基于粒子群算法和随机搜索的机组调度协同优化

IF 0.6 Q3 MATHEMATICS Contemporary Mathematics Pub Date : 2023-10-23 DOI:10.37256/cm.5120243638
Rajasekhar Vatambeti, P. K. Dhal
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引用次数: 0

摘要

火电机组发电顺序的优化对满足负荷需求和降低燃料消耗具有关键作用。本文介绍了一种改进的混合调度方法,用于同时实现成本和减排目标的发电机组调度。该混合方法将粒子群优化算法的参数自适应与随机搜索算法的随机性相结合。中间变量的引入增强了粒子群框架中粒子的性能,有助于更有效的优化。为了在粒子群优化过程中更新个体种群的位置,明智地使用随机搜索方法引入随机性。为了评估所提出方法的潜力,将其应用于IEEE-39总线系统和四单元热系统。将该方法与现有方法的结果进行了比较,证明了该方法在求解机组承诺问题最优解方面的有效性。
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Synergistic Optimization of Unit Commitment Using PSO and Random Search
Optimizing the order of thermal units for power generation plays a pivotal role in meeting load demand while minimizing fuel consumption. This paper introduces an enhanced hybrid method designed to schedule generating units with the simultaneous objectives of cost and emission reduction, which often pose a trade-off challenge. The hybrid approach integrates the parametric adaptation of particle swarm optimization (PSO) with the randomness of a random search algorithm. The introduction of intermediate variables enhances the performance of particles in the PSO framework, contributing to more effective optimization. To update the individual population's locations within the particle swarm optimization process, randomness is judiciously introduced using a random search method. To assess the potential of the proposed method, it is applied to the IEEE-39 bus system and a four-unit thermal system. The results obtained through the proposed approach are compared with those achieved by existing methods, demonstrating its effectiveness in achieving optimal solutions for the unit commitment problem.
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0.60
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33.30%
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