Da Fan, S. Greybush, E. Clothiaux, David John Gagne
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引用次数: 0
摘要
对于数值天气预报模式和现有的预报算法来说,对流起始(CI)预报仍然是一个具有挑战性的问题。在本研究中,基于多通道红外 GOES-16 卫星观测数据,开发了一种基于对象的概率深度学习模型来预测对流起始(CI)。数据来自 2020 年 6 月、7 月和 2021 年 6 月大平原地区上空多雷达多传感器多普勒天气雷达产品中确定的潜在 CI 事件周围的斑块。采用基于雷达的客观方法来识别这些事件。深度学习模型在最多 1 小时的准备时间内明显优于经典逻辑模型,尤其是在误报率方面。通过案例研究,深度学习模型表现出与多高度云层和湿度特征的依赖性。对模型的解释进一步表明,特征对模型预测的贡献在很大程度上取决于基线,即与预测进行比较的参考点。在湿润基线下,对流层中下部的湿度梯度对正确的 CI 预测贡献最大。相反,在晴空基线下,正确的 CI 预报主要取决于云顶特征,包括云顶冰蚀、高度和云层覆盖。我们的研究证明了使用不同基线在进一步理解模式行为和获得科学见解方面的优势。
Physically Explainable Deep Learning for Convective Initiation Nowcasting Using GOES-16 Satellite Observations
Convective initiation (CI) nowcasting remains a challenging problem for both numerical weather prediction models and existing nowcasting algorithms. In this study, an object-based probabilistic deep learning model is developed to predict CI based on multichannel infrared GOES-16 satellite observations. The data come from patches surrounding potential CI events identified in Multi-Radar Multi-Sensor Doppler weather radar products over the Great Plains region from June and July 2020 and June 2021. An objective radar-based approach is used to identify these events. The deep learning model significantly outperforms the classical logistic model at lead times up to 1 hour, especially on the false alarm ratio. Through case studies, the deep learning model exhibits dependence on the characteristics of clouds and moisture at multiple altitudes. Model explanation further reveals that the contribution of features to model predictions is significantly dependent on the baseline, a reference point against which the prediction is compared. Under a moist baseline, moisture gradients in the lower and middle troposphere contribute most to correct CI forecasts. In contrast, under clear-sky baselines, correct CI forecasts are dominated by cloud-top features, including cloud-top glaciation, height, and cloud coverage. Our study demonstrates the advantage of using different baselines in further understanding model behavior and gaining scientific insights.