Realizability-preserving Discretization Strategies for Hyperbolic and Kinetic Equations with Uncertainty
Title | Realizability-preserving Discretization Strategies for Hyperbolic and Kinetic Equations with Uncertainty PDF eBook |
Author | Jonas Kusch |
Publisher | |
Pages | |
Release | 2020* |
Genre | |
ISBN |
Uncertainty Quantification for Multiscale Kinetic Equations and Quantum Dynamics
Title | Uncertainty Quantification for Multiscale Kinetic Equations and Quantum Dynamics PDF eBook |
Author | Liu Liu |
Publisher | |
Pages | 330 |
Release | 2017 |
Genre | |
ISBN |
In the first part of the thesis, we develop a generalized polynomial chaos approach based stochastic Galerkin (gPC-SG) method for the linear semi-conductor Boltzmann equation with random inputs and diffusive scalings. The random inputs are due to uncertainties in the collision kernel or initial data. We study the regularity (uniform in the Knudsen number) of the solution in the random space, and prove the spectral accuracy of the gPC-SG method. We then use the asymptotic-preserving framework for the deterministic counterpart to come up with the stochastic asymptotic-preserving (sAP) gPC-SG method for the problem under study which is efficient in the diffusive regime. Numerical experiments are conducted to validate the accuracy and asymptotic properties of the method. In the second part, we study the linear transport equation under diffusive scaling and with random inputs. The method is based on the gPC-SG framework. Several theoretical aspects will be addressed. A uniform numerical stability with respect to the Knudsen number and a uniform error estimate is given. For temporal and spatial discretizations, we apply the implicit-explicit (IMEX) scheme under the micro-macro decomposition framework and the discontinuous Galerkin (DG) method. A rigorous proof of the sAP property is given. Extensive numerical experiments that validate the accuracy and sAP of the method are shown. In the last part, we study a class of highly oscillatory transport equations that arise in semiclassical modeling of non-adiabatic quantum dynamics. These models contain uncertainties, particularly in coefficients that correspond to the potentials of the molecular system. We first focus on a highly oscillatory scalar model with random uncertainty. Our method is built upon the nonlinear geometrical optics (NGO) based method for numerical approximations of deterministic equations, which can obtain accurate pointwise solution even without numerically resolving spatially and temporally the oscillations. With the random uncertainty, we show that such a method has oscillatory higher order derivatives in the random space, thus requires a frequency dependent discretization in the random space. We modify this method by introducing a new "time" variable based on the phase, which is shown to be non-oscillatory in the random space, based on which we develop a gPC-SG method that can capture oscillations with the frequency-independent time step, mesh size as well as the degree of polynomial chaos. A similar approach is then extended to a semiclassical surface hopping model system with a similar numerical conclusion. Various numerical examples attest that these methods indeed capture accurately the solution statistics pointwisely even though none of the numerical parameters resolve the high frequencies of the solution.
Uncertainty Quantification for Hyperbolic and Kinetic Equations
Title | Uncertainty Quantification for Hyperbolic and Kinetic Equations PDF eBook |
Author | Shi Jin |
Publisher | Springer |
Pages | 282 |
Release | 2018-03-20 |
Genre | Mathematics |
ISBN | 3319671103 |
This book explores recent advances in uncertainty quantification for hyperbolic, kinetic, and related problems. The contributions address a range of different aspects, including: polynomial chaos expansions, perturbation methods, multi-level Monte Carlo methods, importance sampling, and moment methods. The interest in these topics is rapidly growing, as their applications have now expanded to many areas in engineering, physics, biology and the social sciences. Accordingly, the book provides the scientific community with a topical overview of the latest research efforts.
Visualising Uncertainty
Title | Visualising Uncertainty PDF eBook |
Author | Polina Levontin |
Publisher | |
Pages | 58 |
Release | 2020 |
Genre | Computers |
ISBN | 9781912802050 |
How should we understand and visualise the uncertainty inherent in decision-making? Using the right visualisation tools can improve our decisions. But this positive impact should never be taken for granted: visualisations can also have unexpected side-effects, and there is the risk that they can be misinterpreted or otherwise misused.
Hyperbolic Problems
Title | Hyperbolic Problems PDF eBook |
Author | American Institute of Mathematical Sciences |
Publisher | |
Pages | 1069 |
Release | 2014 |
Genre | Differential equations, Hyperbolic |
ISBN | 9781601330178 |
Spectral Methods for Uncertainty Quantification
Title | Spectral Methods for Uncertainty Quantification PDF eBook |
Author | Olivier Le Maitre |
Publisher | Springer Science & Business Media |
Pages | 542 |
Release | 2010-03-11 |
Genre | Science |
ISBN | 9048135206 |
This book deals with the application of spectral methods to problems of uncertainty propagation and quanti?cation in model-based computations. It speci?cally focuses on computational and algorithmic features of these methods which are most useful in dealing with models based on partial differential equations, with special att- tion to models arising in simulations of ?uid ?ows. Implementations are illustrated through applications to elementary problems, as well as more elaborate examples selected from the authors’ interests in incompressible vortex-dominated ?ows and compressible ?ows at low Mach numbers. Spectral stochastic methods are probabilistic in nature, and are consequently rooted in the rich mathematical foundation associated with probability and measure spaces. Despite the authors’ fascination with this foundation, the discussion only - ludes to those theoretical aspects needed to set the stage for subsequent applications. The book is authored by practitioners, and is primarily intended for researchers or graduate students in computational mathematics, physics, or ?uid dynamics. The book assumes familiarity with elementary methods for the numerical solution of time-dependent, partial differential equations; prior experience with spectral me- ods is naturally helpful though not essential. Full appreciation of elaborate examples in computational ?uid dynamics (CFD) would require familiarity with key, and in some cases delicate, features of the associated numerical methods. Besides these shortcomings, our aim is to treat algorithmic and computational aspects of spectral stochastic methods with details suf?cient to address and reconstruct all but those highly elaborate examples.
Mathematical Modeling, Simulation and Optimization for Power Engineering and Management
Title | Mathematical Modeling, Simulation and Optimization for Power Engineering and Management PDF eBook |
Author | Simone Göttlich |
Publisher | Springer Nature |
Pages | 333 |
Release | 2021-02-02 |
Genre | Technology & Engineering |
ISBN | 3030627322 |
This edited monograph offers a summary of future mathematical methods supporting the recent energy sector transformation. It collects current contributions on innovative methods and algorithms. Advances in mathematical techniques and scientific computing methods are presented centering around economic aspects, technical realization and large-scale networks. Over twenty authors focus on the mathematical modeling of such future systems with careful analysis of desired properties and arising scales. Numerical investigations include efficient methods for the simulation of possibly large-scale interconnected energy systems and modern techniques for optimization purposes to guarantee stable and reliable future operations. The target audience comprises research scientists, researchers in the R&D field, and practitioners. Since the book highlights possible future research directions, graduate students in the field of mathematical modeling or electrical engineering may also benefit strongly.