Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset

National electricity consumption increases in line with continuous population growth and other socio-economic factors. The national electric power capacity goal develops largely for industrial manufacture and new settlement. The electrification- ratio on the target; is based on the accessibility of...

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Main Authors: I Ketut Swardika, Putri Alit Widyastuti Santiary
Format: Article
Language:English
Published: Politeknik Negeri Bali 2023-11-01
Series:Matrix: Jurnal Manajemen Teknologi dan Informatika
Subjects:
Online Access:https://ojs2.pnb.ac.id/index.php/MATRIX/article/view/1287/697
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author I Ketut Swardika
Putri Alit Widyastuti Santiary
author_facet I Ketut Swardika
Putri Alit Widyastuti Santiary
author_sort I Ketut Swardika
collection DOAJ
description National electricity consumption increases in line with continuous population growth and other socio-economic factors. The national electric power capacity goal develops largely for industrial manufacture and new settlement. The electrification- ratio on the target; is based on the accessibility of electricity services. The spatial distribution of electricity services coverage over the Indonesian territory is insufficient, particularly over the remote area that is out of electric services. Modeling by spatial (location) and temporal (year) to estimate electricity or energy consumption is necessary to develop using a low-light nighttime satellite dataset, therefore spatial boundaries can be accomplished. The modeling procedure starts by preparing the data frame of the independent variable input (amount of radiance) and the dependent variable output (the consumption of electricity or energy). The modelling method uses the curve-fitting approach where the indicator results by evaluating the R-square and RMSE values. The output model function is used to convert radiances into electrical power consumption units with a certain degree of accuracy. The selection of the input-output variable was achieved after variable analysis with the highest R-square outcome. Results indicate that the model functions in a polynomial form and correlations between variables are not simple. The selection of various model functions did not change the degree of correlation. The accumulative of energy radiances as independent variable input provides the optimum correlation result. The energy consumption from street lighting, in general, offers appropriate information that can be seen from satellites. The model function can be applied to a narrower spatial scale by input variable constraints.
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spelling doaj.art-7889f35538a54e79b1f79e7382fed0d82023-12-02T01:30:44ZengPoliteknik Negeri BaliMatrix: Jurnal Manajemen Teknologi dan Informatika2088-284X2580-56302023-11-0113316617510.31940/matrix.v13i3.166-175Modelling spatio-temporal energy consumption from nighttime radiance satellite datasetI Ketut Swardika0Putri Alit Widyastuti Santiary1Electrical Engineeting, Politeknik Negeri Bali, IndonesiaElectrical Engineeting, Politeknik Negeri Bali, IndonesiaNational electricity consumption increases in line with continuous population growth and other socio-economic factors. The national electric power capacity goal develops largely for industrial manufacture and new settlement. The electrification- ratio on the target; is based on the accessibility of electricity services. The spatial distribution of electricity services coverage over the Indonesian territory is insufficient, particularly over the remote area that is out of electric services. Modeling by spatial (location) and temporal (year) to estimate electricity or energy consumption is necessary to develop using a low-light nighttime satellite dataset, therefore spatial boundaries can be accomplished. The modeling procedure starts by preparing the data frame of the independent variable input (amount of radiance) and the dependent variable output (the consumption of electricity or energy). The modelling method uses the curve-fitting approach where the indicator results by evaluating the R-square and RMSE values. The output model function is used to convert radiances into electrical power consumption units with a certain degree of accuracy. The selection of the input-output variable was achieved after variable analysis with the highest R-square outcome. Results indicate that the model functions in a polynomial form and correlations between variables are not simple. The selection of various model functions did not change the degree of correlation. The accumulative of energy radiances as independent variable input provides the optimum correlation result. The energy consumption from street lighting, in general, offers appropriate information that can be seen from satellites. The model function can be applied to a narrower spatial scale by input variable constraints.https://ojs2.pnb.ac.id/index.php/MATRIX/article/view/1287/697curve fittingenergy consumptionmodellingntl nighttimeradiances
spellingShingle I Ketut Swardika
Putri Alit Widyastuti Santiary
Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset
Matrix: Jurnal Manajemen Teknologi dan Informatika
curve fitting
energy consumption
modelling
ntl nighttime
radiances
title Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset
title_full Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset
title_fullStr Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset
title_full_unstemmed Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset
title_short Modelling spatio-temporal energy consumption from nighttime radiance satellite dataset
title_sort modelling spatio temporal energy consumption from nighttime radiance satellite dataset
topic curve fitting
energy consumption
modelling
ntl nighttime
radiances
url https://ojs2.pnb.ac.id/index.php/MATRIX/article/view/1287/697
work_keys_str_mv AT iketutswardika modellingspatiotemporalenergyconsumptionfromnighttimeradiancesatellitedataset
AT putrialitwidyastutisantiary modellingspatiotemporalenergyconsumptionfromnighttimeradiancesatellitedataset