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Characterization and identification of electrical customers through the use of self-organizing maps and daily load parameters

机译:通过使用自组织地图和日常负荷参数来表征和识别电气客户

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This paper shows the capacity of modern computational techniques such as the self-organizing map (SOM) as a methodology to achieve the classification of the electrical customers in a commercial or geographical area. This approach allows to extract the pattern of customer behavior from historic load demand series. Several ways of data analysis from load curves can be used to get different input data to "feed" the neural network. In this work, we propose two methods to improve customer clustering: the use of frequency-based indices and the use of the hourly load curve. Results of a case study developed on a set of different Spanish customers and a comparison between the two approaches proposed here are presented.
机译:本文显示了现代计算技术,如自组织地图(SOM)作为一种方法,以实现商业或地理区域的电气客户的分类。这种方法允许从历史负荷需求系列中提取客户行为的模式。从负载曲线的几种数据分析方式可用于将不同的输入数据得到不同的输入数据,以“馈送”神经网络。在这项工作中,我们提出了两种方法来改善客户聚类:使用基于频率的索引和使用每小时负载曲线。在一套不同的西班牙客户开发的案例研究结果以及此处提出的两种方法之间的比较。

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