论文标题
改进的适应性优化器用于解决经济负荷调度问题
Improved Fitness Dependent Optimizer for Solving Economic Load Dispatch Problem
论文作者
论文摘要
经济负载调度描述了电力系统运行中的基本作用,因为它减少了环境负荷,最大程度地减少了运营成本并保留了能源。可以通过发展几种基于进化和群体的算法来获得经济负载调度问题和各种限制的最佳解决方案。基于群体的算法的主要缺点是向最佳解决方案的过早收敛。适应性依赖性优化器是一种新型优化算法,该算法由蜂群的决策和生殖过程刺激。适应性依赖性优化器(FDO)根据粒子群优化的搜索方法检查搜索空间。为了计算节奏,适应性函数用于生成在剥削和探索阶段指导搜索剂的权重。在这项研究中,作者通过降低燃料成本,排放分配和传输损失来进行健身依赖性优化器来解决经济负载调度问题。此外,作者增强了适应性依赖性优化器的新型变体,该变体结合了新型的人群初始化技术和动态使用正弦图,以选择适应性依赖性优化器的重量因子。增强的人口初始化方法结合了准随机sabol序列,以在多维搜索空间中生成初始解决方案。使用不同功率需求的标准24单位系统进行实验评估。与常规适应性优化器相比,使用适应性优化器的增强变体获得的经验结果在低传输损失,低燃料成本和低排放分配方面表现出了出色的性能。实验研究获得了7.94E-12。
Economic Load Dispatch depicts a fundamental role in the operation of power systems, as it decreases the environmental load, minimizes the operating cost, and preserves energy resources. The optimal solution to Economic Load Dispatch problems and various constraints can be obtained by evolving several evolutionary and swarm-based algorithms. The major drawback to swarm-based algorithms is premature convergence towards an optimal solution. Fitness Dependent Optimizer is a novel optimization algorithm stimulated by the decision-making and reproductive process of bee swarming. Fitness Dependent Optimizer (FDO) examines the search spaces based on the searching approach of Particle Swarm Optimization. To calculate the pace, the fitness function is utilized to generate weights that direct the search agents in the phases of exploitation and exploration. In this research, the authors have carried out Fitness Dependent Optimizer to solve the Economic Load Dispatch problem by reducing fuel cost, emission allocation, and transmission loss. Moreover, the authors have enhanced a novel variant of Fitness Dependent Optimizer, which incorporates novel population initialization techniques and dynamically employed sine maps to select the weight factor for Fitness Dependent Optimizer. The enhanced population initialization approach incorporates a quasi-random Sabol sequence to generate the initial solution in the multi-dimensional search space. A standard 24-unit system is employed for experimental evaluation with different power demands. Empirical results obtained using the enhanced variant of the Fitness Dependent Optimizer demonstrate superior performance in terms of low transmission loss, low fuel cost, and low emission allocation compared to the conventional Fitness Dependent Optimizer. The experimental study obtained 7.94E-12.