Shrinking Horizon Model Predictive Control With Signal Temporal Logic Constraints Under Stochastic Disturbances

Journal Article (2019)
Author(s)

Samira Farahani (TU Delft - Energy and Industry)

Rupak Majumdar (Max Planck Institute for Software Systems)

Vinayak S. Prabhu (Colorado State University)

Sadegh Soudjani (Newcastle University)

Research Group
Energy and Industry
DOI related publication
https://doi.org/10.1109/TAC.2018.2880651
More Info
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Publication Year
2019
Language
English
Research Group
Energy and Industry
Issue number
8
Volume number
64
Pages (from-to)
3324-3331

Abstract

We present shrinking horizon model predictive control for discrete-time linear systems under stochastic disturbances with constraints encoded as signal temporal logic (STL) specification. The control objective is to satisfy a given STL specification with high probability against stochastic uncertainties while maximizing the robust satisfaction of an STL specification with minimum control effort. We formulate a general solution, which does not require precise knowledge of probability distributions of (possibly dependent) stochastic disturbances; only the bounded support of the density functions and moment intervals are used. For the specific case of disturbances that are normally distributed, we optimize the controllers by utilizing knowledge of the probability distribution of the disturbance. We show that in both cases, the control law can be obtained by solving optimization problems with linear constraints at each step. We experimentally demonstrate effectiveness of this approach by synthesizing a controller for a heating, ventilation, and air conditioning system.

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