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Solar irradiance forecasting by machine learning for solar car races

机译:通过机器学习预测太阳赛车的太阳辐照度

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Solar car race competitions offer realistic conditions to test and demonstrate the state-of-the-art technologies in multidisciplinary fields. In such races the solar panels mounted on the car produce the energy required to power the vehicle. A simulator runs during the race determines the optimal race speed based on the predicted availability of solar energy and other parameters as well as road conditions. The accuracy of the forecasts, especially the solar irradiance forecasts, has a significant impact on the race strategy. Here we report on the experience of providing irradiance forecasts for two races run by the University of Michigan Solar Car Team at the Bridgestone World Solar Challenge 2015 in Australia and at the American Solar Challenge 2016 from Ohio to South Dakota. The probabilistic forecasts of hourly solar irradiance generated from machine learning algorithms were deployed to optimally decide on the race strategy. This work showcases an example of real time decision making based on insights derived from machine learning utilizing big geospatial data - weather models and measurement data from weather station networks.
机译:太阳能赛车比赛为测试和展示多学科领域的最新技术提供了现实条件。在此类比赛中,安装在汽车上的太阳能电池板会产生为汽车提供动力所需的能量。比赛期间运行的模拟器会根据太阳能的预测可用性和其他参数以及路况来确定最佳比赛速度。预测的准确性,尤其是太阳辐照度的预测,对比赛策略有重大影响。在这里,我们将报告为密歇根大学太阳能汽车队在澳大利亚举行的2015年普利司通世界太阳能挑战赛和从俄亥俄州到南达科他州的2016年美国太阳能挑战赛进行的两场比赛提供辐照度预报的经验。利用机器学习算法生成的每小时太阳辐照度的概率预测,可以最佳地确定比赛策略。这项工作展示了一个实时决策的例子,该决策是基于利用大型地理空间数据(气象模型和气象站网络的测量数据)从机器学习中得出的见解。

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