Digital Twin Design for Thermal Power Plant Cooling System using Fuzzy System

Carlos Alberto Araujo Lopes Junior, J. Villanueva, I. Medeiros, Rodrigo J. S. Almeida
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引用次数: 6

Abstract

With technological advances, the industrial sector is using enabling technologies based on the concepts of Industry 4.0, among them the modeling of systems based on Digital Twins, which allow building models of real physical systems from field measurements, with the ability to follow the dynamic system changes. This article describes the development of a digital twin for a cooling system based on data from the sensors of a thermal power plant. The digital twin created used data from a plant currently in operation at the major system, and the automatic rules extraction approach from the test database was used to form the model's knowledge database. The principal component analysis technique was used to reduce the dimensionality of the system to reduce the computational effort of the model. An algorithm for automatic update of rules during the operation of the digital twin was also proposed, making the model learn during the operation even without the need to retrain and, consequently, reduce error of the model's response in the short term.
基于模糊系统的火电厂冷却系统数字孪生设计
随着技术的进步,工业部门正在使用基于工业4.0概念的使能技术,其中包括基于数字孪生的系统建模,它允许根据现场测量建立真实物理系统的模型,并能够跟踪动态系统变化。本文介绍了基于热电厂传感器数据的冷却系统数字孪生的发展。数字孪生体创建了主系统中当前运行的工厂使用的数据,并使用测试数据库中的自动规则提取方法形成模型的知识库。采用主成分分析技术对系统进行降维,以减少模型的计算量。提出了一种数字孪生运行过程中规则自动更新的算法,使模型在运行过程中无需重新训练即可进行学习,从而降低了模型在短期内的响应误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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