DocumentCode
3743944
Title
Maximizing higher derivatives of unknown maps with extremum seeking
Author
Greg Mills;Miroslav Krstic
Author_Institution
Univ. of California, San Diego, United States of America
fYear
2015
Firstpage
5648
Lastpage
5653
Abstract
We generalize the Newton-based extremum seeking algorithm, which, through measurements of an unknown map, maximizes the map´s higher derivatives. Specifically, we propose a method for choosing the demodulation signals of a sinusoidally perturbed estimate, such that the extremum seeking algorithm maximizes the n th derivative only through measurements of the map. The Newton-based extremum seeking approach removes the dependence of the average convergence rate on the unknown Hessian of the higher derivative. This dependence is present in standard gradient-based extremum seeking while the average convergence rate of our parameter estimates is user-assignable. Our design stems from the existing multivariable Newton-based extremum seeking algorithm where a differential Riccati equation estimates the inverse Hessian of the function to be maximized. Algebraically computing a direct estimate of the inverse Hessian is susceptible to singularity, where-as employing the Riccati filter removes that potential. We prove local stability of the algorithm for general nonlinear maps via averaging theory.
Keywords
"Heuristic algorithms","Demodulation","Linear programming","Convergence","Optimization","Taylor series","Standards"
Publisher
ieee
Conference_Titel
Decision and Control (CDC), 2015 IEEE 54th Annual Conference on
Type
conf
DOI
10.1109/CDC.2015.7403105
Filename
7403105
Link To Document