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NUMERICAL ASSESSMENT of the BRAIN TUMOR GROWTH MODEL VIA FIBONACCI and HAAR WAVELETS

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Abstract

The main goal of this paper is to present a novel numerical scheme based on the Fibonacci wavelets for solving the brain tumor growth model governed by the Burgess equation. At the first instance, the Fibonacci-wavelet-based operational matrices of integration are obtained by following the well-known Chen-Hsiao technique. These matrices play a vital role in converting the said model into an algebraic system, which could be handled with any standard numerical method. To access the effect of medical treatment over the brain tumor growth, we have investigated both the linear and nonlinear cases of Burgess equation. The nonlinearity arising in the Burgess equation is handled by invoking the quasilinearization technique. In order to compare the efficiency of the Fibonacci-wavelet-based numerical technique, we formulated an analogous numerical scheme based on the Haar wavelets. Subsequently, both the methods are testified on several test problems and it is demonstrated that the Fibonacci wavelet method yields a much more stable solution and a better approximation than the Haar wavelet method.

Original languageEnglish
Article number2340017
JournalFractals
Volume31
Issue number2
DOIs
StatePublished - 2023

Keywords

  • Brain Tumor
  • Burgess Equation
  • Fibonacci Wavelet
  • Gliomas
  • Haar Wavelet
  • Operational Matrices

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