Machine learning solutions for renewable energy systems: Applications, challenges, limitations, and future directions

J Environ Manage. 2024 Mar:354:120392. doi: 10.1016/j.jenvman.2024.120392. Epub 2024 Feb 21.

Abstract

The Paris Agreement, a landmark international treaty signed in 2016 to limit global warming to 2°C, has urged researchers to explore various strategies for achieving its ambitious goals. While Renewable Energy (RE) innovation holds promise, it alone may not be sufficient as critical deadlines approach. This field of research presents numerous challenges, foremost among them being the costliness of materials involved. However, emerging advancements in Machine Learning (ML) technologies provide a glimmer of hope; these sophisticated algorithms can accurately predict the output of energy systems without relying on physical resources and instead leverage available data from diverse energy platforms that have emerged over recent decades. The primary objective of this paper is to comprehensively explore various ML techniques and algorithms in the context of Renewable Energy Systems (RES). The investigation will address several vital inquiries, including identifying and evaluating existing RE technologies, assessing their potential for further advancement, and thoroughly analyzing the challenges and limitations associated with their deployment and testing. Furthermore, this research examines how ML can effectively overcome these obstacles by enhancing RES performance. By identifying future research opportunities and outlining potential directions for improvement, this work seeks to contribute to developing environmentally sustainable energy systems.

Keywords: Cyber attacks; Demand forecasting; Energy storage; Fault diagnosis; Grid stability; Resource assessment.

MeSH terms

  • Algorithms*
  • Global Warming*
  • Machine Learning
  • Paris
  • Renewable Energy