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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Optimal feature selection for prediction of wind erosion threshold friction velocity using a modified evolution algorithm
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Optimal feature selection for prediction of wind erosion threshold friction velocity using a modified evolution algorithm

机译:使用修改的演化算法预测风蚀阈值摩擦速度的最佳特征选择

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摘要

Threshold friction velocity (u(*t)) is a very important parameter, which represents wind erosion potential. Because of the difficulty of measuring u(*t), it would be advantageous if u(*t) could be estimated indirectly from its effecting factors that can be easily measured. The main purpose of this research was to quantify relationships between u(*t) and various topsoil features using inexpensive approaches. To prepare a reliable dataset, we used a portable wind tunnel for measuring u(*t) at a total of 118 observation points in Kerman province, southeast Iran. We developed a non-dominated sorting genetic algorithm II (NSGA-II), specifically designed to operate with artificial neural network (ANN) to select the most determinant properties that influence u(*t). A permutation of nine input features including surface crust (SC), gravel coverage (GC), very fine sand (VFS), fine sand (FS), very coarse sand (VCS), electrical conductivity (EC), sodium adsorption ratio (SAR), calcium carbonate equivalent (CCE), and mean weight diameter (MWD), was introduced as explanatory variables. We also examined the potential power of using a Multi-Layer Perception (MLP) neural network for prediction of u(*t) changes in response to spatial variation of the selected features. The results of constructed MLP model revealed the ability of the model for u(*t) prediction and showed that the coefficient of determination (R-2) values were 0.91 and 0.89 for training and testing data, respectively. Furthermore, acceptable level of the statistical validation criteria verified reliable performance of the MLP model. This research provided a powerful basis for prediction of u(*t) from topsoil features and surface roughness in arid and semi-arid areas of Iran; however, its generic framework could be used to other arid and semi-arid regions with similar challenges.
机译:阈值摩擦速度(U(* t))是一个非常重要的参数,它代表风蚀潜力。由于测量U(* t)的难度,如果可以从其易于测量的影响因素间接估计U(* T),则是有利的。本研究的主要目的是使用廉价方法量化U(* T)和各种表土特征之间的关系。为了准备可靠的数据集,我们使用了一个便携式风洞,用于测量伊朗克尔曼省的118个观察点,总共有118个观察点。我们开发了一种非主导的分类遗传算法II(NSGA-II),专门设计用于用人工神经网络(ANN)进行操作,以选择影响U(* T)的最大决定因素。九个输入特征的排列,包括表面外壳(SC),砾石覆盖(GC),非常细沙(VF),细砂(FS),非常粗砂(VCS),导电性(EC),吸附率(SAR ),碳酸钙当量(CCE)和平均重量直径(MWD)被引入作为解释性变量。我们还检查了使用多层感知(MLP)神经网络的潜在力量,以响应于所选特征的空间变化来预测U(* T)变化。构造MLP模型的结果揭示了模型对U(* T)预测的能力,并显示了测定系数(R-2)值分别为0.91和0.89,用于训练和测试数据。此外,可接受的统计验证标准级别验证了MLP模型的可靠性。本研究为从伊朗干旱和半干旱地区的表土特征和表面粗糙度预测U(* T)提供了强大的基础;然而,其通用框架可用于其他具有类似挑战的干旱和半干旱地区。

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