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Data- and theory-guided learning of partial differential equations using SimultaNeous basis function Approximation and Parameter Estimation (SNAPE) — Sutanu Bhowmick (2022) | RDL Network
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Data- and theory-guided learning of partial differential equations using SimultaNeous basis function Approximation and Parameter Estimation (SNAPE)
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Satish Nagarajaiah
Rice University
Data- and theory-guided learning of partial differential equations using SimultaNeous basis function Approximation and Parameter Estimation (SNAPE)
Article
2022
en
Authors
SB
Sutanu Bhowmick
Satish Nagarajaiah
Rice University
AK
Anastasios Kyrillidis
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