Process Guided Deep Learning for Modeling Physical Systems: An Application in Lake Temperature Modeling
Anuj Karpatne
Abstract
In this paper, we introduce a new paradigm that combines scientific knowledge within process-based models and machine learning models to advance scientific discovery in many physical systems. We will describe how to incorporate physical knowledge in real-world dynamical systems as additional constraints for training machine learning models and how to leverage the hidden knowledge encoded by existing process-based models. We evaluate this approach on modeling lake water temperature and demonstrate its superior performance using limited training data and the improved generalizability to different scenarios.
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Publication Details
Date of publication: February 16, 2021
Conference: IEEE International Symposium on Geoscience and Remote Sensing
Page number(s): 3494-3496
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Publication Note: Xiaowei Jia, Jared Willard, Anuj Karpatne, Jordan S. Read, Jacob A. Zwart, Michael S. Steinbach, Vipin Kumar: Process Guided Deep Learning for Modeling Physical Systems: An Application in Lake Temperature Modeling. IGARSS 2020: 3494-3496