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Long Short-Term Memory Neural Networks for Modeling Dynamical Processes and Predictive Control: A Hybrid Physics-Informed Approach

Krzysztof Zarzycki, Maciej Ławryńczuk

2023Sensors15 citationsDOIOpen Access PDF

Abstract

This work has two objectives. Firstly, it describes a novel physics-informed hybrid neural network (PIHNN) model based on the long short-term memory (LSTM) neural network. The presented model structure combines the first-principle process description and data-driven neural sub-models using a specialized data fusion block that relies on fuzzy logic. The second objective of this work is to detail a computationally efficient model predictive control (MPC) algorithm that employs the PIHNN model. The validity of the presented modeling and MPC approaches is demonstrated for a simulated polymerization reactor. It is shown that the PIHNN structure gives very good modeling results, while the MPC controller results in excellent control quality.

Topics & Concepts

Model predictive controlArtificial neural networkComputer scienceTerm (time)Process (computing)Controller (irrigation)Block (permutation group theory)Control engineeringControl (management)Process controlArtificial intelligenceControl theory (sociology)EngineeringMathematicsAgronomyBiologyQuantum mechanicsGeometryPhysicsOperating systemAdvanced Control Systems OptimizationFault Detection and Control SystemsFuel Cells and Related Materials
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