DocumentCode
3224761
Title
Solving stiff ordinary differential equations and partial differential equations using analog computing based on cellular neural networks
Author
Chedjou, J.C. ; Kyamakya, K. ; Latif, M.A. ; Khan, U.A. ; Moussa, I. ; Do Trong Tuan
Author_Institution
Inst. of Smart Syst. Technol., Univ. of Klagenfurt, Klagenfurt, Germany
fYear
2009
fDate
20-21 July 2009
Firstpage
213
Lastpage
220
Abstract
Setting analog cellular computers based on cellular neural networks systems (CNNs) to change the way analog signals are processed is a revolutionary idea and a proof as well of the high importance devoted to the analog simulation methods. We provide an in-depth description of the concept exploiting analog computing based on the CNN paradigm to solve nonlinear and highly stiff ordinary differential equations (ODEs) and partial differential equations (PDEs). We appply our method to the analysis of the dynamics of two systems modeled by complex and stiff equations. The first system consists of three coupled Roumlssler oscillators in a Master-Slave-Auxiliary configuration. The capabilities of this coupled system to exhibit regular and chaotic dynamics have been demonstrated so far. The synchronization modes of the coupled system can be exploited in chaotic secure communications. The second system is the Burgers´ equation which is a well-known classical model for analyzing macroscopic traffic flow motions/ scenarios. As a proof of concept of the proposed approach, the results obtained in this paper are compared with the results available in the relevant literature (benchmarking) and, the proposed concept is validated by a very good agreement obtained. The computation based CNNs paradigm is advantageous as it provides accurate and ultra-fast solutions of very complex ODEs and PDEs and performs real-time computing.
Keywords
analogue computers; cellular neural nets; partial differential equations; Burgers equation; Master-Slave-Auxiliary configuration; analog computing; cellular neural networks; chaotic secure communications; coupled Roumlssler oscillators; macroscopic traffic flow motions; partial differential equations; stiff ordinary differential equations; Analog computers; Cellular networks; Cellular neural networks; Chaotic communication; Computational modeling; Computer networks; Computer simulation; Differential equations; Partial differential equations; Signal processing; Cellular neural network; ODE; PDE; coupling; dicretization; stiffness; templates calculations;
fLanguage
English
Publisher
ieee
Conference_Titel
Nonlinear Dynamics and Synchronization, 2009. INDS '09. 2nd International Workshop on
Conference_Location
Klagenfurt
ISSN
1866-7791
Print_ISBN
978-1-4244-3844-0
Type
conf
DOI
10.1109/INDS.2009.5227975
Filename
5227975
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