Search Results - "Mohan, Arvind T."
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Model reduction and analysis of deep dynamic stall on a plunging airfoil
Published in Computers & fluids (28-04-2016)“…•Dynamic stall of MAV wing analyzed using Dynamic Mode Decomposition.•Dominant flow structure oscillating at airfoil frequency with 4 harmonics found.•Dominant…”
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Bayesian averaging for ground state masses of atomic nuclei in a Machine Learning approach
Published in Frontiers in physics (19-07-2023)“…We present global predictions of the ground state mass of atomic nuclei based on a novel Machine Learning algorithm. We combine precision nuclear experimental…”
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Spatio-temporal deep learning models of 3D turbulence with physics informed diagnostics
Published in Journal of turbulence (02-10-2020)“…Direct Numerical Simulations (DNSs) of high Reynolds number turbulent flows, encountered in engineering, earth sciences, and astrophysics, are not tractable…”
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Foresight: Analysis That Matters for Data Reduction
Published in SC20: International Conference for High Performance Computing, Networking, Storage and Analysis (01-11-2020)“…As the computation power of supercomputers increases, so does simulation size, which in turn produces orders-of-magnitude more data. Because generated data…”
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Conference Proceeding -
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Physics-Constrained Generative Adversarial Networks for 3D Turbulence
Published 30-11-2022“…Generative Adversarial Networks (GANs) have received wide acclaim among the machine learning (ML) community for their ability to generate realistic 2D images…”
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Learning Stable Galerkin Models of Turbulence with Differentiable Programming
Published 15-07-2021“…Turbulent flow control has numerous applications and building reduced-order models (ROMs) of the flow and the associated feedback control laws is extremely…”
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Full trajectory optimizing operator inference for reduced-order modeling using differentiable programming
Published 25-01-2023“…Accurate and inexpensive Reduced Order Models (ROMs) for forecasting turbulent flows can facilitate rapid design iterations and thus prove critical for…”
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Embedding Hard Physical Constraints in Neural Network Coarse-Graining of 3D Turbulence
Published 31-01-2020“…In the recent years, deep learning approaches have shown much promise in modeling complex systems in the physical sciences. A major challenge in deep learning…”
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A Deep Learning based Approach to Reduced Order Modeling for Turbulent Flow Control using LSTM Neural Networks
Published 24-04-2018“…Reduced Order Modeling (ROM) for engineering applications has been a major research focus in the past few decades due to the unprecedented physical insight…”
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Validation and parameterization of a novel physics-constrained neural dynamics model applied to turbulent fluid flow
Published 22-10-2021“…In fluid physics, data-driven models to enhance or accelerate solution methods are becoming increasingly popular for many application domains, such as…”
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Journal Article