Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia

This paper explores the application of machine learning (ML) techniques to project the future consumption of bio solar energy in Indonesia, aiming to inform and guide policy decisions in the energy sector. The transition to renewable energy sources is crucial for sustainable development, especially...

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Main Authors: Atiq Mujtaba, Komarudin
Format: Article
Language:English
Published: Universitas Muhammadiyah Yogyakarta 2024-03-01
Series:Jurnal Studi Pemerintahan
Subjects:
Online Access:https://jsp.umy.ac.id/index.php/jsp/article/view/360
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author Atiq Mujtaba
Komarudin
author_facet Atiq Mujtaba
Komarudin
author_sort Atiq Mujtaba
collection DOAJ
description This paper explores the application of machine learning (ML) techniques to project the future consumption of bio solar energy in Indonesia, aiming to inform and guide policy decisions in the energy sector. The transition to renewable energy sources is crucial for sustainable development, especially in emerging economies like Indonesia, which has shown a growing interest in bio solar energy. This research method uses Quantitative Research with Linear Regression and Sarima approaches. We employed several ML models, using Phyton which analyze with Multiple Linear Regression, Lasso Regression and Sarima, to analyze historical data on energy consumption, economic indicators, demographic changes, and technological advancements. Our findings indicate that machine learning models can effectively predict bio solar consumption trends, highlighting the influence of economic growth, urbanization, and technological innovation on renewable energy adoption. The models suggest an increasing trajectory in bio solar consumption, driven by policy incentives, technological advancements, and a growing awareness of environmental issues. The accuracy of ml predictions is contingent upon the availability and quality of data. Furthermore, the projections may not account for unforeseen economic or technological changes. Future research should focus on incorporating more dynamic data sources and exploring the impact of policy changes on renewable energy adoption. In conclusion, leveraging machine learning for policy projection offers a promising approach to support the growth of bio solar consumption in Indonesia. This study provides a foundation for future research and highlights the potential of ml in crafting informed, effective energy policies.
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publisher Universitas Muhammadiyah Yogyakarta
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spelling doaj-art-5d19bc82e73d44fcacbb7e7d4963d2e22025-02-03T07:37:55ZengUniversitas Muhammadiyah YogyakartaJurnal Studi Pemerintahan1907-83742337-82202024-03-0110413110.18196/jsp.v15i1.360361Usage of Machine Learning for Policy Projection of Bio Solar Consumption in IndonesiaAtiq Mujtaba0KomarudinUniversitas IndonesiaThis paper explores the application of machine learning (ML) techniques to project the future consumption of bio solar energy in Indonesia, aiming to inform and guide policy decisions in the energy sector. The transition to renewable energy sources is crucial for sustainable development, especially in emerging economies like Indonesia, which has shown a growing interest in bio solar energy. This research method uses Quantitative Research with Linear Regression and Sarima approaches. We employed several ML models, using Phyton which analyze with Multiple Linear Regression, Lasso Regression and Sarima, to analyze historical data on energy consumption, economic indicators, demographic changes, and technological advancements. Our findings indicate that machine learning models can effectively predict bio solar consumption trends, highlighting the influence of economic growth, urbanization, and technological innovation on renewable energy adoption. The models suggest an increasing trajectory in bio solar consumption, driven by policy incentives, technological advancements, and a growing awareness of environmental issues. The accuracy of ml predictions is contingent upon the availability and quality of data. Furthermore, the projections may not account for unforeseen economic or technological changes. Future research should focus on incorporating more dynamic data sources and exploring the impact of policy changes on renewable energy adoption. In conclusion, leveraging machine learning for policy projection offers a promising approach to support the growth of bio solar consumption in Indonesia. This study provides a foundation for future research and highlights the potential of ml in crafting informed, effective energy policies.https://jsp.umy.ac.id/index.php/jsp/article/view/360machine learningpolicy projectionbio solar consumptionindonesia
spellingShingle Atiq Mujtaba
Komarudin
Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia
Jurnal Studi Pemerintahan
machine learning
policy projection
bio solar consumption
indonesia
title Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia
title_full Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia
title_fullStr Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia
title_full_unstemmed Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia
title_short Usage of Machine Learning for Policy Projection of Bio Solar Consumption in Indonesia
title_sort usage of machine learning for policy projection of bio solar consumption in indonesia
topic machine learning
policy projection
bio solar consumption
indonesia
url https://jsp.umy.ac.id/index.php/jsp/article/view/360
work_keys_str_mv AT atiqmujtaba usageofmachinelearningforpolicyprojectionofbiosolarconsumptioninindonesia
AT komarudin usageofmachinelearningforpolicyprojectionofbiosolarconsumptioninindonesia