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GEOMORPHOLOGIC CLASSIFICATION OF COLOMBIA BY MACHINE LEARNING WITH DIGITAL ELEVATION MODEL

机译:基于数字高程模型的机器学习对哥伦比亚的地貌分类

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There are many natural disasters in Colombia and seismic hazards depend on the terrain, therefore hazard maps are required. Geomorphologic classification maps are often used for baseline data to create hazard maps; however, conventional geomorphologic classification methods by visual interpretation require expertise and time, and no terrain classification map exists for the whole extent of Colombia. An automatic geomorphologic classification method produced from a digital elevation model solves these problems, but the classification result depends on the region of interest, and accuracy in Columbia is insufficient due to lack of features. To solve these problems, we developed a practical and labor-saving geomorphologic classification method by machine learning with an existing geomorphologic classification map as supervisor and created a new classification map for all of Colombia. Existing detailed geomorphologic classifications in some areas were integrated into 17 classes based on the classification criteria of Japan's engineering-based geomorphologic classification map for natural hazard evaluation. In addition to slope (gradient), texture (ridge/valley density) and convexity (convex distribution density) of the previous study, the features of elevation value, texture continuous value (ridge/valley density calculated by continuous value), convexity continuous value (convex density calculated by continuous value), distance from coastline, distance from river, relative relief from the nearest river and the RGB values of the optical satellite image were newly introduced. The three machine learning algorithms of Random forest, Neural network and SVM were carried out using these feature values, resulting in approximately 77% overall accuracy for Random forest. Accurately classified geomorphologic classes tended to differ from other classes in partial dependent plots and the distribution of specific feature values. Finally, using a classifier generated by Random forest, a geomorphologic classification map across the whole of Colombia was created in combination with existing geomorphologic classification maps.
机译:哥伦比亚有许多自然灾害,地震危险取决于地形,因此需要危险地图。地貌分类图通常用于基准数据以创建灾害图。然而,通过视觉解释的常规地貌分类方法需要专业知识和时间,并且在整个哥伦比亚范围内都没有地形分类图。由数字高程模型产生的自动地貌分类方法解决了这些问题,但是分类结果取决于感兴趣的区域,并且由于缺乏特征,哥伦比亚的精度不足。为了解决这些问题,我们通过机器学习开发了一种实用且省力的地貌分类方法,以现有的地貌分类图作为主管,并为整个哥伦比亚创建了新的分类图。根据日本基于工程的地貌分类图的分类标准,将某些地区的现有详细地貌分类分类为17类,以进行自然灾害评估。除了先前研究的坡度(梯度),纹理(脊/谷密度)和凸度(凸分布密度)之外,还包括高程值,纹理连续值(通过连续值计算的脊/谷密度),凸度连续值的特征(通过连续值计算的凸密度),距海岸线的距离,距河的距离,距最近河的相对浮雕和光学卫星图像的RGB值被新引入。使用这些特征值执行了随机森林,神经网络和SVM的三种机器学习算法,从而使随机森林的整体准确率达到了约77%。准确分类的地貌类别在局部依存图和特定特征值的分布方面往往不同于其他类别。最后,使用随机森林生成的分类器,结合现有的地貌分类图,创建了整个哥伦比亚的地貌分类图。

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