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A novel Egret Swarm Optimization Algorithm (ESOA), inspired by egret hunting, offers superior performance in optimization tasks. This meta-heuristic algorithm demonstrates robust effectiveness across various benchmark and engineering problems.

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Area of Science:

  • Computational Intelligence
  • Optimization Algorithms
  • Bio-inspired Computing

Background:

  • Meta-heuristic algorithms are crucial for solving complex optimization problems.
  • Existing algorithms like PSO, GA, DE, GWO, and HHO have limitations in certain scenarios.
  • Nature-inspired algorithms often provide innovative solutions to computational challenges.

Purpose of the Study:

  • To introduce a novel meta-heuristic algorithm, the Egret Swarm Optimization Algorithm (ESOA).
  • To leverage the hunting behaviors of Great Egret and Snowy Egret for optimization.
  • To evaluate ESOA's performance against established algorithms on benchmark and engineering problems.

Main Methods:

  • Development of ESOA based on sit-and-wait, aggressive, and discriminant strategies.
  • Implementation of a pseudo gradient estimator for the sit-and-wait strategy.
  • Utilizing random wandering and encirclement for exploration in the aggressive strategy.
  • Balancing strategies with a discriminant model and incorporating a parallel framework.
  • Parameter learning through historical information for adaptability and stability.

Main Results:

  • ESOA demonstrated superior effectiveness and robustness compared to PSO, GA, DE, GWO, and HHO.
  • ESOA achieved optimal results in all unimodal benchmark functions.
  • The algorithm attained high statistical scores, exceeding 9.9 on average and reaching 10.96 and 11.92 on complex functions.

Conclusions:

  • ESOA is a highly effective and robust meta-heuristic optimization algorithm.
  • The algorithm's unique hunting-inspired strategies contribute to its superior performance.
  • ESOA shows significant potential for application in diverse optimization scenarios.