研究目的
Investigating the use of transfer learning in convolutional neural networks (CNNs) to alleviate the retraining cost for retrieving atmospheric parameters from IASI data, by utilizing proxy solutions from previously trained models for related variables.
研究成果
Transfer learning in CNNs offers benefits for atmospheric parameter retrieval, with parameter initialization from models trained on similar variables achieving performance comparable to training from scratch, while significantly reducing training time. Feature extraction provides limited advantages, highlighting the need for fine-tuning for specific output variables.
研究不足
The feature extraction approach does not guarantee performance similar to training a CNN from scratch, especially at certain pressure levels. The parameter initialization strategy shows promise but requires models trained on similar variables for optimal performance.
1:Experimental Design and Method Selection:
The study employs transfer learning strategies in CNNs for atmospheric parameter retrieval, comparing feature extraction and parameter initialization approaches.
2:Sample Selection and Data Sources:
Data from 13 consecutive orbits of the IASI sensor on the MetOp satellite series, collected on 17-08-2013, is used. The first 7 orbits are for training, and the latter 6 for testing.
3:List of Experimental Equipment and Materials:
IASI sensor data, convolutional neural networks, linear regression models.
4:Experimental Procedures and Operational Workflow:
The study involves training CNNs on temperature profiles and using these models for feature extraction or parameter initialization to predict dew point temperature (DT) and ozone concentration.
5:Data Analysis Methods:
Performance is evaluated based on RMSE, bias, and smoothness of estimates, with comparisons between different models and initialization strategies.
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