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Monte Carlo Analysis of the impacts of high renewable power penetration

机译:Monte Carlo分析高可再生能力渗透的影响

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This paper presents an initial analysis of the impacts of large-scale integration of diverse renewable power sources on an existing power system. Using Monte Carlo Analysis (MCA), numerous games are run with varying penetration levels to examine security of supply for a realistic test system. The analysis uses the WSCC/WECC 179-bus test system to determine the feasibility of combining high levels of wind, solar, and ocean wave generation with existing base generation and loads. For the US Pacific Northwest (PNW) wind, solar, and ocean wave generation have complicated probabilistic relationships with each other that are functions of time and geographic separation. This paper uses actual wind, solar, and wave data to generate time-dependent (hourly) probability mass functions (PMF) for each generation type for each month of the year. These PMFs are then used in the MCA to determine the security of the system. The use of a combination of wind, solar, and wave generation provides synergistic opportunities to lessen the impact of large-scale variable renewable power generation on transmission congestion, reserve requirements, and security of supply. The research shows that placement of renewable sources is important to increasing penetration and that there are critical penetration levels where grid security rapidly decreases.
机译:本文介绍了对现有电力系统对各种可再生电源的大规模集成的影响的初步分析。使用Monte Carlo分析(MCA),许多游戏都是不同的渗透水平,以检查逼真测试系统的供应安全性。该分析使用WSCC / WECC 179总线测试系统来确定与现有基础生成和负载的高水平风,太阳能和海浪发电的可行性。对于美国太平洋西北(PNW)风,太阳能和海浪生成具有复杂的概率关系,彼此是时间和地理分离的功能。本文使用实际的风,太阳能和波浪数据来为每年为每一个月生成时间依赖(每小时)概率质量功能(PMF),每个月为每年为一年中的类型。然后在MCA中使用这些PMF以确定系统的安全性。使用风,太阳能和波浪生成的组合提供协同机会,以减轻大规模可变可再生能源对传输拥塞,储备要求和供应安全性的影响。该研究表明,可再生能源的安置对于提高渗透性非常重要,并且存在迅速减少电网安全的临界渗透水平。

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