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A hybrid of particle swarm and ant colony optimization algorithms for reactive power market simulation

机译:混合粒子群算法和蚁群算法的无功市场仿真

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摘要

In Particle Swarm Optimization (PSO) algorithm, although taking an active role to guide particles moving toward optimal solution, the most-fit candidate does not have a guide itself and only moves along its velocity vector in every iteration. This may yield a noticeable number of agents converge into local optima if the guide (i.e. the most fit candidate) agent cannot explore the best solution. In this paper, an attempt is made to get the advantage of the Ant Colony Optimization (ACO) methodology to assist the PSO algorithm for choosing a proper guide for each particle. This will strengthen the PSO abilities for not getting involved in local optima. As a result, we present a promising new hybrid particle swarm optimization algorithm, called ACPSO. The capability of the presented algorithm to solve a nonlinear optimization problem is demonstrated using different case studies carried out for optimal reactive power procurement. The IEEE 14-bus and 118-bus systems are adopted for reactive power market simulation. The main objective of the market is to minimize total generation costs of reactive power and transmission losses at different voltage stability margins. Based on the GAMS modeling language and the CONOPT solver, solutions are obtained for different models using a conventional non-linear optimization technique. Compared with the solutions found by the GAMS, Genetic Algorithm (GA) and the original PSO, the proposed ACPSO algorithm can provide promising results in terms of robustness and overall efficiency when it is applied to the reactive power market.
机译:在粒子群优化(PSO)算法中,尽管扮演了积极的角色来引导粒子向最优解方向移动,但最适合的候选对象本身没有向导,仅在每次迭代中沿其速度矢量移动。如果指导(即最适合的候选人)代理无法探索最佳解决方案,这可能会产生大量代理收敛到局部最优状态。在本文中,尝试利用蚁群优化(ACO)方法来协助PSO算法为每个粒子选择合适的指南。这将增强PSO不参与局部最优的能力。结果,我们提出了一种有前途的新混合粒子群优化算法,称为ACPSO。使用为优化无功功率而进行的不同案例研究,证明了所提出算法解决非线性优化问题的能力。 IEEE 14总线和118总线系统被用于无功功率市场仿真。市场的主要目标是在不同的电压稳定裕度下将无功功率的总发电成本和传输损耗降至最低。基于GAMS建模语言和CONOPT求解器,可以使用常规的非线性优化技术获得不同模型的解决方案。与GAMS,遗传算法(GA)和原始PSO所找到的解决方案相比,所提出的ACPSO算法在应用于无功市场时,在鲁棒性和总体效率方面可以提供令人鼓舞的结果。

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