Stochastic And Climate-Driven Modeling Of Malaria Transmission In Rwanda: A Vector-Human Interaction Approach
DOI:
https://doi.org/10.64252/x3nk7s49Keywords:
S t o c h a s t i c modeling, Hormander condition, mosquito lifecycle, mosquito dynamics.Abstract
Malaria transmission depends heavily on climate conditions such as temperature and rainfall, which influence mosquito development and parasite growth. In this study, we build a stochastic model to better understand how these environmental factors affect the spread of malaria over time.The model includes temperature- and moisture-sensitive biological parameters and uses daily climate data from Rwanda.Using numerical simulations based on the Milstein scheme, we explore how mosquito population dynamics and malaria in- fections respond to seasonal changes.Results show that transmission slows down during dry periods, with lower survival and slower mosquito cycles. In some cases, transmission can fade out completely. Mathemati- cally, we verify that the model satisfies H¨ormander’scondition, supporting the existence of a smooth density and ensuring the system’s well-posedness.Spatial maps further highlight how local climate affects malaria risk across regions.This model offers a flexible framework for climate-informed malaria control planning, especially in the face of environmental variability and climate change.