在发展中国家开发基于机器学习的秋军蠕虫网络自动识别预警监测系统

Francis Chulu, J. Phiri, Mayumbo Nyirenda, M. Kabemba, P. O. Nkunika, S. H. Chiwamba
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引用次数: 5

摘要

为了对抗对世界粮食安全产生负面影响的秋军虫(FAW-Spodoptera frugiperda)害虫,需要提出可以与传统喷洒方法一起使用的方法。为此,本文提出了一种基于机器学习的秋军蛾自动识别与监测系统。该系统将自动化数据收集过程,旨在解决与基于陷阱的FAW监测相关的挑战,例如手动数据收集。该研究旨在通过开发一种识别一汽飞蛾的机器学习算法,实现数据收集过程的自动化。除了陷阱自动化之外,该研究还将开发与地理信息系统(GIS)技术集成的网络和移动应用程序。本研究开发的工具旨在通过减少人为干预来提高一汽监测的准确性和效率。在撰写本文时,仅开发了基于web的工具原型,因此本文主要侧重于基于web的工具的设计。本文还对所选择的机器学习技术进行了简要的量化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing an automatic identification and early warning and monitoring web based system of fall army worm based on machine learning in developing countries
To combat the fall Army worm (FAW-Spodoptera frugiperda) pest which has a negative impact on world food security, there is need to come up with methods that can be used alongside conventional methods of spraying. Therefore this paper proposes a machine learning based system for automatic identification and monitoring of Fall Army worm Moths. The system will aim to address challenges that are associated with trap based FAW monitoring such as manual data collection as the system will automate the data collection process. The study will aim to automate the data collection process by developing a machine learning algorithm for FAW moth identification. The study will develop web and mobile applications integrated with Geographic information system (GIS) technology in addition to trap automation. The tools developed in this study will aim to improve the accuracy and efficiency of FAW monitoring by reducing the aspect of human intervention. At the time of writing this paper, only the web based tool prototype has been developed, therefore this paper mostly focuses on the design of the web based tool. The paper also provides a brief quantification of the chosen machine learning technique to be used in the study.
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