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An Industrial Internet Application for Real-Time Fault Diagnosis in Industrial Motors

机译:工业互联网应用于工业电机实时故障诊断

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Being able to detect, identify, and diagnose a fault is a key feature of industrial supervision systems, which enables advance asset management, in particular, predictive maintenance, which greatly increases efficiency and productivity. In this paper, an Industrial Internet app for real-time fault detection and diagnosis is implemented and tested in a pilot scale industrial motor. Real-time fault detection and identification is based on dynamic incremental principal component analysis (DIPCA) and reconstruction-based contribution (RBC). When the analysis indicates that one of the vibration measurements is responsible for the fault, a convolutional neural network (CNN) is used to identify the unbalance or bearing fault type. The application was evaluated in its three functionalities: fault detection, fault identification, and fault identification of vibration-related faults, yielding a fault detection rate over 99, a false alarm rate below 5, and an identification accuracy over 90. Note to Practitioners-This paper focuses on designing and evaluating a real-time fault diagnosis application in an industrial setup. To this end, this paper also tackles the problem of developing a methodology for implementing advanced state-of-the-art fault detection techniques in real machinery, following industry standards and using a modern informatics architecture. The application here developed uses a statistical data-driven fault diagnosis technique, hence it requires a training stage using historical data to learn patterns and estimate parameters. A proof of concept in fault diagnosis for industrial motors is given; however, it should be noted that both the methodology and the deployed architecture are scalable and flexible enough to facilitate the implementation in other industrial environments. The implementation here presented was deployed using only open-source tools, which allows evaluating this tool without incurring in high expenses.
机译:能够检测,识别和诊断故障是工业监督系统的关键特征,它能够推进资产管理,特别是预测性维护,这大大提高了效率和生产力。在本文中,在试验规模的工业电机中实现和测试了用于实时故障检测和诊断的工业互联网应用。实时故障检测和识别是基于动态增量主成分分析(DIPCA)和基于重建的贡献(RBC)。当分析表明,其中一个振动测量负责故障时,使用卷积神经网络(CNN)来识别不平衡或轴承故障类型。该应用程序在其三个功能中进行了评估:故障检测,故障识别和振动相关故障的故障识别,产生超过99的故障检测率,误报率低于5,识别精度超过90.从业者的注释 - 本文重点介绍在工业设置中设计和评估实时故障诊断应用。为此,本文还解决了开发在实际机械中实施先进最先进的故障检测技术的方法,遵循行业标准,并使用现代信息架构。这里的应用程序开发使用统计数据驱动的故障诊断技术,因此需要使用历史数据来学习模式和估计参数的培训阶段。给出了工业电机故障诊断的概念证明;但是,应该注意的是,方法和部署的架构都是可扩展且足够灵活的,以便于在其他工业环境中实现。此处呈现的实施只使用开源工具部署,允许在不受高费用的情况下进行评估此工具。

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