The main objective of this project is to develop an adaptive sampling strategy for the identification of cycles in transition networks. To analyse transition networks, methods of combinatorial optimization are required. This necessitates the design of new possibly heuristic methods and the development of exact mixed-integer programming (MIP) models to evaluate the quality of the heuristics. Experience has shown that the corresponding optimization problems exhibit a high degree of symmetry, which poses additional challenges to state-of-the-art MIP solvers. A long-term goal is to speed up the solver software SCIP in this respect. Previous work for the recognition and exploitation of symmetry in SCIP already exists. The cycle detection provides not only mathematical progress, but it also reveals an important element of natural processes: the micro-catalysis. Ion transport with the help of channel proteins is done by cyclic movements (pumping) of the proteins. The short time scales of these cycles are crucial for the long-term process. These movements are cyclically, because the protein must remain "intact" during the process. In particular, when we combine simulations of classical and quantum physics, such cycles are possible even on longer time scales.

Publications

2018
Mixed-Integer Programming for Cycle Detection in Non-reversible Markov Processes Multiscale Modeling and Simulation, 16(1), pp. 248-265, 2018 (preprint available as ZIB-Report 16-39) Jakob Witzig, Isabel Beckenbach, Leon Eifler, Konstantin Fackeldey, Ambros Gleixner, Andreas Grever, Marcus Weber PDF (ZIB-Report)
BibTeX
DOI
Cycle Detection in Nonreversible Markov Processes
2017
Mixed-Integer Programming for Clustering in Non-reversible Markov Processes Master's thesis, Technische Universität Berlin, Thorsten Koch (Advisor), 2017 Leon Eifler PDF
BibTeX
URN
Cycle Detection in Nonreversible Markov Processes
2015
Korrelation für lineare und nichtlineare Zusammenhänge Master's thesis, Freie Universität Berlin, Marcus Weber (Advisor), 2015 Jessica Schöpke BibTeX
Cycle Detection in Nonreversible Markov Processes
Monte-Carlo-Verfahren zur Niedrig-Rang Approximation Bachelor's thesis, Freie Universität Berlin, Marcus Weber (Advisor), 2015 Annett Meier BibTeX
Cycle Detection in Nonreversible Markov Processes
2014
Cycle-flow-based module detection in directed recurrence networks EPL (Europhysics Letters), 108(6), 2014 Ralf Banisch, Natasa Djurdjevac Conrad BibTeX
DOI
Cycle Detection in Nonreversible Markov Processes