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Journal article

Model predictive control of urban drainage systems: A review and perspective towards smart real-time water management

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Department of Environmental Engineering, Technical University of Denmark1

Urban Water Systems, Department of Environmental Engineering, Technical University of Denmark2

DHI Water - Environment - Health3

Model predictive control (MPC) can be used to manage combined urban drainage systems more efficiently for protection of human health and the environment, but examples of operational implementations are rare. This paper reviews more than 30 years of partly heterogeneous research on the topic. We propose a terminology for MPC of urban drainage systems and a hierarchical categorization where we emphasize four overall components: the “receding horizon principle”, the “optimization model”, the “optimization solver”, and the “internal MPC model”.

Most of the reported optimization models share the trait of a multiobjective optimization based on a conceptual internal MPC model. However, there is a large variety of both convex and non-linear optimization models and optimization solvers as well as constructions of the internal MPC model. Furthermore, literature disagrees about the optimal length of the components in the receding horizon principle.

The large number of MPC formulations and evaluation approaches makes it problematic to compare different MPC methods. This review highlights methods, challenges, and research gaps in order to make MPC of urban drainage systems accessible for researchers and practitioners from different disciplines. This will pave the way for shared understanding and further development within the field, and eventually lead to more operational implementations.

Language: English
Publisher: Taylor & Francis
Year: 2018
Pages: 279-339
ISSN: 15476537 and 10643389
Types: Journal article
DOI: 10.1080/10643389.2018.1455484
ORCIDs: Lund, Nadia Schou Vorndran , Borup, Morten , Mikkelsen, Peter Steen , 0000-0002-7194-6704 and 0000-0001-8934-0834

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