Comparison of Measurement-Based Classification Methods of LED Lamps

IF 3.3 Q3 ENERGY & FUELS
Elena Gutierrez-Ballesteros;Sarah K. Rönnberg;Aurora Gil-De-Castro
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Abstract

The topology of a device will determine the impact said device has on the grid and how immune that device is for disturbances in the grid. LED lamps are very commonly used devices, with different topologies available in the market, each topology showing different behavior when connected to a grid. For power quality studies, it is important to classify LED lamps, without breaking them to know the topology. Several classification methods are found in the literature with this purpose. In this paper, four methods from different papers for classifying LED lamps have been applied to a group of 21 LED lamps with active power consumption below 25 W. It has been observed that the applicability of the methods may lead to a gap of knowledge needed for classification, leaving space for personal criteria when classifying, that can be afforded using unsupervised Machine Learning. Two unsupervised Machine Learning methods were applied using the electrical parameters and statistics proposed in literature.
基于测量的LED灯具分类方法比较
设备的拓扑结构将决定所述设备对电网的影响以及该设备对电网干扰的免疫程度。LED灯是非常常用的器件,市场上有不同的拓扑结构,每种拓扑结构在连接到电网时表现出不同的行为。对于电能质量的研究,在不破坏LED灯的情况下对其进行分类是很重要的。为了达到这个目的,在文献中发现了几种分类方法。本文将不同文献中的四种LED灯具分类方法应用于一组21只有功功耗低于25w的LED灯具。已经观察到,这些方法的适用性可能会导致分类所需的知识空白,为分类时的个人标准留下空间,这可以使用无监督机器学习来提供。利用文献中提出的电参数和统计量,应用了两种无监督机器学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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