A Fault Detection Framework Based On Data-driven Digital Shadows

Miguel A. C. Michalski, Arthur H. A. Melani, Renan Favarão da Silva, Gilberto Francisco Martha de Souza
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Abstract

Abstract The popularization of Industry 4.0 and its technological pillars has allowed Prognostics and Health Management (PHM) strategies to be applied in complex systems in order to optimize their performance and extend their useful life by taking advantage of a digitalized, integrated environment. Due to this context, the use of digital twins and digital shadows, which are virtual representations of physical systems that provide real-time monitoring and analysis of the health and performance of the system, have been increasingly used in the application of fault detection, a key component of PHM. Taking that into consideration, this work proposes a framework for fault detection in engineering systems based on the construction and application of a digital shadow. This digital shadow is based on a digital model composed of a system of equations and a continuous, real-time communication process with a Supervisory Control and Data Acquisition (SCADA) system. The digital model is generated using monitoring data from the system under study. The proposed method was applied in two case studies, one based on synthetic data and another that uses a simulated database of an operational generating unit of a hydroelectric power plant. The method, in both case studies, was able to detect faults accurately and effectively. Besides, the method provides by-products that can be used in the future in other applications, helping with the PHM in other aspects.
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基于数据驱动数字阴影的故障检测框架
工业4.0及其技术支柱的普及使得预测和健康管理(PHM)策略能够应用于复杂系统,从而利用数字化、集成的环境优化其性能并延长其使用寿命。由于这种背景,数字孪生和数字阴影的使用,它们是物理系统的虚拟表示,提供对系统健康和性能的实时监控和分析,已经越来越多地用于故障检测的应用,这是PHM的一个关键组成部分。考虑到这一点,本文提出了一种基于数字阴影构造和应用的工程系统故障检测框架。这个数字阴影是基于一个数字模型组成的方程组和一个连续的,实时的通信过程与监控和数据采集(SCADA)系统。该数字模型是利用所研究系统的监测数据生成的。提出的方法应用于两个案例研究,一个基于合成数据,另一个使用水力发电厂运行机组的模拟数据库。在两个案例中,该方法都能够准确有效地检测故障。此外,该方法提供的副产品将来可用于其他应用,有助于PHM在其他方面的应用。
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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