Google Earth Engine and Machine Learning for Flash Flood Exposure Mapping—Case Study: Tetouan, Morocco

E. Sellami, Hassan Rhinane
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Abstract

Recently, the earth’s climate has changed considerably, leading to several hazards, including flash floods (FFs). This study aims to introduce an innovative approach to mapping and identifying FF exposure in the city of Tetouan, Morocco. To address this problem, the study uses different machine learning methods applied to remote sensing imagery within the Google Earth Engine (GEE) platform. To achieve this, the first phase of this study was to map land use and land cover (LULC) using Random Forest (RF), a Support Vector Machine (SVM), and Classification and Regression Trees (CART). By comparing the results of five composite methods (mode, maximum, minimum, mean, and median) based on Sentinel images, LULC was generated for each method. In the second phase, the precise LULC was used as a related factor to others (Stream Power Index (SPI), Topographic Position Index (TPI), Slope, Profile Curvature, Plan Curvature, Aspect, Elevation, and Topographic Wetness Index (TWI)). In addition to 2024 non-flood and flood points to predict and detect FF susceptibility, 70% of the dataset was used to train the model by comparing different algorithms (RF, SVM, Logistic Regression (LR), Multilayer Perceptron (MLP), and Naive Bayes (NB)); the rest of the dataset (30%) was used for evaluation. Model performance was evaluated by five-fold cross-validation to assess the model’s ability on new data using metrics such as precision, score, kappa index, recall, and the receiver operating characteristic (ROC) curve. In the third phase, the high FF susceptibility areas were analyzed for two-way validation with inundated areas generated from Sentinel-1 SAR imagery with coherent change detection (CDD). Finally, the validated inundation map was intersected with the LULC areas and population density for FF exposure and assessment. The initial results of this study in terms of LULC mapping showed that the most appropriate method in this research region is the use of an SVM trained on a mean composite. Similarly, the results of the FF susceptibility assessment showed that the RF algorithm performed best with an accuracy of 96%. In the final analysis, the FF exposure map showed that 2465 hectares were affected and 198,913 inhabitants were at risk. In conclusion, the proposed approach not only allows us to assess the impact of FF in this study area but also provides a versatile approach that can be applied in different regions around the world and can help decision-makers plan FF mitigation strategies.
谷歌地球引擎和机器学习用于山洪暴发绘图--案例研究:摩洛哥泰图安
近来,地球气候发生了巨大变化,导致了包括山洪在内的多种灾害。本研究旨在介绍一种创新方法,用于绘制和识别摩洛哥泰图安市的山洪暴发风险。为解决这一问题,本研究在谷歌地球引擎(GEE)平台上对遥感图像采用了不同的机器学习方法。为此,本研究的第一阶段是使用随机森林(RF)、支持向量机(SVM)以及分类和回归树(CART)绘制土地利用和土地覆被地图。通过比较基于哨兵图像的五种综合方法(模式、最大值、最小值、平均值和中值)的结果,为每种方法生成了土地利用和土地覆被图。在第二阶段,精确的 LULC 被用作其他相关因子(溪流动力指数 (SPI)、地形位置指数 (TPI)、坡度、剖面曲率、平面曲率、纵向、高程和地形湿润指数 (TWI))。除了 2024 个非洪水点和洪水点用于预测和检测 FF 易感性外,70% 的数据集通过比较不同的算法(RF、SVM、逻辑回归 (LR)、多层感知器 (MLP) 和 Naive Bayes (NB))用于训练模型;其余的数据集(30%)用于评估。通过五倍交叉验证评估模型性能,使用精度、得分、卡帕指数、召回率和接收者操作特征曲线等指标评估模型在新数据上的能力。在第三阶段,对高 FF 易感区进行分析,并与利用相干变化检测(CDD)从 Sentinel-1 SAR 图像生成的淹没区进行双向验证。最后,将经过验证的淹没地图与 LULC 区域和人口密度相交,以进行 FF 暴露和评估。本研究在 LULC 地图绘制方面的初步结果表明,在本研究区域内最合适的方法是使用在平均合成物上训练的 SVM。同样,FF 易感性评估结果表明,RF 算法的准确率为 96%,表现最佳。在最终分析中,FF 暴露图显示有 2465 公顷的土地受到影响,198,913 名居民面临风险。总之,所提出的方法不仅能让我们评估 FF 对该研究区域的影响,还提供了一种可应用于全球不同地区的通用方法,并能帮助决策者规划 FF 缓解战略。
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