PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA

Demand of electric power in Samarinda continuously increasing in line with development of Samarinda city. To fill the demand of electricity in the future at a certain period, it is necessary to know precisely the demand for electricity in the certain period. This research has been carried out mid-te...

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Main Author: Muslimin Muslimin
Format: Article
Language:English
Published: Muhammadiyah University Press 2016-01-01
Series:Jurnal Ilmiah Teknik Industri
Subjects:
Online Access:http://journals.ums.ac.id/index.php/jiti/article/view/677
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spelling doaj-543a01067959408fab784abe3b5f78b92020-11-25T02:16:44ZengMuhammadiyah University PressJurnal Ilmiah Teknik Industri1412-68692460-40382016-01-0114211312110.23917/jiti.v14i2.6771155PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDAMuslimin Muslimin0Program Studi Teknik Elektro-Fakultas Teknik Universitas Mulawarman, Jl. Sambaliung No.09 Kampus Gunung Kelua Samarinda 75119Demand of electric power in Samarinda continuously increasing in line with development of Samarinda city. To fill the demand of electricity in the future at a certain period, it is necessary to know precisely the demand for electricity in the certain period. This research has been carried out mid-term electric load forecasting electricity system in Samarinda using Artificial Neural Network (ANN). This method is an excellent method for finding non-linear relationship between load with economic factors are varied, and can make adjustments to the changes.The result of this study indicates that the selection of parameters such as the learning method, the number of neurons, hidden layer and influence the accuracy of forecasting the electrical load. From the results of electric power load forecasting medium term Samarinda MSE values obtained by 6,9134E + 03, using the parameters training and network configuration [7-70-1]. Retrieved peak load in 2020 amounted to 741 MW, close to the electrical plan of PT. PLN (Persero) amounting to 718 MW. In the electricity load forecasting is well known that the annual burden will increase.http://journals.ums.ac.id/index.php/jiti/article/view/677forecastingload powerArtificial Neural Network
collection DOAJ
language English
format Article
sources DOAJ
author Muslimin Muslimin
spellingShingle Muslimin Muslimin
PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA
Jurnal Ilmiah Teknik Industri
forecasting
load power
Artificial Neural Network
author_facet Muslimin Muslimin
author_sort Muslimin Muslimin
title PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA
title_short PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA
title_full PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA
title_fullStr PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA
title_full_unstemmed PERAMALAN BEBAN LISTRIK JANGKA MENENGAH PADA SISTEM KELISTRIKAN KOTA SAMARINDA
title_sort peramalan beban listrik jangka menengah pada sistem kelistrikan kota samarinda
publisher Muhammadiyah University Press
series Jurnal Ilmiah Teknik Industri
issn 1412-6869
2460-4038
publishDate 2016-01-01
description Demand of electric power in Samarinda continuously increasing in line with development of Samarinda city. To fill the demand of electricity in the future at a certain period, it is necessary to know precisely the demand for electricity in the certain period. This research has been carried out mid-term electric load forecasting electricity system in Samarinda using Artificial Neural Network (ANN). This method is an excellent method for finding non-linear relationship between load with economic factors are varied, and can make adjustments to the changes.The result of this study indicates that the selection of parameters such as the learning method, the number of neurons, hidden layer and influence the accuracy of forecasting the electrical load. From the results of electric power load forecasting medium term Samarinda MSE values obtained by 6,9134E + 03, using the parameters training and network configuration [7-70-1]. Retrieved peak load in 2020 amounted to 741 MW, close to the electrical plan of PT. PLN (Persero) amounting to 718 MW. In the electricity load forecasting is well known that the annual burden will increase.
topic forecasting
load power
Artificial Neural Network
url http://journals.ums.ac.id/index.php/jiti/article/view/677
work_keys_str_mv AT musliminmuslimin peramalanbebanlistrikjangkamenengahpadasistemkelistrikankotasamarinda
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