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  4. Deep Learning Based Model Predictive Control for a Reverse Osmosis Desalination Plant
 
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2020
Journal Article
Title

Deep Learning Based Model Predictive Control for a Reverse Osmosis Desalination Plant

Abstract
Reverse Osmosis (RO) desalination plants are highly nonlinear multi-input-multioutput systems that are affected by uncertainties, constraints and some physical phenomena such as membrane fouling that are mathematically difficult to describe. Such systems require effective control strategies that take these effects into account. Such a control strategy is the nonlinear model predictive (NMPC) controller. However, an NMPC depends very much on the accuracy of the internal model used for prediction in order to maintain feasible operating conditions of the RO desalination plant. Recurrent Neural Networks (RNNs), especially the Long-Short-Term Memory (LSTM) can capture complex nonlinear dynamic behavior and provide long-range predictions even in the presence of disturbances. Therefore, in this paper an NMPC for a RO desalination plant that utilizes an LSTM as the predictive model will be presented. It will be tested to maintain a given permeate flow rate and keep the permeate concentration under a certain limit by manipulating the feed pressure. Results show a good performance of the system.
Author(s)
Karimanzira, Divas  
Rauschenbach, Thomas  
Journal
Journal of applied mathematics and physics  
Open Access
DOI
10.4236/jamp.2020.812201
Language
English
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
Keyword(s)
  • desalination

  • model predictive control

  • artificial intelligence

  • Long Short Term Memory Neural Network

  • Reverse osmosis

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