Adopting a Neuro-fuzzy logic method for fall armyworm detection and monitoring using c-band polarimetric doppler weather radar with field verification
Publication Type
Journal Article
Publication Date (Issue Year)
2024
Journal Name
IEEE Transactions on Geoscience and Remote Sensing,
Abstract
In response to the persistent challenges posed by fall armyworm (FAW) outbreaks in Rwanda’s maize production since 2017, this research introduces an innovative strategy integrating fuzzy logic and neural network methodologies, originally developed for hydrometeor identification. The focus is on distinguishing flying adult FAW moths using four polarimetric radar parameters: horizontal reflectivity (DBZHC), correlation coefficient (RHOHV), differential reflectivity (ZDR), and specific differential phase (KDP). Demonstrating a remarkable accuracy with a fraction of echoes correctly identified (FEI) of 98.42% for FAW and 87.02% for other weather phenomena, validated by a Heidke skill score (HSS) of 0.9801, the system proves adept at discerning between weather and nonweather events. A significant strength of the developed method lies in its ability to detect FAW adult moths approximately four weeks earlier than ground-based observations identifying infestation outbreaks, This was evident in the context of FAW infestation in maize fields within the surveyed districts of Nyanza, Huye, and Gisagara in the Southern Province of Rwanda. This positions the weather radar method as a promising early warning system for FAW outbreaks, especially beneficial in less-monitored regions like East Africa. The study underscores the potential application of polarimetric C-band Doppler weather radar, providing valuable insights into the intricate dynamics of agricultural insect pest outbreaks. The method offers practical solutions for timely interventions and enhanced crop management strategies, contributing to more effective pest control and promoting sustainable agriculture practices.
Keywords
Radar, Insects, Meteorology, Radar detection, Meteorological radar, Radar polarimetry, Fuzzy logic
Rsif Scholar Name
Fidele Maniraguha
Thematic Area
ICTs Including Big Data and Artificial Intelligence
Africa Host University (AHU)
University of Rwanda (UR), Rwanda
Recommended Citation
Maniraguha, F., Vodacek, A., Kim, K. S., Ndashimye, E., & Rushingabigwi, G. (2024). Adopting a Neuro-fuzzy logic method for fall armyworm detection and monitoring using c-band polarimetric doppler weather radar with field verification. IEEE Transactions on Geoscience and Remote Sensing,, 62, 1-10. https://doi.org/10.1109/TGRS.2024.3395281