Journal of Applied Science and Engineering

Published by Tamkang University Press

1.30

Impact Factor

1.60

CiteScore

Wenhui Sun1, Dongyan Chen This email address is being protected from spambots. You need JavaScript enabled to view it.1 and Wei Peng1

1School of Control Science and Engineering, Shandong University, Jinan, 250061, P.R. China


 

Received: March 2, 2017
Accepted: January 5, 2018
Publication Date: March 1, 2018

Download Citation: ||https://doi.org/10.6180/jase.201803_21(1).0005  

ABSTRACT


With the increasing popularity of the heat meter readings for district heating apartments in China, the analysis of the generated big data is becoming a critical problem. With the nonlinear of the district heating household dataset, this archive describes a kernel Gaussian mixture cluster (KGMC) based data mining algorithm within which the original data in low-dimensional space are projected into the high-dimensional space to do clustering and identify anomalies. At the meantime, this article adopts Gaussian kernel function to prevent the curse of dimensionality. According to the implementation of the experiment with Spark, the data from 18 zones of 17,000 apartments belonging to 6 substations have been studied and four kinds of anomalies have been identified. With the detection and correction of abnormal actions, 5.4% of the demand of heat will be proactively reduced in heating areas in China. Meanwhile, with the comparison, the proposed KGMC can outperform K-means and Gaussian Mixture Model (GMM) methods in terms of detection rate (DR) and false positive rate (FPR).


Keywords: District Heating Apartments, Anomaly Identification, Kernel Gaussian Mixture Cluster, Gaussian Kernel Function


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