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A Numerical Study of the Dynamics of Vector-Born Viral Plant Disorders Using a Hybrid Artificial Neural Network Approach.

Hosam AlhakamiMuhammad UmarMuhammad SulaimanWajdi AlhakamiAbdullah Baz
Published in: Entropy (Basel, Switzerland) (2022)
Most plant viral infections are vector-borne. There is a latent period of disease inside the vector after obtaining the virus from the infected plant. Thus, after interacting with an infected vector, the plant demonstrates an incubation time before becoming diseased. This paper analyzes a mathematical model for persistent vector-borne viral plant disease dynamics. The backpropagated neural network based on the Levenberg-Marquardt algorithm (NN-BLMA) is used to study approximate solutions for fluctuations in natural plant mortality and vector mortality rates. A state-of-the-art numerical technique is utilized to generate reference data for obtaining surrogate solutions for multiple cases through NN-BLMA. Curve fitting, regression analysis, error histograms, and convergence analysis are used to assess accuracy of the calculated solutions. It is evident from our simulations that NN-BLMA is accurate and reliable.
Keyphrases
  • neural network
  • sars cov
  • cell wall
  • cardiovascular events
  • machine learning
  • risk factors
  • high resolution
  • electronic health record
  • plant growth
  • low birth weight