基于机器学习的光伏阵列故障分类

Nguyen Quoc Minh, Dominik Mai, Ha Huy Phuc Nguyen
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引用次数: 0

摘要

近年来光伏发电的快速发展为越南的电力系统增加了丰富的清洁能源来源,特别是近年来电力短缺问题更加严重。光伏发电等清洁能源有助于减少温室气体排放,成为全球趋势。在运行过程中,如果不能正确及时地检测,光伏阵列可能会出现影响系统性能的故障情况。传统的光伏故障检测方法,如统计信号处理、功率损耗分析、电压电流测量等,已被用于检测和定位故障位置。然而,这些方法的准确性可能会受到安装条件或光伏阵列材料的影响。在本研究中,我们提出使用机器学习模型来检测和分类基于I-V数据的光伏阵列故障。结果表明,机器学习模型对光伏阵列故障的检测准确率高达99.74%。
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PV array Fault Classification based on Machine Learning
The rapid development of photovoltaic power within a few years has added an abundant source of clean energy to the power system of Viet Nam, especially the power shortage become more serious in recent years. Clean energy such as PV power helps to reduce greenhouse gas emissions and becomes a global trend. During operation, the PV array can get into fault conditions which affect the system performance if not detected correctly and timely. Traditional PV fault detection methods such as statistical signal processing, power loss analysis, voltage and current measurement have been used to detect and locate fault position. However, these methods accuracy may be affected by installation conditions or PV array materials. In this research, we propose to use machine learning models to detect and classify faults in PV array based on I-V data. The results show that the machine learning models can detect the fault in the PV array with an accuracy of up to 99.74%.
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