Optimizing Energy Storage System Operations and Configuration through a Whale Optimization Algorithm Enhanced with Chaotic Mapping and IoT Data: Enhancing Efficiency and Longevity of Energy Storage Stations

IF 1.6 Q4 ENERGY & FUELS Wireless Power Transfer Pub Date : 2023-12-04 DOI:10.1155/2023/9998972
Meizhen Gao
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Abstract

To enhance the charging and discharging strategy of the energy storage system (ESS) and optimize its economic efficiency, this paper proposes a novel approach based on the enhanced whale algorithm. Recognizing that the standard whale algorithm can sometimes suffer from local optima in high-dimensional multiobjective optimization, this study introduces chaotic mapping and individual information exchange mechanisms to address this challenge. The proposed algorithm explores optimal configurations for different energy device placements and capacities through encircling and bubble searches, evaluating various multiobjective functions for optimization. In addition, the algorithm refines both the system operation model and the ESS configuration model, with the objective function being the analysis of the average annual revenue of the ESS. Model testing results demonstrate that this algorithm yields more moderate energy storage (ES) capacity decay, extending operational time to 3,124 days and achieving a full-life cycle benefit of the ESS as high as 1,821,623.68 yuan. Also, our algorithm demonstrates high efficiency, with minimal test time (68.36 seconds) and quick optimization (0.031 seconds per cycle), regardless of problem complexity.
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通过混沌映射和物联网数据增强的鲸鱼优化算法优化储能系统的运行和配置:提高储能站的效率和寿命
为了优化储能系统的充放电策略,优化储能系统的经济效率,提出了一种基于增强型鲸鱼算法的储能系统充放电策略优化方法。考虑到标准鲸鱼算法在高维多目标优化中有时会出现局部最优,本研究引入了混沌映射和个体信息交换机制来解决这一挑战。该算法通过环形搜索和气泡搜索,探索不同能量装置放置位置和容量的最优配置,评估各种多目标函数进行优化。此外,该算法对系统运行模型和ESS配置模型进行了细化,目标函数为分析ESS的平均年收益。模型测试结果表明,该算法的储能容量衰减较为温和,运行时间延长至3124天,储能系统全生命周期效益高达1821623.68元。此外,我们的算法效率很高,无论问题的复杂性如何,测试时间最短(68.36秒),优化速度最快(每周期0.031秒)。
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来源期刊
Wireless Power Transfer
Wireless Power Transfer ENERGY & FUELS-
CiteScore
2.50
自引率
0.00%
发文量
3
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