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A day-ahead optimal energy scheduling in a remote microgrid alongwith battery storage system via global best guided ABC algorithm

机译:通过全局最佳引导ABC算法在远程微电网以及电池存储系统中进行提前一天的最佳能源调度

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Since last decade, the concept of microgrid (MG) is growing rapidly with increasing electricity generation through renewable energy sources (RES) and small dispatchable sources. A stand-alone MG is a better option for growing unserved electricity demand especially in remote areas, where classical power transmission system is not economically and technically feasible. The energy scheduling of RES and small dispatchable sources can be efficiently handled by the inclusion of battery storage system (BSS) along with RES. Further, the BSS in MG includes some degree of complexity in the objective function of optimal scheduling strategy. This paper deals the optimal energy scheduling in stand-alone MG consisting of wind turbine (WT), photovoltaic (PV), diesel engine generators (DEs) and BSS, which is not an easy task because of uncertainty in nature, dynamic market bid, and demand profiles. The BSS is operated in three different strategies based on fluctuation in RES power, load, and market bid to obtain the optimal energy scheduling of MG in continuous and discrete operation modes of DEs. The scheduling strategies maximize the arbitrage of MG system in both modes of DEs operation. The problem is simulated in MATLAB (R) environment, using artificial bee colony (ABC) and its variant global best (Gbest) guided ABC (GABC) algorithms, and other existing algorithms as particle swarm optimization (PSO) and genetic algorithm (GA). The obtained results depict that the GABC provides better revenue and, exploration, and exploitation capabilities in all operational strategies, than ABC, PSO and GA algorithms. The operational strategy based on variable market bid, load, and RES power gives optimal revenue and reduced or equal green house gases (GHG) emissions than other strategies in the considered modes of DEs operation.
机译:自上个十年以来,随着通过可再生能源(RES)和小型可调度资源发电的增长,微电网(MG)的概念迅速发展。对于日益增长的无用电需求,尤其是在传统电力传输系统在经济和技术上都不可行的偏远地区,独立的MG是更好的选择。通过将电池存储系统(BSS)与RES一起包含在内,可以有效地处理RES和小型可调度资源的能源调度。此外,MG中的BSS在最佳调度策略的目标函数中包括一定程度的复杂性。本文研究了由风力涡轮机(WT),光伏(PV),柴油发电机(DEs)和BSS组成的独立MG的最佳能源调度,由于自然的不确定性,动态的市场竞标,和需求概况。基于RES功率,负载和市场报价的波动,BSS采用三种不同的策略进行操作,以在DE的连续和离散操作模式下获得MG的最佳能量调度。在两种DE操作模式下,调度策略都能最大程度地提高MG系统的套利性。在MATLAB(R)环境中使用人工蜂群(ABC)及其变体的全球最佳(Gbest)指导的ABC(GABC)算法以及其他现有算法(例如粒子群优化(PSO)和遗传算法(GA))对问题进行了仿真。获得的结果表明,与ABC,PSO和GA算法相比,GABC在所有运营策略中均提供了更好的收益,勘探和开发能力。在考虑的DE运行模式下,基于可变市场报价,负荷和RES功率的运行策略可提供最佳收入,并减少或等于温室气体(GHG)排放。

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