Iqra Fatima, Sikandar Asif, Sundas Shafiq, Itrat Fatima, M. H. Rahim, N. Javaid
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引用次数: 4
摘要
本文提出了一种将大象群优化(EHO)和萤火虫优化(FF)两种元启发式算法相结合的新算法来解决电力成本降低问题。提出了一种基于不同家庭用电任务调度的家庭能源管理控制器(HEMC),以保持负荷和需求的平衡。本研究的目的是在考虑用户舒适最大化因子和峰值平均比(PAR)的情况下确定最低成本。将所提出的混合象萤优化算法(Hybrid Elephant and Firefly, HEF)与其单独实现的算法进行对比分析,以评估其对调度过程的性能和行为。此外,还采用了三种不同的定价模型来计算总耗电量。仿真结果表明,本文提出的混合优化方法能够更有效地实现成本最低和用户满意度最大化。
Efficient Demand Side Management Using Hybridization of Elephant Herding Optimization and Firefly Optimization
This paper presents a new algorithm to solve the problem of electricity cost reduction by hybridization of two meta-heuristic techniques, i.e., Elephant Herding Optimization (EHO) and Firefly Optimization (FF). A home energy management controller (HEMC), based on scheduling of different household electrical tasks is proposed to maintain balance between load and demand profile. The objective of this study is to determine lowest cost while considering user comfort maximization factor and peak to average ratio (PAR). The proposed algorithm, i.e., Hybrid Elephant and Firefly (HEF) optimization is analyzed comparatively to its' separate implemented versions to evaluate the performance and behavior towards scheduling process. Moreover, three different pricing models are used to calculate the total power consumption rate. Simulation results show that our proposed hybrid optimization technique performs more efficiently to achieve lowest cost and maximum consumer satisfaction.