Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation

This paper discusses short-term electricity-load forecasting using an extreme learning machine (ELM) with automatic knowledge representation from a given input-output data set. For this purpose, we use a Takagi-Sugeno-Kang (TSK)-based ELM to develop a systematic approach to generating if-then rules,...

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Main Authors: Chan-Uk Yeom, Keun-Chang Kwak
Format: Article
Language:English
Published: MDPI AG 2017-10-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/10/10/1613
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spelling doaj-d983d2e5268943749a7adc5ffd92e40d2020-11-25T01:05:47ZengMDPI AGEnergies1996-10732017-10-011010161310.3390/en10101613en10101613Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge RepresentationChan-Uk Yeom0Keun-Chang Kwak1Department of Control and Instrumentation Engineering, Chosun University, Gwangju 61452, KoreaDepartment of Control and Instrumentation Engineering, Chosun University, Gwangju 61452, KoreaThis paper discusses short-term electricity-load forecasting using an extreme learning machine (ELM) with automatic knowledge representation from a given input-output data set. For this purpose, we use a Takagi-Sugeno-Kang (TSK)-based ELM to develop a systematic approach to generating if-then rules, while the conventional ELM operates without knowledge information. The TSK-ELM design includes a two-phase development. First, we generate an initial random-partition matrix and estimate cluster centers for random clustering. The obtained cluster centers are used to determine the premise parameters of fuzzy if-then rules. Next, the linear weights of the TSK fuzzy type are estimated using the least squares estimate (LSE) method. These linear weights are used as the consequent parameters in the TSK-ELM design. The experiments were performed on short-term electricity-load data for forecasting. The electricity-load data were used to forecast hourly day-ahead loads given temperature forecasts; holiday information; and historical loads from the New England ISO. In order to quantify the performance of the forecaster, we use metrics and statistical characteristics such as root mean squared error (RMSE) as well as mean absolute error (MAE), mean absolute percent error (MAPE), and R-squared, respectively. The experimental results revealed that the proposed method showed good performance when compared with a conventional ELM with four activation functions such sigmoid, sine, radial basis function, and rectified linear unit (ReLU). It possessed superior prediction performance and knowledge information and a small number of rules.https://www.mdpi.com/1996-1073/10/10/1613short-term electricity-load forecastingextreme learning machineknowledge representationTSK fuzzy typehybrid learning
collection DOAJ
language English
format Article
sources DOAJ
author Chan-Uk Yeom
Keun-Chang Kwak
spellingShingle Chan-Uk Yeom
Keun-Chang Kwak
Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation
Energies
short-term electricity-load forecasting
extreme learning machine
knowledge representation
TSK fuzzy type
hybrid learning
author_facet Chan-Uk Yeom
Keun-Chang Kwak
author_sort Chan-Uk Yeom
title Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation
title_short Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation
title_full Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation
title_fullStr Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation
title_full_unstemmed Short-Term Electricity-Load Forecasting Using a TSK-Based Extreme Learning Machine with Knowledge Representation
title_sort short-term electricity-load forecasting using a tsk-based extreme learning machine with knowledge representation
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2017-10-01
description This paper discusses short-term electricity-load forecasting using an extreme learning machine (ELM) with automatic knowledge representation from a given input-output data set. For this purpose, we use a Takagi-Sugeno-Kang (TSK)-based ELM to develop a systematic approach to generating if-then rules, while the conventional ELM operates without knowledge information. The TSK-ELM design includes a two-phase development. First, we generate an initial random-partition matrix and estimate cluster centers for random clustering. The obtained cluster centers are used to determine the premise parameters of fuzzy if-then rules. Next, the linear weights of the TSK fuzzy type are estimated using the least squares estimate (LSE) method. These linear weights are used as the consequent parameters in the TSK-ELM design. The experiments were performed on short-term electricity-load data for forecasting. The electricity-load data were used to forecast hourly day-ahead loads given temperature forecasts; holiday information; and historical loads from the New England ISO. In order to quantify the performance of the forecaster, we use metrics and statistical characteristics such as root mean squared error (RMSE) as well as mean absolute error (MAE), mean absolute percent error (MAPE), and R-squared, respectively. The experimental results revealed that the proposed method showed good performance when compared with a conventional ELM with four activation functions such sigmoid, sine, radial basis function, and rectified linear unit (ReLU). It possessed superior prediction performance and knowledge information and a small number of rules.
topic short-term electricity-load forecasting
extreme learning machine
knowledge representation
TSK fuzzy type
hybrid learning
url https://www.mdpi.com/1996-1073/10/10/1613
work_keys_str_mv AT chanukyeom shorttermelectricityloadforecastingusingatskbasedextremelearningmachinewithknowledgerepresentation
AT keunchangkwak shorttermelectricityloadforecastingusingatskbasedextremelearningmachinewithknowledgerepresentation
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