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Multi-Objective Optimization and Design of Photovoltaic-Wind Hybrid System for Community Smart DC Microgrid

机译:社区智能直流微电网光伏风电混合系统的多目标优化设计

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Renewable energy sources continues to gain popularity. However, two major limitations exist that prevent widespread adoption: availability of the electricity generated and the cost of the equipment. Distributed generation, (DG) grid-tied photovoltaic-wind hybrid systems with centralized battery back-up, can help mitigate the variability of the renewable energy resource. The downside, however, is the cost of the equipment needed to create such a system. Thus, optimization of generation and storage in light of capital cost and variability mitigation is imperative to the financial feasibility of DC microgrid systems. PV and wind generation are both time dependent and variable but are highly correlated, which make them ideal for a dual-sourced hybrid system. This paper presents an optimization technique base on a Multi-Objective Genetic Algorithm (MOGA) which uses high temporal resolution insolation data taken at 10 seconds data rate instead of more commonly used hourly data rate. The proposed methodology employs a techno-economic approach to determine the system design optimized by considering multiple criteria including size, cost, and availability. The result is the baseline system cost necessary to meet the load requirements and which can also be used to monetize ancillary services that the smart DC microgrid can provide to the utility at the point of common coupling (PCC) such as voltage regulation. The hybrid smart DC microgrid community system optimized using high-temporal resolution data is compared to a system optimized using lower-rate temporal data to examine the effect of the temporal sampling of the renewable energy resource.
机译:<?Pub Dtl?>可再生能源继续受到欢迎。但是,存在两个阻碍广泛采用的局限性:发电的可用性和设备的成本。具有集中式备用电池的分布式发电(DG)并网光伏风混合系统可以帮助减轻可再生能源的可变性。但是,缺点是创建此类系统所需的设备成本。因此,根据资本成本和减少可变性来优化发电和存储对于直流微电网系统的财务可行性至关重要。光伏发电和风力发电都是时间相关的且可变的,但高度相关,这使其成为双源混合动力系统的理想选择。本文提出了一种基于多目标遗传算法(MOGA)的优化技术,该算法使用以10秒数据速率获取的高时间分辨率日照数据,而不是更常用的每小时数据速率。通过考虑包括大小,成本和可用性在内的多个标准,所提出的方法采用了一种技术经济的方法来确定优化的系统设计。结果是满足负载需求所必需的基准系统成本,该成本也可用于货币化智能DC微电网可在公用耦合(PCC)点提供给公用事业的辅助服务,例如电压调节。将使用高时间分辨率数据优化的混合智能DC微电网社区系统与使用低速率时间数据优化的系统进行比较,以检验可再生能源的时间采样的效果。

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