Forecasting Convective Storms Trajectory and Intensity by Neural Networks

Niccolò Borghi, Giorgio Guariso, M. Sangiorgio
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Abstract

Convective storms represent a dangerous atmospheric phenomenon, particularly for the heavy and concentrated precipitation they can trigger. Given their high velocity and variability, their prediction is challenging, though it is crucial to issue reliable alarms. The paper presents a neural network approach to forecast the convective cell trajectory and intensity, using, as an example, a region in northern Italy that is frequently hit by convective storms in spring and summer. The predictor input is constituted by radar-derived information about the center of gravity of the cell, its reflectivity (a proxy for the intensity of the precipitation), and the area affected by the storm. The essential characteristic of the proposed approach is that the neural network directly forecasts the evolution of the convective cell position and of the other features for the following hour at a 5-min temporal resolution without a relevant loss of accuracy in comparison to predictors trained for each specific variable at a particular time step. Besides its accuracy (R2 of the position is about 0.80 one hour in advance), this machine learning approach has clear advantages over the classical numerical weather predictors since it runs at orders of magnitude more rapidly, thus allowing for the implementation of a real-time early-warning system.
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利用神经网络预报对流风暴的轨迹和强度
对流风暴是一种危险的大气现象,尤其是因为它能引发集中的强降水。鉴于对流风暴的高速和多变性,对其进行预测极具挑战性,尽管这对发出可靠警报至关重要。本文以意大利北部地区为例,介绍了一种预测对流电池轨迹和强度的神经网络方法,该地区在春季和夏季经常受到对流风暴的袭击。预测输入由雷达获取的有关细胞重心、其反射率(降水强度的代表)和受风暴影响区域的信息构成。所提方法的基本特征是,神经网络以 5 分钟的时间分辨率直接预测对流小区位置的变化以及随后一小时内其他特征的变化,与在特定时间步长内针对每个特定变量训练的预测器相比,精度不会有任何损失。除了准确性(一小时前位置的 R2 约为 0.80)之外,这种机器学习方法与传统的数值天气预报方法相比具有明显的优势,因为它的运行速度快了几个数量级,从而可以实现实时预警系统。
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