PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING
This Final Project is a study that develops a smart energy metering and electricity bill forecasting system. There are four main subsystems built, namely: embedded system circuits and Internet of Things, Android-based applications, backend applications, and machine learning. This report explains...
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id-itb.:739322023-06-25T09:42:12ZPENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING Farhan Anshari, Dimas Indonesia Final Project forcasting, forecasting electricity bill,machine learning, API, ARIMA, SARIMAX INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/73932 This Final Project is a study that develops a smart energy metering and electricity bill forecasting system. There are four main subsystems built, namely: embedded system circuits and Internet of Things, Android-based applications, backend applications, and machine learning. This report explains the development of a machine learning-based electricity bill forecasting system, which is part of the smart energy metering and electricity bill forecasting system. The basis of this research, in general, is to increase the user's awareness of the rise in electricity costs that must be paid based on its use. This research discusses in-depth the machine learning process using the ARIMA model to predict the electricity costs that the system users will pay in the future. The dataset used was obtained from a data bank (opendatanetwork.com), which is in line with the needs of this subsystem's development. The use of machine learning technology was chosen based on the evaluation metrics generated from testing 3 different models, namely ARIMA (AutoRegressive Integrated Moving Average), SVR (Support Vector Regression), and LR (Linear Regression). The use of data with a seasonal pattern caused the use of ARIMA to be changed to SARIMAX to match the dataset and produce the smallest RMSE (Root Mean Squared Error) score and an accuracy of 92.66%. The SARIMAX (1,1,2)x(1,0,1)[12] model is used in the development of this system based on the lowest AIC value. The final result of this system is a prediction (forecasting) of the electricity bill costs to be paid in the future and is integrated with the API (Application Programming Interface) so it can be accessed by the application backend. The system has been successfully built and integrated with other subsystems so that the electricity bill forecasting system can be run and used. text |
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This Final Project is a study that develops a smart energy metering and electricity
bill forecasting system. There are four main subsystems built, namely: embedded
system circuits and Internet of Things, Android-based applications, backend
applications, and machine learning. This report explains the development of a
machine learning-based electricity bill forecasting system, which is part of the
smart energy metering and electricity bill forecasting system. The basis of this
research, in general, is to increase the user's awareness of the rise in electricity
costs that must be paid based on its use. This research discusses in-depth the
machine learning process using the ARIMA model to predict the electricity costs
that the system users will pay in the future. The dataset used was obtained from a
data bank (opendatanetwork.com), which is in line with the needs of this
subsystem's development. The use of machine learning technology was chosen
based on the evaluation metrics generated from testing 3 different models, namely
ARIMA (AutoRegressive Integrated Moving Average), SVR (Support Vector
Regression), and LR (Linear Regression). The use of data with a seasonal pattern
caused the use of ARIMA to be changed to SARIMAX to match the dataset and
produce the smallest RMSE (Root Mean Squared Error) score and an accuracy of
92.66%. The SARIMAX (1,1,2)x(1,0,1)[12] model is used in the development of this
system based on the lowest AIC value. The final result of this system is a prediction
(forecasting) of the electricity bill costs to be paid in the future and is integrated
with the API (Application Programming Interface) so it can be accessed by the
application backend. The system has been successfully built and integrated with
other subsystems so that the electricity bill forecasting system can be run and used. |
format |
Final Project |
author |
Farhan Anshari, Dimas |
spellingShingle |
Farhan Anshari, Dimas PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING |
author_facet |
Farhan Anshari, Dimas |
author_sort |
Farhan Anshari, Dimas |
title |
PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING |
title_short |
PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING |
title_full |
PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING |
title_fullStr |
PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING |
title_full_unstemmed |
PENGEMBANGAN SISTEM PREDIKSI TAGIHAN PENGGUNAAN ENERGI LISTRIK BERBASIS MACHINE LEARNING |
title_sort |
pengembangan sistem prediksi tagihan penggunaan energi listrik berbasis machine learning |
url |
https://digilib.itb.ac.id/gdl/view/73932 |
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1822279731798605824 |