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A Novel Adaptive Elite-Based Particle Swarm Optimization Applied to VAR Optimization in Electric Power Systems

机译:基于新的基于自适应精英算法的粒子群算法在电力系统无功优化中的应用

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Particle swarm optimization (PSO) has been successfully applied to solve many practical engineering problems. However, more efficient strategies are needed to coordinate global and local searches in the solution space when the studied problem is extremely nonlinear and highly dimensional. This work proposes a novel adaptive elite-based PSO approach. The adaptive elite strategies involve the following two tasks: (1) appending the mean search to the original approach and (2) pruning/cloning particles. The mean search, leading to stable convergence, helps the iterative process coordinate between the global and local searches. The mean of the particles and standard deviation of the distances between pairs of particles are utilized to prune distant particles. The best particle is cloned and it replaces the pruned distant particles in the elite strategy. To evaluate the performance and generality of the proposed method, four benchmark functions were tested by traditional PSO, chaotic PSO, differential evolution, and genetic algorithm. Finally, a realistic loss minimization problem in an electric power system is studied to show the robustness of the proposed method.
机译:粒子群优化(PSO)已成功应用于解决许多实际工程问题。但是,当研究的问题是极端非线性和高维时,需要更有效的策略来协调求解空间中的全局和局部搜索。这项工作提出了一种新颖的基于自适应精英的PSO方法。自适应精英策略涉及以下两个任务:(1)将均值搜索附加到原始方法上;(2)修剪/克隆粒子。均值搜索可导致稳定收敛,有助于迭代过程在全局搜索和局部搜索之间进行协调。粒子的平均值和成对的粒子之间的距离的标准偏差用于修剪较远的粒子。最好的粒子被克隆,它取代了精英策略中修剪的远距离粒子。为了评估该方法的性能和通用性,通过传统的PSO,混沌PSO,差分进化和遗传算法对四个基准函数进行了测试。最后,研究了电力系统中一个现实的损耗最小化问题,以证明该方法的鲁棒性。

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