The amazing success of computational mathematical optimization over the last decades has been driven more by insights into mathematical structures than by the advance of computing technology. In this vein, Jonas Schweiger addresses applications, where nonconvexity in the model and uncertainty in the data pose principal difficulties. In the first part, he contributes strong relaxations for non-convex problems such as the non-convex quadratic programming and the Pooling Problem. In the second part, he contributes a robust model for gas transport network extension and a custom decomposition approach. All results are backed by extensive computational studies.
Thesis
Dissertationsschrift
2017
Technische Universität Berlin
Sprache
Verlagsort
Zielgruppe
Maße
Höhe: 21 cm
Breite: 14.5 cm
ISBN-13
978-3-8325-4667-0 (9783832546670)
Schweitzer Klassifikation
Jonas Schweiger pursued his doctoral studies while having positions at Zuse Institute Berlin and IBM CPLEX Optimization and a scholarship by the CRC TRR 154. His research focuses on the application of mathematical optimization and non-convex MINLP. In 2017 he finished his PhD and returned to Zuse Institute Berlin where he is currently leading the research group Energy Network Optimization.