Affiliation:
1. TU Dortmund Process Dynamics and Operations Group, Department of Biochemical and Chemical Engineering Emil-Figge-Straße 70 44227 Dortmund Germany
2. Bayer AG Engineering & Technology 51368 Leverkusen Germany
Abstract
AbstractAdvanced control schemes such as model predictive control can be used to minimize the use of resources while guaranteeing the specified product quality. In this paper, we consider an industrial mother liquor distillation column varying flow rate and composition of the feed. There are specifications of the composition for all product streams. To address this challenging control problem, we employ a nonlinear model‐predictive controller using a hybrid model, which consists of a simple phenomenological model augmented by a data‐based component to compensate the plant‐model mismatch. The trustworthiness of the data‐based model is addressed using a domain of validity of the data‐based model, which is estimated using a one‐class support vector machine. During operation, it may turn out that the model is also reliable in a wider range, therefore, data of recently visited operating points is recorded and the domain of validity is extended if the model is sufficiently accurate. To improve the performance of the controller, an artificial neural network model is used to estimate the product composition from available measurements.
Subject
Industrial and Manufacturing Engineering,General Chemical Engineering,General Chemistry
Cited by
6 articles.
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