Internet of Things and Machine Learning Applications for Smart Precision Agriculture

R. Sivakumar, B. Prabadevi, G. Velvizhi, S. Muthuraja, S. Kathiravan, M. Biswajita, A. Madhumathi
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引用次数: 4

Abstract

Agriculture forms the major part of our Indian economy. In the current world, agriculture and irrigation are the essential and foremost sectors. It is a mandatory need to apply information and communication technology in our agricultural industries to aid agriculturalists and farmers to improve vice all stages of crop cultivation and post-harvest. It helps to enhance the country’s G.D.P. Agriculture needs to be assisted by modern automation to produce the maximum yield. The recent development in technology has a significant impact on agriculture. The evolutions of Machine Learning (ML) and the Internet of Things (IoT) have supported researchers to implement this automation in agriculture to support farmers. ML allows farmers to improve yield make use of effective land utilisation, the fruitfulness of the soil, level of water, mineral insufficiencies control pest, trim development and horticulture. Application of remote sensors like temperature, humidity, soil moisture, water level sensors and pH value will provide an idea to on active farming, which will show accuracy as well as practical agriculture to deal with challenges in the field. This advancement could empower agricultural management systems to handle farm data in an orchestrated manner and increase the agribusiness by formulating effective strategies. This paper highlights contribute to an overview of the modern technologies deployed to agriculture and suggests an outline of the current and potential applications, and discusses the challenges and possible solutions and implementations. Besides, it elucidates the problems, specific potential solutions, and future directions for the agriculture sector using Machine Learning and the Internet of things.
物联网和机器学习在智能精准农业中的应用
农业是我们印度经济的主要组成部分。在当今世界,农业和灌溉是最基本和最重要的部门。在我们的农业产业中应用信息和通信技术,以帮助农学家和农民改善作物种植和收获后的各个阶段,这是一种强制性的需要。它有助于提高国家的国内生产总值。农业需要现代自动化的辅助才能产生最大的产量。最近技术的发展对农业产生了重大影响。机器学习(ML)和物联网(IoT)的发展支持研究人员在农业中实施这种自动化,以支持农民。ML使农民能够利用有效的土地利用、土壤肥力、水位、矿物质不足、防治害虫、修剪发展和园艺来提高产量。温度、湿度、土壤湿度、水位传感器和pH值等遥感传感器的应用将为主动农业提供一个思路,这将显示出应对田间挑战的准确性和实用性。这一进步可以使农业管理系统能够以协调的方式处理农场数据,并通过制定有效的战略来增加农业综合企业。本文重点介绍了应用于农业的现代技术的概况,提出了当前和潜在应用的概述,并讨论了挑战和可能的解决方案和实施。此外,它还阐明了农业部门使用机器学习和物联网的问题,具体的潜在解决方案和未来方向。
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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