Flood susceptibility mapping using a novel integration of multi-temporal sentinel-1 data and eXtreme deep learning model

被引:11
|
作者
Al-Ruzouq, Rami [1 ,2 ]
Shanableh, Abdallah [1 ,2 ]
Jena, Ratiranjan [1 ]
Gibril, Mohammed Barakat A. [1 ]
Hammouri, Nezar Atalla [1 ,3 ]
Lamghari, Fouad [4 ]
机构
[1] Univ Sharjah, Res Inst Sci & Engn, GIS & Remote Sensing Ctr, Sharjah 27272, U Arab Emirates
[2] Univ Sharjah, Civil & Environm Engn Dept, Sharjah 27272, U Arab Emirates
[3] Hashemite Univ, Prince El Hassan bin Talal Fac Nat Resources & Env, Dept Earth & Environm Sci, Zarqa, Jordan
[4] Fujairah Res Ctr, Al Hilal Tower, Fujairah, U Arab Emirates
关键词
Flood susceptibility mapping; eXtreme Deep Factorisation Machine; Sentinel-1; Remote sensing; MULTICRITERIA DECISION-MAKING; SUPPORT VECTOR MACHINE; AREAS; UNCERTAINTY; WEIGHTS;
D O I
10.1016/j.gsf.2024.101780
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
ABS T R A C T Flash floods (FFs) are amongst the most devastating hazards in arid regions in response to climate change and can cause the loss of agricultural land, human lives and infrastructure. One of the major challenges is the high-intensity rainfall events affecting low-lying areas that are vulnerable to FF. Several works in this field have been conducted using ensemble machine learning models and geohydrological models. However, the current advancement of eXtreme deep learning, which is named eXtreme deep factorisation machine (xDeepFM), for FF susceptibility mapping (FSM) is lacking in the literature. The current study introduces a new model and employs a previously unapplied approach to enhance FSM for capturing the severity of floods. The proposed approach has three main objectives: (i) During- and after-flood effects are assessed through flood detection techniques using Sentinel-1 data. (ii) Flood inventory is updated using remote sensing-based methods. The derived flood effects are implemented in the next step. (iii) An FSM map is generated using an xDeepFM model. Therefore, this study aims to apply xDeepFM to estimate susceptible areas using 13 factors in the emirates of Fujairah, UAE. The performance metrics show a recall of 0.9488), an F1 -score of 0.9107), precision of (0.8756) and an overall accuracy of 90.41%. The accuracy of the applied xDeepFM model is compared with that of traditional machine learning models, specifically the deep neural network (78%), support vector machine (85.4%) and random forest (88.75%). Random forest achieves high accuracy, which is due to its strong performance that depends on factors contribution, dataset size and quality, and available computational resources. Comparatively, the xDeepFM model works efficiently for complicated prediction problems having high non-collinearity and huge datasets. The obtained map denotes that the narrow basins, lowland coastal areas and riverbank areas up to 5 km (Fujairah) are highly prone to FF, whilst the alluvial plains in Al Dhaid and hilly regions in Fujairah show low probability. The coastal city areas are bounded by high-rise steep hills and the Gulf of Oman, which can elevate the water levels during heavy rainfall. Four major synchronised influencing factors, namely, rainfall, elevation, drainage density, distance from drainage and geomorphology, account for nearly 50% of the total factors contributing to a very high flood susceptibility. This study offers a platform for planners and decision makers to take timely actions on potential areas in mitigating the effects of FF. (c) 2024 China University of Geosciences (Beijing) and Peking University. Published by Elsevier B.V. on behalf of China University of Geosciences (Beijing). This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
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页数:18
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