Environmental risk assessment of coastal dredging based on clustering of meteocean forcing
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2024-09Derechos
Attribution-NonCommercial-NoDerivatives 4.0 International
Publicado en
Coastal Engineering, 2024, 192, 104555
Editorial
Elsevier
Disponible después de
2026-10-01
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Palabras clave
Dredging impacts
Turbidity
Risk assessment
Coastal modeling
Clustering analysis
Resumen/Abstract
Dredging and dumping in-situ sediments is a fundamental operation for most coastal engineering projects and
coastal defense projects, such as the construction of breakwaters, beach nourishment and land reclamation.
Future projections in terms of coastal hazard suggest that coastal protection and land reclamation project
will be more and more frequent. In this context, the assessment of the environmental and socio-economic
impact of the risk induced by dredging is a fundamental step during both the design stage and the operational
management. Most of the standard practices and available risk assessment frameworks rely on the numerical
prediction of the sediment plume in the large field driven by coastal circulations forced by tides, winds and
waves. In this study, we formulated a new risk assessment framework based on an unsupervised machine learning
clustering algorithm, K-means clustering, for generating representative meteocean scenarios subsequently
used to force a regional circulation model. Moreover, we introduced three criteria of hazard/risk based on the
spatial and temporal evolution of the suspended sediment concentration that explained different environmental
impacts and two new methods to synthetically present the risk values. The major improvement of the present
framework is that the final probability of risk fully describes the statistics in terms of hydrodynamic and
dredging conditions.This framework presents the probability analysis of risk spatial distribution based on
representative hydrodynamic conditions and dredging scenarios, which is a major improvement of this study
compared with previous risk assessment strategies that were unable to predict quantified dredging risk before
field construction. Finally, to demonstrate the potentiality of the risk assessment framework, we applied this
methodology to the Hong Kong Water and Pearl River Estuary (China) as a pilot case
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