Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors

Stable and reliable electricity is one of the essential things that must be maintained by the transmission system operator (TSO). That can be achieved when the TSO is able to set the balance between demand and production. To maintain the balance between production and demand, TSO should estimate how...

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Main Authors: Rio Indralaksono, M. Abdul Wakhid, Novemi Uki A, Galih Hendra Wibowo, M. Abdillah, Agus Budi Rahardjo, Diana Purwitasari
Format: Article
Language:English
Published: Ikatan Ahli Informatika Indonesia 2022-08-01
Series:Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
Subjects:
Online Access:http://jurnal.iaii.or.id/index.php/RESTI/article/view/4282
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author Rio Indralaksono
M. Abdul Wakhid
Novemi Uki A
Galih Hendra Wibowo
M. Abdillah
Agus Budi Rahardjo
Diana Purwitasari
author_facet Rio Indralaksono
M. Abdul Wakhid
Novemi Uki A
Galih Hendra Wibowo
M. Abdillah
Agus Budi Rahardjo
Diana Purwitasari
author_sort Rio Indralaksono
collection DOAJ
description Stable and reliable electricity is one of the essential things that must be maintained by the transmission system operator (TSO). That can be achieved when the TSO is able to set the balance between demand and production. To maintain the balance between production and demand, TSO should estimate how much demand must be served. In order to do that, the next day short-term load forecasting is an essential step that TSO should be done. Generally, load forecasting can be done through conventional techniques such as least square, time series, etc. However, this method has been sought over time as the electricity demand is increasing significantly over the years. Hence, this paper proposed another approach for short-term load forecasting using Deep Neural Networks, widely known as Long Short-Term Memory (LSTM). In addition, this paper clusters historical electrical loads to obtain similar patterns into several clusters before forecasting. We also explored other influence factors in the observed days, such as weather conditions and the human activity cycle represented by holidays, in a neural network-based classification model to predict the targeted clusters of electrical loads. East Java sub-system is used as the test system to investigate the efficacy of the proposed load forecasting method. From the simulation results, it is found that the proposed method could provide a better forecast on all indicators compared to the conventional method, as indicated by MaxAPE and MAPE are around 4,91% and 2,02%, while the RMSE is 112,08 MW.
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spelling doaj.art-3bcf266aa33c4156a6f898476aa5661d2024-02-02T05:31:00ZengIkatan Ahli Informatika IndonesiaJurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)2580-07602022-08-016469270110.29207/resti.v6i4.42824282Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced FactorsRio Indralaksono0M. Abdul Wakhid1Novemi Uki A2Galih Hendra Wibowo3M. Abdillah4Agus Budi Rahardjo5Diana Purwitasari6Institut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberPolytechnic State BanyuwangiPertamina UniversityInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberStable and reliable electricity is one of the essential things that must be maintained by the transmission system operator (TSO). That can be achieved when the TSO is able to set the balance between demand and production. To maintain the balance between production and demand, TSO should estimate how much demand must be served. In order to do that, the next day short-term load forecasting is an essential step that TSO should be done. Generally, load forecasting can be done through conventional techniques such as least square, time series, etc. However, this method has been sought over time as the electricity demand is increasing significantly over the years. Hence, this paper proposed another approach for short-term load forecasting using Deep Neural Networks, widely known as Long Short-Term Memory (LSTM). In addition, this paper clusters historical electrical loads to obtain similar patterns into several clusters before forecasting. We also explored other influence factors in the observed days, such as weather conditions and the human activity cycle represented by holidays, in a neural network-based classification model to predict the targeted clusters of electrical loads. East Java sub-system is used as the test system to investigate the efficacy of the proposed load forecasting method. From the simulation results, it is found that the proposed method could provide a better forecast on all indicators compared to the conventional method, as indicated by MaxAPE and MAPE are around 4,91% and 2,02%, while the RMSE is 112,08 MW.http://jurnal.iaii.or.id/index.php/RESTI/article/view/4282forecasting, electricity, load, long short-term memory, analytical hierarchical clustering
spellingShingle Rio Indralaksono
M. Abdul Wakhid
Novemi Uki A
Galih Hendra Wibowo
M. Abdillah
Agus Budi Rahardjo
Diana Purwitasari
Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors
Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
forecasting, electricity, load, long short-term memory, analytical hierarchical clustering
title Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors
title_full Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors
title_fullStr Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors
title_full_unstemmed Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors
title_short Hierarchical Clustering and Deep Learning for Short-Term Load Forecasting with Influenced Factors
title_sort hierarchical clustering and deep learning for short term load forecasting with influenced factors
topic forecasting, electricity, load, long short-term memory, analytical hierarchical clustering
url http://jurnal.iaii.or.id/index.php/RESTI/article/view/4282
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