Efficient Localized Adaptation of Neural Weather Forecasting: A Case Study in the MENA Region

Muhammad Akhtar Munir, Fahad Shahbaz Khan, Salman Khan
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Abstract

Accurate weather and climate modeling is critical for both scientific advancement and safeguarding communities against environmental risks. Traditional approaches rely heavily on Numerical Weather Prediction (NWP) models, which simulate energy and matter flow across Earth's systems. However, heavy computational requirements and low efficiency restrict the suitability of NWP, leading to a pressing need for enhanced modeling techniques. Neural network-based models have emerged as promising alternatives, leveraging data-driven approaches to forecast atmospheric variables. In this work, we focus on limited-area modeling and train our model specifically for localized region-level downstream tasks. As a case study, we consider the MENA region due to its unique climatic challenges, where accurate localized weather forecasting is crucial for managing water resources, agriculture and mitigating the impacts of extreme weather events. This targeted approach allows us to tailor the model's capabilities to the unique conditions of the region of interest. Our study aims to validate the effectiveness of integrating parameter-efficient fine-tuning (PEFT) methodologies, specifically Low-Rank Adaptation (LoRA) and its variants, to enhance forecast accuracy, as well as training speed, computational resource utilization, and memory efficiency in weather and climate modeling for specific regions.
神经天气预报的高效本地化适应:中东和北非地区案例研究
精确的天气和气候建模对于科学进步和保护社区免受环境风险至关重要。传统方法主要依赖数值天气预报(NWP)模型,该模型模拟地球系统中的能量和物质流动。然而,繁重的计算要求和较低的效率限制了 NWP 的适用性,因此迫切需要增强建模技术。基于神经网络的模型已经成为一种有前途的替代方法,它利用数据驱动的方法来预测大气变量。在这项工作中,我们将重点放在有限区域建模上,并专门针对局部区域级下游任务训练我们的模型。作为案例研究,我们考虑了中东和北非地区因其独特的气候挑战而面临的问题,在该地区,准确的本地化天气预报对于管理水资源、农业和减轻极端天气事件的影响至关重要。这种有针对性的方法使我们能够根据相关地区的独特条件调整模型的功能。我们的研究旨在验证整合参数系数微调(PEFT)方法的有效性,特别是 Low-Rank Adaptation(LoRA)及其变体,以提高特定地区天气和气候建模的预报精度、训练速度、计算资源利用率和内存效率。
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