基于机器学习算法的干扰识别

Mohammad. H. Al-Amaryeen, H. D. Al-Majali
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引用次数: 0

摘要

电力质量和电力中断是用户和电力分销商越来越关心的问题。电能质量的下降来自于任何引起电源电压(或电流)波偏离其标称特性的干扰现象,称为扰动。因此,电能质量干扰(PQD)的识别和可靠的PQD分类是特别需要的。此外,对配电网中的PQD进行识别和分类是保护配电网的重要任务。大多数扰动是非平稳和瞬态的,需要使用先进的方法和工具进行PQD分析。该方法从机器学习(ML)分类技术中寻找最佳模型。利用真实的三相电压和频率值对机器学习进行训练,机器学习可以根据测量到的三相参数对干扰事件进行识别和分类,并找到最佳的处理方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disturbances Identification by Using Machine Learning Algorithms
The quality of power and power interruptions are issues that users and power distributors are becoming more concerned about. The degradation in the quality of power comes from any disturbing phenomena that cause the mains voltage (or current) wave to depart from its nominal characteristics and are called disturbances. Identification of Power Quality Disturbances (PQD) and reliable PQD categorization are therefore particularly desirable. Additionally, identifying and categorizing PQD in distribution networks are important tasks for protecting power distribution networks. The most of disturbances are non-stationary and transient in nature, necessitating the use of advanced methods and tools for PQD analysis. The proposed method builds up to find the best model from Machine Learning (ML) classification techniques. Real three-phase voltages and frequency values are used to train ML, and according to the measured three-phase parameters, ML can identify and classify the disturbances event and find the best technique for that.
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