光伏发电机组两种诊断方法的互补性分析

Ousmane W. Compaore, G. Hoblos, Z. Koalaga
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引用次数: 0

摘要

。光伏发电机组(PVG)的性能随着时间的推移而下降,因为故障与最大工作点相比。因此,早期的故障诊断方法可以使PVG恢复到良好的工作状态。这种诊断方法的质量取决于几个因素,但也取决于检测模式的性质。由于计算能力、分析数据库和更接近人工智能的高效算法的发展,我们意识到决策支持方法是数据科学的巨大成功。本文分析了基于冗余关系分析和人工神经网络的两种诊断方法的互补性。这两种方法有望为PVG提供良好的投资回报,并为诊断研究提供指导。
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Analysis of the Complementarity of Two Diagnostic Methods on a PV Generator
. The performance of Photovoltaic Generators (PVG) drops over time due to failures compared with its maximum operating point. So, an early fault diagnosis method would make it possible to restore the PVG to good working order. The quality of this diagnostic method lies in several factors but also in the nature of the detection modes. Thanks to the computing capabilities, the analysis databases, and development of efficient algorithms closer to artificial intelligence, we realize that decision support methods are a great success for data science. This article offers an analysis of the complementarity of two diagnostic methods based on the analysis of redundancy relationships and on artificial neural networks. These two methods are supposed to provide a good return on investment for a PVG and set guidelines for diagnostic research.
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