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Integrated modeling framework to quantify the coastal protection services supplied by vegetation

Authors
Guannel, GregRuggiero, PeterFaries, JoeArkema, KatiePinsky, MalinGelfenbaum, GuyGuerry, AnneKim, Choong-Ki
Issue Date
1월-2015
Publisher
AMER GEOPHYSICAL UNION
Keywords
coastal vegetation; wave setup and runup; coastal erosion; mud bed scour
Citation
JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS, v.120, no.1, pp 324 - 345
Pages
22
Journal Title
JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS
Volume
120
Number
1
Start Page
324
End Page
345
URI
https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/8677
DOI
10.1002/2014JC009821
ISSN
2169-9275
2169-9291
Abstract
Vegetation can protect communities by reducing nearshore wave height and altering sediment transport processes. However, quantitative approaches for evaluating the coastal protection services, or benefits, supplied by vegetation to people in a wide range of coastal environments are lacking. To begin to fill this knowledge gap, we propose an integrated modeling approach for quantifying how vegetation modifies nearshore processesincluding the attenuation of wave height, mean and total water leveland reduces shoreline erosion during storms. We apply the model to idealized seagrass-sand and mangrove-mud cases, and illustrate its potential by quantifying how those habitats reduce water levels and sediment loss beyond what would be observed in the absence of vegetation. The integrated modeling approach provides an efficient way to quantify the coastal protection services supplied by vegetation and highlights specific research needs for improved representations of the ways in which vegetation modifies wave-induced processes.
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