As the use of solar power increases, having accurate and timely forecasters will be essential for smooth grid operators. There are many proposed methods for forecasting solar irradiance / solar power production. However, many of these methods formulate the problem as a time-series, relying on near real-time access to observations at the location of interest to generate forecasts. This requires both access to a real-time stream of data and enough historical observations for these methods to be deployed. In this paper, we conduct a thorough analysis of effective ways to formulate the forecasting problem comparing classical machine learning approaches to state-of-the-art deep learning. Using data from 20 locations distributed throughout the UK and commercially available weather data, we show that it is possible to build systems that do not require access to this data. Leveraging weather observations and measurements from other locations we show it is possible to create models capable of accurately forecasting solar irradiance at new locations. We utilise compare both satellite and ground observations (e.g. temperature, pressure) of weather data. This could facilitate use planning and optimisation for both newly deployed solar farms and domestic installations from the moment they come online. Additionally, we show that training a single global model for multiple locations can produce a more robust model with more consistent and accurate results across locations.
翻译:随着太阳能使用量的增加,使用准确、及时的预报器对于光电网操作员来说至关重要。有许多预测太阳辐照/太阳能发电量的拟议方法。然而,许多这些方法将问题作为一个时间序列,依靠在感兴趣的地点近实时访问观测来产生预报。这需要实时访问数据流和足够的历史观测,以部署这些方法。在本文件中,我们透彻地分析各种有效方法,以比较预测问题,比较古典机器学习方法,以进行最先进的深层次学习。利用在联合王国各地分布的20个地点的数据和商业上可获得的天气数据,我们表明有可能建立不需要获得这些数据的系统。利用其他地点的天气观察和测量,我们表明有可能创建能够准确预测新地点的太阳辐照情况的模型。我们用卫星和地面观测(例如温度、压力)来比较天气数据。这可以促进新部署的太阳能农场和国内设施从上网时起就使用规划和优化。我们比较了更精确的模型。我们一致地显示,在多个地点都能够产生更精确的单一的模型。</s>