Impacts of DEM Type and Resolution on Deep Learning-Based Flood Inundation Mapping
Mohammad Fereshtehpour, Mostafa Esmaeilzadeh, Reza Saleh Alipour, Steven J. Burian

TL;DR
This study evaluates how different types and resolutions of digital elevation models influence the accuracy of deep learning-based flood mapping, demonstrating that coarser DEMs can still be effective for rapid flood prediction in data-scarce regions.
Contribution
It provides a systematic analysis of DEM type and resolution effects on flood prediction accuracy using deep learning, with practical insights for data-scarce regions.
Findings
30 m DTM outperforms 30 m DSM by 21% in accuracy
Increasing DEM resolution from 30 m to 15 m raises RMSE by 50%
Coarser DEMs remain viable for rapid flood prediction
Abstract
The increasing availability of hydrological and physiographic spatiotemporal data has boosted machine learning's role in rapid flood mapping. Yet, data scarcity, especially high-resolution DEMs, challenges regions with limited access. This paper examines how DEM type and resolution affect flood prediction accuracy, utilizing a cutting-edge deep learning (DL) method called 1D convolutional neural network (CNN). It utilizes synthetic hydrographs as training input and water depth data obtained from LISFLOOD-FP, a 2D hydrodynamic model, as target data. This study investigates digital surface models (DSMs) and digital terrain models (DTMs) derived from a 1 m LIDAR-based DTM, with resolutions from 15 to 30 m. The methodology is applied and assessed in an established benchmark, the city of Carlisle, UK. The models' performance is then evaluated and compared against an observed flood event…
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Taxonomy
TopicsFlood Risk Assessment and Management · Hydrology and Watershed Management Studies · Tropical and Extratropical Cyclones Research
