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基于粒子群最短路径的研究与应用
- 基于粒子群最短路径的研究与应用,使得问题更加容易解决-The shortest path based on particle swarm research and application,Makes the problem easier to solve
PSO-SVM.rar
- 改进PSO-SVM在说话人识别中的应用。通过对粒子群优化算法中惯性权重和全局最优值 的分析,提出了一种根据迭代次数而自适应变化的惯性权重的粒子群优化方法,Improvement in the PSO-SVM speaker recognition applications. Through particle swarm optimization algorithm in the inertia weight and the analysis of the global optimum val
云自适应粒子群算法
- 基于云模型的自适应粒子群算法,很有思想,很好!-Based on cloud model adaptive particle swarm algorithm, very ideological, very good!
基于带变异算子的粒子群优化算法
- 基于带变异算子的粒子群优化算法 下载PDF文件-with variations based on the Operator Particle Swarm Optimization algorithm to download PDF files!
no3
- 基于粒子群算法求解二维不规则零件排样问题的方法-Based on Particle Swarm Algorithm for two-dimensional irregular parts nesting problems
AnIntroductiontoParticleSwarmOptimization
- an introduction to particle swarm
pso
- particle swarm optimization introduction
ParticleSwarmOptimization(PSO)
- 微粒群算法的课程用ptt,内有学习PSO的课用流程,相信想学习的您,不会错过-Particle Swarm Optimization courses with ptt, there are study classes with PSO flow, I believe you want to study, not to miss
swarmenergy
- Swarm based energy efficient paper
ParticleSwarmOptimization1
- 粒子群算法的简介,并说明了原理,便于理解和使用,希望有所帮助-Particle Swarm Optimization
swarm
- 优化问题是工业设计中经常遇到的问题,许多问题最后都可以归结为优化问题. 为了解决各种各样的优化问题,人们提出了许多优化算法,比较著名的有爬山法、遗传算法等.-Industrial design optimization problem is often encountered problems, many problems can be attributed to the final optimization problem. In order to solve a wide range of
Clerc_seminar_15122004
- A mini tutorial about Particle swarm optimization
Clerc_seminar_15122004
- Particle swarm optimization (PSO) was originally designed and introduced by Eberhart and Kennedy (Ebarhart, Kennedy, 1995 Kennedy, Eberhart, 1995 Ebarhart, Kennedy, 2001). The PSO is a population based search algorithm based on the simulation of
GoodsAllocatingProblemwithMultiAimsbasedonTheHybri
- 多目标货物配装问题是一个复杂的组合优化问题,属于NP难问题,本文用混合粒子群算法求解多目标货物配装问题。混合粒子群算法在基本粒子群算法的基础上,通过引进遗传算法中的交叉和变异的策略,避免了陷入局部最优,加快了达到全局最优的收敛速度。此外,本文提出用权重系数来平衡各目标使各目标都能达到相对较优的效果。-Multi-objective loading of goods is a complicated combinatorial optimization problems are NP hard p
Particle-Swarm-Optimization
- 粒子群算法在仿真生物群体社会活动的基础上,通过模拟群体生物 相互协同寻优能力,从而构造出一种新的智能优化算法。但粒子群算法 本身来源于生物群体现象,其理论基础并不完备。而且由于其属于随机 的近似优化算法,主要应用于连续区域,因此该算法存在早熟收敛和对 离散性的问题难以应用的缺点。因此,对粒子群算法的理论分析、算法 改进及离散性问题的研究具有重要意义的 -The Research of Basic Theory and Improvement on Particle Swa
A-PARTICLE-SWARM-OPTIMIZATION
- A PARTICLE SWARM OPTIMIZATION ALGORITHM BASED ON UNIFORM DESIGN
Particle-Swarm-Optimization
- 本文提出变量随机分解策略,增加关联变量分配到同组的概率,使得算法更好的保留变量间的关联性,并将合作协同进化框架融合到算法中,提出了基于大规模变量分解的多目标粒子群优化算法-In this paper, a stochastic variable decomposition strategy is proposed to increase the probability of assigning related variables to the same group, which makes th
A-Swarm-Intelligence-Algorithm
- 联合稀疏恢复的Swarm算法,在基本particle swarm optimization (PSO)算法基础上进行改进-Inspired by particle swarm optimization (PSO) algorithm and some sparse recovery algorithms, a novel swarm intelligence algorithm called M-SISR is proposed to solve the problem. In M-
Binary-particle-swarm-source
- 本文给出了二进制粒子群算法的源程序,并运用实例进行了验证。-In this paper, the source code of the binary particle swarm algorithm is given and verified by an example.
A-Particle-Swarm-Optimization-(PSO)-Primer
- A Particle Swarm Optimization (PSO) Primer