Algorithms (Jun 2022)

A Review: Machine Learning for Combinatorial Optimization Problems in Energy Areas

  • Xinyi Yang,
  • Ziyi Wang,
  • Hengxi Zhang,
  • Nan Ma,
  • Ning Yang,
  • Hualin Liu,
  • Haifeng Zhang,
  • Lei Yang

DOI
https://doi.org/10.3390/a15060205
Journal volume & issue
Vol. 15, no. 6
p. 205

Abstract

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Combinatorial optimization problems (COPs) are a class of NP-hard problems with great practical significance. Traditional approaches for COPs suffer from high computational time and reliance on expert knowledge, and machine learning (ML) methods, as powerful tools have been used to overcome these problems. In this review, the COPs in energy areas with a series of modern ML approaches, i.e., the interdisciplinary areas of COPs, ML and energy areas, are mainly investigated. Recent works on solving COPs using ML are sorted out firstly by methods which include supervised learning (SL), deep learning (DL), reinforcement learning (RL) and recently proposed game theoretic methods, and then problems where the timeline of the improvements for some fundamental COPs is the layout. Practical applications of ML methods in the energy areas, including the petroleum supply chain, steel-making, electric power system and wind power, are summarized for the first time, and challenges in this field are analyzed.

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