Multi-objective Optimal Scheduling Analysis of Power System Based on Improved Particle Swarm Algorithm

Gong Mengting
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Abstract

Economic Environmental Dispatching (EED) in power systems is a multi-variable, strongly constrained, non-convex, multi-objective optimization problem that is difficult to properly handle using traditional methods. However, the application of particle swarm optimization algorithms may result in insufficient population diversity and easy to fall into local optimization problems. Therefore, this paper proposes an adaptive backbone multi-objective particle swarm optimization (ABBMOPSO) method to solve the economic and environmental scheduling problems of power systems. This paper first analyzes the topology and computational flow of particle swarm optimization algorithms, and then constructs a multi-objective optimization research framework that integrates Pareto optimization principles for the scheduling of power generation units. The execution algorithm is the improved multi-objective particle swarm optimization algorithm (MOPSO). This paper establishes a mathematical model for the economic and environmental scheduling of power systems, which optimizes conflicting fuel cost functions and pollutant emission functions simultaneously, taking into account nonlinear constraints such as load balance constraints and unit operation constraints. The improved ABBMOPSO algorithm is used to optimize the solution to improve the global search ability of the EED model. The simulation data of seven units show that the ABBMOPSO algorithm has a minimum power generation cost of 588.1 $/h and a minimum pollutant emission of 0.192 t/h, which is significantly superior to other algorithms and reduces the number of iterations, with good feasibility.
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基于改进粒子群算法的电力系统多目标优化调度分析
电力系统的经济环境调度是一个多变量、强约束、非凸、多目标的优化问题,传统方法难以处理。然而,粒子群优化算法的应用可能导致种群多样性不足,容易陷入局部优化问题。为此,本文提出了一种自适应骨干多目标粒子群优化(ABBMOPSO)方法来解决电力系统的经济和环境调度问题。本文首先分析了粒子群优化算法的拓扑结构和计算流程,在此基础上构建了一个融合Pareto优化原理的多目标优化研究框架,用于发电机组调度。执行算法为改进的多目标粒子群优化算法(MOPSO)。本文建立了电力系统经济与环境调度的数学模型,该模型考虑了负荷平衡约束和机组运行约束等非线性约束,同时优化了相互冲突的燃料成本函数和污染物排放函数。采用改进的ABBMOPSO算法对解进行优化,提高了EED模型的全局搜索能力。7台机组的仿真数据表明,ABBMOPSO算法的最小发电成本为588.1美元/h,最小污染物排放为0.192 t/h,明显优于其他算法,并且减少了迭代次数,具有较好的可行性。
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