2022 Annual Meeting
(185f) Machine Learning-Based Ethylene Concentration Estimation, Real-Time Optimization and Feedback Control of an Experimental Electrochemical Reactor
Authors
Motivated by the above considerations, this work proposes a machine-learning-based modeling methodology that integrates support vector regression and first-principles modeling to capture the dynamics behavior of an experimental electrochemical reactor; this model, together with limited gas chromatography measurements, is employed to predict the evolution of gas-phase ethylene concentration. The model prediction is directly used in a proportional-integral controller that manipulates the applied potential to regulate the gas-phase ethylene concentration at energy-optimal set-point values computed by a real-time process optimizer (RTO). Specifically, the RTO optimizes the operation set-point by solving an optimization problem to maximize the economic benefit of the reactor. Lastly, suitable compensation methods are introduced to further account for the experimental uncertainties and handle catalyst de-activation. The performance of the proposed modeling, optimization and control approaches are demonstrated by results from a series of experiments.
References:
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