Bounty Hunter Optimizer

Bounty Hunter Optimizer: A Novel Metaheuristic with an Application to Multi-UAV Mobile Edge Computing and Path Planning

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Yu M, Yang H, Zhang J, Ouyang K, Fu S, Tan P, Jiang F, Xu J. Bounty Hunter Optimizer: A Novel Metaheuristic with an Application to Multi-UAV Mobile Edge Computing and Path Planning. Knowledge-Based Systems.
In this study, we proposed a novel metaheuristic called Bounty Hunter Optimizer (BHO), inspired by the search behavior of bounty hunters. Compared with traditional optimization methods that rely on mean aggregation, BHO adopts a decentralized position-update strategy based on local differences and random disturbances, which helps avoid center bias and population collapse. The algorithm further introduces the Explorpolis rule, a quantum probability rotation selection mechanism, and an evolutionary framework integrating “thorough investigation,” “rough search,” and “hunter reassignment,” together with a self-feedback adjustment mechanism to dynamically balance exploration and exploitation. This work was eventually published in Knowledge-Based Systems (KBS).

Cita come

Mingyang (2026). Bounty Hunter Optimizer (https://it.mathworks.com/matlabcentral/fileexchange/183483-bounty-hunter-optimizer), MATLAB Central File Exchange. Recuperato .

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Informazioni generali

Compatibilità della release di MATLAB

  • Compatibile con qualsiasi release

Compatibilità della piattaforma

  • Windows
  • macOS
  • Linux
Versione Pubblicato Note della release Action
1.0.0