Methods of Pre-Clustering and Generating Time Series Images for Detecting Anomalies in Electric Power Usage Data

Author:

Oh Sangwon,Oh SeungminORCID,Um Tai-Won,Kim JinsulORCID,Jung Young-Ae

Abstract

As electricity supply expands, it is essential for providers to predict and analyze consumer electricity patterns to plan effective electricity supply policies. In general, electricity consumption data take the form of time series data, and to analyze the data, it is first necessary to check if there is no data contamination. For this, the process of verifying that there are no abnormalities in the data is essential. Especially for power data, anomalies are often recorded over multiple time units rather than a single point. In addition, due to various external factors, each set of power consumption data does not have consistent data features, so the importance of pre-clustering is highlighted. In this paper, we propose a method using a CNN model using pre-clustering-based time series images to detect anomalies in time series power usage data. For pre-clustering, the performances were compared using k-means, k-shapes clustering, and SOM algorithms. After pre-clustering, a method using the ARIMA model, a statistical technique for anomaly detection, and a CNN-based model by converting time series data into images compared the methods used. As a result, the pre-clustered data produced higher accuracy anomaly detection results than the non-clustered data, and the CNN-based binary classification model using time series images had higher accuracy than the ARIMA model.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference41 articles.

1. Optimization in Planning and Operation of Electric Power Systems: Lecture Notes of the SVOR/ASRO Tutorial Thun, Switzerland, October 14–16, 1992;Frauendorfer,2013

2. Electric power demand forecasting using interval time series: A comparison between VAR and iMLP

3. An electric load forecasting scheme with high time resolution based on artificial neural network;Park;KIPS Trans. Softw. Data Eng.,2017

4. Time series analysis of household electric consumption with ARIMA and ARMA models;Chujai;Proceedings of the International MultiConference of Engineers and Computer Scientists 2013 Vol I,2013

5. Research on electricity consumption behavior of electric power users based on tag technology and clustering algorithm;Zhong;Proceedings of the 2018 5th International Conference on Information Science and Control Engineering (ICISCE),2018

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