评估降水预报方法和先进的轻量级模型

Nan Yang, Chong Wang, Xiaofeng Li
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引用次数: 0

摘要

降水预报对预警系统和灾害管理至关重要。本研究侧重于基于深度学习的方法,并将其分为三类:递归神经网络(RNN-RNN-RNN)、卷积神经网络(CNN-CNN-CNN)和 CNN-RNN-CNN 方法。然后,我们使用 SEVIR 降水数据集对这三类典型方法进行了综合评估。结果表明,RNN-RNN-RNN 因误差累积而导致长期预报不稳定;CNN-CNN-CNN 虽然难以捕捉时间信号,但能产生相对稳定的预报;CNN-RNN-CNN 则大大增加了模型复杂度,并继承了 RNN 的缺点,导致预报效果更差。在此,我们提出了一种基于 CNN 的先进轻量级降水预报模型(ALPF)。实验结果表明,ALPF 能够有效预测时空特征,既保持了 CNN 的特征提取能力,又避免了 RNN 传播过程中的误差积累。ALPF 实现了长期稳定的降水预报,并能更好地捕捉大降水量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of precipitation forecasting methods and an advanced lightweight model
Precipitation forecasting is crucial for warning systems and disaster management. This study focuses on deep learning-based methods and categorizes them into three categories: Recurrent Neural Network (RNN-RNN-RNN), Convolutional Neural Network (CNN-CNN-CNN), and CNN-RNN-CNN methods. Then, we conduct a comprehensive evaluation of typical methods in these three categories using the SEVIR precipitation dataset. The results show that RNN-RNN-RNN suffers from instability in long-term forecasts due to error accumulation, CNN-CNN-CNN struggles to capture temporal signals but produces relatively stable forecasts, and CNN-RNN-CNN significantly increases model complexity and inherits the drawbacks of RNN, leading to worse forecasts. Here, we propose an advanced lightweight precipitation forecasting model (ALPF) based on CNN. Experimental results demonstrate that ALPF can effectively forecast spatial-temporal features, maintaining CNN's feature extraction capabilities while avoiding error accumulation in RNN's propagation. ALPF achieves long-term stable precipitation forecasts and can better capture large precipitation amounts.
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