Abstract

Maize is the main food crop that meets the nutritional needs of both humans and livestock in the sub-Saharan African region. Maize crop has in the recent past been threatened by the fall armyworm (Spodoptera frugiperda, J.E Smith) which has caused considerable maize yield losses in the region. Controlling this pest requires knowledge on the time, location and extent of infestation. In addition, the insect pest’s abundance and environmental conditions should be predicted as early as possible for integrated pest management to be effective. Consequently, a fall armyworm pheromone trap was deployed as a monitoring tool in the present study. The trap inspection is currently carried out manually every week. The purpose of this paper is to bring automation to the trap. We modify the trap and integrate Internet of Things technologies which include a Raspberry Pi 3 Model B+ micro-computer, Atmel 8-bit AVR microcontroller, 3G cellular modem and various sensors powered with an off-grid solar photovoltaic system to capture real-time fall armyworm moth images, environmental conditions and provide real-time indications of the pest occurrences. The environmental conditions include Geographical Positioning System coordinates, temperature, humidity, wind speed and direction. The captured images together with environmental conditions are uploaded to the cloud server where the image is classified instantly using Google’s pre-trained InceptionV3 Machine Learning model. Intended users view captured data including prediction accuracy via a web application. Once this smart technology is adopted, the labour-intensive task of monitoring will reduce while stakeholders shall be provided with a near real-time insight into the FAW situation in the field therefore enabling pro-activeness in their management of such a devastating pest.

Highlights

  • The agriculture sector is a major contributor to job creation, health, family cohesion, wealth and political stability in most African economies (MoNDP, 2018)

  • The modification of the Fall Armyworm (FAW) pheromone trap to bring about automation started with the PV systems design followed by trap fabrication and ended with integration

  • The automated FAW Pheromone Trap was designed to run for 24 h per day taking into account the five minimum sunshine hours for Lusaka

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Summary

Introduction

The agriculture sector is a major contributor to job creation, health, family cohesion, wealth and political stability in most African economies (MoNDP, 2018). In the sub-Saharan Africa, maize is among the cash-crops and most grown crops in addition to being the staple food crop that meets the nutritional needs of both humans and livestock. It is grown in almost all parts of the country especially the rural areas (Smale et al, 2011). The economical importance of maize and its role in securing Zambia’s food and nutrition security including political stability cannot be over looked. According to MoA (2019a), the greatest threats to national food and nutrition security in Zambia include illegal export of maize, known as smuggling and fall armyworm infestation, among others. We focus on the trapping of adult fall armyworm moths

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