Jamal Saif, Pasupuleti Jagadeesh, Ekanayake Janaka
Department of Electrical and Electronics Engineering, College of Engineering, Universiti Tenaga Nasional, 43000, Kajang, Selangor, Malaysia.
Institute of Sustainable Energy, Universiti Tenaga Nasional, 43000, Kajang, Selangor, Malaysia.
Sci Rep. 2024 Feb 28;14(1):4865. doi: 10.1038/s41598-024-54333-0.
A Nanogrid (NG) model is described as a power distribution system that integrates Hybrid Renewable Energy Sources (HRESs) and Energy Storage Systems (ESSs) into the primary grid. However, this process is affected by several factors, like load variability, market pricing, and the intermittent nature of Wind Turbines (WTs) and Photovoltaic (PV) systems. Hence, other researchers in the past have used a few optimization-based processes to improve the development of Energy Management Systems (EMSs) and ESSs, which further enhanced the operational performance of NGs. It was seen that EMS acts as the distributed energy source in the NG setup and assists in power generation, usage, dissemination, and differential pricing. Hence this study employed the MATLAB Simulink software for modelling the grid-connected NG that included HRES; such as wind and PV; in addition to 3 Battery Storage Devices (BSDs) to design an effective EMS for the NG system and decrease its overall costs. For this purpose, a Rule-Based EMS (RB-EMS) that employs State Flow (SF) to guarantee a safe and reliable operating power flow to the NG has been developed. In addition to that, a Genetic Algorithm (GA)-based optimization system and Simulated Annealing optimization Algorithm (SAA) were proposed to determine an economical solution for decreasing the cost of the NG system depending on its operational constraints. Lastly, comparison about the cost between RB-EMS, GA and SAA has been presented. According to the simulation results, the proposed GA displayed an economical performance since it could achieve a 40% cost saving whereas the SAA system showed a 19.3% cost saving compared to the RB-EMS. It can be concluded from the findings that the GA-based optimization technique was very cost-effective displays many important features, like rapid convergence, simple design, and very few controlling factors.
纳米电网(NG)模型被描述为一种将混合可再生能源(HRES)和储能系统(ESS)集成到主电网中的配电系统。然而,这个过程会受到几个因素的影响,比如负荷变化、市场定价以及风力涡轮机(WT)和光伏(PV)系统的间歇性。因此,过去其他研究人员使用了一些基于优化的方法来改进能源管理系统(EMS)和ESS的发展,这进一步提高了NG的运行性能。可以看出,EMS在NG设置中充当分布式能源,并协助发电、用电、配电和差别定价。因此,本研究使用MATLAB Simulink软件对包含HRES(如风能和太阳能光伏)的并网NG进行建模,此外还使用了3个电池存储设备(BSD)来为NG系统设计有效的EMS并降低其总成本。为此,已经开发了一种基于规则的EMS(RB-EMS),它采用状态流(SF)来确保安全可靠的运行功率流向NG。除此之外,还提出了一种基于遗传算法(GA)的优化系统和模拟退火优化算法(SAA),以根据NG系统的运行约束确定降低其成本的经济解决方案。最后,对RB-EMS、GA和SAA之间的成本进行了比较。根据仿真结果,所提出的GA显示出经济性能,因为它可以实现40%的成本节约,而与RB-EMS相比,SAA系统显示出19.3%的成本节约。从研究结果可以得出结论,基于GA的优化技术非常具有成本效益,具有许多重要特性,如快速收敛、设计简单和控制因素极少。