论文标题
幕后太阳能产生的能量分解结果
Recent Results of Energy Disaggregation with Behind-the-Meter Solar Generation
论文作者
论文摘要
诸如光伏(PV)世代之类的可再生世代的快速部署给现有电力系统的弹性带来了巨大挑战。因为PV代人是波动的,并且通常是电力系统操作员看不见的,因此估计发电和表征不确定性的迫切需要操作员做出有见地的决定。本文总结了我们最近对变电站水平的能源分解结果的结果。我们为在变电站的能量分解的所谓``部分标签''提出了``部分标签''问题,其中骨料测量包含多个负载的总消耗,并且某些负载的存在尚不清楚。我们分别基于确定性词典学习和贝叶斯词典学习开发了两种无模型的分解方法。与需要完全注释的单个负载培训数据的常规方法不同,我们的方法可以提取给定部分标记的聚合数据的负载模式。因此,我们的部分标签配方更适用于现实世界。与确定性词典学习相比,基于贝叶斯词典学习的方法为分类结果提供了不确定性度量,以增加计算复杂性的成本。所有方法均通过数值实验验证。
The rapid deployment of renewable generations such as photovoltaic (PV) generations brings great challenges to the resiliency of existing power systems. Because PV generations are volatile and typically invisible to the power system operator, estimating the generation and characterizing the uncertainty are in urgent need for operators to make insightful decisions. This paper summarizes our recent results on energy disaggregation at the substation level with Behind-the-Meter solar generation. We formulate the so-called ``partial label'' problem for energy disaggregation at substations, where the aggregate measurements contain the total consumption of multiple loads, and the existence of some loads is unknown. We develop two model-free disaggregation approaches based on deterministic dictionary learning and Bayesian dictionary learning, respectively. Unlike conventional methods which require fully annotated training data of individual loads, our approaches can extract load patterns given partially labeled aggregate data. Therefore, our partial label formulation is more applicable in the real world. Compared with deterministic dictionary learning, the Bayesian dictionary learning-based approach provides the uncertainty measure for the disaggregation results, at the cost of increased computational complexity. All the methods are validated by numerical experiments.