析,以识别可用于减少下线检查站的电气缺陷的模式和关系。该项目是基于最近得出的在制造工厂中增强工业物联网(IIoT)功能的结论而得出的,从中可以提取数据,这是从新获得的智能制造数据中获得价值的合理的下一步。该分析的操作在Holonic Manufacturing Systems(HMS)的产品资源订单职员架构(PROSA)中进行了背景说明。触发器Holon嵌套在资源层次结构和产品层次结构之间,该层次结构在调度时分发缺陷预测模型的实现指令。缺陷预测Holon装在产品层次结构中,并在模型将记录标记为展示出发生下线电气缺陷的可能性增加的记录时,提供纠正措施的说明。

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