Model Discrepancy Learning for Heat Exchanger Networks

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Abstract

In the heat treatment processes, offline utilization of first-principles models is well-established. These models tend to be complex, computationally demanding, and rely heavily on empirical relations. The fidelity of these models degrades over time due to changes in the process resulting in plant-model mismatch, which is typically attributed to an incorrect constitutive relation of a physical mechanism in the model (i.e. fouling in the heat exchangers). In this paper, we propose two hybrid modeling approaches, namely Sparse Identification of Nonlinear Dynamics with Control and least square estimation, to learn the dynamics of the discrepancy between the measurement data and the simulation model. The hybrid modeling approach is implemented on a heat exchanger network (HEN) example and it is shown that the accuracy of the first principles dynamic model is improved.
Original languageEnglish
Pages (from-to)271-276
Number of pages6
JournalIFAC-PapersOnLine
Volume58
Issue number14
DOIs
Publication statusPublished - 1 Jul 2024

Funding

This publication is part of an Institute for Sustainable Process Technology (ISPT) project: The Heat is On (THIO), and is executed with subsidy of Topsector Energy of the Dutch Ministry of Economic Affairs and Climate Policy, executed by the Netherlands Enterprise Agency (RVO). The specific subsidy for this project is MOOI-subsidy 2020.

Keywords

  • heat exchanger fouling
  • hybrid modeling
  • model discovery
  • sparse identification

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