IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Operational Decision-Making on Desalination Plants: From Process Modelling and Simulation to Monitoring and Automated Control With Machine Learning

Operational Decision-Making on Desalination Plants: From Process Modelling and Simulation to Monitoring and Automated Control With Machine Learning
View Sample PDF
Author(s): Fatima C.C. Dargam (SimTech Simulation Technology, Austria), Erhard Perz (SimTech Simulation Technology, Austria), Stefan Bergmann (SimTech Simulation Technology, Austria), Ekaterina Rodionova (SimTech Simulation Technology, Austria), Pedro Sousa (Oncontrol Technologies, Portugal), Francisco Alexandre A. Souza (OnControl Technologies, Portugal), Tiago Matias (OnControl Technologies, Portugal), Juan Manuel Ortiz (IMDEA Water Institute, Spain), Abraham Esteve-Nuñez (IMDEA Water Institute, Spain), Pau Rodenas (IMDEA Water Institute, Spain)and Patricia Zamora Bonachela (Aqualia – FCC Group, Spain)
Copyright: 2023
Volume: 15
Issue: 2
Pages: 20
Source title: International Journal of Decision Support System Technology (IJDSST)
DOI: 10.4018/IJDSST.315639

Purchase


Abstract

This paper describes some of the work carried out within the Horizon 2020 project MIDES (MIcrobial DESalination for low energy drinking water), which is developing the world's largest demonstration of a low-energy sys-tem to produce safe drinking water. The work in focus concerns the support for operational decisions on desalination plants, specifically applied to a mi-crobial-powered approach for water treatment and desalination, starting from the stages of process modelling, process simulation, optimization and lab-validation, through the stages of plant monitoring and automated control. The work is based on the application of the environment IPSEpro for the stage of process modelling and simulation; and on the system DataBridge for auto-mated control, which employs techniques of Machine Learning.

Related Content

Huili Xia, Feng Xue. © 2024. 15 pages.
Fatima C.C. Dargam, Erhard Perz, Stefan Bergmann, Ekaterina Rodionova, Pedro Sousa, Francisco Alexandre A. Souza, Tiago Matias, Juan Manuel Ortiz, Abraham Esteve-Nuñez, Pau Rodenas, Patricia Zamora Bonachela. © 2023. 20 pages.
Guoqing Zhao, Shaofeng Liu, Sebastian Elgueta, Juan Pablo Manzur, Carmen Lopez, Huilan Chen. © 2023. 25 pages.
Daouda KAMISSOKO, Didier Gourc, François Marmier, Antoine Clement. © 2023. 21 pages.
Sérgio Pedro Duarte, Jorge Pinho de Sousa, Jorge Freire de Sousa. © 2023. 20 pages.
Francis J. Baumont De Oliveira, Alejandro Fernandez, Jorge E. Hernández, Mariana del Pino. © 2023. 16 pages.
María Teresa Escobar, Juan Aguarón, José María Moreno-Jiménez, Alberto Turón. © 2023. 16 pages.
Body Bottom