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Titlebook: Advances in Swarm Intelligence; 4th International Co Ying Tan,Yuhui Shi,Hongwei Mo Conference proceedings 2013 Springer-Verlag Berlin Heide

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发表于 2025-3-21 20:06:13 | 显示全部楼层 |阅读模式
期刊全称Advances in Swarm Intelligence
期刊简称4th International Co
影响因子2023Ying Tan,Yuhui Shi,Hongwei Mo
视频video
发行地址Fast track conference proceedings.Unique visibility.State of the art research
学科分类Lecture Notes in Computer Science
图书封面Titlebook: Advances in Swarm Intelligence; 4th International Co Ying Tan,Yuhui Shi,Hongwei Mo Conference proceedings 2013 Springer-Verlag Berlin Heide
影响因子This book and its companion volume, LNCS vols. 7928 and 7929 constitute the proceedings of the 4th International Conference on Swarm Intelligence, ICSI 2013, held in Harbin, China in June 2013. The 129 revised full papers presented were carefully reviewed and selected from 268 submissions. The papers are organized in 22 cohesive sections covering all major topics of swarm intelligence research and developments. The following topics are covered in this volume: analysis of swarm intelligence based algorithms, particle swarm optimization, applications of particle swarm optimization algorithms, ant colony optimization algorithms, biogeography-based optimization algorithms, novel swarm-based search methods, bee colony algorithms, differential evolution, neural networks, fuzzy methods, evolutionary programming and evolutionary games.
Pindex Conference proceedings 2013
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Conception optimale de structures data, and then the particle swarm optimization algorithm is applied for piecewise area division and parameter optimization of the model. Simulation result shows that compared with traditional inversion method, better practicability and the higher significant wave height inversion precision are obtained by the proposed method.
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,Introduction à l’optimisation de formes,e, and its model parameters is optimized by an improved PSO algorithm. The monthly runoff time series from 1953 to 2003 at Manwan station is selected as an example. The results show that the improved PSO has efficient optimization performance and the proposed forecasting model could obtain higher prediction accuracy.
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Cask Theory Based Parameter Optimization for Particle Swarm Optimizationt can be used to search the tuned parameters such as inertia weight ., acceleration coefficients c. and c., and so on. This method considers the cask theory to achieve a better optimization performance. Several famous benchmarks were used to validate the proposed method and the simulation results showed the efficiency of the proposed method.
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A Piecewise Linearization Method of Significant Wave Height Based on Particle Swarm Optimization data, and then the particle swarm optimization algorithm is applied for piecewise area division and parameter optimization of the model. Simulation result shows that compared with traditional inversion method, better practicability and the higher significant wave height inversion precision are obtained by the proposed method.
发表于 2025-3-23 07:59:32 | 显示全部楼层
Parameter Identification of RVM Runoff Forecasting Model Based on Improved Particle Swarm Optimizatie, and its model parameters is optimized by an improved PSO algorithm. The monthly runoff time series from 1953 to 2003 at Manwan station is selected as an example. The results show that the improved PSO has efficient optimization performance and the proposed forecasting model could obtain higher prediction accuracy.
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