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DC Series Arc Fault Detection Using Machine Learning in Photovoltaic Systems: Recent Developments and Challenges

机译:DC系列电弧故障检测使用光伏系统中的机器学习:最近的发展和挑战

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DC arc faults, especially series arc faults, are becoming more common in photovoltaic (PV) systems. Without timely detection and interruption, such dangerous events can cause catastrophic fires, posing severe threat to human safety and properties. This paper presents a review on DC series arc fault detection using machine learning (ML) in PV systems. Technical details of applied ML methods, including conventional ML and deep learning (DL), in recent published paper are summarized and discussed. In addition, several popular ML methods are evaluated and compared using the same experimental datasets collected in laboratory to examine their effectiveness in DC series arc fault detection. Finally, practical challenges are identified, potential solutions are provided, and future research directions are recommended.
机译:直流电弧故障,尤其是串联断层,在光伏(PV)系统中变得越来越常见。没有及时检测和中断,这种危险事件可能导致灾难性的火灾,对人类安全和性质构成严重威胁。本文在光伏系统中使用机器学习(ML)提供了关于DC系列电弧故障检测的综述。综述并讨论了近期公布纸张应用ML方法的技术细节,包括常规ML和深度学习(DL)。此外,使用在实验室中收集的相同的实验数据集进行评估几种流行的ML方法,以检查其在DC系列电弧故障检测中的有效性。最后,确定了实际挑战,提供了潜在的解决方案,建议使用未来的研究方向。

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