基于分布式机器学习平台的光伏阵列故障检测算法评估

Apoorva Choumal, V. Yadav
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引用次数: 0

摘要

在过去的几十年里,由于世界光伏发电能力的指数级增长,太阳能光伏(PV)系统的保护变得非常重要。因此,光伏阵列的故障分析已经发展成为保护光伏组件免受损坏和最小化职业危害可能性的关键任务。然而,光伏系统有标准的保护机制,尽管一些低失配和高故障阻抗水平的故障可能无法检测到。由于光伏组件在故障期间发生故障,导致电信号大小经常发生分钟的变化,因此从正常操作中识别异常可能具有挑战性。在这种情况下,数据驱动的机器学习方法会给出可靠的检测和分类结果。本文介绍了一个使用分布式计算框架PySpark的机器学习库的工作流程。PySpark是一个用于Apache Spark的Python API,它是一个强大的计算引擎,可以有效地处理大量数据。通过对PV模块的MATLAB仿真,提取出各种故障发生和标准条件下的I-V曲线的关键特征,用于光伏阵列直流侧的故障检测。然后使用PySpark中的ML库检查这些属性并检测错误。在对几种分类方法的比较分析中,使用了一个混淆矩阵来处理软准确率、精密度、召回率等问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Fault Detection Algorithms for Photovoltaic Array Using Distributed Machine Learning Platform
The protection of solar photovoltaic (PV) systems has become immensely important in the last several decades due to the exponential growth in the World’s PV power capacity. As a result, fault analysis in PV arrays has evolved into a crucial task for protecting PV modules from damage and minimizing the possibility of occupational hazards. However, PV systems are covered by standard protection mechanisms, although some faults with low mismatch and high fault impedance levels may go undetectable. It might be challenging to discern an anomaly from normal operation due to the often-minute changes in electrical signal magnitude caused by malfunctioning photovoltaic components during such faults. In such cases, data-driven machine learning methods give reliable detection and classification results. This paper presents a workflow to use a machine-learning library of a distributed computing framework, PySpark. PySpark, a Python API for Apache Spark, is a powerful computational engine that efficiently handles enormous data volumes. The key characteristics of I-V curves under various fault occurrences and standard conditions are extracted from a MATLAB simulation of the PV Module for fault detection on the dc side of the PV array. The ML library in PySpark is then used to examine these attributes and detect faults. A confusion matrix addressing soft accuracy, precision, recall, etc., is used in a comparative analysis of several classification methods.
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