Banana Xanthomonas wilt dynamics with mixed cultivars in a periodic environment

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Nakakawa, J. N., Mugisha, J. Y. T., Shaw, M. W. and Karamura, E. (2019) Banana Xanthomonas wilt dynamics with mixed cultivars in a periodic environment. International Journal of Biomathematics, 13 (1). 2050005. ISSN 1793-7159 doi: 10.1142/s1793524520500059

Abstract/Summary

In this paper, we study a deterministic model with non-autonomous system for mixed cultivars to assess the effect of cultivar susceptibility and seasonal variation on banana Xanthomonas wilt (BXW) disease dynamics. A special case of two cultivars classified as highly susceptible for inflorescence infection (ABB) and less susceptible (AAA) cultivar is considered. The basic reproduction number corresponding to the non-autonomous system is derived and numerically computed to determine disease dynamics. Results showed that the disease dies out whenever the periodic basic reproduction number is less than unity and a periodic solution is obtained when it is greater than one. Results further showed that for both cultivars, the basic reproduction number increases with increasing values of the transmission rates and declines exponentially with increasing values of roguing rates. The critical roguing rate of ABB-genome cultivar was higher than that of AAA-genome cultivars. The peaks in disease prevalence indicate the importance of effective implementation of controls during the rainy season. We conclude that highly susceptible cultivars play an important role in the spread of BXW and control measures should be effectively implemented during the rainy season if BXW is to be eradicated.

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Item Type Article
URI https://reading-clone.eprints-hosting.org/id/eprint/88362
Identification Number/DOI 10.1142/s1793524520500059
Refereed Yes
Divisions Life Sciences > School of Agriculture, Policy and Development > Department of Agri-Food Economics & Marketing > Agricultural and Food Investigational Team (AFIT)
Uncontrolled Keywords Modelling and Simulation, Applied Mathematics
Publisher World Scientific Publishing
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