预测和绘制伊朗中部高原阿特贝格边界的数据挖掘技术比较

Q3 Earth and Planetary Sciences Polish Journal of Soil Science Pub Date : 2018-09-19 DOI:10.17951/PJSS.2018.51.2.185
P. Amin, R. Taghizadeh‐Mehrjardi, A. Akbarzadeh, Mostafa Shirmardi
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引用次数: 1

摘要

阿太堡界限显示了土壤的力学行为,因此,对于与土壤管理相关的主题非常重要。该研究的目的是使用三种最常见的数字土壤绘图技术、易于获得的环境变量库和伊朗中部的85个土壤样本来调查阿太堡界限的空间变异性。结果表明,研究区的中部、东部和东南部土壤结构类别为壤土和粘壤土,其液限和塑限最大。LL和PL的最低含量与研究区域的西北部有关,邻近山区,那里的样本含砂量较高(>80%)。研究区域的塑性指数(PI)范围在0.01%至4%之间。根据留-入-出交叉验证方法,应强调的是,与支持向量机和回归树模型相比,人工蜂群算法(ABC)和人工神经网络(ANN)技术的结合是预测研究区域阿太堡极限的最佳模型。例如,ABC-ANN可以预测PI,RMSE、R2和ME分别为0.23、0.91和-0.03。我们的fiding总体上表明,所提出的方法可以解释研究区域内阿太堡界限的大部分变化,因此,可以建议将其作为评估干旱地区土壤力学性质的间接方法,因为在干旱地区,土壤调查/采样很难进行。
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Comparison of data mining techniques to predict and map the Atterberg limits in central plateau of Iran
The Atterberg limits display soil mechanical behavior and, therefore, can be so important for topics related to soil management. The aim of the research was to investigate the spatial variability of the Atterberg limits using three most common digital soil-mapping techniques, the pool of easy-to-obtain environmental variables and 85 soil samples in central Iran. The results showed that the maximum amount of liquid limit (LL) and plastic limit (PL) were obtained in the central, eastern and southeastern parts of the study area where the soil textural classes were loam and clay loam. The minimum amount of LL and PL were related to the northwestern parts of the study area, adjacent to the mountain regions, where the samples had high levels of sand content (>80%). The ranges of plasticity index (PI) in the study area were obtained between 0.01 to 4%. According to the leave-in-out cross-validation method, it should be highlighted the combination of artifiial bee colony algorithm (ABC) and artifiial neural network (ANN) techniques were the best model to predict the Atterberg limits in the study area, compared to the support vector machine and regression tree model. For instance, ABC-ANN could predict PI with RMSE, R 2 and ME of 0.23, 0.91 and -0.03, respectively. Our fiding generally indicated that the proposed method can explain the most of variations of the Atterberg limits in the study area, and it could be recommended, therefore, as an indirect approach to assess soil mechanical properties in the arid regions, where the soil survey/sampling is difficult to undertake.
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来源期刊
Polish Journal of Soil Science
Polish Journal of Soil Science Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
1.00
自引率
0.00%
发文量
5
期刊介绍: The Journal focuses mainly on all issues of soil sciences, agricultural chemistry, soil technology and protection and soil environmental functions. Papers concerning various aspects of functioning of the environment (including geochemistry, geomophology, geoecology etc.) as well as new techniques of surveing, especially remote sensing, are also published.
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