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A data-driven approach for maximizing solar PV capacity at the distribution feeder level under existing operational paradigms

机译:在现有运营范式下的分配馈线水平下最大化太阳能光伏电量的数据驱动方法

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Recent rapid growth in solar photovoltaic (PV) marks a shift away from conventional generation, providing a strategy for stemming carbon emissions emanating from the electricity sector. However, solar PV often appears within distribution systems where existing infrastructure was designed under a central-station paradigm. Fortunately, smart grid technologies can aid integration of distributed energy resources through better characterization of how these resources affect the grid. Using a New York utility service territory as a test bed, we present a data-driven Monte Carlo framework that estimates the maximum installed solar PV capacity at the distribution feeder level subject to existing network constraints. Working with representative days that closely match a feeder's load profile, we probabilistically select PV systems according to current New York trends and stochastically model hourly electricity generation. We found 262,318 kW of solar PV could be added across the entire utility service territory meeting 14.14% of electricity demand.
机译:近期太阳能光伏(PV)的快速增长标志着远离常规发电的转变,为源于电力部门发出的碳排放的策略提供了一种策略。然而,太阳能光伏通常在现有基础设施的设计中出现在中央车站范式下。幸运的是,智能电网技术可以通过更好地表征这些资源如何影响网格来帮助集成分布式能源资源。使用纽约公用事业服务领域作为测试床,我们提供了一种数据驱动的蒙特卡罗框架,估计经过现有网络约束的分配馈线级别的最大安装太阳能光伏电容。使用与饲养者负载概况紧密匹配的代表性日,我们根据当前的纽约趋势和随机模型每小时发电,概率选择光伏系统。我们发现262,318千瓦的太阳能光伏可能会在整个公用事业服务领土上添加14.14%的电力需求。

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