基于tinyml的智能农业系统

Vasileios Tsoukas, Anargyros Gkogkidis, Athanasios Kakarountas
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引用次数: 1

摘要

农业是一个高度优先的部门,因为它创造了经济机会,并生产了世界上大部分的粮食。到2050年,由于世界人口将增加30%,对农产品的需求将异常旺盛。随着年轻人涌向大城市,农业发展的人力资源正在消失,而农业用地正被滥用于快速扩张。为了满足粮食需求,大部分农业任务必须实现自动化。农业研究表明,物联网(IoT)技术可能是现代自动化农业研究的未来。上述技术面临许多常见的障碍,包括互联网要求、数据传输和隐私问题。TinyML是一项新兴技术,提供低成本和高效的设备,能够在本地运行复杂的机器学习模型和神经网络,同时克服上述大多数物联网问题。作为植物自主浇水的综合解决方案,本文提出了一种基于tinyml的环境条件和植物土壤水分监测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A TinyML-based System For Smart Agriculture
Agriculture is a high-priority sector since it creates economic opportunities and generates the majority of the world’s food. In 2050, agricultural products will be in exceptionally high demand due to a 30% increase in the world’s population. Human resources for agriculture development are disappearing as young people migrate to major cities, while agricultural land is being abused for rapid expansion. To satisfy the food demand, the major portion of agricultural tasks must be automated. Agricultural research has revealed that the Internet of Things (IoT) technology might be the future of modern and automated agriculture research. The aforementioned technology faces a number of common obstacles, including internet requirements, data transfer, and privacy concerns. TinyML is an emerging technology that delivers low-cost and highly efficient devices capable of locally running complex machine learning models and neural networks, while overcoming the majority of the aforementioned IoT issues. As a comprehensive solution for autonomously watering plants, a TinyML-based system capable of monitoring ambient conditions and plants’ soil moisture is presented in this work.
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