基于pv的直流微电网中离散能量算子的电能质量扰动检测与分类

K. Anjaiah, P. K. Dash, R. Bisoi
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引用次数: 1

摘要

目前,断路器、开关、变换器和非线性负载的使用正在迅速增加。这些通常是由电网中的电能质量干扰(PQ)引起的。为了防止网络及其连接设备的干扰,有必要对不同的PQ干扰(即单一的和混合的)进行检测和分类。本文利用离散Teager能量算子(DTEO)对PQ干扰进行检测和分类。最初,PQ扰动的电压信号从所提出的微电网中捕获,即基于PV的直流微电网在公共耦合点(PCC)。此外,这些信号通过DTEO进行第一个峰值的检测。将检测到的PQ信号通过统计特征Teager能量峰度和Teager能量均值进行简单决策树分类。通过与现有方法的分类精度对比,验证了该方法的性能和优越性。实验结果表明,该方法简单、灵活,避免了其他信号处理算法的干扰,降低了信号处理的复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Classification of Power Quality Disturbances by Using Discrete Teager Energy Operator in the PV-Based DC Microgrid
Nowadays the usage of circuit breakers, switches, converters, and non-linear loads is increasing rapidly. These are frequently caused by power quality disturbances (PQ) in the electrical network. It is necessary to detect and classify the different PQ disturbances (i.e. single and mixed) in order to prevent the network and its connected equipment. This paper presents PQ disturbances detection and classification by using a discrete Teager energy operator (DTEO). Initially, voltage signals of PQ disturbances are captured from the proposed microgrid i.e. PV based DC microgrid at point of common coupling (PCC). Further, these signals are passed through DTEO for detection with the help of a first peak. These detected PQ signals are passed through the statistical features i.e. Teager energy kurtosis and Teager energy mean for classification by using the simple decision tree. The performance and superiority of the proposed method are verified in terms of classification accuracy (CA) when compared to other existing methods. Here it is evidenced that the proposed method is simple, more flexible and it reduces the complexity by avoiding the other signal processing algorithms.
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