Distributed Hydrological Model Based on Machine Learning Algorithm: Assessment of Climate Change Impact on Floods
Abstract
:1. Introduction
2. Study Area and Data Description
2.1. Study Area
2.2. Data Description
3. Methodology
3.1. Procedure
- The catchment is divided into grids of 10 km each.
- All the data sets are interpolated to 10 km to achieve a similar resolution.
- The distributed hydrological model is developed using bias Corrected IMERG data for the catchment.
- The model is calibrated and validated with the observed river flow data (details given in Table 1).
- The selected GCMs are downscaled to 10 km resolution for the basin.
- The downscaled GCMs data is used in the distributed model to simulate the future flow condition under different SSP scenarios. The details of the methods used to complete the analysis are given below.
3.2. K-Nearest Neighbour
3.3. Downscaling of GCMs
3.3.1. Gamma Quantile Mapping
3.3.2. Power Transformation
3.3.3. Generalized Quantile Mapping
3.3.4. Linear Scaling
3.4. Hydrological Model Development
3.4.1. Concept of the Distributed Model
3.4.2. Excess Saturation Runoff Rate
3.4.3. Subsurface Runoff
3.4.4. Evapotranspiration
3.4.5. Flow Routing
- The average elevation of each grid is calculated for all the cells.
- The flow direction of each cell is calculated using the Eight Direction Pour point model.
- The flow accumulation in each cell is calculated using the bucket model developed in Section 3.3.1.
- Flow accumulation is calculated by adding the cumulated flow of the grids flowing into the particular grid
- The flow route is calculated by connecting the low water accumulated cells with high water accumulated cells.
3.4.6. Projections of Climate Change Impacts on Hydrological Extremes
4. Application Results
4.1. Downscaling of GCMs
4.1.1. Downscaling of Precipitation
4.1.2. Downscaling of Maximum Temperature
4.1.3. Downscaling of Minimum Temperature
4.2. Calibration and Validation of Hydrological Model
4.3. Hydrological Changes under Future Scenarios
4.3.1. Projected Rainfall Extremes
Total Rainfall above 95th Percentile (R95pTOT)
Total Rainfall above 99th Percentile (R99pTOT)
Changes in One Day Max Rainfall (R × 1day)
Changes in 5-Day Max Rainfall (R × 5day)
Changes in Rainfall Intensity (RI)
4.3.2. Changes in River Flow
5. Discussion
5.1. Reliability of the Newly Developed Model
5.2. Changes in Precipitation Flood Frequency under Future Scenario
5.3. Significance of the Study
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Station ID | Station Name | River Basin | Catchment Area (km2) | Analysis Period |
---|---|---|---|---|
1737451 | SG. JOHOR at RANTAU PANJANG | Sg Johor | 1130 | 2007–2017 |
Data Set | Resolution | Source | |
---|---|---|---|
Land use | MODTBGA (MODIS/Terra Thermal Bands Daily L2G-Lite Global 1km SIN Grid V006 | 1 km | https://lpdaac.usgs.gov/ (accessed on 13 June 2021) |
Rainfall | MOD16A2 (MODIS/Terra Net Evapotranspiration 8-Day L4 Global 500 m SIN Grid V006) | 500 m | https://lpdaac.usgs.gov/ (accessed on 13 June 2021) |
Land Surface Temperature | MOD11A1-MODIS/Terra Land Surface Temperature/Emissivity Daily L3 Global 1km SIN Grid | 1 km | https://lpdaac.usgs.gov/ (accessed on 14 June 2021) |
Elevation | ALOS/PALSAR DEM 12.5 m | 12.5 m | https://asf.alaska.edu/ (accessed on 19 July 2021) |
Soil Type | SoilGrids250m version 2.0 | 250 m | https://soilgrids.org/ (accessed on 22 July 2021) |
Indices | Symbol | Description | Formula |
---|---|---|---|
Total rainfall above 95th Percentile | R95pTOT | Annual total rainfall when rainfall > 95p | |
Total Rainfall above 99th Percentile | R99pTOT | Annual total rainfall when rainfall > 99p | |
One day Max Rainfall | R × 1day | Annual maximum 1-day rainfall | |
Five-day Max Rainfall | R × 5day | Annual maximum 5-day rainfall | |
Rainfall Intensity | RI | Average rainfall on the rainy days |
MAE | RMSE | NRMSE% | Pbias | NSE | d | md | R2 | KGE | |
---|---|---|---|---|---|---|---|---|---|
Caliberation | 2.24 | 4.01 | 20.2 | −0.2 | 0.96 | 0.99 | 0.91 | 0.97 | 0.92 |
Validation | 3.8 | 5.64 | 50.2 | −0.7 | 0.75 | 0.94 | 0.76 | 0.78 | 0.86 |
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Iqbal, Z.; Shahid, S.; Ismail, T.; Sa’adi, Z.; Farooque, A.; Yaseen, Z.M. Distributed Hydrological Model Based on Machine Learning Algorithm: Assessment of Climate Change Impact on Floods. Sustainability 2022, 14, 6620. https://doi.org/10.3390/su14116620
Iqbal Z, Shahid S, Ismail T, Sa’adi Z, Farooque A, Yaseen ZM. Distributed Hydrological Model Based on Machine Learning Algorithm: Assessment of Climate Change Impact on Floods. Sustainability. 2022; 14(11):6620. https://doi.org/10.3390/su14116620
Chicago/Turabian StyleIqbal, Zafar, Shamsuddin Shahid, Tarmizi Ismail, Zulfaqar Sa’adi, Aitazaz Farooque, and Zaher Mundher Yaseen. 2022. "Distributed Hydrological Model Based on Machine Learning Algorithm: Assessment of Climate Change Impact on Floods" Sustainability 14, no. 11: 6620. https://doi.org/10.3390/su14116620