pyforce
A Python package for data-driven reduced-order modelling of multiphysics problems
A Python package for data-driven reduced-order modelling of multiphysics problems
Example on how to use PyVista to visualize OpenFOAM results
Python packages for Shallow Recurrent Decoders (SHRED) and a specific version for nuclear applications (NuSHRED)
C. Introini, S. Cavalleri, S. Lorenzi, Stefano Riva, A. Cammi ; Computer Methods in Applied Mechanics and Engineering (2023)
This paper is about a stabilisation method for Generalized Empirical Interpolation Method (GEIM) in presence of noise.
A. Cammi, Stefano Riva, C. Introini, L. Loi, E. Padovani. ; ICAPP 2023 - International Conference on Advances in Nuclear Power Plants (2023)
This paper presents the application of indirect reconstruction and sensor placements methods for state reconstruction in a Molten Salt Reactor.
Stefano Riva, C. Introini, S. Lorenzi, A. Cammi ; Annals of Nuclear Energy (2023)
This paper investigates the applications of various hybrid data assimilation methods to the DYNASTY experimental facility.
Stefano Riva, C. Introini, A. Cammi ; Applied Mathematical Modelling (2024)
This paper presents the use of TR-GEIM and PBDW for multi-physics model bias correction in nuclear applications.
D. Ye and J. Williams and M. Gao and Stefano Riva and M. Tomasetto and DavD.id Zoro and J. N. Kutz ; Arxiv (2025)
This paper presents the package PySHRED for SHallow REcurrent Decoding for sparse sensing, model reduction and scientific discovery.
Stefano Riva, A. Missaglia, C. Introini, J. N. Kutz, A. Cammi, ; 21st International Topical Meeting on Nuclear Reactor Thermal Hydraulics (NURETH-21) (2025)
This paper presents a verification and validation of Shallow Recurrent Decoders for state estimation in the DYNASTY facility.
Stefano Riva, C. Introini, A. Cammi, J. Nathan Kutz ; Progress in Nuclear Energy (2025)
This paper presents the use of Shallow Recurrent Decoder for robust state estimation in nuclear reactors.
P. M. Wyder, J. A. Goldfeder, A. Yermakov, Y. Zhao, Stefano Riva, J. P. Williams, D. Zoro, A. S. Rude, M. Tomasetto, J. Germany, J. Bakarji, G. Maierhofer, M. Cranmer, J. N. Kutz ; The 39th Annual Conference on Neural Information Processing Systems (NeurIPS), Datasets and Benchmarks Track (2025)
This paper presents a common task framework for evaluating scientific machine learning algorithms, focusing on their application to complex dynamical systems.