Deep Learning-Enabled Prediction of Daily Solar Irradiance from Simulated Climate Data

Firas Gerges, M. Boufadel, E. Bou‐Zeid, H. Nassif, J. T. Wang
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Abstract

Solar Irradiance depicts the light energy produced by the Sun that hits the Earth. This energy is important for renewable energy generation and is intrinsically fluctuating. Forecasting solar irradiance is crucial for efficient solar energy generation and management. Work in the literature focused on the short-term prediction of solar irradiance, using meteorological data to forecast the irradiance for the next hours, days, or weeks. Facing climate change and the continuous increase of greenhouse gas emissions, particularly from the use of fossil fuels, the reliance on renewable energy sources, such as solar energy, is expanding. Consequently, governments and practitioners are calling for efficient long-term energy generation plans, which could enable 100% renewable-based electricity systems to match energy demand. In this paper, we aim to perform the long-term prediction of solar irradiance, by leveraging the downscaled climate simulations of Global Circulation Models (GCMs). We propose a novel Bayesian deep learning framework, named DeepSI (denoting Deep Solar Irradiance), that employs bidirectional long short-term memory autoencoders, prefixed to a transformer, with an uncertainty quantification component based on the Monte-Carlo dropout sampling technique. We use DeepSI to predict daily solar irradiance for three different locations within the United States. These locations include the Solar Star power station in California, Medford in New Jersey, and Farmers Branch in Texas. Experimental results showcase the suitability of DeepSI for predicting daily solar irradiance from the simulated climate data. We further use DeepSI with future climate simulations to produce long-term projections of daily solar irradiance, up to year 2099.
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基于模拟气候数据的深度学习日太阳辐照度预测
太阳辐照度描述的是太阳照射到地球上所产生的光能。这种能源对可再生能源发电很重要,而且本质上是波动的。预测太阳辐照度对有效的太阳能发电和管理至关重要。文献中的工作集中在太阳辐照度的短期预测上,利用气象数据预测未来几小时、几天或几周的辐照度。面对气候变化和温室气体排放的持续增加,特别是化石燃料的使用,对太阳能等可再生能源的依赖正在扩大。因此,政府和从业人员正在呼吁制定有效的长期能源生产计划,使100%基于可再生能源的电力系统能够满足能源需求。在本文中,我们的目标是通过利用全球环流模式(GCMs)的缩小尺度气候模拟来进行太阳辐照度的长期预测。我们提出了一种新的贝叶斯深度学习框架,名为DeepSI(表示深度太阳辐照度),它采用双向长短期记忆自编码器,前缀为变压器,具有基于蒙特卡罗dropout采样技术的不确定性量化组件。我们使用DeepSI来预测美国三个不同地点的每日太阳辐照度。这些地点包括加利福尼亚州的太阳能之星电站、新泽西州的梅德福电站和德克萨斯州的Farmers Branch电站。实验结果表明,DeepSI在利用模拟气候数据预测日太阳辐照度方面具有较好的适用性。我们进一步将DeepSI与未来气候模拟结合使用,以产生每日太阳辐照度的长期预测,直至2099年。
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