Global low carbon transitions in the power sector : a machine learning clustering approach using archetypes
Abdullah Alotaiq
This study presents an archetype-based approach to designing effective strategies for low-carbon transitions in the power sector. To achieve global energy transition goals, a renewable energy transition is critical, and understanding diverse energy landscapes across different countries is essential to designing effective renewable energy policies and strategies. Using a clustering approach, this study identifies 12 power system archetypes based on several features, including energy and socio-economic indicators of 187 UN countries. Each archetype is characterised by distinct challenges and opportunities, ranging from high dependence on fossil fuels to low electricity access, low economic growth, and insufficient contribution potential of renewables. Archetype A, for instance, consists of countries with low electricity access, high poverty rates, and limited power infrastructure, while Archetype J comprises developed countries with high electricity demand and installed renewables. The study findings have significant implications for renewable energy policymaking and investment decisions, with policymakers and investors able to use the archetype approach to identify suitable renewable energy policies and measures and assess renewable energy potential and risks. Overall, the archetype approach provides a comprehensive framework for understanding diverse energy landscapes and accelerating decarbonisation efforts for the power sector.
Year of publication: |
2024
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Authors: | Alotaiq, Abdullah |
Published in: |
Journal of economy and technology. - Amsterdam : Elsevier B.V. on behalf of KeAi Communications Co., Ltd., ISSN 2949-9488, ZDB-ID 3188375-8. - Vol. 2.2024, p. 95-127
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Subject: | Archetypes | Energy transition | Fossil fuels | Power plants | Renewable energy | Erneuerbare Energie | Treibhausgas-Emissionen | Greenhouse gas emissions | Fossile Energie | Fossil fuel | Nachhaltige Energieversorgung | Sustainable energy supply | Welt | World | Künstliche Intelligenz | Artificial intelligence | Klimaschutz | Climate protection | Energiewirtschaft | Energy sector | Kraftwerk | Power plant |
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