4 research outputs found

    Simplex search-based brain storm optimization

    Get PDF
    Through modeling human's brainstorming process, the brain storm optimization (BSO) algorithm has become a promising population-based evolutionary algorithm. However, BSO is pointed out that it possesses a degenerated L-curve phenomenon, i.e., it often gets near optimum quickly but needs much more cost to improve the accuracy. To overcome this question in this paper, an excellent direct search-based local solver, the Nelder-Mead Simplex method is adopted in BSO. Through combining BSO's exploration ability and NMS's exploitation ability together, a simplex search-based BSO (Simplex-BSO) is developed via a better balance between global exploration and local exploitation. Simplex-BSO is shown to be able to eliminate the degenerated L-curve phenomenon on unimodal functions, and alleviate significantly this phenomenon on multimodal functions. Large number of experimental results shows that Simplex-BSO is a promising algorithm for global optimization problems

    最適化問題に対するブレインストーム最適化アルゴリズムの改善

    Get PDF
    富山大学・富理工博甲第170号・于洋・2020/3/24富山大学202

    Improvement of Robot Path Planning by Brain Storm Algorithm

    Get PDF
    corecore