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research article

Nowcasting lightning occurrence from commonly available meteorological parameters using machine learning techniques

Mostajabi, Amirhossein  
•
Finney, Declan L.
•
Rubinstein, Marcos
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2019
npj Climate and Atmospheric Science

Article Open Access Published: 08 November 2019 Nowcasting lightning occurrence from commonly available meteorological parameters using machine learning techniques Amirhossein Mostajabi, Declan L. Finney, Marcos Rubinstein & Farhad Rachidi npj Climate and Atmospheric Science volume 2, Article number: 41 (2019) Cite this article Article metrics 71 Altmetric Metrics details Abstract Lightning discharges in the atmosphere owe their existence to the combination of complex dynamic and microphysical processes. Knowledge discovery and data mining methods can be used for seeking characteristics of data and their teleconnections in complex data clusters. We have used machine learning techniques to successfully hindcast nearby and distant lightning hazards by looking at single-site observations of meteorological parameters. We developed a four-parameter model based on four commonly available surface weather variables (air pressure at station level (QFE), air temperature, relative humidity, and wind speed). The produced warnings are validated using the data from lightning location systems. Evaluation results show that the model has statistically considerable predictive skill for lead times up to 30 min. Furthermore, the importance of the input parameters fits with the broad physical understanding of surface processes driving thunderstorms (e.g., the surface temperature and the relative humidity will be important factors for the instability and moisture availability of the thunderstorm environment). The model also improves upon three competitive baselines for generating lightning warnings: (i) a simple but objective baseline forecast, based on the persistence method, (ii) the widely-used method based on a threshold of the vertical electrostatic field magnitude at ground level, and, finally (iii) a scheme based on CAPE threshold. Apart from discussing the prediction skill of the model, data mining techniques are also used to compare the patterns of data distribution, both spatially and temporally among the stations. The results encourage further analysis on how mining techniques could contribute to further our understanding of lightning dependencies on atmospheric parameters.

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Type
research article
DOI
10.1038/s41612-019-0098-0
Author(s)
Mostajabi, Amirhossein  
Finney, Declan L.
Rubinstein, Marcos
Rachidi, Farhad  
Date Issued

2019

Published in
npj Climate and Atmospheric Science
Volume

2

Issue

1

Start page

41

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
SCI-STI-FR  
FunderGrant Number

FNS

200020_175594

H2020

737033-LLR

Available on Infoscience
November 8, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/162803
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