使用学习机器对区域进行潜在的土地破坏风险评估

Arvira Yuniar Isnaeni, S. Prasetyo
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引用次数: 2

摘要

印度尼西亚是一个拥有漫长海岸线的群岛国家,其中一些地区容易受到海啸的影响,可能导致土地破坏。海啸的发生是由于地震或海底火山爆发引起海底运动,然后产生强烈的海浪。日惹特区位于班图尔摄政,是海啸灾害高风险地区之一,因为该地区位于印度洋广阔的区域,具有相当的冲动性板块运动。本研究旨在利用OLI 8 Landsat图像的植被指数数据,找出海啸造成土地破坏的风险水平。使用人工神经网络(ANN)方法进行分类或预测。植被指数为NDVI、NDWI、NDBI、SAVI和mnwi。SAVI与NDVI呈正相关关系,其最大值为0.962,其中低损害潜在风险为0.933,高损害潜在风险为0.856。利用人工神经网络(ANN)方法对可能遭受海啸土地破坏的高风险地区(high risk)进行了分类,结果有7个村庄处于高风险状态。在随机森林和支持向量机方法中,ANN算法的分类预测准确率为95.45%,Kappa值为86.08%,是准确率最高的方法。利用IDW进行空间预测可以绘制出海啸造成土地破坏的潜在风险区域分布图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klasifikasi Wilayah Potensi Risiko Kerusakan Lahan Akibat Bencana Tsunami Menggunakan Machine Learning
Indonesia is an archipelagic country with a long coastline where some areas are prone to tsunami waves which can result in land damage. Tsunamis occur due to earthquakes or volcanic eruptions under the sea that cause movement of the seabed and then create strong waves. The Special Region of Yogyakarta, precisely in Bantul Regency, is one of the areas that have a high risk of a tsunami disaster because the area is located in the expanse of the Indian Ocean which has quite impulsive plate movements. This study aims to find out information about the level of risk of land damage due to the tsunami using vegetation index data from OLI 8 Landsat imagery. Classification or prediction using the Artificial Neural Network (ANN) method. The vegetation index used is NDVI, NDWI, NDBI, SAVI, and MNDWI. The relationship between SAVI and NDVI has a positive correlation coefficient with the highest value of 0.962 where the potential risk of low damage is 0.933 and the potential risk of high damage is 0.856. Classification of potential areas of high risk of damage to tsunami land (High Risk) using the ANN method resulted in 7 villages with high risk. The ANN algorithm is the most accurate method for classification predictions between the Random Forest and SVM methods which get an accuracy of 95.45% and get a Kappa value of 86.08%. Spatial prediction using IDW produces a map of the distribution of the potential risk area for land damage caused by the tsunami.
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