Abstract

Power big data-based artificial intelligence or data mining methods, which can be used to analyze electricity consumption behavior, have been widely applied to provide targeted marketing services for electricity consumers. However, the traditional clustering algorithm has difficulty in judging new electricity consumption patterns. Deep neural networks usually need large amounts of labeled data. However, there are few comparable electricity consumption features or basic data, and the labeled data cannot meet the actual needs. Therefore, an intelligent classification framework for electricity consumption behavior based on an improved k-means and long short-term memory (LSTM) is proposed, which not only extracts features effectively, but also establishes a mapping relationship between unlabeled electricity consumption behavior characteristics and user types. The features can be labeled to train the deep neural network to judge the electricity consumption behavior of new users. Firstly, nine typical characteristics were selected from aspects including electricity price sensitivity and load fluctuation rate. Secondly, the k value and initial clustering centers of the k-means algorithm were optimized. Thirdly, the users were labelled based on the clustering results, together with the features, and a dataset was formed, which was input into LSTM to train the classification model. Finally, the analysis of users in Shenyang, China, showed the results based on the proposed method were consistent with the actual situation. Moreover, compared to other methods, the efficiency and accuracy were higher.

Highlights

  • IntroductionWith regard to dispersed and distinct power big data, how to choose appropriate data analysis methods, how to select effective features, and how to make full use of historical data to achieve detailed classification of electricity consumption behavior are all unsolved problems

  • Based on power big data, artificial intelligence or data mining techniques can be reasonably applied to the analysis of user electricity consumption behavior and habits, which can help power grids to understand the characteristics of users’ electricity consumption and provide more targeted electricity services and marketing strategies [1,2,3]

  • An intelligent analysis of users’ electricity consumption behavior based on improved k-means and long short-term memory (LSTM) is proposed, which can divide scattered and irregular original electricity consumption data according to the effective features

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Summary

Introduction

With regard to dispersed and distinct power big data, how to choose appropriate data analysis methods, how to select effective features, and how to make full use of historical data to achieve detailed classification of electricity consumption behavior are all unsolved problems. The methods commonly used in electricity behavior analysis are cluster analysis and deep neural networks [4]. A clustering method based on self-organizing maps and k-means was proposed in [5], where the self-organizing map was used to initially select cluster centers, which significantly improved the accuracy of clustering and reduced the convergence time of the algorithm. The discrete characteristics and time domain features obtained by symbolic aggregate approximation were extracted. The load curve was reduced in dimensionality and has been fully described

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