Application of machine learning in power grid fault detection and maintenance

Q2 Energy
David Olojede, Stephen King, Ian Jennions
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引用次数: 0

Abstract

The power grid infrastructure serves as the backbone of modern society, providing essential electricity supply to meet the demands of various sectors. Ensuring a reliable and efficient power grid amidst increasing demand remains paramount. This paper provides a literature assessment of the United Kingdom’s (UK) power grid, with a focus on fault occurrences, maintenance techniques, and the use of new technology for monitoring and maintenance. According to the research, insulation degradation is the most common source of power grid problems. The power grid’s maintenance cycle is then investigated, including preventive, predictive, and corrective maintenance techniques. The study emphasises the significance of regular inspections, condition-based monitoring, and asset management strategies in improving grid dependability and longevity. The paper then addresses the concept of Integrated Vehicle Health Management (IVHM) and how it relates to power grid infrastructure. It studies the role of IVHM systems in real-time monitoring, diagnostics, and prognostics for grid assets, allowing for predictive maintenance and informed decision-making. Furthermore, the article studies the use of machine learning approaches to power grid health monitoring and maintenance. This article discusses machine learning methodologies such as supervised and unsupervised learning, as well as reinforcement learning, and how they are used in defect detection, classification, and predictive maintenance. Overall, this paper provides an overview of the UK power grid, its fault management strategies, maintenance cycles, and the integration of machine learning techniques for health monitoring and maintenance, offering insights into enhancing grid reliability and performance in the face of evolving challenges.

机器学习在电网故障检测与维护中的应用
电网基础设施是现代社会的支柱,为社会各部门提供必要的电力供应。在需求不断增长的情况下,确保一个可靠、高效的电网仍然是至关重要的。本文提供了英国(UK)电网的文献评估,重点关注故障发生、维护技术以及监测和维护新技术的使用。根据研究,绝缘退化是电网最常见的问题来源。然后研究电网的维护周期,包括预防性、预测性和纠正性维护技术。该研究强调了定期检查、基于状态的监测和资产管理策略在提高电网可靠性和寿命方面的重要性。然后,本文讨论了集成车辆健康管理(IVHM)的概念及其与电网基础设施的关系。它研究了IVHM系统在电网资产实时监测、诊断和预测中的作用,从而实现预测性维护和知情决策。此外,本文还研究了机器学习方法在电网健康监测和维护中的应用。本文讨论了机器学习方法,如监督学习和非监督学习,以及强化学习,以及如何在缺陷检测、分类和预测性维护中使用它们。总体而言,本文概述了英国电网,其故障管理策略,维护周期以及用于健康监测和维护的机器学习技术的集成,为面对不断变化的挑战提高电网的可靠性和性能提供了见解。
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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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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