Hierarchical classification method of electricity consumption industries through TNPE and Bayes

As the multi-daily electricity consumption behaviors have the strong characteristics of dynamicity, nonlinearity and locality caused by temporal manifold structure, the existing methods are difficult to fine-grained and accurately classify it. To solve this problem, this paper proposes a hierarchica...

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Main Authors: Zi-Wen Gu, Peng Li, Xun Lang, Xin Shen, Min Cao, Xiao-Hua Yang
Format: Article
Language:English
Published: SAGE Publishing 2021-03-01
Series:Measurement + Control
Online Access:https://doi.org/10.1177/0020294021997494
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spelling doaj-4d52d5b30a0d4f64bc2d051d18d292972021-04-22T22:03:51ZengSAGE PublishingMeasurement + Control0020-29402021-03-015410.1177/0020294021997494Hierarchical classification method of electricity consumption industries through TNPE and BayesZi-Wen Gu0Peng Li1Xun Lang2Xin Shen3Min Cao4Xiao-Hua Yang5School of Information Science and Engineering, Yunnan University, Kunming, ChinaSchool of Information Science and Engineering, Yunnan University, Kunming, ChinaSchool of Information Science and Engineering, Yunnan University, Kunming, ChinaYunnan Power Grid Co., Ltd., Kunming, ChinaYunnan Power Grid Co., Ltd., Kunming, ChinaYunnan Power Grid Co., Ltd., Kunming, ChinaAs the multi-daily electricity consumption behaviors have the strong characteristics of dynamicity, nonlinearity and locality caused by temporal manifold structure, the existing methods are difficult to fine-grained and accurately classify it. To solve this problem, this paper proposes a hierarchical classification method based on the temporal extension of the neighborhood preserving embedding algorithm (TNPE) and Bayes. The input data are multi daily-load curves of a single consumer, including power-hour-day three dimensions, which contains the full information of the user’s consumption behaviors not only in hours, but also in days. Firstly, electricity consumption behaviors are divided into routine and non-routine types by k -means clustering algorithm. Secondly, the load feature mapping matrix of different industries is extracted through the TNPE, and each TNPE model can regard as one binary classifier, so the multi-classifier is constructed through multiple TNPE models. Finally, by converting the feature similarity between samples into probabilities, a Bayesian model is established to realize which the power consumption type belongs to. The case results show that this method can effectively recognize the local dynamic features in the temporal load data, and obtain a higher classification accuracy through a smaller number of training samples.https://doi.org/10.1177/0020294021997494
collection DOAJ
language English
format Article
sources DOAJ
author Zi-Wen Gu
Peng Li
Xun Lang
Xin Shen
Min Cao
Xiao-Hua Yang
spellingShingle Zi-Wen Gu
Peng Li
Xun Lang
Xin Shen
Min Cao
Xiao-Hua Yang
Hierarchical classification method of electricity consumption industries through TNPE and Bayes
Measurement + Control
author_facet Zi-Wen Gu
Peng Li
Xun Lang
Xin Shen
Min Cao
Xiao-Hua Yang
author_sort Zi-Wen Gu
title Hierarchical classification method of electricity consumption industries through TNPE and Bayes
title_short Hierarchical classification method of electricity consumption industries through TNPE and Bayes
title_full Hierarchical classification method of electricity consumption industries through TNPE and Bayes
title_fullStr Hierarchical classification method of electricity consumption industries through TNPE and Bayes
title_full_unstemmed Hierarchical classification method of electricity consumption industries through TNPE and Bayes
title_sort hierarchical classification method of electricity consumption industries through tnpe and bayes
publisher SAGE Publishing
series Measurement + Control
issn 0020-2940
publishDate 2021-03-01
description As the multi-daily electricity consumption behaviors have the strong characteristics of dynamicity, nonlinearity and locality caused by temporal manifold structure, the existing methods are difficult to fine-grained and accurately classify it. To solve this problem, this paper proposes a hierarchical classification method based on the temporal extension of the neighborhood preserving embedding algorithm (TNPE) and Bayes. The input data are multi daily-load curves of a single consumer, including power-hour-day three dimensions, which contains the full information of the user’s consumption behaviors not only in hours, but also in days. Firstly, electricity consumption behaviors are divided into routine and non-routine types by k -means clustering algorithm. Secondly, the load feature mapping matrix of different industries is extracted through the TNPE, and each TNPE model can regard as one binary classifier, so the multi-classifier is constructed through multiple TNPE models. Finally, by converting the feature similarity between samples into probabilities, a Bayesian model is established to realize which the power consumption type belongs to. The case results show that this method can effectively recognize the local dynamic features in the temporal load data, and obtain a higher classification accuracy through a smaller number of training samples.
url https://doi.org/10.1177/0020294021997494
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