基于传感数据的柔性工厂状态监测与诊断

S. Itaya, Akihiro Amagai, Taketoshi Nakajima, Fumiko Ohori, T. Osuga, T. Matsumura
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引用次数: 0

摘要

近年来,对无线传感和制造环境和系统灵活性的需求不断增加,并推动了工厂中无线设备的数量和种类的增加。特别是利用传感器检测系统的状态和异常,在制造领域受到了广泛的关注。在本文中,我们介绍了两个例子,其中制造机器的状态,特别是铣床刀片的磨损状态,是利用可通过无线网络收集的传感数据诊断的。研究表明,在发送前对数据进行预处理,可以减少可靠诊断所需的数据量,从而最大限度地减少无线资源的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Status Monitoring and Diagnostics using Sensing Data in Flexible Factory
In recent years, demands for wireless sensing and flexibility of manufacturing environment and systems are increasing and driving an increase in volume and variety of wireless devices in factories. Especially, detection of status and anomaly of systems using sensors is getting a lot of attention in the manufacturing field. In this paper, we introduce two examples in which the state of a manufacturing machine, specifically the wear state of blades in a milling machine, is diagnosed using sensing data which can be collected via a wireless network. It is shown that the volume of data required for reliable diagnosis can be reduced to minimize use of wireless resources by pre-preprocessing of data before sending.
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