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光伏发电技术 储能系统 故障诊断 ★ 5.0

基于两阶段特征综合决策的光伏直流串联电弧故障检测方法

Photovoltaic DC series arc fault detection method based on two-stage feature comprehensive decision

语言:

中文摘要

摘要 针对光伏发电系统串联电弧故障具有强随机性且难以准确描述故障特征的问题,提出一种基于两阶段特征综合决策的光伏直流串联电弧故障检测方法。首先,为解决直流信号非周期性和高随机性导致的故障检测窗口尺寸选取困难问题,提出一种基于自相关函数的信号分窗策略。根据电弧起始阶段的暂态特性和电弧燃烧阶段的稳态特性,将整个电弧过程划分为暂态阶段和稳态阶段。随后,在电弧起始阶段,基于信号分窗策略设计了一种基于相邻窗口差分(AWD)的暂态特征描述方法,有效捕捉电弧引起的波形突变,实现故障发生窗口定位及暂态特征的有效表达;在电弧燃烧阶段,基于信号分窗和故障发生窗口定位,设计了一种基于能量差(ED)的稳态特征描述方法,有效捕捉电弧引起的能量差异,实现稳态特征的显著表达,并克服由暂态特征带来的误判问题。最后,采用支持向量机(SVM)对所提取的特征进行分类,并结合投票决策机制获得电弧故障检测结果。实验结果表明,所提方法在电弧故障的特征提取与检测方面具有可行性与有效性,为光伏直流串联电弧故障检测提供了一种有价值的解决方案。

English Abstract

Abstract To address the issue of strong randomness and the difficulty in accurately describing fault features of photovoltaic power generation system series arc, a photovoltaic DC series arc fault detection method based on two-stage feature comprehensive decision is proposed. Firstly, to solve the difficulty in selecting fault detection window size due to the non-periodicity and high randomness of DC signals, a signal windowing strategy based on autocorrelation function is proposed. Based on the transient characteristics of arc initiation stage and the steady-state characteristics of arc burning stage, the whole arc stage is divided into transient stage and steady-state stage. Then, in the arc initiation stage, a transient feature description method based on adjacent windows difference (AWD) is designed on the basis of signal windowing, effectively capturing the waveform mutation caused by arc, achieving the fault occurrence window positioning and the effective expression of transient feature. In the arc burning stage, a steady-state feature description method based on energy difference (ED) is designed on the basis of signal windowing and fault occurrence window positioning, effectively capturing the energy difference caused by arc, achieving a significant expression of steady-state feature, and overcoming the misjudgment issues caused by transient feature. Finally, SVMs are used to classify the proposed features, and voting decision is combined to obtain the arc fault detection results. Experimental results show that the proposed method is feasible and effective in the feature extraction and detection of arc fault, providing a valuable approach for photovoltaic DC series arc fault detection.
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SunView 深度解读

该双阶段特征决策的直流串联电弧故障检测技术对阳光电源SG系列光伏逆变器及ST系列储能PCS具有重要应用价值。基于自相关函数的信号窗口策略和相邻窗差分(AWD)瞬态特征提取方法,可集成至iSolarCloud平台实现预测性维护,有效解决1500V高压系统中电弧故障随机性强、难以准确识别的痛点。稳态能量差分(ED)特征描述结合SVM分类决策,可显著降低误判率,提升光储系统安全性。该方法为阳光电源智能运维系统提供了新的故障诊断思路,特别适用于大型地面电站及工商业储能场景的直流侧安全监测。