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Online Fault-monitoring in Machine Tools Based on Energy Consumption Analysis and Non-invasive Data Acquisition for Improved Resource-efficiency

机译:基于能耗分析和无创数据采集的机床在线故障监测,提高了资源效率

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Improving the overall equipment effectiveness of machine tools will improve resource-efficiency and productivity in manufacturing. First step to achieve more effectiveness would require sensors for monitoring of machine availability and quality of machining processes. Abnormal machine conditions are characterized by fault-pattern, which can indicate failure and quality losses. Further, machine failure can shorten the remaining useful life of the components and affect the products. Therefore, it is essential to determine a valuable data source which will enable the extraction of fault-pattern and the allocation of these pattern to machining processes. However, this can be challenging due to lack of open source control architecture, different machine types and automation degree, changing operating loads, and dynamic failure rates in a real environment. Retrofit for online analysis of electrical power intake of machine tools seems to satisfy this challenge. A fault-monitoring framework for manufacturing equipment has been proposed in this paper, based on data stream mining techniques for online pattern matching in electrical power data streams. Complex event processing is applied to ensure scalable data processing for large data volumes and automate the reporting in order to assign the fault-patterns to machining processes and products. This concept is introduced as energy-based maintenance and validated for a powertrain machining line in milling and drilling machines.
机译:提高机床的整体设备效率将提高制造中的资源效率和生产率。要获得更高的效率,第一步需要传感器来监控机器的可用性和加工过程的质量。异常的机器状况以故障模式为特征,该故障模式可以指示故障和质量损失。此外,机器故障可能会缩短组件的剩余使用寿命并影响产品。因此,确定一个有价值的数据源至关重要,它将能够提取故障模式并将这些模式分配给加工过程。但是,由于缺乏开源控制体系结构,不同的机器类型和自动化程度,不断变化的操作负载以及实际环境中的动态故障率,这可能具有挑战性。在线分析机床电力消耗的改造似乎可以解决这一挑战。基于电力流数据在线模式匹配的数据流挖掘技术,本文提出了一种制造设备的故障监测框架。应用复杂事件处理可确保对大数据量进行可扩展的数据处理并自动报告,以便将故障模式分配给加工过程和产品。该概念是作为基于能量的维护引入的,并已在铣床和钻床的动力总成加工线中得到验证。

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