基于信号处理的电能质量扰动识别人工智能方法

Md. Sadman Sakib, M. Islam, S. M. S. H. Tanim, Md. Shafiul Alam, M. Shafiullah, Amjad Ali
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引用次数: 0

摘要

电能质量(PQ)干扰检测被认为是许多公用事业公司为其商业和工业客户提供的一项非常重要的服务。PQ干扰影响到与电源相连的负载,这对用户来说是麻烦的。电气问题的检测和分类是非常困难的,找出哪些可能导致PQ问题。本文对PQ的关键问题,如电压暂降、电压膨胀、电压中断、谐波和瞬态事件进行了测试。它已经证明了一种新的方法可以用来识别,定位,并检查分类不同形式的PQ干扰的概率。其基本思想是利用DWT和st将干扰信号分解为透明和全面的表示,并利用许多数学过程从这些分解的信号中提取特征。将信号分解技术与前馈神经网络模型相结合,开发了电能质量问题识别(检测与分类)方法。仿真结果表明,该方法是有效的。该方法在实时应用中也是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signal Processing-based Artificial Intelligence Approach for Power Quality Disturbance Identification
Power Quality (PQ) disturbance detection is thought to be a very significant service that many utilities provide for their commercial and industrial customers. PQ disturbances affect the load that is connected to the supply, which is troubling to the consumers. Detection and classification of the electrical problem are very difficult to find out which can cause PQ problems. In this paper, the key PQ issues such as voltage sag, voltage swell, voltage interruption, harmonics, and transient events have been tested. It has been demonstrated that a new approach may be used to identify, localize, and examine the probability of classifying distinct forms of PQ disturbances. The basic idea is to divide a disturbance signal into a transparent and comprehensive representation using DWT and ST. Many mathematical processes are utilized to extract features from these decomposed signals. The signal decomposition technique is integrated with the feed-forward neural network model to develop the power quality problem identifier (detection and classification). The simulation results show that the proposed method is effective. The proposed method is also feasible and promising for real-time applications.
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