Title :
Improved sample complexity estimates for statistical learning control of uncertain systems
Author :
Koltchinskii, V. ; Abdallah, C.T. ; Ariola, M. ; Dorato, P. ; Panchenko, D.
Author_Institution :
Dept. of Math. & Stat., New Mexico Univ., Albuquerque, NM, USA
fDate :
12/1/2000 12:00:00 AM
Abstract :
Probabilistic methods and statistical learning theory have been shown to provide approximate solutions to “difficult” control problems. Unfortunately, the number of samples required in order to guarantee stringent performance levels may be prohibitively large. This paper introduces bootstrap learning methods and the concept of stopping times to drastically reduce the bound on the number of samples required to achieve a performance level. We then apply these results to obtain more efficient algorithms which probabilistically guarantee stability and robustness levels when designing controllers for uncertain systems
Keywords :
approximation theory; computational complexity; control system synthesis; decidability; learning (artificial intelligence); probability; robust control; uncertain systems; bootstrap learning methods; robustness levels; sample complexity estimates; statistical learning control; stopping times; Algorithm design and analysis; Computational complexity; Control systems; Learning systems; Monte Carlo methods; Robust control; Robust stability; Statistical learning; Uncertain systems; Vectors;
Journal_Title :
Automatic Control, IEEE Transactions on