BiLSTM‐based thunderstorm prediction for IoT applications

Author:

Zhuang Li1,Zhu Lin1

Affiliation:

1. School of Electronics and Computer Engineering Southeast University Chengxian College Nanjing China

Abstract

AbstractAlthough the market demand for smart devices (SDs) in the Internet of Things (IoT) era is surging, the corresponding thunderstorm protection measures have rarely attracted attention. This paper presents a thunderstorm prediction method with elevation correction, to reduce the thunderstorm damage to SDs by visually tracking thunderstorm activities. First, a self‐made three‐dimensional atmospheric electric field apparatus (3DAEFA) deployed in IoT is developed to collect real‐time AEF data. A 3DAEFA‐based localization model is established, and the localization formula after correction is derived. AEF data predicted by the bi‐directional long short‐term memory (BiLSTM) model are input to this formula to obtain thunderstorm point charge localization results. Then, the localization skill is evaluated. Finally, the proposed method is assessed in experiments, under single and multiple point charge conditions. There are significant reductions of at least 33.1% and 8.8% in ranging and elevation angle errors, respectively. Particularly, this post‐prediction correction reduces the deviation of fitted point charge moving paths by at most 0.189 km, demonstrating excellent application effects. Comparisons with radar charts and existing methods testify that this method can effectively predict thunderstorms.

Publisher

Wiley

Reference37 articles.

1. A multi‐feature fusion and attention network for multi‐scale object detection in remote sensing images;Cheng Y;Remote Sens (Basel),2023

2. Joint metric learning‐based class‐specific representation for image set classification;Gao X;IEEE Trans Neural Networks Learn Syst,2022

3. Analysis of characteristics of lightning and atmospheric electric field in Nanchang County;Zhong L;Meteorol Environ Res,2020

4. Synchronous Variations in the Atmospheric Pressure and Electric Field during the Passage of the Solar Terminator

5. Electrical signatures of Nimbostratus and Stratus clouds in ground-level vertical atmospheric electric field and current density at mid-latitude station Swider, Poland

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