Publication Date:
2020
abstract:
In recent years, the increasing interest in stochastic
model predictive control (SMPC) schemes has highlighted
the limitation arising from their inherent computational demand,
which has restricted their applicability to slow-dynamics
and high-performing systems. To reduce the computational
burden, in this paper we extend the probabilistic scaling
approach to obtain a low-complexity inner approximation of
chance-constrained sets. This approach provides probabilistic
guarantees at a lower computational cost than other schemes
for which the sample complexity depends on the design space
dimension. To design candidate simple approximating sets,
which approximate the shape of the probabilistic set, we
introduce two possibilities: i) fixed-complexity polytopes, and
ii) `p-norm based sets. Once the candidate approximating set
is obtained, it is scaled around its center so to enforce the
expected probabilistic guarantees. The resulting scaled set is
then exploited to enforce constraints in the classical SMPC
framework. The computational gain obtained with respect to
the scenario approach is demonstrated via simulations, where
the objective is the control of a fixed-wing UAV performing a
crop-monitoring mission over a sloped vineyard.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Stochastic MPC; UAV; Precision Agriculture
List of contributors: