Robust Control for Dynamical Systems With Non-Gaussian Noise via Formal Abstractions
Thom Badings, Licio Romao, Alessandro Abate, David Parker and, Hasan A. Poonawala, Marielle Stoelinga, Nils Jansen

TL;DR
This paper introduces a novel control synthesis method for stochastic dynamical systems that does not require explicit noise distribution models, using probabilistic abstractions and sample-based bounds to ensure safety guarantees.
Contribution
It develops a PAC-based approach to bound transition probabilities in an interval MDP, enabling robust control synthesis without explicit noise distribution assumptions.
Findings
Effective control guarantees under non-Gaussian noise.
Scalable synthesis for large state-space models.
Validated on realistic control system benchmarks.
Abstract
Controllers for dynamical systems that operate in safety-critical settings must account for stochastic disturbances. Such disturbances are often modeled as process noise in a dynamical system, and common assumptions are that the underlying distributions are known and/or Gaussian. In practice, however, these assumptions may be unrealistic and can lead to poor approximations of the true noise distribution. We present a novel controller synthesis method that does not rely on any explicit representation of the noise distributions. In particular, we address the problem of computing a controller that provides probabilistic guarantees on safely reaching a target, while also avoiding unsafe regions of the state space. First, we abstract the continuous control system into a finite-state model that captures noise by probabilistic transitions between discrete states. As a key contribution, we…
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Taxonomy
TopicsFormal Methods in Verification · Fault Detection and Control Systems · Safety Systems Engineering in Autonomy
