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Stephen Guth
Stephen Guth
Candidate for Juris Doctor at Boston University School of Law
Bestätigte E-Mail-Adresse bei mit.edu
Titel
Zitiert von
Zitiert von
Jahr
Discovering and forecasting extreme events via active learning in neural operators
E Pickering, S Guth, GE Karniadakis, TP Sapsis
Nature Computational Science 2 (12), 823-833, 2022
462022
Machine learning predictors of extreme events occurring in complex dynamical systems
S Guth, TP Sapsis
Entropy 21 (10), 925, 2019
382019
Experimental study of electromagnetic Bessel-Gaussian Schell Model beams propagating in a turbulent channel
S Avramov-Zamurovic, C Nelson, S Guth, O Korotkova, R Malek-Madani
Optics Communications 359, 207-215, 2016
372016
Flatness parameter influence on scintillation reduction for multi-Gaussian Schell-model beams propagating in turbulent air
S Avramov-Zamurovic, C Nelson, S Guth, O Korotkova
Applied optics 55 (13), 3442-3446, 2016
282016
Scintillation reduction in pseudo Multi-Gaussian Schell Model beams in the maritime environment
C Nelson, S Avramov-Zamurovic, O Korotkova, S Guth, R Malek-Madani
Optics Communications 364, 145-149, 2016
232016
Lagrangian and Eulerian analysis of transport and mixing in the three dimensional, time dependent Hill’s spherical vortex
KL McIlhany, S Guth, S Wiggins
Physics of Fluids 27 (6), 2015
132015
Wave episode based Gaussian process regression for extreme event statistics in ship dynamics: Between the Scylla of Karhunen–Loève convergence and the Charybdis of transient …
S Guth, TP Sapsis
Ocean Engineering 266, 112633, 2022
112022
Statistical modeling of fully nonlinear hydrodynamic loads on offshore wind turbine foundations using wave episodes and targeted CFD simulations through active sampling
S Guth, E Katsidoniotaki, T Sapsis
32023
Application of Gaussian process multi-fidelity optimal sampling to ship structural modeling
S Guth, B Champenois, TP Sapsis
34th Symp. on Naval Hydrodynamics, Washington, DC, June, 2022
22022
Evaluation of machine learning architectures on the quantification of epistemic and aleatoric uncertainties in complex dynamical systems
S Guth, A Mojahed, TP Sapsis
arXiv preprint arXiv:2306.15159, 2023
12023
Surrogate model of a wave energy system using sequential Bayesian experimental design with machine learning techniques
E Katsidoniotaki, S Guth, A Mojahed, M Göteman, T Sapsis
12023
Probabilistic characterization of the effect of transient stochastic loads on the fatigue-crack nucleation time
S Guth, TP Sapsis
Probabilistic Engineering Mechanics 66, 103162, 2021
12021
Analytic methods for estimating the effects of stochastic intermittent loading on fatigue-crack nucleation
S Guth, T Sapsis
Advances in Nonlinear Dynamics: Proceedings of the Second International …, 2021
12021
A stochastically preluded Karhunen-Loève representation for recovering extreme statistics in ship dynamics
S Guth, TP Sapsis
Proc. 1st Int. Conf. On Stability and Safety of Ships and Ocean Vehicles …, 2021
12021
MICRODEM terrain grid computing: global SRTM geomorphometry
PL Guth, SC Guth
Computing, 1-6, 2006
12006
Quality measures for the evaluation of machine learning architectures on the quantification of epistemic and aleatoric uncertainties in complex dynamical systems
S Guth, A Mojahed, TP Sapsis
Computer Methods in Applied Mechanics and Engineering 420, 116760, 2024
2024
Statistical modeling of fully nonlinear hydrodynamic loads on offshore wind turbine monopile foundations using wave episodes and targeted CFD simulations through active sampling
S Guth, E Katsidoniotaki, TP Sapsis
Wind Energy 27 (1), 75-100, 2024
2024
Reduced Order Modeling of Wave Energy Systems via Sequential Bayesian Experimental Design and Machine Learning
E Katsidoniotaki, S Guth, M Göteman, TP Sapsis
2023
Analytical and computational methods for non-Gaussian reliability analysis of nonlinear systems operating in stochastic environments
SC Guth
Massachusetts Institute of Technology, 2023
2023
Likelihood-weighted active learning with application to Bayesian optimization and uncertainty quantification for complex fluid flows
T Sapsis, A Blanchard, E Pickering, S Guth
Bulletin of the American Physical Society 67, 2022
2022
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