A. Lekidis, Angelos Georgakis, Christos Dalamagkas, Elpiniki I. Papageorgiou
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引用次数: 0
摘要
对工业设备进行定期维护的频率通常很低,因为这通常会导致无法预料的业务停机。然而,这也带来了设备单个模块发生故障的风险,可能会降低设备性能,甚至导致设备故障,使其无法运行。最近,人们开始考虑在发电站等工业系统中采用预测性维护方法,作为预防故障的积极措施。此类方法使用从工业设备收集的数据和机器学习 (ML) 算法来识别数据模式,这些模式表明存在异常情况,并可能导致潜在故障。然而,工业设备表现出特定的行为和交互,这些行为和交互源于制造商和所安装系统的配置,这对 ML 模型维护和故障预测的有效性构成了巨大挑战。在本文中,我们提出了一种新方法来应对这一挑战,该方法基于被称为远程终端设备(RTU)的工业设备数字孪生系统的开发。RTU 用于电力系统,对发电机等关键设备进行远程监控。该方法应用于连接到公共电力公司(PPC)设施内实际发电设备的 RTU,根据对其处理能力、工作温度、电压和存储记忆的测量,预测运行异常情况。
Predictive Maintenance Framework for Fault Detection in Remote Terminal Units
The scheduled maintenance of industrial equipment is usually performed with a low frequency, as it usually leads to unpredicted downtime in business operations. Nevertheless, this confers a risk of failure in individual modules of the equipment, which may diminish its performance or even lead to its breakdown, rendering it non-operational. Lately, predictive maintenance methods have been considered for industrial systems, such as power generation stations, as a proactive measure for preventing failures. Such methods use data gathered from industrial equipment and Machine Learning (ML) algorithms to identify data patterns that indicate anomalies and may lead to potential failures. However, industrial equipment exhibits specific behavior and interactions that originate from its configuration from the manufacturer and the system that is installed, which constitutes a great challenge for the effectiveness of ML model maintenance and failure predictions. In this article, we propose a novel method for tackling this challenge based on the development of a digital twin for industrial equipment known as a Remote Terminal Unit (RTU). RTUs are used in electrical systems to provide the remote monitoring and control of critical equipment, such as power generators. The method is applied in an RTU that is connected to a real power generator within a Public Power Corporation (PPC) facility, where operational anomalies are forecasted based on measurements of its processing power, operating temperature, voltage, and storage memory.