2022
DOI: 10.3390/a15060205
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A Review: Machine Learning for Combinatorial Optimization Problems in Energy Areas

Abstract: 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 … Show more

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Cited by 21 publications
(11 citation statements)
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“…Oil and gas companies have complex supply chains with data spread across different systems and formats, making data integration challenging (Tirkolaee, et. al., 2021, Yang, et. al., 2022.…”
Section: Challenges and Considerationsmentioning
confidence: 99%
“…Oil and gas companies have complex supply chains with data spread across different systems and formats, making data integration challenging (Tirkolaee, et. al., 2021, Yang, et. al., 2022.…”
Section: Challenges and Considerationsmentioning
confidence: 99%
“…The fusion of ACO, ML, and Fuzzy Logic in inventory management aligns seamlessly with the principles of information sharing and interoperability within supply chains, echoing the sentiments of Khan and Abonyi (2022), particularly in the context of the burgeoning circular economy. Amidst a world where computational intelligence and optimization techniques hold increasing prominence, this integrated approach resonates with the trend of harnessing machine learning for solving combinatorial optimization problems, as discerned from the work of Yang et al (2022). This synthesis harmonizes with comprehensive efforts geared towards sustainably optimizing manufacturing processes through computational intelligence, as illuminated in "Computational Intelligence based Optimization of Manufacturing Process for Sustainable Materials" (Sinwar et al, 2023).…”
Section: Introductionmentioning
confidence: 99%
“…This methodology models business challenges as Markov decision processes and learns policies that maximize cumulative rewards through sustained interaction with the environment. Its core strengths lie in its neural-network-based approximation capabilities, rapid sequential decision making, and a degree of adaptability in addressing dynamic programming challenges [13]. Yet, when applied to actual industrial problems, these methods often grapple with expansive state spaces, extended training durations, and convergence difficulties [14], signaling the need for more efficient methods.…”
Section: Introductionmentioning
confidence: 99%