State Analysis of Time-Varying Singular Bilinear Systems by RK-Butcher Algorithms

Authors

  • V. Murugesh Department of Information and Communication Engineering Hannam University 133 Ojung-dong Daeduk-gu, Daejeon 306-791, Republic of Korea
  • K. Batri Department of Computer Science and Engineering Muthayammal Engineering College Rasipuram 637 408 India

Keywords:

Time-varying singular bilinear systems, Haar wavelets, Runge-Kutta Butcher algorithm, STWS algorithm

Abstract

The Runge-Kutta (RK)-Butcher algorithm is used to study the timevarying singular bilinear systems with the exact solutions. The results (discrete solutions) obtained using the Haar wavelets, Single-Term Walsh series (STWS) and RK-Butcher algorithms are compared with the exact solutions of the time-varying singular bilinear systems. It is found that the solution obtained using the RK-Butcher algorithm is closer to the exact solutions of the time-varying singular bilinear systems. The RK-Butcher algorithm can easily be implemented using a digital computer and the solution can be obtained for any length of time, which is an added advantage of this algorithm.

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Published

2008-03-01

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