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Fault diagnosis approach for photovoltaic arrays based on unsupervised sample clustering and probabilistic neural network model

机译:基于无监督样本聚类和概率神经网络模型的光伏阵列故障诊断方法

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摘要

Photovoltaic power plants which work under actual conditions are composed of a large quantity of photovoltaic arrays. The complex configuration of such photovoltaic arrays frequently produces various types of fault which directly affect the safe and economic operation of the power plant. There are still some problems for fault diagnosis of photovoltaic arrays: it is difficult to precisely represent the electrical characteristics of an array under different fault conditions, fault diagnosis models require the accurate division of fault samples, but the classification of fault data depends on artificial prior knowledge. This paper proposes a fault diagnosis method wherein: (i) the photovoltaic array output characteristics and distribution of electrical eigenvectors under typical fault conditions are be effectively analyzed; (ii) the per unit method and the Gaussian kernel function are introduced into the fuzzy C means algorithm to improve the applicability and fuzzy clustering ability of the unsupervised screen for various fault samples; and (iii) a probabilistic neural network fault diagnosis model is built with clustered data as the input. Practical operation data is used to successfully validate the effectiveness and feasibility of the proposed method.
机译:在实际条件下工作的光伏电站由大量的光伏阵列组成。这种光伏阵列的复杂配置经常产生各种类型的故障,这些故障直接影响电厂的安全和经济运行。光伏阵列的故障诊断仍然存在一些问题:在不同故障条件下难以精确表示阵列的电气特性,故障诊断模型需要对故障样本进行精确划分,但故障数据的分类取决于人工先验知识。本文提出一种故障诊断方法,其中:(i)有效分析典型故障条件下的光伏阵列输出特性和电特征向量分布; (ii)在模糊C均值算法中引入了每单位方法和高斯核函数,以提高无监督筛选对于各种故障样本的适用性和模糊聚类能力; (iii)以聚类数据为输入建立概率神经网络故障诊断模型。实际操作数据用于成功验证所提出方法的有效性和可行性。

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