Analysis of Bayesian control law for adaptive control
Chu, Yifeng
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https://hdl.handle.net/2142/99981
Description
Title
Analysis of Bayesian control law for adaptive control
Author(s)
Chu, Yifeng
Contributor(s)
Raginsky, Maxim
Issue Date
2018-05
Keyword(s)
adaptive control
minimum relative entropy
Abstract
This thesis analyzes the Bayesian control law for adaptive control proposed
by Ortega and Braun. The problem of concern is as follows: Assume the
agent is put into an unknown environment that is sampled from certain distribution.
If the agent is given priors of environment distribution, dynamics
of each environment, and optimal controller for various environments, then
under Bayesian control law, the agent's behavior would be as optimal as
the true controller tailored to that unknown environment in an asymptotic
sense. Furthermore, the results in the original paper are rewritten in a more
understandable way and several ambiguities are clarifed.
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