首页> 外文期刊>Journal of computer sciences >Automated Fall Armyworm (iSpodoptera frugiperda/i, J.E. Smith) Pheromone Trap Based on Machine Learning
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Automated Fall Armyworm (iSpodoptera frugiperda/i, J.E. Smith) Pheromone Trap Based on Machine Learning

机译:基于机器学习的自动秋季蚯蚓( Spodoptera Frugiperda ,J.E..Smith)信息素陷阱

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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.
机译:玉米是符合撒哈拉以南非洲地区人类和牲畜的营养需求的主要食物作物。玉米作物在最近的过去受到秋季武器(Spodoptera Frugiperda,J.E Smith)的威胁,这导致该地区的大量玉米产量损失。控制这种害虫需要了解侵扰的时间,位置和程度。此外,昆虫害虫和rsquo;也应尽早预测丰富和环境条件,以便综合害虫管理是有效的。因此,在本研究中部署了秋季武器信息虫陷阱作为监测工具。陷阱检查目前每周手动进行。本文的目的是将自动化带入陷阱。我们修改陷阱并集成了包括覆盆子PI 3型号B +微型计算机,Atmel 8位AVR微控制器,3G蜂窝调制解调器和各种传感器的陷阱技术,以及带有离网太阳能光伏系统的各种传感器,以捕获实时下降陆虫蛾图像,环境条件并提供害虫发生的实时指示。环境条件包括地理定位系统坐标,温度,湿度,风速和方向。将捕获的图像与环境条件一起上传到云服务器,其中使用Google&Rsquo立即归类于拍摄的Inceptionv3机器学习模型。预期用户通过Web应用程序查看捕获的数据,包括预测准确性。一旦采用这种智能技术,监测的劳动密集型任务将减少,而利益攸关方应近在实时洞察该领域的一汽局势,因此可以在其管理这种毁灭性害虫的管理中实现促进性。

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