Exploring Machine Learning Models for Soil Nutrient Properties Prediction: A Systematic Review

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-06-08 DOI:10.3390/bdcc7020113
O. Folorunso, O. Ojo, M. Busari, Muftau Adebayo, Adejumobi Joshua, Daniel Folorunso, C. Ugwunna, O. Olabanjo, O. Olabanjo
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Abstract

Agriculture is essential to a flourishing economy. Although soil is essential for sustainable food production, its quality can decline as cultivation becomes more intensive and demand increases. The importance of healthy soil cannot be overstated, as a lack of nutrients can significantly lower crop yield. Smart soil prediction and digital soil mapping offer accurate data on soil nutrient distribution needed for precision agriculture. Machine learning techniques are now driving intelligent soil prediction systems. This article provides a comprehensive analysis of the use of machine learning in predicting soil qualities. The components and qualities of soil, the prediction of soil parameters, the existing soil dataset, the soil map, the effect of soil nutrients on crop growth, as well as the soil information system, are the key subjects under inquiry. Smart agriculture, as exemplified by this study, can improve food quality and productivity.
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探索土壤养分特性预测的机器学习模型:系统综述
农业对繁荣的经济至关重要。尽管土壤对可持续粮食生产至关重要,但随着种植的集约化和需求的增加,土壤质量可能会下降。健康土壤的重要性怎么强调都不为过,因为缺乏营养会显著降低作物产量。智能土壤预测和数字土壤测绘提供了精准农业所需的土壤养分分布的准确数据。机器学习技术正在推动智能土壤预测系统的发展。本文对机器学习在土壤质量预测中的应用进行了全面分析。土壤的成分和质量、土壤参数的预测、现有的土壤数据集、土壤地图、土壤养分对作物生长的影响以及土壤信息系统是研究的重点。如本研究所示,智慧农业可以提高食品质量和生产力。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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