Title :
An Integrated Framework for Distributed Model Predictive Control of Large-Scale Power Networks
Author :
del Real, Alejandro J. ; Arce, Alicia ; Bordons, C.
Author_Institution :
Idener Co., Seville, Spain
Abstract :
This work proposes a novel integrated framework in order to model, simulate, and optimize potentially large-scale and complex networks, fusing an extended network modeling methodology and distributed model predictive control structures based on Lagrange multipliers. In concrete, a revised network modeling formulation is utilized, allowing extended networking capabilities with a novel, generic, and compact way of organizing network topology information. This optimization framework offers a number of very convenient features: distribution of the overall network control effort among the local agents; no overall network knowledge required; the introduction/elimination of a node only affects to its neighbors. Thus, this integrated framework offers a powerful and easy-to-use mathematical tool in order to analyze and manage a wide variety of today´s large-scale network. Specifically, this methodology is applied here to a power network to show the benefit of the work developed.
Keywords :
complex networks; distributed control; large-scale systems; network topology; networked control systems; optimisation; power distribution control; predictive control; Lagrange multiplier; complex network; distributed model predictive control structure; integrated framework; large-scale power network; mathematical tool; network control; network modeling methodology; network topology; optimization; revised network modeling formulation; Computational modeling; Informatics; Junctions; Linear programming; Mathematical model; Optimization; Vectors; Distributed; energy network; large-scale networks; model predictive control (MPC); network modeling;
Journal_Title :
Industrial Informatics, IEEE Transactions on
DOI :
10.1109/TII.2013.2273877