Recurrent neural network based user classification for smart grids

Kálmán Tornai, A. Oláh, Rajmund Drenyovszki, Lóránt Kovács, István Pintér, J. Levendovszky
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引用次数: 7

Abstract

Power consuming users and buildings with different power consumption patterns may be treated with different conditions and can be taken into consideration with different parameters during capacity planning and distribution. Thus the automated, unsupervised categorization of power consumers is a very important task of smart power transmission systems. Knowing the behavioral categories of power consumers better models can be created which can be used for better behavior forecast which is an important task for load balancing. One of the existing best solutions for consumer classification is the consumption forecast based scheme which applies nonlinear forecast techniques to determine the class assignment for new consumers. In this paper, we present new results on the classification of consumers using recurrent neural networks in the forecast based classification framework. The results are compared with existing classification methods using real, measured power consumption data. We demonstrate that consumer classification performed by recurrent neural networks can outperform existing methods as in several cases the correct class assignment rate is near to 100%.
基于递归神经网络的智能电网用户分类
不同用电模式的用电量用户和建筑物在容量规划和分配时可能会有不同的处理条件,可以考虑不同的参数。因此,实现电力用户的自动、无监督分类是智能输电系统的一项重要任务。了解电力用户的行为类别可以建立更好的模型,用于更好的行为预测,这是负载均衡的重要任务。现有的消费者分类的最佳解决方案之一是基于消费预测的方案,该方案应用非线性预测技术来确定新消费者的类别分配。在本文中,我们提出了在基于预测的分类框架中使用递归神经网络进行消费者分类的新结果。利用实测的真实功耗数据,将结果与现有的分类方法进行了比较。我们证明了由递归神经网络执行的消费者分类可以优于现有的方法,因为在一些情况下,正确的分类分配率接近100%。
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