2019 AIChE Annual Meeting
(740b) Learning-Based Model Predictive Control for Non-Equilibrium Plasmas
Authors
In this talk, we demonstrate the usefulness of a learning-based robust model predictive control (LB-RMPC) strategy for NEP treatment of complex surfaces via closed-loop control experiments on a kHz-excited atmospheric pressure plasma jet (APPJ) in Helium [5]. APPJs are a particular type of NEP devices widely used in plasma medicine and materials processing applications. Inspired by [6], we consider a linear dynamic model and a nonlinear additive state-dependent noise, which can be predicted using Gaussian Process (GP) regression. We show that GP provides a way to obtain state-dependent uncertainty bounds as the predictions will depend on current as well as past states and inputs. Thus, the LB-RMPC strategy allows system operation closer to the constraints, while guaranteeing that the constraints are not violated. Furthermore, online training of the GP model can eliminate the plant-model mismatch and reduce the uncertainty, improving the performance of the controller. Closed-loop experiments show that the proposed LB-RMPC strategy is less conservative than a RMPC strategy that uses worst-case uncertainty bounds. Most importantly, constraint violations in the key state variables such as the plasma intensity and the target surface temperature are eliminated, ensuring safe and reliable operation despite possible disturbances. Additionally, plant-model mismatch is effectively suppressed without the need to resort to offset-free MPC techniques.
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