Ensemble machine learning paradigms in hydrology: A review

M Zounemat-Kermani, O Batelaan, M Fadaee… - Journal of …, 2021 - Elsevier
Recently, there has been a notable tendency towards employing ensemble learning
methodologies in assorted areas of engineering, such as hydrology, for simulation and …

Flood hazard mapping methods: A review

RB Mudashiru, N Sabtu, I Abustan, W Balogun - Journal of hydrology, 2021 - Elsevier
Flood hazard mapping (FHM) has undergone significant development in terms of approach
and capacity of the result to meet the target of policymakers for accurate prediction and …

[HTML][HTML] Flood susceptibility modelling using advanced ensemble machine learning models

ARMT Islam, S Talukdar, S Mahato, S Kundu… - Geoscience …, 2021 - Elsevier
Floods are one of nature's most destructive disasters because of the immense damage to
land, buildings, and human fatalities. It is difficult to forecast the areas that are vulnerable to …

[HTML][HTML] Predicting flood susceptibility using LSTM neural networks

Z Fang, Y Wang, L Peng, H Hong - Journal of Hydrology, 2021 - Elsevier
Identifying floods and producing flood susceptibility maps are crucial steps for decision-
makers to prevent and manage disasters. Plenty of studies have used machine learning …

GIS-based comparative assessment of flood susceptibility mapping using hybrid multi-criteria decision-making approach, naïve Bayes tree, bivariate statistics and …

SA Ali, F Parvin, QB Pham, M Vojtek, J Vojteková… - Ecological …, 2020 - Elsevier
Flood is a devastating natural hazard that may cause damage to the environment
infrastructure, and society. Hence, identifying the susceptible areas to flood is an important …

Flash-flood hazard assessment using ensembles and Bayesian-based machine learning models: Application of the simulated annealing feature selection method

FS Hosseini, B Choubin, A Mosavi, N Nabipour… - Science of the total …, 2020 - Elsevier
Flash-floods are increasingly recognized as a frequent natural hazard worldwide. Iran has
been among the most devastated regions affected by the major floods. While the temporal …

Flood detection and susceptibility mapping using sentinel-1 remote sensing data and a machine learning approach: Hybrid intelligence of bagging ensemble based …

H Shahabi, A Shirzadi, K Ghaderi, E Omidvar… - Remote Sensing, 2020 - mdpi.com
Mapping flood-prone areas is a key activity in flood disaster management. In this paper, we
propose a new flood susceptibility mapping technique. We employ new ensemble models …

Flood susceptibility modeling in Teesta River basin, Bangladesh using novel ensembles of bagging algorithms

S Talukdar, B Ghose, Shahfahad, R Salam… - … Research and Risk …, 2020 - Springer
The flooding in Bangladesh during monsoon season is very common and frequently
happens. Consequently, people have been experiencing tremendous damage to properties …

Flood susceptibility mapping using convolutional neural network frameworks

Y Wang, Z Fang, H Hong, L Peng - Journal of hydrology, 2020 - Elsevier
Flood is a very destructive natural disaster in the world, which seriously threatens the safety
of human life and property. In this paper, the most popular convolutional neural network …

[HTML][HTML] Mapping the spatial and temporal variability of flood hazard affected by climate and land-use changes in the future

S Janizadeh, SC Pal, A Saha, I Chowdhuri… - Journal of …, 2021 - Elsevier
The predicts current and future flood risk in the Kalvan watershed of northwestern Markazi
Province, Iran. To do this, 512 flood and non-flood locations were identified and mapped …