2024
DOI: 10.1002/widm.1548
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Advancements in Q‐learning meta‐heuristic optimization algorithms: A survey

Yang Yang,
Yuchao Gao,
Zhe Ding
et al.

Abstract: This paper reviews the integration of Q‐learning with meta‐heuristic algorithms (QLMA) over the last 20 years, highlighting its success in solving complex optimization problems. We focus on key aspects of QLMA, including parameter adaptation, operator selection, and balancing global exploration with local exploitation. QLMA has become a leading solution in industries like energy, power systems, and engineering, addressing a range of mathematical challenges. Looking forward, we suggest further exploration of me… Show more

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