Modeling and Sensitivity Analysis of the Role of Biodiversity to Control Pest Damage in Agroecosystems

Authors

  • Mohammed Yahdi Department of Mathematics & Computer Science, Ursinus College, Collegeville, PA Author
  • Cara Sulyok Department of Mathematics & Computer Science, Ursinus College, Collegeville, PA Author
  • Karissa Smith Department of Mathematics & Computer Science, Ursinus College, Collegeville, PA Author
  • Alison Bugenis Department of Mathematics & Computer Science, Ursinus College, Collegeville, PA Author

DOI:

https://doi.org/10.30707/LiB1.1Yahdi

Keywords:

alfalfa, mathematical modeling, sensitivity analysis, Shannon diversity index, plant-herbivore-predator system

Abstract

The paper provides a mathematical framework for cost-effective and environmentally safe strategies to minimize alfalfa damage from pests in alfalfa agroecosystems with optimal biodiversity levels and to predict outcomes for scenarios not covered by field experiments. Alfalfa is the most important forage legume world-wide and is a valuable source of nutrition for farm animals. The potato leafhopper (PLH) pest damages the alfalfa plant leading to a reduction of the productivity, a loss in nutritional value, and a decrease in milk production. The PLH pest outbreaks are also prone in monocultures. New mathematical models are shown to accurately fit results from field experiments utilizing plant diversity and enemies (pest-predator) hypotheses. The focus is on polyculture as a farming technique and the damsel bug, Nabis, a natural predator of the PLH. Mathematical methods include the Shannon diversity index, differential equations, scramble competition approaches, and sensitivity analysis to determine critical parameters.

Downloads

Published

2023-11-11

Issue

Section

Research

How to Cite

Modeling and Sensitivity Analysis of the Role of Biodiversity to Control Pest Damage in Agroecosystems. (2023). Letters in Biomathematics, 1(1), 41-50. https://doi.org/10.30707/LiB1.1Yahdi

Similar Articles

1-10 of 123

You may also start an advanced similarity search for this article.