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A Hybrid Particle Swarm Optimization-Cuckoo Search Algorithm and Its Engineering Applications

机译:混合粒子群优化 - Cuckoo搜索算法及其工程应用

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This paper deals with the hybrid particle swarm optimization-Cuckoo Search (PSO-CS) algorithm which is capable of solving complicated nonlinear optimization problems. It combines the iterative scheme of the particle swarm optimization (PSO) algorithm and the searching strategy of the Cuckoo Search (CS) algorithm. Details of the PSO-CS algorithm are introduced; furthermore its effectiveness is validated by several mathematical test functions. It is shown that Lévy flight significantly influences the algorithm’s convergence process. In the second part of this paper, the proposed PSO-CS algorithm is applied to two different engineering problems. The first application is nonlinear parameter identification for the motor drive servo system. As a result, a precise nonlinear Hammerstein model is obtained. The second one is reactive power optimization for power systems, where the total loss of the researched IEEE 14-bus system is minimized using PSO-CS approach. Simulation and experimental results demonstrate that the hybrid optimal algorithm is capable of handling nonlinear optimization problems with multiconstraints and local optimal with better performance than PSO and CS algorithms.
机译:本文涉及混合粒子群优化 - Cuckoo搜索(PSO-CS)算法,其能够解决复杂的非线性优化问题。它结合了粒子群优化(PSO)算法的迭代方案和Cuckoo搜索(CS)算法的搜索策略。介绍了PSO-CS算法的细节;此外,其有效性由几种数学测试功能验证。结果表明,Lévy飞行显着影响算法的收敛过程。在本文的第二部分中,所提出的PSO-CS算法应用于两个不同的工程问题。第一个应用是电机驱动伺服系统的非线性参数识别。结果,获得了精确的非线性Hammerstein模型。第二个是电力系统的无功功率优化,其中使用PSO-CS方法最小化了研究的IEEE 14总线系统的总损失。模拟和实验结果表明,混合最佳算法能够处理多数量和局部最佳的非线性优化问题,而优于PSO和CS算法。

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