IEEE Access (Jan 2020)

Automated Synthesis of Safe Digital Controllers for Sampled-Data Stochastic Nonlinear Systems

  • Fedor Shmarov,
  • Sadegh Soudjani,
  • Nicola Paoletti,
  • Ezio Bartocci,
  • Shan Lin,
  • Scott A. Smolka,
  • Paolo Zuliani

DOI
https://doi.org/10.1109/ACCESS.2020.3028476
Journal volume & issue
Vol. 8
pp. 180825 – 180843

Abstract

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We present a new method for the automated synthesis of digital controllers with formal safety guarantees for systems with nonlinear dynamics, noisy output measurements, and stochastic disturbances. Our method derives digital controllers such that the corresponding closed-loop system, modeled as a sampled-data stochastic control system, satisfies a safety specification with probability above a given threshold. Our technique uses a fast solver and an optimization method to search for candidate controllers, which are then formally evaluated in closed-loop with the system in question by a verified solver. Unstable candidate controllers are discarded by efficiently checking a sufficient condition for Lyapunov stability of sampled-data nonlinear systems. We evaluate our technique on three case studies: an artificial pancreas model, a powertrain control model, and a quadruple-tank process.

Keywords