Long-Term Hail Risk Assessment with Deep Neural Networks

被引:2
作者
Mozikov, Mikhail [1 ,3 ]
Lukyanenko, Ivan [2 ]
Makarov, Ilya [3 ,4 ]
Bulkin, Alexander [1 ,5 ,7 ]
Maximov, Yury [6 ]
机构
[1] Skolkovo Inst Sci & Technol, Moscow, Russia
[2] Moscow Inst Phys & Technol, Moscow, Russia
[3] Artificial Intelligence Res Inst AIRI, Moscow, Russia
[4] NUST MISiS, AI Ctr, Moscow, Russia
[5] Int Ctr Corp Data Anal, Grenoble, France
[6] Los Alamos Natl Lab Alamos, Los Alamos, NM USA
[7] Moscow MV Lomonosov State Univ, Moscow, Russia
来源
ADVANCES IN COMPUTATIONAL INTELLIGENCE, IWANN 2023, PT I | 2023年 / 14134卷
关键词
Climate modeling; Hail; Machine learning; Deep Learning; GROWTH;
D O I
10.1007/978-3-031-43085-5_23
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Hail risk assessment is crucial for businesses, particularly in the agricultural and insurance sectors, as it helps estimate and mitigate potential losses. Although significant attention has been given to short-term hail forecasting, the lack of research on climatological-scale hail risk estimation adds to the overall complexity of this task. Hail events are rare and localized, making their prediction a long-term open challenge. One approach to address this challenge is to develop a model that classifies vertical profiles of meteorological variables as favorable for hail formation while neglecting important spatial and temporal information. The main advantages of this approach lie in its computational efficiency and scalability. A more advanced strategy involves combining convolutional layers and recurrent neural network blocks to process geospatial and temporal data, respectively. This study compares the effectiveness of these two approaches and introduces a model suitable for forecasting changes in hail frequency.
引用
收藏
页码:288 / 301
页数:14
相关论文
共 32 条
  • [1] [Anonymous], 2020, The hail hazard and its impact on property insurance
  • [2] BROWNING KA, 1976, Q J ROY METEOR SOC, V102, P499, DOI 10.1002/qj.49710243303
  • [3] Calibration of Machine Learning-Based Probabilistic Hail Predictions for Operational Forecasting
    Burke, Amanda
    Snook, Nathan
    Gagne, David John, II
    Mccorkle, Sarah
    Mcgovern, Amy
    [J]. WEATHER AND FORECASTING, 2020, 35 (01) : 149 - 168
  • [4] Integrating satellite and climate data to predict wheat yield in Australia using machine learning approaches
    Cai, Yaping
    Guan, Kaiyu
    Lobell, David
    Potgieter, Andries B.
    Wang, Shaowen
    Peng, Jian
    Xu, Tianfang
    Asseng, Senthold
    Zhang, Yongguang
    You, Liangzhi
    Peng, Bin
    [J]. AGRICULTURAL AND FOREST METEOROLOGY, 2019, 274 : 144 - 159
  • [5] SMOTE: Synthetic minority over-sampling technique
    Chawla, Nitesh V.
    Bowyer, Kevin W.
    Hall, Lawrence O.
    Kegelmeyer, W. Philip
    [J]. 2002, American Association for Artificial Intelligence (16)
  • [6] Development of Heavy Rain Damage Prediction Model Using Machine Learning Based on Big Data
    Choi, Changhyun
    Kim, Jeonghwan
    Kim, Jongsung
    Kim, Donghyun
    Bae, Younghye
    Kim, Hung Soo
    [J]. ADVANCES IN METEOROLOGY, 2018, 2018
  • [7] Brenowitz ND, 2020, Arxiv, DOI arXiv:2011.03081
  • [8] Geospatial Artificial Intelligence: Potentials of Machine Learning for 3D Point Clouds and Geospatial Digital Twins
    Doellner, Juergen
    [J]. PFG-JOURNAL OF PHOTOGRAMMETRY REMOTE SENSING AND GEOINFORMATION SCIENCE, 2020, 88 (01): : 15 - 24
  • [9] FOOTE GB, 1984, J CLIM APPL METEOROL, V23, P84, DOI 10.1175/1520-0450(1984)023<0084:ASOHGU>2.0.CO
  • [10] 2