土壤质量
可预测性
人工神经网络
相关系数
钠吸附比
土壤碳
环境科学
土工试验
土壤科学
分水岭
数学
统计
土壤水分
农学
计算机科学
人工智能
机器学习
生物
滴灌
灌溉
作者
Sena PACCİ,Orhan Dengiz,Pelin Alaboz,Fikret Saygın
标识
DOI:10.1016/j.scitotenv.2024.174447
摘要
In today's era artificial intelligence is quite popular, one of the most effective algorithms used is Artificial Neural Networks (ANN). In this study, the determination of soil quality using the Soil Management Assessment Framework (SMAF) model in areas where tea cultivation is carried out at the micro-watershed scale and the predictability of soil quality using ANN were evaluated. According to the results, the soil quality indices of tea-growing areas were generally classified as "medium" between 55 and 70 %. Among the evaluated features for determining soil quality, the highest relative importance value was for soil organic carbon content (13 %) and potential mineralizable nitrogen (13 %), whereas the lowest values were for exchangeable potassium (4 %) and sodium adsorption ratio (SAR) (4 %). In addition, when comparing the actual and predicted values for soil quality prediction using ANN, the Lin's concordance correlation coefficient (LCCC), ratio of performance to deviation (RPD), and R
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