Current Trends in Machine-Based Predictive Analysis in Agriculture for Better Crop Management - A Systematic Review

Mulima Chibuye, J. Phiri
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Abstract

The use of Artificial Intelligence in agriculture is a novel approach that promises many benefits. Notable is the emphasis by nations of the world to end hunger by 2030 as enshrined in Sustainable Development Goal number 2[1]. To end world hunger, the fundamental ways of doing things in and around the agricultural space will have to change by adopting much more sustainable models and relooking at the supply chain system with the space. For example, it is noted that more food goes to waste through spoilage than is required to feed all the hungry on earth. While in other parts of the globe, the food supply would be sufficient were it not for the stock that spoils due to pests and diseases. It the goal of this paper to provide a possible solution for the second scenario on spoilage due to pests and diseases by adopting Artificial Intelligence approaches such as Machine Learning and tweaking existing methods by improving the overall prediction score. We provide areas of interest that may be considered and show that further research in the subject may yield positive results in the field of Predictive Analysis as concerns the field of agriculture. A Systematic Review is done on over 20 pieces of literature around the field of Predictive analysis and notable gaps are highlighted while areas of possible improvement are also indicated. It is then against this backdrop that the highlighted areas of improvement may later be tested in subsequent work.
基于机器的预测分析在农业作物管理中的当前趋势——系统综述
在农业中使用人工智能是一种新方法,有望带来许多好处。值得注意的是,世界各国强调到2030年消除饥饿,这体现在可持续发展目标2[1]中。为了结束世界饥饿,必须改变农业空间及其周围的基本工作方式,采用更加可持续的模式,重新审视农业空间的供应链系统。例如,人们注意到,由于变质而浪费的食物比养活地球上所有饥饿人口所需的食物要多。而在全球其他地区,如果没有因虫害和疾病而变质的库存,粮食供应将是充足的。本文的目标是通过采用机器学习等人工智能方法,并通过提高整体预测分数来调整现有方法,为第二种情况提供可能的解决方案。我们提供了可能被考虑的兴趣领域,并表明在该主题的进一步研究可能会在预测分析领域产生积极的结果,因为涉及到农业领域。对预测分析领域的20多篇文献进行了系统回顾,突出了显著的差距,同时也指出了可能改进的领域。正是在这种背景下,突出的改进领域可能会在随后的工作中进行测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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