Distributed Hydrological Model Based on Machine Learning Algorithm: Assessment of Climate Change Impact on Floods
Article
Article Title | Distributed Hydrological Model Based on Machine Learning Algorithm: Assessment of Climate Change Impact on Floods |
---|---|
ERA Journal ID | 41498 |
Article Category | Article |
Authors | Iqbal, Zafar, Shahid, Shamsuddin, Ismail, Tarmizi, Sa’adi, Zulfaqar, Farooque, Aitazaz and Yaseen, Zaher Mundher |
Journal Title | Sustainability |
Journal Citation | 14 (11) |
Article Number | 6620 |
Number of Pages | 30 |
Year | 2022 |
Publisher | MDPI AG |
Place of Publication | Switzerland |
ISSN | 2071-1050 |
Digital Object Identifier (DOI) | https://doi.org/10.3390/su14116620 |
Web Address (URL) | https://www.mdpi.com/2071-1050/14/11/6620 |
Abstract | Rapid population growth, economic development, land-use modifications, and climate change are the major driving forces of growing hydrological disasters like floods and water stress. Reliable flood modelling is challenging due to the spatiotemporal changes in precipitation intensity, duration and frequency, heterogeneity in temperature rise and land-use changes. Reliable high-resolution precipitation data and distributed hydrological model can solve the problem. This study aims to develop a distributed hydrological model using Machine Learning (ML) algorithms to simulate streamflow extremes from satellite-based high-resolution climate data. Four widely used bias correction methods were compared to select the best method for downscaling coupled model intercomparison project (CMIP6) global climate model (GCMs) simulations. A novel ML-based distributed hydrological model was developed for modelling runoff from the corrected satellite rainfall data. Finally, the model was used to project future changes in runoff and streamflow extremes from the downscaled GCM projected climate. The Johor River Basin (JRB) in Malaysia was considered as the case study area. The distributed hydrological model developed using ML showed Nash–Sutcliffe efficiency (NSE) values of 0.96 and 0.78 and Root Mean Square Error (RMSE) of 4.01 and 5.64 during calibration and validation. The simulated flow analysis using the model showed that the river discharge would increase in the near future (2020–2059) and the far future (2060–2099) for different Shared Socioeconomic Pathways (SSPs). The largest change in river discharge would be for SSP-585. The extreme rainfall indices, such as Total Rainfall above 95th Percentile (R95TOT), Total Rainfall above 99th Percentile (R99TOT), One day Max Rainfall (R × 1day), Five-day Max Rainfall (R × 5day), and Rainfall Intensity (RI), were projected to increase from 5% for SSP-119 to 37% for SSP-585 in the future compared to the base period. The results showed that climate change and socio-economic development would cause an increase in the frequency of streamflow extremes, causing larger flood events. |
Keywords | machine learning; rainfall extremes; satellite rainfall; distributed hydrological model; flood forecast |
Byline Affiliations | University of Technology Malaysia, Malaysia |
University of Prince Edward Island, Canada | |
School of Mathematics, Physics and Computing | |
National University of Malaysia | |
Al-Ayen University, Iraq |
https://research.usq.edu.au/item/z0218/distributed-hydrological-model-based-on-machine-learning-algorithm-assessment-of-climate-change-impact-on-floods
Download files
123
total views83
total downloads8
views this month2
downloads this month