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Application of remote sensing techniques and machine learning algorithms in dust source detection and dust source susceptibility mapping

机译:遥感技术应用及机器学习算法在灰尘源检测和灰尘源敏感性映射中的应用

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The aim of this research was to develop a method to produce a Dust Source Susceptibility Map (DSSM). For this purpose, we applied remote sensing and statistical-based machine learning algorithms for experimental dust storm studies in the Khorasan Razavi Province, in north-eastern Iran. We identified dust sources in the study area using MODIS satellite images during the 2005-2016 period. For dust source identification, four indices encompassing BTD3132, BTD2931, NDDI, and D variable for 23 MODIS satellite images were calculated. As a result, 65 dust source points were identified, which were categorized into dust source data points for training and validation of the machine learning algorithms. Three statistical-based machine learning algorithms were used including Weights of Evidence (WOE), Frequency Ratio (FR), and Random Forest (RF) to produce DSSM for the study region. We used land use, lithology, slope, soil, geomorphology, NDVI (Normalized Difference Vegetation Index), and distance from river as conditioning variables in the modelling. To check the performance of the models, we applied the Area Under the Curve (AUC) of the Receiver Operating Characteristic (ROC). As for the AUC success rate (training), the FR and WOE algorithms resulted in 82 and 83% accuracy, respectively, while the RF algorithm resulted in 91% accuracy. As for the AUC predictive rate (validation), the accuracy of all three models, FR, WOE, and RF, were 80, 81, and 88%, respectively. Although all three algorithms produced acceptable susceptibility maps of dust sources, the results indicated better performance of the RF algorithm.
机译:该研究的目的是开发一种生产粉尘源敏感性图(DSSM)的方法。为此目的,我们在伊朗东北部的Khorasan Razavi省的实验尘埃风暴研究中应用了遥感和统计的机器学习算法。我们在2005 - 2016年期间使用MODIS卫星图像识别研究区域的灰尘来源。对于粉尘源识别,计算了包含BTD3132,BTD2931,NDDI和23种MODIS卫星图像的四个索引。结果,识别出65个粉尘源点,分为灰尘源数据点,用于训练和验证机器学习算法。使用三种基于统计的机器学习算法,包括证据(WOE),频率比(FR)和随机森林(RF)的权重,以产生研究区域的DSSM。我们使用土地利用,岩性,坡,土壤,地貌,NDVI(归一化差异植被指数),以及沿河的距离作为建模中的调节变量。为了检查模型的性能,我们应用了接收器操作特征(ROC)的曲线(AUC)下的区域。至于AUC成功率(训练),FR和WOE算法分别导致82和83%的精度,而RF算法精度为91%。对于AUC预测率(验证),所有三种模型,FR,WOE和RF的准确性分别为80,81和88%。虽然所有三种算法产生了可接受的灰尘源映射,但结果表明RF算法的性能更好。

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