统计机器学习算法在农业管理过程中的应用

Karri Divya Jyothi, M. Sekhar, Sanjeev Kumar
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引用次数: 3

摘要

在任何一个国家的经济增长中,农业都起着至关重要的作用。在作物管理中,主要采用机器学习技术,其次是对农作条件的控制和对动物的管理。它们在农业中用于预测作物产量和质量以及牲畜产量。随着人口的增长、气候变化的频繁和资源的有限,如何满足当今人们的粮食需求成为一个挑战。机器学习(ML)是推动这一先进技术的机制。它允许机器在不直接编程的情况下学习。机器学习和物联网(IoT)支持的农业机械是未来农业革命的重要组成部分。基于物联网的网络技术涉及网络架构和网络层,已经有了严格的讨论。本文对机器学习在农业中的应用进行了系统的研究。研究的重点是作物产量预测中有机碳和水分含量等土壤因子的预测,作物病害和杂草及其种类的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Statistical Machine Learning Algorithms in Agriculture Management Processes
In any country's economic growth, agriculture plays a crucial function. In crops management, machine learning techniques are mainly employed, following the control of farming conditions and the management of animals. They are used in agriculture to anticipate crop yield and quality and the production of livestock. As the population increases, the climate changes are frequent and the resources are limited, it becomes a challenge to meet food demands of the people today. Machine learning (ML) is the mechanism for driving this advanced technology. It allows to the machine for learn without being programmed directly. The agricultural machinery enabled by ML and Internet of Things (IoT) is an important part of the future farm revolution. There has been a rigorous discussion on IOT based network technology involving network architecture and layers. In this research paper described a systematic examination of agricultural with ML applications. The focus areas are the prediction of soil factors including organic carbon and moisture content in the prediction of crop yields, diseases and the detection of weeds in crops as well as species.
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