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DMARS_WGO: a deep reinforcement-driven hybrid metaheuristic for intelligent adaptive optimization.

Nada R Yousif1,2, Eman M El-Gendy3, Amira Y Haikal1

  • 1Computers and Control Systems Engineering Department, Faculty of Engineering, Mansoura University, Mansoura, Egypt.

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|April 22, 2026
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Summary

This study introduces two novel metaheuristics, AIRE_WGO and DMARS_WGO, to address complex optimization challenges. The Dual-Mode Adaptive Reinforced Switching Walrus-Gazelle Optimizer (DMARS_WGO) demonstrates superior performance and robustness in scientific and engineering applications.

Keywords:
DMARS_WGO algorithmDeep Q-networkDual-mode Q-learningExploration–exploitation balanceMetaheuristic optimizationReinforcement learningWalrus–Gazelle optimizer

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Area of Science:

  • Optimization algorithms
  • Computational science
  • Engineering applications

Background:

  • Metaheuristics are crucial for complex, high-dimensional problems.
  • Existing algorithms struggle with exploration-exploitation balance, leading to premature convergence.
  • Need for improved adaptive decision-making in optimization.

Purpose of the Study:

  • Introduce two novel reinforcement-based metaheuristics: AIRE_WGO and DMARS_WGO.
  • Enhance adaptive decision-making and convergence properties of optimization algorithms.
  • Improve performance on complex scientific and engineering problems.

Main Methods:

  • Developed Adaptive Intelligent Reinforced Walrus-Gazelle Optimizer (AIRE_WGO) using Q-learning for adaptive parameter control and diversity-informed mutations.
  • Introduced Dual-Mode Adaptive Reinforced Switching Walrus-Gazelle Optimizer (DMARS_WGO) with a dual-agent reinforcement framework (Q-learning and Deep Q-Network).
  • Implemented cross-agent knowledge sharing for enhanced cooperative intelligence and stability in DMARS_WGO.

Main Results:

  • DMARS_WGO outperformed nine state-of-the-art optimizers on CEC2017 and CEC2022 benchmark suites and engineering design problems.
  • DMARS_WGO achieved first rank in 26/29 CEC2017 functions and 8/12 CEC2022 functions.
  • Statistical tests confirmed DMARS_WGO's significant superiority and robust self-adaptive search dynamics.

Conclusions:

  • AIRE_WGO and DMARS_WGO offer advanced solutions for complex optimization problems.
  • DMARS_WGO exhibits exceptional performance and robustness due to its dual-agent reinforcement learning and adaptive switching capabilities.
  • The proposed algorithms, particularly DMARS_WGO, are highly effective for real-world engineering optimization tasks.