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Active STUDENTSHIP UKRI Gateway to Research

Physics-enhanced machine learning strategies for applied mechanics


Funder Engineering and Physical Sciences Research Council
Recipient Organization University of Cambridge
Country United Kingdom
Start Date Sep 30, 2024
End Date Mar 30, 2028
Duration 1,277 days
Number of Grantees 1
Roles Student
Data Source UKRI Gateway to Research
Grant ID 2925312
Grant Description

This project will focus on addressing two fundamental challenges in physics-enhanced machine learning strategies in applied mechanics: (i) Overcoming poor generalisation performance and physically inconsistent or implausible predictions of machine learning models in applied mechanics by developing approaches integrating physics (first principles) knowledge through biases within Machine Learning (ML) algorithms to inform physics (e,g. identification of unknown constitutive laws and nonlinearities from measurements and physics-knowledge). (ii) Identification of incorrect prior physics assumption (e.g. wrong constitutive model) in the physics-enhanced machine learning algorithm.

All Grantees

University of Cambridge

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