This paper presents a comprehensive study focusing on the influence of DEM
type and spatial resolution on the accuracy of flood inundation prediction. The
research employs a state-of-the-art deep learning method using a 1D
convolutional neural network (CNN). The CNN-based method employs training input
data in the form of synthetic hydrographs, along with target data represented
by water depth obtained utilizing a 2D hydrodynamic model, LISFLOOD-FP. The
performance of the trained CNN models is then evaluated and compared with the
observed flood event. This study examines the use of digital surface models
(DSMs) and digital terrain models (DTMs) derived from a LIDAR-based 1m DTM,
with resolutions ranging from 15 to 30 meters. The proposed methodology is
implemented and evaluated in a well-established benchmark location in Carlisle,
UK. The paper also discusses the applicability of the methodology to address
the challenges encountered in a data-scarce flood-prone region, exemplified by
Pakistan. The study found that DTM performs better than DSM at lower
resolutions. Using a 30m DTM improved flood depth prediction accuracy by about
21% during the peak stage. Increasing the resolution to 15m increased RMSE and
overlap index by at least 50% and 20% across all flood phases. The study
demonstrates that while coarser resolution may impact the accuracy of the CNN
model, it remains a viable option for rapid flood prediction compared to
hydrodynamic modeling approaches