2023
DOI: 10.1109/access.2023.3337209
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Improved Grey Wolf Optimization Algorithm Based on Hyperbolic Tangent Inertia Weight

Weiming Lin

Abstract: The Grey Wolf Optimization Algorithm (GWO) is an algorithm that replicates the leadership and foraging mechanisms of the natural grey wolf, which excels at solving problems in a variety of domains. However, the algorithm tends to converge on local optimal and has a slow convergence rate. This paper proposes an enhanced Grey Wolf optimization algorithm (HTGWO) based on hyperbolic tangent inertia weights to solve this problem. HTGWO employs inertia weight based on hyperbolic tangent functions to balance GWO's gl… Show more

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