Periodic Reporting for period 1 - MALCOD (Machine Learning for Computational Dynamics)
Periodo di rendicontazione: 2015-09-01 al 2017-08-31
The key objectives for the research outlined in the proposal were:
1. Numerical approximation and continuation for control and random dynamical systems
2. Numerical approximation of Lyapunov functions and basins of attraction for deterministic dynamical systems
3. Error analysis of the numerical methods from 1 and 2
4. Application to problems in power grid networks, movie image rendering and turbulent flow across aerofoils
The project work was based at the Potsdam Institute for Climate Impact Research (PIK). Another key component of the project was to have secondments with the non-academic partner organisation Ambrosys GmbH in Potsdam, Germany.
The project was terminated early, and ran from 01.09.2015 to 31.03.2016.
1. M. Rasmussen, J. Rieger and K. N. Webster, “Approximation of reachable sets using optimal control and support vector machines”, Journal of Computational and Applied Mathematics, 311 (2017), 68-83.
2. P. Giesl, B. Hamzi, M. Rasmussen and K. N. Webster, “Approximation of Lyapunov functions from data”, submitted to Journal of Computational and Applied Mathematics.
3. T. Kittel, J. Heitzig, K. N. Webster and J. Kurths, “Timing of transients”, New Journal of Physics, to appear.
4. P. Schultz, F. Hellmann, K. N. Webster and J. Kurths, “Finite-time basin stability and independence times”, Chaos, under review.
The work achieved in combining machine learning methods with numerical analysis problems was highly original work, and paved the way for future research to be conducted along similar lines. The field of machine learning in particular is a fast evolving field, and many breakthroughs have since been made in the areas of Gaussian processes and deep learning, and there will be plenty of scope for continuing this programme by exploiting and modifying these newer algorithms.
In addition, dissemination and communication of research findings has lead to an immediate impact for the fellow’s research career and industrial impact. It has also contributed towards enhancing European excellence in applied research.