| Literature DB >> 32355374 |
Andres Payo1, Anirban Mukhopadhyay2, Sugata Hazra2, Tuhin Ghosh2, Subhajit Ghosh2, Sally Brown1,3, Robert J Nicholls1,3, Lucy Bricheno4, Judith Wolf4, Susan Kay5, Attila N Lázár1, Anisul Haque6.
Abstract
The Sundarbans mangrove ecosystem, located in India and Bangladesh, is recognized as a global priority for biodiversity conservation and is an important provider of ecosystem services such as numerous goods and protection against storm surges. With global mean sea-level rise projected as up to 0.98 m or greater by 2100 relative to the baseline period (1985-2005), the Sundarbans - mean elevation presently approximately 2 m above mean sea-level - is under threat from inundation and subsequent wetland loss; however the magnitude of loss remains unclear. We used remote and field measurements, geographic information systems and simulation modelling to investigate the potential effects of three sea-level rise scenarios on the Sundarbans within coastal Bangladesh. We illustrate how the Sea Level Affecting Marshes Model (SLAMM) is able to reproduce the observed area losses for the period 2000-2010. Using this calibrated model and assuming that mean sea-level is a better proxy than the SLAMM assumed mean lower low water for Mangrove area delineation, the estimated mangrove area net losses (relative to year 2000) are 81-178 km2, 111-376 km2 and 583-1393 km2 for relative sea-level rise scenarios to 2100 of 0.46 m, 0.75 m and 1.48 m, respectively and net subsidence of ±2.5 mm/year. These area losses are very small (<10 % of present day area) and significantly smaller than previous research has suggested. Our simulations also suggest that erosion rather than inundation may remain the dominant loss driver to 2100 under certain scenarios of sea-level rise and net subsidence. Only under the highest scenarios does inundation due to sea-level rise become the dominant loss process.Entities:
Keywords: Digital Elevation Model; Mangrove Area; Mangrove Forest; National Wetland Inventory; Tidal Flat
Year: 2016 PMID: 32355374 PMCID: PMC7175699 DOI: 10.1007/s10584-016-1769-z
Source DB: PubMed Journal: Clim Change ISSN: 0165-0009 Impact factor: 4.743
Fig. 1Main wetland categories, ground elevation and slope of the study zone (PWD stands for Public Works Datum)
SLAMM inputs type, value and source and site parameters used for the SLAMM simulations
| Inputs | Value | Source |
|---|---|---|
| NWI Photo Date (year) | 2003/2005 | Mukhopadhyay et al. |
| DEM Date (year) | 2006/2007 | IWM |
| Time step (years) | 1 | |
| Cell width (m) | 30 | IWM |
| Direction Offshore of DEM | South | |
| Ground Elevation Trend (mm/year) | +2.5, 0, −2.5 | Brown and Nicholls ( |
| Elevation of DEM relative to PWD (m) | 0.459 | IWM |
| Great Diurnal Tide Range (m) | 0 | |
| SLR (eustatic) above present values by 2100 (m) | 0.46, 0.75, 1.48 | |
| Tidal Flat Erosion (horz. m/year) | 20 | Rahman et al. ( |
| Use of elev pre-processor [True,False] | FALSE |
Fig. 2SLAMM is able to reproduce observed wetland area losses by Rahman et al. (2011) for the period 2000–2010. While the main erosion behaviour is captured, there are zones where area has been gained that are not reproduced
Fig. 3Simulated mangrove area losses by 2100 under nine different RSLR scenarios
Simulated mangrove area change and relative importance of inundation and erosion for three different SLR scenarios and net subsidence rates
|
| |||
|---|---|---|---|
| MSL by 2100 m (eustatic) | −2.5 mm/year | 0 mm/year | +2.5 mm/year |
| 0.46 | −178 km2 65 % In 35 % Er | −103 km2 16 % In 84 % Er | −81 km2 16 % In 84 % Er |
| 0.75 | −376 km2 85 % In 15 % Er | −200 km2 69 % In 31 % Er | −111 km2 42 % In 58 % Er |
| 1.48 | −1393 km2 97 % In 3 % Er | −927 km2 95 % In 5 % Er | −584 km2 92 % In 8 % Er |
In Inundation, Er Erosion
Fig. 4Simulated ground elevation relative to MTL by 2100 under nine different RSLR scenarios