DocumentCode :
75282
Title :
On Controllability of Neuronal Networks With Constraints on the Average of Control Gains
Author :
Yang Tang ; Zidong Wang ; Huijun Gao ; Hong Qiao ; Kurths, J.
Author_Institution :
Potsdam Inst. for Climate Impact Res., Potsdam, Germany
Volume :
44
Issue :
12
fYear :
2014
fDate :
Dec. 2014
Firstpage :
2670
Lastpage :
2681
Abstract :
Control gains play an important role in the control of a natural or a technical system since they reflect how much resource is required to optimize a certain control objective. This paper is concerned with the controllability of neuronal networks with constraints on the average value of the control gains injected in driver nodes, which are in accordance with engineering and biological backgrounds. In order to deal with the constraints on control gains, the controllability problem is transformed into a constrained optimization problem (COP). The introduction of the constraints on the control gains unavoidably leads to substantial difficulty in finding feasible as well as refining solutions. As such, a modified dynamic hybrid framework (MDyHF) is developed to solve this COP, based on an adaptive differential evolution and the concept of Pareto dominance. By comparing with statistical methods and several recently reported constrained optimization evolutionary algorithms (COEAs), we show that our proposed MDyHF is competitive and promising in studying the controllability of neuronal networks. Based on the MDyHF, we proceed to show the controlling regions under different levels of constraints. It is revealed that we should allocate the control gains economically when strong constraints are considered. In addition, it is found that as the constraints become more restrictive, the driver nodes are more likely to be selected from the nodes with a large degree. The results and methods presented in this paper will provide useful insights into developing new techniques to control a realistic complex network efficiently.
Keywords :
Pareto optimisation; adaptive control; constraint handling; control system synthesis; controllability; evolutionary computation; neurocontrollers; statistical analysis; COEA; COP; MDyHF; Pareto dominance; adaptive differential evolution; constrained optimization evolutionary algorithms; constrained optimization problem; constraints; control gains; controllability problem; controlling regions; driver nodes; modified dynamic hybrid framework; neuronal networks; statistical methods; Biological neural networks; Complex networks; Controllability; Educational institutions; Optimization; Complex networks; controllability; evolutionary algorithms; multiagent systems; neural networks; synchronization/consensus;
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TCYB.2014.2313154
Filename :
6787023
Link To Document :
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