Thi Diep Hoang, Thi Anh Duong Nguyen, Kien Thai Duong Nguyen, Duy Vu Nguyen, Thi Quynh Trang Luu, Thi Thu Phuong Tran, Minh Trien Pham
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The system is comprised of three major components: (i) An automatic forecasting and alerting tool for fall armyworm outbreaks on the web platform; (ii) An agriculture reporting, forecasting, alerting, and user management tool on the web platform; and (iii) A mobile app that provides forecasting and alerting services on fall armyworms to farmers based on their geographical location. The iFAWcast system includes a central computation that dynamically updates weather forecasts from the Visual Crossing API and the OpenWeatherMap API, as well as a formula for the effective cumulative temperature based on the characteristics of fall armyworms on maize crops in Vietnam. 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引用次数: 0
摘要
近年来,秋绵虫(FAW,Spodoptera frugiperda)的迅速增加给全球玉米种植者带来了重大挑战。为了将幼虫密度控制在经济阈值以下,我们需要跨学科的农业解决方案,如植物保护流行病学、物联网和科学数据技术,以实现早期检测、监测、预测和做出明智决策。病虫害防治应提前规划,以防止农药滥喷、浪费和对环境造成负面影响。在本研究中,作者计划创建一个综合 iFAWcast 软件系统,该系统将自动预测、预警并收集越南玉米作物上秋季军虫的研究数据。该系统由三个主要部分组成:(i) 网络平台上的自动预报和警报工具;(ii) 网络平台上的农业报告、预报、警报和用户管理工具;(iii) 移动应用程序,根据农民的地理位置向他们提供有关秋虫的预报和警报服务。iFAWcast 系统包括一个中央计算,可动态更新来自 Visual Crossing API 和 OpenWeatherMap API 的天气预报,以及一个基于越南玉米作物上秋季军团虫特征的有效积温公式。使用直接从田间收集的数据对所开发的系统进行了测试,结果非常准确可靠。
Research and development of a predictive system for fall armyworm early warning on maize crop
The rapid increase in fall armyworms (FAW, Spodoptera frugiperda) in recent years has posed major challenges to maize growers around the globe. To keep larval density below the economic threshold, we need interdisciplinary agricultural solutions like plant protection epidemiology, the Internet of Things, and scientific data techniques for early detection, monitoring, forecasting, and making informed decisions. Pest control should be planned ahead of time to prevent indiscriminate pesticide spraying, waste, and a negative effect on the environment. In this study, the authors plan to create a comprehensive iFAWcast software system that will automatically predict, alert, and gather research data on fall armyworms on maize crops in Vietnam. The system is comprised of three major components: (i) An automatic forecasting and alerting tool for fall armyworm outbreaks on the web platform; (ii) An agriculture reporting, forecasting, alerting, and user management tool on the web platform; and (iii) A mobile app that provides forecasting and alerting services on fall armyworms to farmers based on their geographical location. The iFAWcast system includes a central computation that dynamically updates weather forecasts from the Visual Crossing API and the OpenWeatherMap API, as well as a formula for the effective cumulative temperature based on the characteristics of fall armyworms on maize crops in Vietnam. The developed system was tested using data collected straight from the field, yielding extremely accurate and dependable results.