Future of Smart Farming Techniques: Significance of Urban Vertical Farming Systems Integrated with IoT and Machine Learning

Jebakumar Rethnaraj
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Abstract

World population in recent decades has significant impacts on the traditional agricultural systems which has resulted in increased demand for food, land use and deforestation, water scarcity, climate changes but not limited to these impacts. In order to overcome all these issues, there is a need for advanced farming technologies for growing the most demand food crops. Smart farming also known as precision agriculture has evolved which uses the advanced technology to optimize the efficiency and productivity of the farming operations. It involves the integration of various technologies such as IoT sensors, drones, robotics and machine learning technologies, big data analytics to gather data on crop growth, environmental conditions and weather patterns. Vertical framing (VF) is one such precision framing efficient crop growth practices which adapts the integration of Internet of Things (IoT) and machine learning (ML) technologies in easier manner. Since, the vertical farming is completely an indoor farming technique, they do not depend on the particular geographical locations and outdoor growth parameters (like soil) for crop cultivation; hence, vertical farming is also known as controlled environment agriculture. This article explores the significance of different indoor vertical farming practices under controlled environment with the comparative analysis, efficiency, productivity, advantages and their potential benefits highlighting the need for sustainable agricultural practices that can meet the growing demand for food while minimizing the negative environmental impacts.
智慧农业技术的未来:与物联网和机器学习相结合的城市垂直农业系统的意义
近几十年来,世界人口对传统农业系统产生了重大影响,导致粮食需求增加,土地使用和森林砍伐,水资源短缺,气候变化,但不仅限于这些影响。为了克服所有这些问题,需要先进的农业技术来种植需求量最大的粮食作物。智能农业也被称为精准农业,它使用先进的技术来优化农业操作的效率和生产力。它涉及到各种技术的整合,如物联网传感器、无人机、机器人和机器学习技术,以及大数据分析,以收集有关作物生长、环境条件和天气模式的数据。垂直框架(VF)是一种精确框架有效的作物生长实践,它更容易地适应物联网(IoT)和机器学习(ML)技术的集成。由于垂直农业完全是一种室内农业技术,它们不依赖于特定的地理位置和室外生长参数(如土壤)进行作物种植;因此,垂直农业也被称为控制环境农业。本文探讨了不同室内垂直农业在受控环境下的重要性,并进行了效率、生产力、优势和潜在效益的比较分析,强调了可持续农业实践的必要性,以满足日益增长的粮食需求,同时最大限度地减少对环境的负面影响。
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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