用于降雨预测后处理的不确定性感知分割技术

Simone Monaco, Luca Monaco, Daniele Apiletti
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引用次数: 0

摘要

准确的降水预报对于洪水管理、农业规划、水资源分配和天气预警等应用至关重要。尽管数值天气预报(NWP)模型取得了进步,但它们仍然表现出明显的偏差和不确定性,尤其是在高空间和时间分辨率下。为了解决这些局限性,我们探索了用于日累积定量降水预报后处理的不确定性感知深度学习模型,以获得预报的不确定性,从而更好地权衡准确性和可靠性。我们的研究比较了不同的最先进模型,并提出了著名的 SDE-Net 的变体,称为 SDE U-Net,专为像我们这样的细分问题量身定制。我们评估了其在典型降水事件和强降水事件中的性能。结果表明,所有深度学习模型的性能都明显优于平均基准 NWP 解决方案,而我们的 SDE U-Net 实现在准确性和可靠性之间实现了最佳权衡。将这些考虑了不确定性的模型集成到业务预报系统中,可以改进决策和天气相关事件的准备工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty-aware segmentation for rainfall prediction post processing
Accurate precipitation forecasts are crucial for applications such as flood management, agricultural planning, water resource allocation, and weather warnings. Despite advances in numerical weather prediction (NWP) models, they still exhibit significant biases and uncertainties, especially at high spatial and temporal resolutions. To address these limitations, we explore uncertainty-aware deep learning models for post-processing daily cumulative quantitative precipitation forecasts to obtain forecast uncertainties that lead to a better trade-off between accuracy and reliability. Our study compares different state-of-the-art models, and we propose a variant of the well-known SDE-Net, called SDE U-Net, tailored to segmentation problems like ours. We evaluate its performance for both typical and intense precipitation events. Our results show that all deep learning models significantly outperform the average baseline NWP solution, with our implementation of the SDE U-Net showing the best trade-off between accuracy and reliability. Integrating these models, which account for uncertainty, into operational forecasting systems can improve decision-making and preparedness for weather-related events.
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