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A Multi-Strategy Improved Northern Goshawk Optimization Algorithm for Optimizing Engineering Problems.

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Summary
This summary is machine-generated.

The Multi-Strategy Improved Northern Goshawk Optimization (MSINGO) algorithm enhances the original NGO by addressing local optima and slow convergence. MSINGO demonstrates superior performance in exploration, exploitation, and scalability across various test functions and real-world problems.

Keywords:
cubic mapping strategynorthern goshawk optimizationweighted sine and cosine optimization strategyweighted stochastic difference mutation strategy

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Area of Science:

  • Computational Intelligence
  • Optimization Algorithms
  • Metaheuristic Computing

Background:

  • The Northern Goshawk Optimization (NGO) algorithm is an efficient metaheuristic but suffers from local optima entrapment and slow convergence.
  • Addressing these limitations is crucial for improving the practical applicability of optimization techniques.

Purpose of the Study:

  • To introduce the Multi-Strategy Improved Northern Goshawk Optimization (MSINGO) algorithm.
  • To enhance the exploration, exploitation, and convergence speed of the original NGO algorithm.

Main Methods:

  • The MSINGO algorithm integrates cubic mapping, weighted stochastic difference mutation, and weighted sine and cosine optimization strategies into the NGO framework.
  • Performance evaluation involved comparative experiments using CEC2017 test functions against five highly cited and six recent metaheuristic algorithms.
  • The algorithm's effectiveness was further validated on six real-world engineering problems.

Main Results:

  • MSINGO significantly outperformed competitive algorithms in exploitation ability, exploration ability, local optimal avoidance, and scalability on CEC2017 test functions.
  • Experimental results indicate a substantial improvement over the original NGO and other benchmark algorithms.
  • The algorithm demonstrated practical utility and potential when applied to real-world engineering challenges.

Conclusions:

  • The proposed MSINGO algorithm effectively overcomes the drawbacks of the original NGO, particularly in avoiding local optima and accelerating convergence.
  • MSINGO exhibits robust performance and superior capabilities compared to existing metaheuristic algorithms.
  • The study highlights MSINGO's potential for solving complex optimization problems in various domains.