Abstract
A data-driven modeling approach for a pilot scale Packed-Bed Regenerator is
examined and insights are generalized. Training data is generated with a one dimensional
physical simulation model, which covers a wide variety of operation conditions including full
load and partial load behavior. The NARX Recurrent Neural Network architecture is used to
create a model that is able to describe the complex behavior of the regenerator. A grey box
modeling approach is proposed that utilizes feedback state variables and incorporates knowledge
about the internal behavior of the device. Using this approach, the behavior of the Packed-Bed
Regenerator can be described accurately with multi-step ahead predictions. This work presents
a rst step towards data-driven modeling of dynamic processes in industrial applications. In
addition to the presentation of important modeling key points for the proposed grey box model,
important steps regarding data preprocessing are identi ed and insights in the applicability of
di erent Neural Network architectures are discussed.
Original language | English |
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Title of host publication | IFAC Papers online |
Pages | 1341-1346 |
Number of pages | 6 |
Publication status | Published - 2019 |
Event | Joint Mechatronics 2019 & NolCos 2019, IFAC Papers online - Duration: 4 Sept 2019 → 6 Sept 2019 |
Conference
Conference | Joint Mechatronics 2019 & NolCos 2019, IFAC Papers online |
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Period | 4/09/19 → 6/09/19 |
Research Field
- Efficiency in Industrial Processes and Systems