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Residential microgrid photovoltaic panel array sizing optimization to ensure energy supply and financial safety

机译:住宅微电网光伏面板阵列尺寸优化,以确保能源供应和财务安全

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This paper aims to demonstrate relevance of an optimized photovoltaic (PV) panel array sizing applied to a residential microgrid (MG) as well as impact of local Energy Storage System (ESS) in terms of energy price security. Firstly, the concept of residential smart microgrids (SMGs) is introduced, then elements involved in proposed smart household model are discussed. Therefore, a solar panel array sizing method as well as a way to obtain a cost function are detailed. Particle Swarm Algorithm (PSO) was used to find the best quantity of solar panels that should be installed on a given house's roof. Results are compared to a classic residential use (without on-site energy generation) of the utility grid and shows that: self-consumption case neither without storage nor ability to inject energy surplus into utility grid is not significantly profitable; self-consumption with storage but no ability to inject is not yet profitable due to high storage prices; self-consumption without storage but ability to inject energy surplus shows significant reduction of household energy bill over study period. As more and more regulations move towards massive integration of solar energy in residential context, accurate sizing of such systems could generate important earnings/savings.
机译:本文旨在证明适用于住宅微电网(MG)的优化光伏(PV)面板阵列尺寸的相关性,以及在能源价格安全方面对本地储能系统(ESS)的影响。首先介绍了住宅智能微电网(SMG)的概念,然后讨论了所提出的智能家居模型所涉及的要素。因此,详细描述了太阳能电池板阵列的尺寸确定方法以及获得成本函数的方法。粒子群算法(PSO)用于查找应在给定房屋的屋顶上安装的最佳太阳能电池板数量。将结果与公用电网的经典住宅用途(不产生现场能源)进行比较,结果表明:既没有存储又没有能力将多余的能源注入公用电网的自耗案例没有明显获利;由于存储价格高昂,具有存储的自消费但无法注射的能力尚未获利;没有存储但具有注入剩余能量的能力的自耗表明,在研究期内,家庭能源账单显着减少。随着越来越多的法规朝着在住宅环境中大规模集成太阳能的方向发展,准确确定此类系统的尺寸可能会产生重要的收益/节省。

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