TY - Type of reference TI - Application of Machine Learning in Energy Systems – a Comparative Analysis of Three Review Case Studies AU - Michael Rath AU - Naga Lokesh Gunturu Venkata AU - Kiran George AU - Jayares Prince AB - The exponential growth in the number of papers published annually in the field of machine learning applications in energy systems presents a challenge to researchers seeking to conduct comprehensive and effective literature reviews. To address this issue, we took a systematic literature review approach with three distinct smaller case studies focusing on the application of machine learning in energy systems, namely 1. Machine learning in drilling, 2. Machine learning for rooftop solar energy potential quantification, and 3. Machine learning in district heating and cooling in the context of seasonal thermal energy storages. In each case, we employed a systematic literature review methodology. For topic one, we utilized an existing comprehensive review to generate further insights and information. For topics two and three, we used predefined search criteria to conduct relevant publications in a systematic and reproducible manner. We investigate the state of the art of the use of machine learning in these distinct areas of inquiry, thereby facilitating the identification of research gaps. Ultimately, we compare approaches and models utilized in each field, identified common best practices, and propose methods to address potential challenges. The instructions put together below fall into four categories. DO - 10.21494/ISTE.OP.2024.1134 JF - Entropy: Thermodynamics – Energy – Environment – Economy KW - Energy systems, Machine Learning, Review, Drilling, ATES, Geothermal, Aerial Imaging, District heating and cooling, Systèmes énergétiques, Apprentissage automatique, Révision, Forage, Stockage d’énergie thermique en aquifère, Géothermique, Imagerie aérienne, Chauffage et refroidissement urbains, L1 - https://openscience.fr/IMG/pdf/iste_entropie23v4n4_3.pdf LA - en PB - ISTE OpenScience DA - 2024/03/25 SN - 2634-1476 TT - Application de l’apprentissage automatique dans les systèmes énergétiques - une analyse comparative de trois études de cas de revue UR - https://openscience.fr/Application-of-Machine-Learning-in-Energy-Systems-a-Comparative-Analysis-of IS - Special issue ECOS VL - 4 ER -