Mathematics  

Linear and euclidean spaces: linear independence, basis, linear mappings, nullspace and range, matrix representation, transitional matrix, rank, eigenvalues and eigenvectors, scalarproduct, norm, orthogonality, Gram-Schmidt orthogonalisation, orthogonal projection (vector of best approximation), Fourier coefficients, least squares method, overdetermined systems, normal system, regression line. Numerical linear algebra: numerical computation and errors, linear systems, matrix decompositions: LU, QR, SVD. Graph theory: matrix presentation, isomorphism, path, cycle, walk, spanning tree, Hamiltonian and Eulerian cycle, the shortest path problem, weighted graph, algorithms of Kruskal and Dijkstra. Ordinary differential equations: linear DE of order n, LDE with constant coefficients, linear systems of DE of first order, matrix solution of initial problem, boundary value problem. Basics on partial differential equations: equations of mathematical physics, vibrating string, d'Alembert solutions. learning outcomes: basic knowledge and understanding of linear algebra and mathematical analysis • mastering of basic computational skills • the achieved mathematical knowledge is used by the engineering courses • mathematics is essential for technical studies • ability of abstract formulation of practical problems • capability of critical judgement of data and obtained numerical results • capability of systematical, clear and precise formulation of problems • ability of reasoning from general to special and vice versa • skills in using literatur
Presential
English
Mathematics
English

Funded by the European Union. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or HaDEA. Neither the European Union nor the granting authority can be held responsible for them. The statements made herein do not necessarily have the consent or agreement of the ASTRAIOS Consortium. These represent the opinion and findings of the author(s).