TAASRAD19, a high-resolution weather radar reflectivity dataset for precipitation nowcasting

被引:0
|
作者
Gabriele Franch
Valerio Maggio
Luca Coviello
Marta Pendesini
Giuseppe Jurman
Cesare Furlanello
机构
[1] Fondazione Bruno Kessler,
[2] University of Trento,undefined
[3] University of Bristol,undefined
[4] Meteotrentino,undefined
[5] HK3 Lab,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
We introduce TAASRAD19, a high-resolution radar reflectivity dataset collected by the Civil Protection weather radar of the Trentino South Tyrol Region, in the Italian Alps. The dataset includes 894,916 timesteps of precipitation from more than 9 years of data, offering a novel resource to develop and benchmark analog ensemble models and machine learning solutions for precipitation nowcasting. Data are expressed as 2D images, considering the maximum reflectivity on the vertical section at 5 min sampling rate, covering an area of 240 km of diameter at 500 m horizontal resolution. The TAASRAD19 distribution also includes a curated set of 1,732 sequences, for a total of 362,233 radar images, labeled with precipitation type tags assigned by expert meteorologists. We validate TAASRAD19 as a benchmark for nowcasting methods by introducing a TrajGRU deep learning model to forecast reflectivity, and a procedure based on the UMAP dimensionality reduction algorithm for interactive exploration. Software methods for data pre-processing, model training and inference, and a pre-trained model are publicly available on GitHub (https://github.com/MPBA/TAASRAD19) for study replication and reproducibility.
引用
收藏
相关论文
共 50 条
  • [31] Attenuation correction for a high-resolution polarimetric X-band weather radar
    Otto, T.
    Russchenberg, H. W. J.
    ADVANCES IN RADIO SCIENCE, 2010, 8 : 279 - 284
  • [32] A time series weather radar simulator based on high-resolution atmospheric models
    Cheong, B. L.
    Palmer, R. D.
    Xue, M.
    JOURNAL OF ATMOSPHERIC AND OCEANIC TECHNOLOGY, 2008, 25 (02) : 230 - 243
  • [33] Combined use of volume radar observations and high-resolution numerical weather predictions to estimate precipitation at the ground: methodology and proof of concept
    Le Bastard, Tony
    Caumont, Olivier
    Gaussiat, Nicolas
    Karbou, Fatima
    ATMOSPHERIC MEASUREMENT TECHNIQUES, 2019, 12 (10) : 5669 - 5684
  • [34] PRINCIPLES OF HIGH-RESOLUTION RADAR BASED ON NONSINUSOIDAL WAVES .3. RADAR-TARGET REFLECTIVITY MODEL
    HUSSAIN, MGM
    IEEE TRANSACTIONS ON ELECTROMAGNETIC COMPATIBILITY, 1990, 32 (02) : 144 - 152
  • [35] A Synergistic Use of a High-Resolution Numerical Weather Prediction Model and High-Resolution Earth Observation Products to Improve Precipitation Forecast
    Lagasio, Martina
    Parodi, Antonio
    Pulvirenti, Luca, I
    Meroni, Agostino N.
    Boni, Giorgio
    Pierdicca, Nazzareno
    Marzano, Frank S.
    Luini, Lorenzo
    Venuti, Giovanna
    Realini, Eugenio
    Gatti, Andrea
    Tagliaferro, Giulio
    Barindelli, Stefano
    Guarnieri, Andrea Monti
    Goga, Klodiana
    Terzo, Olivier
    Rucci, Alessio
    Passera, Emanuele
    Kranzlmueller, Dieter
    Rommen, Bjorn
    REMOTE SENSING, 2019, 11 (20)
  • [36] High-resolution precipitation mapping in a mountainous watershed: ground truth for evaluating uncertainty in a national precipitation dataset
    Daly, Christopher
    Slater, Melissa E.
    Roberti, Joshua A.
    Laseter, Stephanie H.
    Swift, Lloyd W., Jr.
    INTERNATIONAL JOURNAL OF CLIMATOLOGY, 2017, 37 : 124 - 137
  • [37] A Point Cloud Method for Retrieval of High-Resolution 3D Gridded Reflectivity from Weather Radar Networks for Air Traffic Management
    Scovell, Robert
    Al-Sakka, Hassan
    JOURNAL OF ATMOSPHERIC AND OCEANIC TECHNOLOGY, 2016, 33 (03) : 461 - 479
  • [38] COMPARING DIFFERENT METHODS OF RADAR DATA DISPLAY FOR MICROPHYSICAL STUDIES IN PRECIPITATION SYSTEMS AND WEATHER NOWCASTING
    Evaristo, Raquel
    Troemel, Silke
    Simmer, Clemens
    2019 20TH INTERNATIONAL RADAR SYMPOSIUM (IRS), 2019,
  • [39] Weather Radar Nowcasting for Extreme Precipitation Prediction Based on the Temporal and Spatial Generative Adversarial Network
    Chen, Xunlai
    Wang, Mingjie
    Wang, Shuxin
    Chen, Yuanzhao
    Wang, Rui
    Zhao, Chunyang
    Hu, Xiao
    ATMOSPHERE, 2022, 13 (08)
  • [40] Deep-Learning-Based Precipitation Nowcasting with Ground Weather Station Data and Radar Data
    Ko, Jihoon
    Lee, Kyuhan
    Hwang, Hyunjin
    Shin, Kijung
    2022 IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOPS, ICDMW, 2022, : 1063 - 1070