Parameters estimation, global sensitivity analysis and model fitting for the dynamics of Plutella xylostella infestations in a cabbage biomass
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Date
2024-01-24Author
Mayengo, Maranya
Daniel, Paul
Salamida, Daudi
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Plutella xylostella, commonly called Diamondback moth (DBM), a highly destructive and rapidly spreading
agricultural pest originally from Europe. This pest poses a significant threat to global food security, with estimates
suggesting that periodic outbreaks of Diamondback moth lead to annual crop losses of up to $US 4 − 5 billion
worldwide. Given the potential for such substantial losses, it is crucial to employ various methods and techniques
to understand the factors affecting the interaction between Diamondback moths and cabbage plants, which,
in turn, impact cabbage biomass. In this paper, we propose a deterministic ecological model to capture the
dynamics of Plutella xylostella infestations in cabbage biomass. The model is designed based on the life cycle
stages of the pest, aiming at targeting the specific stage effectively. The synthetic data is generated using Least
Square Algorithm through addition of Gaussian noise into numerically obtained values from existing literature
to simulate real-world data. Global sensitivity analysis was done through Latin Hypercube sampling, highlights
the significance of parameters such as 𝜓, 𝛼𝐸 and 𝛿 positively influence the growth of the diamondback moth in
a cabbage biomass. In light of these findings, the study proposes that control strategies should be specifically
directed towards these sensitive parameters. By doing so, we mitigate the pest population and enhance cabbage
production.
URI
https://dspace.nm-aist.ac.tz/handle/20.500.12479/2528https://doi.org/10.1016/j.csfx.2024.100105