Combining physics-based and data-driven models: advancing the frontiers of research with Scientific Machine Learning
Alfio Quarteroni, Paola Gervasio, Francesco Regazzoni

TL;DR
Scientific Machine Learning (SciML) combines physics-based and data-driven models to improve the simulation of complex systems like human cardiac function, leveraging the strengths of both approaches for better accuracy and efficiency.
Contribution
This paper reviews the mathematical foundations of SciML, discusses various strategies, and demonstrates its successful application to cardiac function simulation, highlighting its potential in solving complex PDE problems.
Findings
SciML enhances the modeling of cardiac function.
Data-driven models help uncover constitutive laws.
SciML improves computational efficiency for complex PDEs.
Abstract
Scientific Machine Learning (SciML) is a recently emerged research field which combines physics-based and data-driven models for the numerical approximation of differential problems. Physics-based models rely on the physical understanding of the problem, subsequent mathematical formulation, and numerical approximation. Data-driven models instead aim to extract relations between input and output data without arguing any causality principle underlining the available data distribution. In recent years, data-driven models have been rapidly developed and popularized. Such a diffusion has been triggered by a huge availability of data, increasingly cheap computing power, and the development of powerful ML algorithms. SciML leverages the physical awareness of physics-based models and the efficiency of data-driven algorithms. With SciML, we can inject physics and mathematical knowledge into ML…
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Taxonomy
TopicsComputational Physics and Python Applications · Scientific Computing and Data Management
MethodsDiffusion
