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González, Jorge; Chapman, Theodore; Chen, Kathryn; Nguyen, Hannah; Chambers, Logan; Wang, Jianwu; Mostafa, Seraj; Purushotham, Sanjay; Wang, Chenxi; Yue, Jia (, 9th IEEE/ACM International Conference on Big Data Computing, Applications and Technologies (BDCAT 2022))Atmospheric gravity waves are produced when gravity attempts to restore disturbances through stable layers in the atmosphere. They have a visible effect on many atmospheric phenomena such as global circulation and air turbulence. Despite their importance, however, little research has been conducted on how to detect gravity waves using machine learning algorithms. We faced two major challenges in our research: our raw data had a lot of noise and the labeled dataset was extremely small. In this study, we explored various methods of preprocessing and transfer learning in order to address those challenges. We pre-trained an autoencoder on unlabeled data before training it to classify labeled data. We also created a custom CNN by combining certain pre-trained layers from the InceptionV3 Model trained on ImageNet with custom layers and a custom learning rate scheduler. Experiments show that our best model outperformed the best performing baseline model by 6.36% in terms of test accuracy.more » « less
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Ali, Sahara; Mostafa, Seraj; Li, Xingyan; Khanjani, Sara; Wang, Jianwu; Foulds, James; Janeja, Vandana (, The International Geoscience and Remote Sensing Symposium (IGARSS 2022))The Arctic is a region with unique climate features, motivating new AI methodologies to study it. Unfortunately, Arc- tic sea ice has seen a continuous decline since 1979. This not only poses a significant threat to Arctic wildlife and surrounding coastal communities but is also adversely affecting the global climate patterns. To study the potential of AI in tackling climate change, we analyze the performance of four probabilistic machine learning methods in forecasting sea-ice extent for lead times of up to 6 months, further comparing them with traditional machine learning methods. Our comparative analysis shows that Gaussian Process Regression is a good fit to predict sea-ice extent for longer lead times with lowest RMSE score.more » « less
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