Chinese Pangolin Optimizer

Versión 2.1.1 (2,11 MB) por GUO
This paper proposes a novel bio-inspired metaheuristic algorithm, the Chinese Pangolin Optimizer (CPO).
349 Descargas
Actualizado 18 feb 2025

Ver licencia

This paper proposes a novel bio-inspired metaheuristic algorithm, the Chinese Pangolin Optimizer (CPO), which draws inspiration from the unique hunting behaviors of Chinese pangolins, including luring and predation behaviors. We successfully simulated these behaviors through mathematical modeling and systematically analyzed the algorithm’s convergence using Markov chain theory, theoretically ensuring its optimization efficiency and reliability. The numerical optimization performance of CPO was extensively evaluated using 74 standard benchmark functions, encompassing unimodal, multimodal, fixed-dimensional multimodal functions, and the CEC2017, CEC2019, and CEC2022 test suites. Experimental results and statistical analyses provided strong evidence of CPO’s effectiveness. Furthermore, CPO demonstrated exceptional performance in high-dimensional complex search tasks, as evidenced by tests conducted on 30-dimensional, 50-dimensional, and 100-dimensional CEC2017 test suites. Three standard engineering design optimization problems and twelve feature selection tasks assessed CPO’s capability in solving complex real-world problems. Experimental results show that the proposed CPO algorithm outperforms numerous baseline metaheuristic algorithms regarding optimization performance and robustness. n feature selection tasks, CPO achieved higher average classification accuracy than seven competing metaheuristic algorithms and six mainstream feature selection methods, demonstrating its versatility and superiority in addressing complex practical problems.

Citar como

GUO (2025). Chinese Pangolin Optimizer (https://la.mathworks.com/matlabcentral/fileexchange/178109-chinese-pangolin-optimizer), MATLAB Central File Exchange. Recuperado .

Guo, Zhiqing, et al. “Chinese Pangolin Optimizer: a Novel Bio-Inspired Metaheuristic for Solving Optimization Problems.” The Journal of Supercomputing, vol. 81, no. 4, Feb. 2025, https://doi.org/10.1007/s11227-025-07004-4.

Ver más estilos
Compatibilidad con la versión de MATLAB
Se creó con R2021b
Compatible con cualquier versión
Compatibilidad con las plataformas
Windows macOS Linux

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
Versión Publicado Notas de la versión
2.1.1

Added figure captions and publication DOI

2.1.0