利用物联网和岭回归预测土壤营养价值的智能农业决策支持系统

Q2 Economics, Econometrics and Finance
Mohan Kumar Sudha, Maharana Manorama, Tarigoppula Aditi
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引用次数: 2

摘要

具有成本效益的农业作物生产力是一个永恒的需求,这一主要的探索已经引发了全球向实践智能农业方法的转变,以利用物联网提高农业部门的生产力和效率。这项研究确定了物联网作为过时农业实践的替代方案的好处和挑战。所提出的基于物联网的智能土壤营养预测决策支持系统(SSNP)采用红外传感器并实现漫反射红外光谱。使用Arduino和Zigbee协议传输信息。它表明了各种研究的精确结果,提供了高可重复性、低成本和快速的土壤性质估计。在一个频率范围内的几个特定波段内,估计土壤实例吸收的光的测量值,以利用IR传感器产生红外范围。利用给定的值,利用数据集进行了实验分析,并预测了土壤的Ca、P、SOC、Sand和pH等营养值。这一拟议的物联网框架将提高农民对他们应该种植的作物类型的了解,以从他们的农产品中获得最大利润。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Agricultural Decision Support Systems for Predicting Soil Nutrition Value Using IoT and Ridge Regression
Cost effective agricultural crop productivity is an everlasting demand, this predominant expedition has raised a global shift towards practicing smart agricultural methods to increase the productivity and the efficiency of the agricultural sector, using IoT. This research identified the benefits and the challenges in IoT adoption as an alternate for out-of-date agricultural practices. The proposed decision support system using IoT for Smart Soil Nutrition Prediction (SSNP) adopts IR sensors and implements diffuse reflectance infrared spectroscopy. Information is transferred using Arduino and Zigbee protocol. It has indicated precise outcomes in various studies giving a high repeatable, low cost and fast estimation of soil properties. The measure of light absorbed by a soil example is estimated, inside several particular wavebands over a scope of frequencies to yield an infrared range utilizing an IR sensor. Using the given values, the experimental analysis using the dataset and the nutrition values of the soil such as Ca, P, SOC, Sand and pH are predicted. This proposed IoT framework would enhance the farmer’s knowledge regarding the type of crops they should grow to get maximum profit from their agricultural produce.
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来源期刊
Agris On-line Papers in Economics and Informatics
Agris On-line Papers in Economics and Informatics Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
CiteScore
2.20
自引率
0.00%
发文量
28
期刊介绍: The international journal AGRIS on-line Papers in Economics and Informatics is a scholarly open access, blind peer-reviewed by two reviewers, interdisciplinary, and fully refereed scientific journal. The journal is published quarterly on March 30, June 30, September 30 and December 30 of the current year by the Faculty of Economics and Management, Czech University of Life Sciences Prague. AGRIS on-line Papers in Economics and Informatics covers all areas of agriculture and rural development: -agricultural economics -agribusiness -agricultural policy and finance -agricultural management -agriculture''s contribution to rural development -information and communication technologies -information and database systems -e-business and internet marketing -ICT in environment -GIS, spatial analysis and landscape planning The journal provides a leading forum for an interaction and research on the above-mentioned topics of interest. The journal serves as a valuable resource for academics, policy makers and managers seeking up-to-date research on all areas of the subject. The journal prefers scientific papers by international teams of authors who deal with problems concerning the focus of our journal in the world-wide scope with relation to Europe.
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