Maziar Raissi: "Hidden Physics Models: Machine Learning of Non-Linear Partial Differential Equat..."
Machine Learning for Physics and the Physics of Learning 2019
Workshop III: Validation and Guarantees in Learning Physical Models: from Patterns to Governing Equations to Laws of Nature
"Hidden Physics Models: Machine Learning of Non-Linear Partial Differential Equations"
Maziar Raissi - Brown University
Abstract: A grand challenge with great opportunities is to develop a coherent framework that enables blending conservation laws, physical principles, and/or phenomenological behaviors expressed by differential equations with the vast data sets available in many fields of engineering, science, and technology. At the intersection of probabilistic machine learning, deep learning, and scientific computations, this work is pursuing the overall vision to establish promising new directions for harnessing the long-standing developments of classical methods in applied mathematics and mathematical physics to design learning machines with the ability to operate in complex domains without requiring large quantities of data. To materialize this vision, this work is exploring two complementary directions: (1) designing data-efficient learning machines capable of leveraging the underlying laws of physics, expressed by time dependent and non-linear differential equations, to extract patterns from high-dimensional data generated from experiments, and (2) designing novel numerical algorithms that can seamlessly blend equations and noisy multi-fidelity data, infer latent quantities of interest (e.g., the solution to a differential equation), and naturally quantify uncertainty in computations. The latter is aligned in spirit with the emerging field of probabilistic numerics.
Institute for Pure and Applied Mathematics, UCLA
October 29, 2019
For more information: http://www.ipam.ucla.edu/mlpws3
Видео Maziar Raissi: "Hidden Physics Models: Machine Learning of Non-Linear Partial Differential Equat..." канала Institute for Pure & Applied Mathematics (IPAM)
Workshop III: Validation and Guarantees in Learning Physical Models: from Patterns to Governing Equations to Laws of Nature
"Hidden Physics Models: Machine Learning of Non-Linear Partial Differential Equations"
Maziar Raissi - Brown University
Abstract: A grand challenge with great opportunities is to develop a coherent framework that enables blending conservation laws, physical principles, and/or phenomenological behaviors expressed by differential equations with the vast data sets available in many fields of engineering, science, and technology. At the intersection of probabilistic machine learning, deep learning, and scientific computations, this work is pursuing the overall vision to establish promising new directions for harnessing the long-standing developments of classical methods in applied mathematics and mathematical physics to design learning machines with the ability to operate in complex domains without requiring large quantities of data. To materialize this vision, this work is exploring two complementary directions: (1) designing data-efficient learning machines capable of leveraging the underlying laws of physics, expressed by time dependent and non-linear differential equations, to extract patterns from high-dimensional data generated from experiments, and (2) designing novel numerical algorithms that can seamlessly blend equations and noisy multi-fidelity data, infer latent quantities of interest (e.g., the solution to a differential equation), and naturally quantify uncertainty in computations. The latter is aligned in spirit with the emerging field of probabilistic numerics.
Institute for Pure and Applied Mathematics, UCLA
October 29, 2019
For more information: http://www.ipam.ucla.edu/mlpws3
Видео Maziar Raissi: "Hidden Physics Models: Machine Learning of Non-Linear Partial Differential Equat..." канала Institute for Pure & Applied Mathematics (IPAM)
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13 ноября 2019 г. 3:41:38
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