Reference
A. Moradvandi, B. De Schutter, E. Abraham, and
R. E. F. Lindeboom, "Model predictive
control of purple bacteria in raceway reactors: Handling microbial competition,
disturbances, and performance,"
Computers and Chemical
Engineering, vol. 194, p. 108981, Mar. 2025.
Abstract
Purple Phototrophic Bacteria (PPB) are increasingly being applied in resource
recovery from wastewater. Open raceway-pond reactors offer a more
cost-effective option, but subject to biological and environmental
perturbations. This study proposes a hierarchical control system based on
Adaptive Generalized Model Predictive Control (AGMPC) for PPB raceway reactors.
The AGMPC uses simple linear models updated adaptively to project the complex
process dynamics and capture changes. The hierarchical approach uses the AGMPC
controller to optimize PPB growth as the core of the system. The developed
supervisory layer adjusts set-points for the core controller based on two
operational scenarios: maximizing PPB concentration for quality, or increasing
yield for quantity through effluent recycling. Lastly, due to competing PPB and
non-PPB bacteria during start-up phase, an override strategy for this
transition is investigated through simulation studies. The Purple Bacteria
Model (PBM) simulates this process, and simulation results demonstrate the
control system's effectiveness and robustness.
Publisher page
BibTeX
@article{MorAbr:25-001,
author = {Moradvandi, Ali and De Schutter, Bart and Abraham, Edo and
Lindeboom, Ralph E. F.},
title = {Model Predictive Control of Purple Bacteria in Raceway Reactors:
{Handling} Microbial Competition, Disturbances, and Performance},
journal = {Computers and Chemical Engineering},
volume = {194},
pages = {108981},
month = mar,
year = {2025}
}