Title
Specialized Interior Point Algorithm for Stable Nonlinear System Identification.
Abstract
Estimation of nonlinear dynamic models from data poses many challenges, including model instability and non-convexity of long-term simulation fidelity. Recently Lagrangian relaxation has been proposed as a method to approximate simulation fidelity and guarantee stability via semidefinite programming (SDP), however the resulting SDPs have large dimension, limiting their utility in practical problems. In this paper we develop a path-following interior point algorithm that takes advantage of special structure in the problem and reduces computational complexity from cubic to linear growth with the length of the data set. The new algorithm enables empirical comparisons to established methods including Nonlinear ARX, and we demonstrate superior generalization to new data. We also explore the regularizing effect of stability constraints as an alternative to regressor subset selection.
Year
Venue
Field
2018
IEEE Transactions on Automatic Control
Fidelity,Mathematical optimization,Nonlinear system,Instability,Nonlinear system identification,Algorithm,Lagrangian relaxation,Interior point method,Semidefinite programming,Mathematics,Computational complexity theory
DocType
Volume
Citations 
Journal
abs/1803.01066
0
PageRank 
References 
Authors
0.34
15
2
Name
Order
Citations
PageRank
Jack Umenberger194.90
Ian R. Manchester236135.92