区域高分辨率时空风速预报的深度学习新方法

IF 9 1区 工程技术 Q1 ENERGY & FUELS
Sofien Resifi, Elissar Al Aawar, Hari Prasad Dasari, Hatem Jebari, Ibrahim Hoteit
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引用次数: 0

摘要

准确的时空风速预报是优化风能生产的关键。传统的天气预报依赖于数值天气预报(NWP)模型,这是计算密集型的,特别是在大型高分辨率网格上实现时。最近,深度学习(DL)作为一种有效的替代方案出现了,它利用历史数据来学习模式并预测未来的情况。本研究通过使用阿拉伯半岛(AP)的长期再分析数据集,开发了一个基于区域dl的预测系统,减少了物理模型的计算负担。该系统以5公里的空间分辨率预报48小时前的每小时风速。我们专注于垂直水平,对应于风力涡轮机的轮毂高度,用于能源生产。我们探索了两种方法:递归预测,它将系统的状态随着时间的推移在一个精细的尺度上推进,以及降尺度预测,它将粗分辨率预测细化为高分辨率预测。此外,我们建议通过将精细尺度的时空动态传播与粗尺度预测相结合来合并这两种方法。对框架的性能进行了定性和定量评价。结果表明,递归方法随时间步长累积误差,而降尺度方法有效地生成高分辨率预测。结合这两种方法产生了一个更健壮的框架,展示了显著改进的性能和稳定的错误演变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel deep learning approach for regional high-resolution spatio-temporal wind speed forecasting for energy applications
Accurate spatio-temporal wind speed forecasting is crucial for optimizing wind energy production. Traditional forecasting relies on numerical weather prediction (NWP) models, which are computationally intensive, especially when implemented on large high-resolution grids. Recently, Deep Learning (DL) has emerged as an efficient alternative, utilizing historical data to learn patterns and predict future conditions. This work develops a regional DL-based forecasting system that reduces the computational burden of physical models, by using a long-term reanalysis dataset for the Arabian Peninsula (AP). The system forecasts hourly wind speed at 5 km spatial resolution up to 48 h ahead. We focus on vertical levels, corresponding to the hub heights of wind turbines for energy production. We explore two approaches: recursive forecasting, which advances the system’s state at a fine scale over time, and downscaling, which refines coarse-resolution forecasts into high-resolution counterparts. Furthermore, we propose merging both approaches by combining the propagation of spatio-temporal dynamics at fine-scale with coarse-scale predictions. The performance of the frameworks was evaluated qualitatively and quantitatively. Results show that the recursive approach accumulates errors over time steps, whereas the downscaling approach effectively generates high-resolution forecasts. Combining both approaches resulted in a more robust framework, demonstrating notably improved performance and stabilized error evolution.
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来源期刊
Energy
Energy 工程技术-能源与燃料
CiteScore
15.30
自引率
14.40%
发文量
0
审稿时长
14.2 weeks
期刊介绍: Energy is a multidisciplinary, international journal that publishes research and analysis in the field of energy engineering. Our aim is to become a leading peer-reviewed platform and a trusted source of information for energy-related topics. The journal covers a range of areas including mechanical engineering, thermal sciences, and energy analysis. We are particularly interested in research on energy modelling, prediction, integrated energy systems, planning, and management. Additionally, we welcome papers on energy conservation, efficiency, biomass and bioenergy, renewable energy, electricity supply and demand, energy storage, buildings, and economic and policy issues. These topics should align with our broader multidisciplinary focus.
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