Challenges and solutions of Artificial Intelligence-based fault location methods in power system lines

Azad Hussein Zubair, K. Younis
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Abstract

The accurate and efficient location of faults in power system lines is crucial for ensuring reliable and uninterrupted power supply. In recent years, Artificial Intelligence (AI) has been increasingly used in fault location methods, promising to improve the accuracy and efficiency of fault location. However, AI-based fault location methods also face challenges such as data quality, interpretability, and model robustness. Review method: This paper presents a review of the challenges and solutions of AI-based fault location methods in power system lines. The review is based on a comprehensive analysis of existing literature and research studies, focusing on the challenges associated with AI-based fault location methods and the solutions proposed to address these challenges. Content: The paper discusses the challenges associated with AI-based fault location methods in power system lines, including data quality, interpretability, and model robustness. The review presents several solutions to address these challenges, including data preprocessing techniques to improve data quality, explainable AI methods to enhance interpretability, and robustness validation techniques to improve model robustness. The accurate and efficient location of faults in power system lines is crucial for ensuring reliable and uninterrupted power supply. AI-based fault location methods have the potential to improve the accuracy and efficiency of fault location. However, these methods also face challenges such as data quality, interpretability, and model robustness. Addressing these challenges through techniques such as data preprocessing, explainable AI, and robustness validation can help to improve the accuracy and reliability of AI-based fault location methods.
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基于人工智能的电力系统线路故障定位方法的挑战与解决方案
准确有效地定位电力系统线路中的故障对于确保可靠和不间断的电力供应至关重要。近年来,人工智能越来越多地应用于故障定位方法中,有望提高故障定位的准确性和效率。然而,基于人工智能的故障定位方法也面临着数据质量、可解释性和模型稳健性等挑战。综述方法:本文综述了电力系统线路中基于人工智能的故障定位方法的挑战和解决方案。该综述基于对现有文献和研究的全面分析,重点关注与基于人工智能的故障定位方法相关的挑战以及为应对这些挑战而提出的解决方案。内容:本文讨论了电力系统线路中基于人工智能的故障定位方法所面临的挑战,包括数据质量、可解释性和模型稳健性。该综述提出了解决这些挑战的几种解决方案,包括提高数据质量的数据预处理技术、提高可解释性的人工智能方法以及提高模型稳健性的稳健性验证技术。准确有效地定位电力系统线路中的故障对于确保可靠和不间断的电力供应至关重要。基于人工智能的故障定位方法有可能提高故障定位的准确性和效率。然而,这些方法也面临着数据质量、可解释性和模型稳健性等挑战。通过数据预处理、可解释人工智能和稳健性验证等技术来应对这些挑战,有助于提高基于人工智能的故障定位方法的准确性和可靠性。
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
CiteScore
0.40
自引率
0.00%
发文量
25
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