Multi-sense swarm intelligence algorithm and its application in feed-forward neural networks training
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摘要: 針對連續域函數優化問題,提出了一種新的全局極大值搜索方法——多感官群集智能算法(multi-sense swarmintelli-gence algorithm,MSA).受魚群算法(artificial fish-swarmalgorithm,AFA)和FS算法(free search algorithm,FSA)的啟發,MSA的搜索機制將大范圍勘察和小范圍精確搜索相結合,個體在使用視覺信息快速逼近局部較優解的同時,利用嗅覺信息避免群體過于集中并引導個體向全局較優解方向移動.仿真結果證明:MSA魯棒性較強,全局收斂性好,收斂速度較快,收斂精度較高.最后,將該方法應用于前向神經網絡訓練,結果表明滿足應用要求.Abstract: A novel method for global optimization, multi-sense swarm intelligence algorithm (MSA), was presented to solve continuous function optimization problems. Inspired by the artificial fish-swarm algorithm (AFA) and the FS algorithm (free search algorithm, FSA), the search mechanism of MSA combined large scale exploration and local precise search; even more, in this algorithm, the unit employed both visual information for quick approaching to local optimization solution and pheromone information to avoid overcrowding and to guide itself to global solution. Simulation shows that MSA has strong robustness, good global convergence, quick convergence speed and high convergence accuracy. At last, MSA was applied to feed-forward neural network training. The result shows that this algorithm is fit for the application.
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