Publication: Physics-informed and data-driven modeling of an industrial wastewater treatment plant with actual validation
Program
KU Authors
Co-Authors
Esenboga, Elif Ecem
Cosgun, Ahmet
Kusoglu, Gizem
Advisor
Publication Date
2024
Language
en
Type
Journal article
Journal Title
Journal ISSN
Volume Title
Abstract
Data-driven modeling is essential in chemical engineering, especially in complex systems like wastewater treatment plants. Recurrent neural networks are effective for modeling parameters in wastewater treatment process such as dissolved oxygen concentration and chemical oxygen demand due to their nonlinear adaptability. However, traditional models face challenges such as the requirement for larger datasets and more frequent sampling, noisy measurements, and overfitting. To address this, physics-informed neural networks integrate physical knowledge for improved performance. In our study, we apply both approaches to a wastewater treatment plant, enhancing prediction performance. Our results demonstrate that physics-informed models perform successfully in offline and online validation, especially when standard methods fail. They maintain effectiveness without frequent updates. Yet, integrating physics-informed knowledge can introduce noise when standard methods suffice. This result points out the need for careful consideration of model choice in different scenarios.
Description
Source:
Computers and Chemical Engineering
Publisher:
PERGAMON-ELSEVIER SCIENCE LTD
Keywords:
Subject
Computer science, Chemical and biological engineering