2023
DOI: 10.1038/s41612-023-00451-x
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Lightning nowcasting with aerosol-informed machine learning and satellite-enriched dataset

Ge Song,
Siwei Li,
Jia Xing

Abstract: Accurate and timely prediction of lightning occurrences plays a crucial role in safeguarding human well-being and the global environment. Machine-learning-based models have been previously employed for nowcasting lightning occurrence, offering advantages in computation efficiency. However, these models have been hindered by limited accuracy due to inadequate representation of the intricate mechanisms driving lightning and a restricted training dataset. To address these limitations, we present a machine learnin… Show more

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Cited by 10 publications
(3 citation statements)
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References 67 publications
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“…These include the fact that we only utilize lightning data for prediction, we train our model on significantly less amount of data, and the fact that there is a different temporal and spatial granularity for each model. However, by considering the work of Tippett et al [23], Leinonen et al [27], and Song et al [36], we can see that our metrics, namely precision (POD) and recall (1-FAR) lies in the same range as the ones presented by these papers. This is an advantage point for our model as it uses less data for training.…”
Section: Resultssupporting
confidence: 59%
See 1 more Smart Citation
“…These include the fact that we only utilize lightning data for prediction, we train our model on significantly less amount of data, and the fact that there is a different temporal and spatial granularity for each model. However, by considering the work of Tippett et al [23], Leinonen et al [27], and Song et al [36], we can see that our metrics, namely precision (POD) and recall (1-FAR) lies in the same range as the ones presented by these papers. This is an advantage point for our model as it uses less data for training.…”
Section: Resultssupporting
confidence: 59%
“…In [31], a combination of satellite data recorded over Europe and lightning data recorded by ground-based lightning detection networks are used to train a residual U-Net model for lightning activity prediction [32][33][34][35]. In [36], the GLM data in combination with aerosol features are used to train a Gradient-boosted decision tree model called LightGBM to perform hourly forecasts.…”
Section: Introductionmentioning
confidence: 99%
“…Therefore, the SHAP values have already exhibited its exploratory power for analyzing complex relationships (47), especially in atmospheric science research, such as tropical cyclone genesis, lightning prediction, etc. (48)(49)(50). In the present study, by combining XGBoost ML and SHAP values, we successfully identify the relationships between TCR and environmental variables including SST and DOD, most of which can be explained by current knowledge of physical processes with TC.…”
Section: Discussionmentioning
confidence: 86%