Intelligent Systems with Applications (Sep 2023)

A neuro Meyer wavelet neural network procedure for solving the nonlinear Leptospirosis model

  • Zulqurnain Sabir,
  • Muhammad Asif Zahoor Raja,
  • Mohamed R. Ali,
  • R. Sadat,
  • Irwan Fathurrochman,
  • Rafaél Artidoro Sandoval Núñez,
  • Shahid Ahmad Bhat

Journal volume & issue
Vol. 19
p. 200243

Abstract

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The aim of such work is to design a Meyer wavelet neural network (WNN) for solving the mathematical form of the Leptospirosis disease model (LDM). The global and local search optimization schemes based on the genetic algorithm (GA) and active-set algorithm (ASA) are used in this study. Leptospirosis is an infection spread by rodents, which is found in the world and causes fatalities in humans. The mathematical LDM model form consists of susceptible-infected-recovered (SIR), which is based on the disease spread processes. A fitness function is designed by using the mathematical LMD and then optimized by the hybridization of the GAASA. For the correctness, and capability of the Meyer WNN along with the procedures of GAASA, the comparison of the obtained and reference results is provided. Moreover, the reducible absolute error provides the efficiency of the proposed Meyer WNN along with the procedures of GAASA. The statistical observations are also provided to authenticate the convergence of the stochastic Meyer WNN along with the procedures of GAASA.

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