农业领域的人工智能(AI)

Krishna Mridha, Shah Md. Shihab Hasan
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摘要

在过去的二十年里,我们看到了农业领域人工信息的集约化生产。在这个时代,从使用更简单的机器学习到使用更深刻的架构的转变可以观察到。作为一个农业区,印度的经济依赖于农业产量的生产和统一的农产品。在印度,农业经常受到不稳定的水的影响。此外,农业发展取决于许多土地参数,如氮、磷、钾、作物轮作、地面湿度、地表温度和大气(包括温度、降雨量等)。创新还将使农民增加作物利润,并获得对牧场主更大的尊重。拟议的事业回答了智能农业对农业部门的调查,这可以使农民实现非凡的生产力扩张。从IMD(印度计量部)获得的信息表明作物适合在特定地区生长,例如温度和土壤降雨量,以及土壤参数库。本文提供了一种以机器人为中心的应用,利用知识研究技术来预测当前天气和土壤条件下最有用的作物,检测叶片病害,预测降雨量,最后预测土壤缺(肥)元素。在我们提出的智能手机应用程序的帮助下,农业部门将进入人工智能时代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence (AI) for Agricultural Sector
We have seen the intensive production of artificial information in the field of agriculture over the past two decades. The transformation from the use of simpler machine learning to the use of profound architectures can be observable in this era. As an agricultural region, India's economy relies on the production of agricultural yields and unified agricultural commodities. In India, agriculture is usually affected by erratic water. In addition, agricultural developments depend on many parameters of land, such as nitrogen, phosphorus, potassium, crop rotation, ground dampness, surface temperature, and atmosphere, including temperatures, rainfall, etc. Innovation would also allow farmers to increase crop profits and achieve greater respect for the rancher. The proposed undertaking answers Intelligent Agriculture to the survey of the farming sector, which can enable farmers to achieve extraordinary productivity expansion. The information obtained from the IMD (Indian Metrology Department) indicates that crops are appropriate to grow in a particular area, such as temperatures and soil rainfall, and soil parameters vault. This thesis provides an application focused on androids that use knowledge research techniques to predict the most useful crop under current weather and soil conditions, detection the leaf disease, predict the rainfall, and finally predict the soil lacks (fertilizer) elements. With the help of our proposed smartphone application, the agricultural sector will be entering the Artificial Intelligence Era.
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