Fault identification and diagnosis methods for photovoltaic system: A review

Ba Long-Dong, Yuan-Kang Wu, Manh-Hai Pham
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引用次数: 3

Abstract

The components in a PV system include its modules, connection lines, converters, inverters. Faults in any component of a photovoltaic (PV) system cannot be identified and repaired quickly. Thus, these faults would reduce the performance, reliability, and power generation from PV systems. Moreover, a certain fault, such as arc fault, ground fault or line-to-line fault, can result in fires. Consequently, fault detection and diagnosis (FDD) methods for PV systems are critical to maintain their stability and safety. This paper presents various types and causes for PV system faults, and summarizes various FDD approaches in PV systems, especially for the faults on PV arrays. In the future, it is expected that appropriate FDD methods that can reliably recognize, localize and identify potential PV faults will be given special considerations. Finally, the challenges and guidelines for prospective research directions about FDD in PVs are also presented in this paper.
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光伏系统故障识别与诊断方法综述
光伏系统的组件包括模块、连接线、变流器、逆变器。光伏(PV)系统中任何部件的故障都无法快速识别和修复。因此,这些故障将降低光伏系统的性能、可靠性和发电量。此外,某些故障,如电弧故障、接地故障或线对线故障,都可能导致火灾。因此,光伏系统的故障检测与诊断(FDD)方法对光伏系统的稳定性和安全性至关重要。本文介绍了光伏系统故障的各种类型和原因,总结了光伏系统中各种故障诊断方法,特别是光伏阵列故障的故障诊断方法。在未来,期望适当的FDD方法能够可靠地识别、定位和识别潜在的光伏故障将得到特别的考虑。最后,本文还提出了pv中FDD的挑战和未来研究方向的指导方针。
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