Machine Learning based Regression Model for Prediction of Soil Surface Humidity over Moderately Vegetated Fields

Emrullah Acar, M. S. Özerdem, B. Üstündağ
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引用次数: 10

Abstract

The soil surface humidity parameter over vegetated fields is of great importance for controlling water consumption; prevention of salinity caused by over-irrigation; efficient use of irrigation system and improving the yield and quality of the cultivated crop. However, determination of the soil surface humidity is very difficult on vegetated fields. In order to overcome this problem, polarimetric decomposition models and machine learning based regression model were implemented. The main purpose of this study is to predict soil surface humidity on moderately vegetated fields. Thus, the study is conducted in agricultural fields of Dicle University and it consists of several stages. In the first stage, a Radarsat-2 data was obtained in 3 March 2016 and the local humidity samples were measured simultaneously with the Radarsat-2 acquisition. In the second stage, 10 polarimetric features were obtained from each cell (2x2 pixels) of ground sample by utilizing standard ıntensity-phase technique as well as Freeman-Durden and H/A/$\alpha$ polarimetric decomposition models. This step is repeated for all ground samples and as a result, a dataset with 156x10 lengths is formed. In the next stage, Extreme Learning Machine based Regression (ELM-R) model was used for predicting the soil surface humidity with the aid of polarimetric SAR features. For the validation of the proposed system, leave-one-out cross-validation method was applied and finally, 2.19% Root Mean Square Error (RMSE) were computed.
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基于机器学习的中等植被地土壤表面湿度预测回归模型
植被地土壤表面湿度参数对控制水分消耗具有重要意义;防止过度灌溉造成的盐碱化;有效利用灌溉系统,提高栽培作物的产量和品质。然而,在植被覆盖的农田中,土壤表面湿度的测定是非常困难的。为了克服这一问题,实现了极化分解模型和基于机器学习的回归模型。本研究的主要目的是预测中等植被田的土壤表面湿度。因此,该研究是在Dicle大学的农业领域进行的,它包括几个阶段。在第一阶段,2016年3月3日获得了Radarsat-2数据,并在获取Radarsat-2数据的同时测量了当地的湿度样本。在第二阶段,利用标准ıntensity-phase技术以及Freeman-Durden和H/A/$\alpha$极化分解模型,从地面样品的每个单元(2x2像素)中获得10个极化特征。对所有地面样本重复此步骤,结果形成一个长度为156x10的数据集。第二阶段,利用极端学习机回归模型(Extreme Learning Machine based Regression, ELM-R),结合极化SAR特征对土壤表面湿度进行预测。采用留一交叉验证法对系统进行验证,最终计算出2.19%的均方根误差(RMSE)。
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