Deep Kernel Learning (DKL) combines the representational power of neural
networks with the uncertainty quantification of Gaussian Processes. Hence, it
is potentially a promising tool to learn and control complex dynamical systems.
In this work, we develop a scalable abstraction-based framework that enables
the use of DKL for control synthesis of stochastic dynamical systems against
complex specifications. Specifically, we consider temporal logic specifications
and create an end-to-end framework that uses DKL to learn an unknown system
from data and formally abstracts the DKL model into an Interval Markov Decision
Process (IMDP) to perform control synthesis with correctness guarantees.
Furthermore, we identify a deep architecture that enables accurate learning and
efficient abstraction computation. The effectiveness of our approach is
illustrated on various benchmarks, including a 5-D nonlinear stochastic system,
showing how control synthesis with DKL can substantially outperform
state-of-the-art competitive methods.Comment: 9 pages, 4 figures, 3 table