Suzhou Electric Appliance Research Institute
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基于改進(jìn)蜻蜓算法的混合儲(chǔ)能容量?jī)?yōu)化配置

來(lái)源:電工電氣發(fā)布時(shí)間:2024-08-30 15:30 瀏覽次數(shù):30

基于改進(jìn)蜻蜓算法的混合儲(chǔ)能容量?jī)?yōu)化配置

黃禮燦,秦斌
(湖南工業(yè)大學(xué) 電氣與信息工程學(xué)院,湖南 株洲 412007)
 
    摘 要:針對(duì)傳統(tǒng)方法在風(fēng)光儲(chǔ)能系統(tǒng)容量?jī)?yōu)化配置過(guò)程中求解精度較低、效率較慢等問(wèn)題,提出一種改進(jìn)蜻蜓算法(IDA)。通過(guò)采用 Logistic 混沌初始化和非線性慣性權(quán)重兩種策略對(duì)原始蜻蜓算法進(jìn)行改進(jìn),使算法能夠在初始化階段分布更均勻,全局搜索和局部開發(fā)更加協(xié)調(diào),同時(shí)更快鎖定最優(yōu)解區(qū)域;構(gòu)建混合儲(chǔ)能系統(tǒng)容量?jī)?yōu)化模型,以儲(chǔ)能裝置的生命周期費(fèi)用作為目標(biāo)函數(shù),并考慮負(fù)荷缺電率、儲(chǔ)能系統(tǒng)能量等約束條件。使用 MATLAB 軟件對(duì)算例進(jìn)行仿真分析,通過(guò) 3 種算法的仿真結(jié)果對(duì)比發(fā)現(xiàn),采用改進(jìn)蜻蜓算法蓄電池個(gè)數(shù)有所減少,全生命周期費(fèi)用也相對(duì)降低,有較好的經(jīng)濟(jì)適用性。
    關(guān)鍵詞: 混合儲(chǔ)能;容量配置;改進(jìn)蜻蜓算法;混沌初始化;蓄電池;全生命周期費(fèi)用
    中圖分類號(hào):TM734 ;TM912     文獻(xiàn)標(biāo)識(shí)碼:A     文章編號(hào):1007-3175(2024)08-0001-07
 
Optimal Configuration of Hybrid Energy Storage Capacity Based on
Improved Dragonfly Algorithm
 
HUANG Li-can, QIN Bin
(College of Electrical and Information Engineering, Hunan University of Technology, Zhuzhou 412007, China)
 
    Abstract: Aiming at the problems of lower solution accuracy and slower efficiency of traditional methods in the process of capacity optimization and configuration of wind energy storage system, an improved dragonfly algorithm (IDA) is proposed. The original dragonfly algorithm is improved by adopting two strategies: Logistic chaotic initialization and nonlinear inertia weights, so that the algorithm can be more uniformly distributed in the initialization stage, the global search and local development can be more coordinated and lock the optimal solution region more quickly at the sametime, constructing the capacity optimization model of the hybrid energy storage system, taking the life-cycle cost of the storage device as the objective function and considering load power shortage rate, energy storage system and other constraints. Finally, this paper uses MATLAB software to simulate and analyze the algorithm, the simulation results of the three algorithms are compared and found, using the improved dragonfly algorithm, the number of storage batteries is reduced, the cost of full life-cycle is also relatively reduced and it has better economic applicability.
    Key words: hybrid energy storage; capacity configuration; improved dragonfly algorithm; chaotic initialization; storage battery; full life-cycle cost
 
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