Forecasting Intense Radar Reflectivity Using Machine Learning and Deep Learning Algorithms

IF 2.8 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Ximena Orsi, Rodrigo Hierro, Pablo Llamedo, Pedro Alexander, Alejandro de la Torre
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引用次数: 0

Abstract

Over the past 50 years, numerous studies have been conducted in the Cuyo region of Argentina, South America, investigating the relationship between meteorological variables and hail precipitation. These studies have led to the development of various models aimed at classifying hydrometeors, determining their precipitation, size, and the resulting surface damage. Based on 16 years of observations using a three-radar network in the Cuyo region, this paper presents preliminary results from a hail prediction study employing machine learning and deep learning techniques applied to radar data. Algorithms random forest (RF), gradient boosting (GB) and logistic regression (LR) in addition to a recurrent neural network, were used to predict hail occurrence based on radar data. Storm cells were classified as hail or no-hail when their reflectivity reached or exceeded 55 dBZ during their evolution. Reflectivity was found to be the most suitable variable among over 50 radar variables for studying hail occurrence. Results showed that considering the temporal evolution of radar observations, by including data at different time steps (from Results showed that considering the temporal evolution of radar observations, by including data at different time steps (from t = 1 to t = 5), significantly improved the algorithms ability to predict hail occurrence). This can be attributed to both a reduction in forecast lead time and the relevance of the temporal evolution of the variables. The inclusion of global model data, such as reanalysis from ECMWF (ERA5) did not demonstrate any significant improvement in our predictions. Models such as recurrent neural networks (RNN) have the potential to deliver enhanced performance since they explicitly account for temporal dynamics.

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利用机器学习和深度学习算法预测强雷达反射率
在过去的50年中,在南美洲阿根廷的Cuyo地区进行了大量的研究,调查了气象变量与冰雹降水之间的关系。这些研究导致了各种模型的发展,旨在对水成物进行分类,确定它们的降水量、大小和由此产生的地表损害。基于在Cuyo地区使用三雷达网络进行的16年观测,本文介绍了将机器学习和深度学习技术应用于雷达数据的冰雹预测研究的初步结果。利用随机森林(RF)、梯度增强(GB)和逻辑回归(LR)算法以及递归神经网络对雷达数据进行冰雹预测。当风暴单体在演化过程中反射率达到或超过55 dBZ时,可分为冰雹和非冰雹。在50多个雷达变量中,反射率是最适合研究冰雹发生的变量。结果表明,考虑到雷达观测的时间演变,采用不同时间步长的数据(结果表明,考虑到雷达观测的时间演变,采用不同时间步长的数据(从t = 1到t = 5),显著提高了算法对冰雹发生的预测能力)。这可归因于预测提前时间的缩短和变量的时间演变的相关性。纳入全球模式数据,例如来自ECMWF (ERA5)的再分析,并没有表明我们的预测有任何显著的改善。像循环神经网络(RNN)这样的模型有潜力提供增强的性能,因为它们明确地考虑了时间动态。
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来源期刊
International Journal of Climatology
International Journal of Climatology 地学-气象与大气科学
CiteScore
7.50
自引率
7.70%
发文量
417
审稿时长
4 months
期刊介绍: The International Journal of Climatology aims to span the well established but rapidly growing field of climatology, through the publication of research papers, short communications, major reviews of progress and reviews of new books and reports in the area of climate science. The Journal’s main role is to stimulate and report research in climatology, from the expansive fields of the atmospheric, biophysical, engineering and social sciences. Coverage includes: Climate system science; Local to global scale climate observations and modelling; Seasonal to interannual climate prediction; Climatic variability and climate change; Synoptic, dynamic and urban climatology, hydroclimatology, human bioclimatology, ecoclimatology, dendroclimatology, palaeoclimatology, marine climatology and atmosphere-ocean interactions; Application of climatological knowledge to environmental assessment and management and economic production; Climate and society interactions
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