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Physics Informed Deep Neural Network Embedded in a Chemical Transport Model for the Amazon Rainforest

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Join us online for the ADIA Lab Climate Data Science Best Paper Award Finalists Seminar Series! Following a competitive selection process, we have chosen five outstanding finalists to present their papers in virtual seminars over the coming weeks.

Seminar 2: Physics Informed Deep Neural Network Embedded in a Chemical Transport Model for the Amazon Rainforest

Authors: Himanshu Sharma, Manishkumar Shrivastava, Balwinder Singh

Secondary organic aerosols (SOA) are fine particles in the atmosphere, which interact with clouds, radiation and affect the Earth’s energy budget. SOA formation involves chemistry in gas phase, aqueous aerosols, and clouds. Simulating these chemical processes involve solving a stiff set of differential equations, which are computationally expensive steps for three-dimensional chemical transport models. Deep neural networks (DNNs) are universal function approximators that could be used to represent the complex nonlinear changes in aerosol physical and chemical processes; however, key challenges such as generalizability to extended time periods, preservation of mass balance, simulating sparse model outputs, and maintaining physical constraints have limited their use in atmospheric chemistry. Here, we develop an approach of using a physics-informed DNN that overcomes previous such challenges and demonstrates its applicability for the chemical formation processes of isoprene epoxydiol SOA (IEPOX-SOA) over the Amazon rainforest. The DNN is trained with data generated by simulating IEPOX-SOA over the entire atmospheric column, using the Weather Research and Forecasting Model coupled with Chemistry (WRF-Chem). The trained DNN is then embedded within WRF-Chem to replace the computationally expensive default solver of IEPOX-SOA formation. The trained DNN predictions generalizes well with the default model simulation of the IEPOX-SOA mass concentrations and its size distribution (20 size bins) over several days of simulations in both dry and wet seasons. The embedded DNN reduces the computational expense of WRF-Chem by a factor of 2. Our approach shows promise in terms of application to other computationally expensive chemistry solvers in climate models.

When you sign-up, you will receive links to watch all 5 seminars online. Feel free to attend all sessions or just the ones that interest you most — we look forward to seeing you there!

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April 16

Transferring Climate Change Physical Knowledge

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April 30

Online Stochastic Generators Using Slepian Bases for Regional Bivariate Wind Speed Ensembles from ERA5