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Improved Black-Winged Kite Algorithm with Multi-Strategy Optimization for Identifying Dendrobium huoshanense.

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Summary
This summary is machine-generated.

This study introduces an enhanced black-winged kite algorithm (BKAIM) that improves initial population quality and diversity. The BKAIM algorithm demonstrates superior performance in optimization tasks and practical applications.

Keywords:
black-winged kite optimization algorithmdifferential mutationidentified Dendrobium huoshanenseopposition-based learningrandom boundary

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Area of Science:

  • Computational Intelligence
  • Optimization Algorithms
  • Machine Learning

Background:

  • Original black-winged kite optimization algorithm (BKA) suffers from limited search capability due to low-quality initial populations.
  • Reduced population diversity in BKA arises from blind following behavior during migration, hindering optimal exploration-exploitation balance.

Purpose of the Study:

  • To enhance the black-winged kite optimization algorithm (BKA) by addressing limitations in initial population quality and population diversity.
  • To improve the algorithm's convergence precision, exploration-exploitation balance, and overall search capabilities.
  • To validate the enhanced algorithm's effectiveness on benchmark functions and a practical application.

Main Methods:

  • Incorporated opposition-based learning for higher-quality initial population generation.
  • Integrated a differential mutation strategy during migration to mitigate blind leader-following and enhance information exchange.
  • Replaced the absorption boundary method with a random boundary approach to increase population diversity.

Main Results:

  • The improved algorithm (BKAIM) demonstrated superior convergence performance and robustness across CEC2017, CEC2019, CEC2021, and CEC2022 benchmark functions.
  • Wilcoxon rank-sum test comparisons confirmed BKAIM's enhanced performance against other algorithms.
  • BKAIM successfully optimized a support vector machine (SVM) model for grading Dendrobium huoshanense using near-infrared spectral data.

Conclusions:

  • The proposed BKAIM significantly overcomes the limitations of the original BKA, offering improved optimization capabilities.
  • BKAIM provides a robust and effective solution for complex optimization problems.
  • The algorithm's practical applicability is confirmed through successful optimization of an SVM model for plant identification.