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research article

Lightning Nowcasting Using Solely Lightning Data

Mansouri, Ehsan  
•
Mostajabi, Amirhosein
•
Tong, Chong
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December 1, 2023
Atmosphere

Lightning is directly or indirectly responsible for significant human casualties and property damage worldwide. A timely prediction of its occurrence can enable authorities and the public to take necessary precautionary actions resulting in diminishing the potential hazards caused by lightning. In this paper, based on the assumption that atmospheric phenomena behave in a continuous manner, we present a model based on residual U-nets where the network architecture leverages this inductive bias by combining information passing directly from the input to the output with the necessary required changes to the former, predicted by a neural network. Our model is trained solely on lightning data from geostationary weather satellites and can be used to predict the occurrence of future lightning. Our model has the advantage of not relying on numerical weather models, which are inherently slow due to their sequential nature, enabling it to be used for near-future prediction (nowcasting). Moreover, our model has similar performance compared to other machine learning based lightning predictors in the literature while using significantly less amount of data for training, limited to lightning data. Our model, which is trained for four different lead times of 15, 30, 45, and 60 min, outperforms the traditional persistence baseline by 4%, 12%, and 22% for lead times of 30, 45, and 60 min, respectively, and has comparable accuracy for 15 min lead time.

  • Details
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Type
research article
DOI
10.3390/atmos14121713
Web of Science ID

WOS:001131240700001

Author(s)
Mansouri, Ehsan  
Mostajabi, Amirhosein
Tong, Chong
Rubinstein, Marcos
Rachidi, Farhad  
Date Issued

2023-12-01

Publisher

MDPI

Published in
Atmosphere
Volume

14

Issue

12

Article Number

1713

Subjects

Life Sciences & Biomedicine

•

Physical Sciences

•

Lightning

•

Nowcasting

•

Machine Learning

•

Data-Driven

•

Satellite Observations

•

Lightning Early Warning

•

U-Net

•

Resunet

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
EMC
FunderGrant Number

JiangSu Electric Power Co., Ltd. Suzhou Branch, Suzhou, China

Available on Infoscience
February 20, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/204838
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