Combining Gaussian processes and polynomial chaos expansions for stochastic nonlinear model predictive control
E. Bradford, L. Imsland

TL;DR
This paper introduces a novel method combining Gaussian processes and polynomial chaos expansions to efficiently handle stochastic uncertainties in nonlinear model predictive control, improving probabilistic constraint handling and performance.
Contribution
The paper presents a new algorithm that combines Gaussian processes with polynomial chaos to accurately propagate uncertainties in nonlinear control problems.
Findings
Accurately approximates probability distributions in stochastic control.
Formulates a tractable stochastic nonlinear model predictive control approach.
Demonstrates improved closed-loop performance via Monte Carlo simulations.
Abstract
Model predictive control is an advanced control approach for multivariable systems with constraints, which is reliant on an accurate dynamic model. Most real dynamic models are however affected by uncertainties, which can lead to closed-loop performance deterioration and constraint violations. In this paper we introduce a new algorithm to explicitly consider time-invariant stochastic uncertainties in optimal control problems. The difficulty of propagating stochastic variables through nonlinear functions is dealt with by combining Gaussian processes with polynomial chaos expansions. The main novelty in this paper is to use this combination in an efficient fashion to obtain mean and variance estimates of nonlinear transformations. Using this algorithm, it is shown how to formulate both chance-constraints and a probabilistic objective for the optimal control problem. On a batch reactor…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Fault Detection and Control Systems · Process Optimization and Integration
