TY - JOUR
T1 - New particle formation event detection with convolutional neural networks
AU - Zhang, Xun
AU - Wu, Lijie
AU - Liu, Xiansheng
AU - Wang, Tao
AU - Monge, Marta
AU - Garcia-Marlès, Meritxell
AU - Savadkoohi, Marjan
AU - Salma, Imre
AU - Bastian, Susanne
AU - Merkel, Maik
AU - Weinhold, Kay
AU - Wiedensohler, Alfred
AU - Gerwig, Holger
AU - Putaud, Jean
AU - Dos Dantos, Sebastiao Martins
AU - Ondracek, Jakub
AU - Zikova, Nadezda
AU - Minkos, Andrea
AU - Pandolfi, Marco
AU - Alastuey, Andrés
AU - Querol, Xavier
N1 - Publisher Copyright:
© 2024 The Authors
PY - 2024/6/15
Y1 - 2024/6/15
N2 - New aerosol particle formation (NPF) events play a significant role in altering aerosol concentrations and dispersion within the atmosphere, making them vital for both climate and air quality research. The primary objective of investigating NPF events is to precisely determine their occurrence dates. In this study, we introduced the ConvNeXt model for the first time to identify NPF events, and compared its performance with two other deep learning models, EfficientNet and Swin Transformer. Our main aim was to automate an objective identification and classification of NPF events accurately. All three models employed transfer learning to effectively capture critical features associated with NPF. Our results demonstrated that the ConvNeXt model significantly outperformed the other models, achieving an impressive accuracy rate of 95.3% on event days, surpassing EfficientNet (92.8%) and Swin Transformer (94.9%). Furthermore, we performed tests using different ConvNeXt variants (ConvNeXt-T/S/B/L/XL) and different pre-training weights, revealing that different configurations of ConvNeXt models exhibited improved NPF event recognition capabilities. Finally, we conducted generalizability experiments using the ConvNeXt-XL model, achieving the highest accuracy of 96.4% on event days. This study not only underscores the recognition prowess of ConvNeXt models but also highlights their practical utility in accurately detecting NPF events in real-world scenarios. This contribution aids in advancing our comprehension of aerosol dynamics in atmospheric environments, providing valuable insights for climate and air quality research.
AB - New aerosol particle formation (NPF) events play a significant role in altering aerosol concentrations and dispersion within the atmosphere, making them vital for both climate and air quality research. The primary objective of investigating NPF events is to precisely determine their occurrence dates. In this study, we introduced the ConvNeXt model for the first time to identify NPF events, and compared its performance with two other deep learning models, EfficientNet and Swin Transformer. Our main aim was to automate an objective identification and classification of NPF events accurately. All three models employed transfer learning to effectively capture critical features associated with NPF. Our results demonstrated that the ConvNeXt model significantly outperformed the other models, achieving an impressive accuracy rate of 95.3% on event days, surpassing EfficientNet (92.8%) and Swin Transformer (94.9%). Furthermore, we performed tests using different ConvNeXt variants (ConvNeXt-T/S/B/L/XL) and different pre-training weights, revealing that different configurations of ConvNeXt models exhibited improved NPF event recognition capabilities. Finally, we conducted generalizability experiments using the ConvNeXt-XL model, achieving the highest accuracy of 96.4% on event days. This study not only underscores the recognition prowess of ConvNeXt models but also highlights their practical utility in accurately detecting NPF events in real-world scenarios. This contribution aids in advancing our comprehension of aerosol dynamics in atmospheric environments, providing valuable insights for climate and air quality research.
KW - ConvNeXt
KW - Deep learning
KW - Image classification
KW - Ultrafine particles nucleation
UR - https://www.scopus.com/pages/publications/85189433032
U2 - 10.1016/j.atmosenv.2024.120487
DO - 10.1016/j.atmosenv.2024.120487
M3 - Article
AN - SCOPUS:85189433032
SN - 1352-2310
VL - 327
JO - Atmospheric Environment
JF - Atmospheric Environment
M1 - 120487
ER -