AIMS Mathematics (Sep 2022)

Supervised neural learning for the predator-prey delay differential system of Holling form-III

  • Naret Ruttanaprommarin,
  • Zulqurnain Sabir ,
  • Salem Ben Said,
  • Muhammad Asif Zahoor Raja,
  • Saira Bhatti ,
  • Wajaree Weera,
  • Thongchai Botmart

DOI
https://doi.org/10.3934/math.20221101
Journal volume & issue
Vol. 7, no. 11
pp. 20126 – 20142

Abstract

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The purpose of this work is to present the stochastic computing study based on the artificial neural networks (ANNs) along with the scaled conjugate gradient (SCG), ANNs-SCG for solving the predator-prey delay differential system of Holling form-III. The mathematical form of the predator-prey delay differential system of Holling form-III is categorized into prey class, predator category and the recent past effects. Three variations of the predator-prey delay differential system of Holling form-III have been numerical stimulated by using the stochastic ANNs-SCG procedure. The selection of the data to solve the predator-prey delay differential system of Holling form-III is provided as 13%, 12% and 75% for testing, training, and substantiation together with 15 neurons. The correctness and exactness of the stochastic ANNs-SCG method is provided by using the comparison of the obtained and data-based reference solutions. The constancy, authentication, soundness, competence, and precision of the stochastic ANNs-SCG technique is performed through the analysis of the correlation measures, state transitions (STs), regression analysis, correlation, error histograms (EHs) and MSE.

Keywords