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Towards Stochastic Optimization-Based Electric Vehicle Penetration in a Novel Archipelago Microgrid

机译:在新型群岛微电网中实现基于随机优化的电动汽车渗透

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摘要

Due to the advantage of avoiding upstream disturbance and voltage fluctuation from a power transmission system, Islanded Micro-Grids (IMG) have attracted much attention. In this paper, we first propose a novel self-sufficient Cyber-Physical System (CPS) supported by Internet of Things (IoT) techniques, namely “archipelago micro-grid (MG)”, which integrates the power grid and sensor networks to make the grid operation effective and is comprised of multiple MGs while disconnected with the utility grid. The Electric Vehicles (EVs) are used to replace a portion of Conventional Vehicles (CVs) to reduce CO2 emission and operation cost. Nonetheless, the intermittent nature and uncertainty of Renewable Energy Sources (RESs) remain a challenging issue in managing energy resources in the system. To address these issues, we formalize the optimal EV penetration problem as a two-stage Stochastic Optimal Penetration (SOP) model, which aims to minimize the emission and operation cost in the system. Uncertainties coming from RESs (e.g., wind, solar, and load demand) are considered in the stochastic model and random parameters to represent those uncertainties are captured by the Monte Carlo-based method. To enable the reasonable deployment of EVs in each MGs, we develop two scheduling schemes, namely Unlimited Coordinated Scheme (UCS) and Limited Coordinated Scheme (LCS), respectively. An extensive simulation study based on a modified 9 bus system with three MGs has been carried out to show the effectiveness of our proposed schemes. The evaluation data indicates that our proposed strategy can reduce both the environmental pollution created by CO2 emissions and operation costs in UCS and LCS.
机译:由于避免了来自输电系统的上游干扰和电压波动的优势,孤岛微电网(IMG)引起了很多关注。在本文中,我们首先提出一种由物联网(IoT)技术支持的新型自给自足的网络物理系统(CPS),即“ archipelago微电网(MG)”,它将电网和传感器网络集成在一起,从而实现电网运行有效,由多个MG组成,但与公用电网断开连接。电动汽车(EV)用于替代传统汽车(CV)的一部分,以减少CO2排放和运营成本。尽管如此,可再生能源(RES)的间歇性和不确定性仍然是管理系统能源的挑战性问题。为了解决这些问题,我们将最佳电动汽车渗透率问题正式化为两阶段随机最优渗透率(SOP)模型,旨在最小化系统的排放和运营成本。在随机模型中考虑了来自RES的不确定性(例如风能,太阳能和负载需求),并通过基于蒙特卡洛的方法捕获了代表这些不确定性的随机参数。为了在每个MG中合理部署EV,我们分别开发了两种调度方案,即无限协调方案(UCS)和有限协调方案(LCS)。已经进行了基于改进的9总线系统和3个MG的广泛仿真研究,以证明我们提出的方案的有效性。评估数据表明,我们提出的策略可以减少UCS和LCS中由CO2排放造成的环境污染和运营成本。

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