Title
Conic optimization for control, energy systems, and machine learning: Applications and algorithms
Abstract
Optimization is at the core of control theory and appears in several areas of this field, such as optimal control, distributed control, system identification, robust control, state estimation, model predictive control and dynamic programming. The recent advances in various topics of modern optimization have also been revamping the area of machine learning. Motivated by the crucial role of optimization theory in the design, analysis, control and operation of real-world systems, this tutorial paper offers a detailed overview of some major advances in this area, namely conic optimization and its emerging applications. First, we discuss the importance of conic optimization in different areas. Then, we explain seminal results on the design of hierarchies of convex relaxations for a wide range of nonconvex problems. Finally, we study different numerical algorithms for large-scale conic optimization problems.
Year
DOI
Venue
2019
10.1016/j.arcontrol.2018.11.002
Annual Reviews in Control
Keywords
DocType
Volume
Conic optimization,Numerical algorithms,Control theory,Energy,Machine learning
Journal
47
ISSN
Citations 
PageRank 
1367-5788
0
0.34
References 
Authors
62
3
Name
Order
Citations
PageRank
Richard Y. Zhang1106.92
Cédric Josz2123.23
Somayeh Sojoudi39423.25