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Spatial prediction of gully erosion using ALOS PALSAR data and ensemble bivariate and data mining models

机译:使用Alos Palsar数据和集合生物挖掘和数据挖掘模型的沟壑侵蚀的空间预测

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Remote sensing is recognized as a powerful and efficient tool that provides a comprehensive view of large areas that are difficult to access, and also reduces costs and shortens the timing of projects. The purpose of this study is to introduce effective parameters using remote sensing data and subsequently predict gully erosion using statistical models of Density Area (DA) and Information Value (IV), and data mining based Random Forest (RF) model and their ensemble. The aforementioned models were employed at the Tororud-Najarabad watershed in the northeastern part of Semnan province, Iran. For this purpose, at first using various resources, the map of the distribution of the gullies was prepared with the help of field visits and Google Earth images. In order to analyse the earth's surface and extraction of topographic parameters, a digital elevation model derived from PALSAR (Phased Array type L-band Synthetic Aperture Radar) radar data with a resolution of 12.5 meters was used. Using literature review, expert opinion and multi-collinearity test, 15 environmental parameters were selected with a resolution of 12.5 meters for the modelling. Results of RF model indicate that parameters of NDVI (normalized difference vegetation index), elevation and land use respectively had the highest effect on the gully erosion. Several techniques such as area under curve (AUC), seed cell area index (SCAI), and Kappa coefficient were used for validation. Results of validation indicated that the combination of bivariate (IV and DA models) with the RF data-mining model has increased their performance. The prediction accuracy of AUC and Kappa values in DA, IV and RF are (0.745, 0.782, and 0.792) and (0.804, 0.852, and 0.860) and these values in ensemble models of DA-RF and IV-RF are (0.845, and 0.911) and (0.872, and 0.951) respectively. Results of SCAI show that ensemble models had a good performance, so that, with increasing of sensitivity, the values of SCAI have decreased. Based on results, determination of gullies and assessing the process of gullying through remote sensing technology in combination with field observations and accurate statistical and computer methods can be a suitable methodology for predicting areas with gully erosion potential.
机译:遥感被认为是一种强大而有效的工具,提供了难以访问的大面积的全面视图,并且还降低了成本并缩短了项目的时机。本研究的目的是使用遥感数据引入有效参数,随后使用密度区域(DA)和信息值(IV)的统计模型来预测GULLY侵蚀,以及基于数据挖掘的随机林(RF)模型及其集合。上述模型是在伊朗的墨西哥省东北部的Tororud-Najarabad流域采用。为此目的,首先使用各种资源,在实地访问和Google地球图像的帮助下准备了牙龈分布的地图。为了分析地球表面和地形参数的提取,使用具有12.5米的分辨率的Palsar(相控阵型L带合成孔径雷达)雷达数据的数字高度模型。使用文献综述,专家意见和多联合性测试,选择了15个环境参数,分辨率为12.5米的建模。 RF模型的结果表明,NDVI(归一化差异植被指数)的参数分别对沟壑侵蚀的最高效果。诸如曲线下的区域(AUC),种子细胞区域指数(SCAI)和Kappa系数的若干技术用于验证。验证结果表明,与RF数据挖掘模型的双变量(IV和DA模型)的组合提高了它们的性能。 DA,IV和RF中的AUC和Kappa值的预测精度(0.745,0.782和0.792)和(0.804,0.852和0.860),DA-RF和IV-RF的集合模型中的这些值(0.845,和0.911)和(0.872和0.951)。 SCAI的结果表明,集合模型具有良好的性能,因此随着灵敏度的增加,SCAI的价值减少了。基于结果,通过遥感技术与遥感技术结合使用遥感技术的沟壑和准确的统计和计算机方法的测定,可以是一种适当的方法,可以是预测沟壑潜力的区域的合适方法。

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