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Self-adaptive particle swarm optimization algorithm for global optimization

机译:全局优化的自适应粒子群算法

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Particle swarm optimization (PSO) algorithm is a simple yet powerful population-based stochastic search technique for solving optimization problems in the continuous search domain. However, the canonical PSO is more likely to get stuck at a local optimum and thereby leads to premature convergence when solving practical problems. To overcome such inconvenience, a novel PSO algorithm is reported which entitled self-adaptive particle swarm optimization (SaPSO) in this paper. Sufficiently analyzing the particles state and dynamically allocating different particles with moderate properties without increasing the population size, the core idea of the schema, maintain the diversity of the population to cope with the deception multiple local optima and reduce the computational complexity. Self-adaptive adjust the inertia weight of the velocity update rule based on the empirical values and negative feedback technique which relieve the burden of specifying the parameters values. The new method is tested on a set of well-known benchmark test functions. The simulation results suggest that it outperforms to other state-of-the-art techniques referred to in this paper in terms of the quality of the final solutions.
机译:粒子群优化(PSO)算法是一种简单但功能强大的基于种群的随机搜索技术,用于解决连续搜索领域中的优化问题。但是,规范的PSO更有可能陷入局部最优状态,从而在解决实际问题时导致过早收敛。为了克服这种不便,本文报道了一种新的PSO算法,称为自适应粒子群优化(SaPSO)。在不增加总体大小的情况下,充分分析粒子状态并动态分配具有中等属性的不同粒子,这是该方案的核心思想,保持总体的多样性以应对欺骗性的多个局部最优解,并降低了计算复杂性。自适应基于经验值和负反馈技术来调整速度更新规则的惯性权重,从而减轻了指定参数值的负担。该新方法在一组众所周知的基准测试功能上进行了测试。仿真结果表明,就最终解决方案的质量而言,它优于本文中提到的其他最新技术。

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