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Abstract:
In general, it is difficult to determine an optimal
closed-loop policy in nonlinear control problems with
continuous-valued state and control domains. Hence, approximations
are often inevitable. The standard method of discretizing
states and controls suffers from the curse of dimensionality
and strongly depends on the chosen temporal sampling rate. In
this paper, we introduce Gaussian process dynamic programming
(GPDP) and determine an approximate globally optimal
closed-loop policy. In GPDP, value functions in the Bellman
recursion of the dynamic programming algorithm are modeled
using Gaussian processes. GPDP returns an optimal statefeedback
for a finite set of states. Based on these outcomes, we
learn a possibly discontinuous closed-loop policy on the entire
state space by switching between two independently trained
Gaussian processes. A binary classifier selects one Gaussian
process to predict the optimal control signal. We show that
GPDP is able to yield an almost optimal solution to an LQ
problem using few sample points. Moreover, we successfully
apply GPDP to the underpowered pendulum swing up, a
complex nonlinear control problem.