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首页> 外文期刊>American Journal of Software Engineering and Applications >Towards a Framework for Enabling Operations of Livestock Information Systems in Poor Connectivity Areas
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Towards a Framework for Enabling Operations of Livestock Information Systems in Poor Connectivity Areas

机译:迈向在连接区域差的牲畜信息系统的框架框架

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Livestock farming is one of the major agricultural activities in the country that is contributing towards achieving development goals of the national Growth and Reduction of Poverty (NSGRP). Smallholder livestock keepers depend on the information from the livestock field officers for sound decision making. Mobile application based solutions, which are currently widely proposed to facilitate the process, fail to perform in poor connectivity areas. This study proposes a machine learning based framework which will enhance the performance of mobile application based solutions in poor connectivity areas. The study used primary data, and secondary data. The primary data were collected through surveys, questionnaires, interviews, and direct observations. Secondary data were collected through books, articles, journals, and Internet searching. Open Data Kit (ODK) tool was used to collect responses from the respondents, and their geographical positions. We used Google earth to have smallholder livestock keepers' distribution map. Results show that smallholder livestock keepers are geographically scattered and depend on the field livestock officers for exchange of information. Their means of communication are mainly face to face, and mobile phones. They do not use any Livestock Information System. The proposed framework will enable operations of Livestock Information System in poor connectivity area, where majority of smallholder livestock keepers live. This paper provides the requirements model necessary for designing and development of the machine learning-based application framework for enhancing performance of livestock mobile application systems, which will enable operations of livestock information systems in poor connectivity areas.
机译:畜牧业是该国的主要农业活动之一,有助于实现国家增长和减少贫困​​的发展目标(NSGRP)。小农牲畜饲养员依靠畜牧业领域官员提供声音决策的信息。目前广泛提出基于移动应用的解决方案以方便这种过程,未能在差的连接区域中进行。本研究提出了一种基于机器学习的框架,其将增强基于移动应用的解决方案在差的连接区域中的性能。该研究使用了主要数据和辅助数据。通过调查,问卷,访谈和直接观察收集主要数据。通过书籍,文章,期刊和互联网搜索收集次要数据。打开数据套件(ODK)工具用于收集受访者的响应及其地理位置。我们使用谷歌地球拥有小型啤酒牲畜饲养员的分销地图。结果表明,小农畜牧业人在地理上分散,依赖于野外牲畜官员进行信息交流。他们的沟通方式主要面对面和手机。他们不使用任何牲畜信息系统。拟议的框架将使畜牧信息系统在连通区差,其中大多数小农牲畜饲养员居住。本文提供了用于增强畜牧移动应用系统的性能的机器学习的应用框架所需的要求模型,这将使​​畜牧信息系统在差的连接区域中的操作。

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