Scenario-Based Hierarchical and Distributed MPC for Water Resources Management with Dynamical Uncertainty

被引:0
|
作者
P. Velarde
X. Tian
A. D. Sadowska
J. M. Maestre
机构
[1] Universidad UTE,Facultad de Ciencias de la Ingeniería e Industrias
[2] University of Seville,System Engineering and Automation Department, School of Engineering
[3] Delft University of Technology,Department of Water Management
[4] Nanjing University of Information Science & Technology,College of Hydrometeorology
[5] Schlumberger Cambridge Research,undefined
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关键词
Water resource management; Model predictive control; Distributed control; Dynamical uncertainty; Hierarchical control;
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学科分类号
摘要
A real-time control scheme informed by a streamflow forecast is presented for the optimal operation of water resources systems composed of multiple and spatially distributed systems, affected by hydroclimatic disturbances. The approach uses a two-layer scenario-based hierarchical and distributed model predictive controller (HD-MPC) to deal with the operational water management problem under dynamical uncertainty. The higher layer collects and coordinates forecast information, which is rendered into possible realizations of the uncertainties and sent to the local agents. The lower layer solves a distributed optimization problem related to the actual management objectives. The HD-MPC method is demonstrated through a simulation of the North Sea Canal system as a real-world case study. The results show the benefits of the proposed compared to over other types of MPC controllers.
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页码:677 / 696
页数:19
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