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A Data-Driven Holistic Approach to Fault Prognostics in a Cyclic Manufacturing Process

机译:一种循环制造过程中故障预测的数据驱动的整体方法

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The complexity of manufacturing systems is increasing due to the increased requirements related to the variety and quality of the products, their complexity, and due to the general technological developments. In turn, the data related to the manufacturing processes is growing in size and in complexity. This presents new challenges for real-time monitoring, diagnostics, and prognostics of the processes. The challenges are addressed by new tools, methodologies, and concepts, collectively referred to as Big Data. The paper deals with the use of advanced methods for prognostics of infrequent faults on available but highly dimensional manufacturing process data. A holistic approach, which includes data generation, acquisition, storage, processing, and prognostics, is shown in a case of a plastic injection moulding process. Real industrial data acquired from five injection moulding machines and the Manufacturing Execution System within a period of six months is used. It is shown how the approach is able to tackle the high dimensionality and the large size of the data to create and evaluate prediction models for prognostics of the unplanned machine stops.
机译:由于与产品品种和质量相关的要求,复杂性和由于一般技术发展,制造系统的复杂性正在增加。反过来,与制造过程相关的数据尺寸和复杂性的增长。这对过程的实时监测,诊断和预测提出了新的挑战。新工具,方法和概念解决了挑战,统称为大数据。本文涉及使用先进方法,以便在可用但高度维度制造过程数据上使用不经常出现的错误。包括数据生成,获取,储存,处理和预测,在塑料注射成型过程的情况下示出了整体方法。使用从五种注塑机获取的真实工业数据和在六个月内的制造执行系统。示出了该方法如何能够解决高维度和大尺寸数据,以创建和评估未约会机器停止的预测的预测模型。

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