The multiscale quantum harmonic oscillator algorithm (MQHOA) is inspired by the physical meaning of quantum wavefunction.Particles have no efficient interaction and share a wavefunction during the evolution process.In this paper, a multi-harmonic oscillator strategy is introduced, jmannino.com which employs multiple wavefunctions to generate new particles.
The external population information can be utilized in the process of evolution.The proposed method enhances the cooperation and interaction for particles by a local collaborative operation.Moreover, an adaptive weight operator is employed in the proposed algorithm, which makes a fine-tune of solutions to keep the diversity of particles.
The proposed algorithm is verified on standard benchmark functions.Wilcoxon rank sum test is adopted to ascertain the superiority of the proposed algorithm.The experiments have dodge warlord for sale been conducted with several renowned heuristic algorithms.
The numerical results reveal that the proposed algorithm outperforms the comparison algorithms for numerical optimization.