With the increasing penetration of renewable power sources such as wind and solar, accurate short-term, nowcasting renewable power prediction is becoming increasingly important. This paper investigates the multi-modal (MM) learning and end-to-end (E2E) learning for nowcasting renewable power as an intermediate to energy management systems. MM combines features from all-sky imagery and meteorological sensor data as two modalities to predict renewable power generation that otherwise could not be combined effectively. The combined, predicted values are then input to a differentiable optimal power flow (OPF) formulation simulating the energy management. For the first time, MM is combined with E2E training of the model that minimises the expected total system cost. The case study tests the proposed methodology on the real sky and meteorological data from the Netherlands. In our study, the proposed MM-E2E model reduced system cost by 30% compared to uni-modal baselines.
翻译:随着风能和太阳能等可再生能源的不断普及,准确预测短期可再生能源发电量变得越来越重要。本文研究了多模态(MM)学习和端到端(E2E)学习,将其用于预测中介能源管理系统的可再生能源发电量。MM将全天候图像和气象传感器数据作为两种模式结合起来,以预测可再生能源发电量。然后将组合的预测值输入到可微分的优化潮流(OPF)模型中模拟能源管理。我们首次将MM与E2E模型结合起来,最小化期望总系统成本。案例研究在荷兰真实的天空和气象数据上测试了所提出的方法。在我们的研究中,与单模态基线相比,所提出的MM-E2E模型将系统成本降低了30%。