Abstract
A considerable shift from road transport to inland navigation and railway is expected in the following years in France. By focusing on inland navigation, this expected increase of transport will require an efficient management of the infrastructure and water. Inland navigation requires water levels kept within the navigation rectangle. Hence it is necessary to design efficient control algorithms for water levels. Model Predictive Control (MPC) is proposed to regulate the water level of canals with locks. This controller maintains the level close to the navigation objective by rejecting disturbances mainly caused by lock operations. In this paper, MPC is designed by considering realistic constraints on the dynamics of the gates and the available supplied discharges. It allows taking into account several operating conditions that correspond to normal, drought and flood situations. MPC strategy is tested on a numerical simulation of the Cuinchy-Fontinettes reach that is located in the north of France.
Keywords
This work is a contribution to the GEPET’Eau project which is granted by the French ministery MEDDE - GICC, the French institution ORNERC and the DGITM.
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Horváth, K., Duviella, E., Rajaoarisoa, L., Negenborn, R.R., Chuquet, K. (2015). Improvement of Navigation Conditions Using Model Predictive Control - The Cuinchy-Fontinettes Case Study. In: Corman, F., Voß, S., Negenborn, R. (eds) Computational Logistics. ICCL 2015. Lecture Notes in Computer Science(), vol 9335. Springer, Cham. https://doi.org/10.1007/978-3-319-24264-4_16
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