Szemináriumok
The Differential Equation that Solves Every Problem or How to Lie with Universal Equations
We present a new approach to the construction of first integrals for second order autonomous systems without invoking a Lagrangian or Hamiltonian reformulation. We show and exploit the analogy between integrating factors of first order equations and their Lie point symmetry and integrating factors of second order autonomous systems and their dynamical symmetry. We connect intuitive and dynamical symmetry approaches through one-to-one correspondence in the framework proposed for first order systems. Conditional equations for first integrals are written out, as well as equations determining symmetries. The equations are applied on the simple harmonic oscillator and a class of nonlinear oscillators to yield integrating factors and first integrals.
A Lie algebraic approach is also used to study universal equations. To be universal, a differential equation must have a solution with which an arbitrary function can be uniformly approximated. A universal differential equation must be form invariant under translation and scaling. We present a way to construct universal equations.
Felsőbb elemi geometria – Tételek és problémák
Poliéder-sokaságok és nem-euklideszi krisztallográfia
Percolation games, ergodicity of probabilistic cellular automata, and the hard-core model
Eigenvalues of random non-Hermitian matrices and randomly coupled differential equations
PhD hallgatók kutatási beszámolói
9:30-9:45: Rahele Mosleh - Mathematical models for malaria disease
9:45-10:00: Császár Szilvia - Approximation of homoclinic orbits
10:00-10:15: Takács Bálint - Epidemic models with spatial dependence
10:15-10:30: Neogrády-Kiss Márton - Two simple models with inhibitory and excitatory neurons.
10:30-10:45: Maros Gábor - Analysis of fractional diffusion problems
Error exponents for communication models with multiple codebooks and the capacity region of partly asynchronous multiple access channel
Izometriák mátrixok struktúráin
Optimal strong stability preserving time-stepping methods with upwind- and downwind-biased operators
A plethora of physical phenomena are modelled by hyperbolic partial differential equations, for which the exact solution is usually not known. Numerical methods are employed to approximate the solution to hyperbolic problems; however, in many cases, it is difficult to satisfy certain physical properties while maintaining high order of accuracy. Strong stability preserving (SSP) time discretizations were developed to ensure that nonlinear stability properties of the solution are maintained when coupled with suitable spatial discretizations.
In the first part of this talk, we review the development of optimal SSP Runge-Kutta and multistep methods for nonlinear problems. We emphasize the usage of an alternative representation of Runge-Kutta methods that reveals the SSP properties of such methods. Numerical examples illustrate the effectiveness and usefulness of SSP methods.
In the second part, we present some recent results related to perturbed methods that use both upwind- and downwind-biased spatial discretizations. We introduce a novel family of third-order implicit Runge–Kutta methods with arbitrarily large SSP coefficient and investigate the stability and accuracy of these methods. Moreover, we extend the analysis of SSP linear multistep methods to semi-discretized problems for which different terms on the right-hand side of the initial value problem satisfy different forward Euler (or circle) conditions. Optimal perturbed and additive monotonicity-preserving linear multistep methods are studied in the context of such problems.