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首页> 外文期刊>Journal of Intelligent Manufacturing >An approach to monitoring quality in manufacturing using supervised machine learning on product state data
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An approach to monitoring quality in manufacturing using supervised machine learning on product state data

机译:一种基于产品状态数据的监督机器学习来监控制造质量的方法

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摘要

Increasing market demand towards higher product and process quality and efficiency forces companies to think of new and innovative ways to optimize their production. In the area of high-tech manufacturing products, even slight variations of the product state during production can lead to costly and time-consuming rework or even scrapage. Describing an individual product's state along the entire manufacturing programme, including all relevant information involved for utilization, e.g., in-process adjustments of process parameters, can be one way to meet the quality requirements and stay competitive. Ideally, the gathered information can be directly analyzed and in case of an identified critical trend or event, adequate action, such as an alarm, can be triggered. Traditional methods based on modelling of cause-effect relations reaches its limits due to the fast increasing complexity and high-dimensionality of modern manufacturing programmes. There is a need for new approaches that are able to cope with this complexity and high-dimensionality which, at the same time, are able to generate applicable results with reasonable effort. Within this paper, the possibility to generate such a system by applying a combination of Cluster Analysis and Supervised Machine Learning on product state data along the manufacturing programme will be presented. After elaborating on the different key aspects of the approach, the applicability on the identified problem in industrial environment will be discussed briefly.
机译:市场对更高的产品和工艺质量以及效率的需求不断增加,迫使公司不得不考虑采用新颖的创新方式来优化其生产。在高科技制造产品领域,即使在生产过程中产品状态发生微小变化,也可能导致昂贵且费时的返工甚至报废。描述整个生产计划中单个产品的状态,包括使用中涉及的所有相关信息,例如过程参数的过程中调整,可能是满足质量要求并保持竞争力的一种方法。理想情况下,可以直接分析所收集的信息,并且在识别出关键趋势或事件的情况下,可以触发适当的措施,例如警报。由于现代制造程序的迅速增加的复杂性和高维性,基于因果关系建模的传统方法达到了极限。需要能够应对这种复杂性和高维度性的新方法,同时又能够以合理的努力产生适用的结果。在本文中,将介绍通过在制造程序中对产品状态数据应用聚类分析和监督机器学习相结合来生成此类系统的可能性。在阐述了该方法的不同关键方面之后,将简要讨论该方法在工业环境中的适用性。

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