Incorporating a Load-Shifting Algorithm for Optimal Energy Storage Capacity Design in Smart Homes

Designs Pub Date : 2024-01-22 DOI:10.3390/designs8010011
Ruengwit Khwanrit, Yuto Lim, S. Javaid, C. Charoenlarpnopparut, Yasuo Tan
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Abstract

In today’s power system landscape, renewable energy (RE) resources play a pivotal role, particularly within the residential sector. Despite the significance of these resources, the intermittent nature of RE resources, influenced by variable weather conditions, poses challenges to their reliability as energy resources. Addressing this challenge, the integration of an energy storage system (ESS) emerges as a viable solution, enabling the storage of surplus energy during peak-generation periods and subsequent release during shortages. One of the great challenges of ESSs is how to design ESSs efficiently. This paper focuses on a distributed power-flow system within a smart home environment, comprising uncontrollable power generators, uncontrollable loads, and multiple energy storage units. To address the challenge of minimizing energy loss in ESSs, this paper proposes a novel approach, called energy-efficient storage capacity with loss reduction (SCALE) scheme, that combines multiple-load power-flow assignment with a load-shifting algorithm to minimize energy loss and determine the optimal energy storage capacity. The optimization problem for optimal energy storage capacity is formalized using linear programming techniques. To validate the proposed scheme, real experimental data from a smart home environment during winter and summer seasons are employed. The results demonstrate the efficacy of the proposed algorithm in significantly reducing energy loss, particularly under winter conditions, and determining optimal energy storage capacity, with reductions of up to 11.4% in energy loss and up to 62.1% in optimal energy storage capacity.
结合负载转移算法优化智能家居中的储能容量设计
在当今的电力系统中,可再生能源(RE)资源发挥着举足轻重的作用,尤其是在住宅领域。尽管这些资源非常重要,但受多变天气条件的影响,可再生能源的间歇性给其作为能源资源的可靠性带来了挑战。为了应对这一挑战,整合储能系统(ESS)成为一种可行的解决方案,它可以在发电高峰期储存剩余能源,并在能源短缺时释放出来。如何有效设计 ESS 是 ESS 面临的巨大挑战之一。本文重点研究智能家居环境中的分布式电力流系统,该系统由不可控的发电机、不可控的负载和多个储能装置组成。为了应对最大限度降低 ESS 能量损耗的挑战,本文提出了一种名为 "减少损耗的高能效储能容量(SCALE)方案 "的新方法,该方案将多负载功率流分配与负载转移算法相结合,以最大限度降低能量损耗并确定最佳储能容量。最佳储能容量的优化问题采用线性规划技术进行形式化。为了验证所提出的方案,采用了智能家居环境在冬季和夏季的真实实验数据。结果表明,所提出的算法在显著降低能量损耗(尤其是在冬季条件下)和确定最佳储能容量方面非常有效,能量损耗降低了 11.4%,最佳储能容量降低了 62.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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