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Factoring Behind-the-Meter Solar into Load Forecasting: Case Studies under Extreme Weather

机译:将太阳能背后的因素纳入负荷预测:极端天气下的案例研究

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Distributed energy resources (DERs), especially distributed photovoltaics (PV), have been rising dramatically over the past years. However, behind-the-meter (BTM) PV devices are not monitored, and thus are invisible to utilities and system operators. In addition, electricity demand is likely to increase as a result of extreme hot/cold weather conditions, which stretches the grid to its limits, and thus triggers high electricity price. High electricity prices and extreme temperatures also stimulate the adoption of solar panels, which in turn add difficulties to load forecasting. This paper proposes a data-driven feeder-level load forecasting method by taking account of BTM PV under extreme weather conditions. The BTM PV penetration is first estimated, and in this study the PV penetration is defined as the ratio of total BTM PV capacity to peak load of the feeder. A machine learning model is adopted to quantify the relationship between measured PV power generation and corresponding solar irradiance. The BTM PV generation within the entire feeder can be estimated through the PV penetration and forecasted PV irradiance, which is then integrated in load forecasting. Numerical results of case studies at three distribution feeders show that the performance of load forecasting under extreme weather conditions is significantly enhanced by considering the contribution of BTM PV.
机译:过去几年中,分布式能源(DER),特别是分布式光伏(PV)急剧增长。但是,仪表背后(BTM)的光伏设备未受到监控,因此对于公用事业和系统运营商而言是不可见的。另外,由于极端炎热/寒冷的天气条件,电力需求可能会增加,这将电网扩展到极限,从而触发了高电价。高昂的电价和极端温度也刺激了太阳能电池板的采用,这反过来又增加了负荷预测的难度。本文提出了一种基于数据的馈线级负荷预测方法,该方法考虑了极端天气条件下的BTM PV。首先估算BTM PV渗透率,在本研究中,PV渗透率定义为BTM PV总容量与给料机峰值负荷的比率。采用机器学习模型来量化测得的光伏发电量与相应的太阳辐照度之间的关系。可以通过PV穿透率和预测的PV辐照度来估算整个馈线内的BTM PV生成量,然后将其集成到负荷预测中。在三个配电馈线的案例研究的数值结果表明,通过考虑BTM PV的贡献,极端天气条件下的负荷预测性能得到了显着提高。

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