Over the last decades, the quantity of data related to coastal risk has greatly increased with the installation of numerous monitoring networks. In this era of big data, the use of statistical learning methods (SLM) in the development of local predictive models becomes more legitimate and justified. The objective of this thesis is to demonstrate how SLM can contribute to the improvement of coastal risk assessment tools and to the development of an early warning system which aims to reduce coastal flooding risk. Three methodologies have been developed and tested on real study sites. The first methodology aims to improve the local wave forecast made by spectral wave model with machine learning methods and data from monitoring networks. We sho...
International audienceSubmersion risks assessment requires different tools and methods from regional...
Prediction of coastal vulnerability is of increasing concern to policy makers, coastal managers and ...
The rise of machine learning (ML) has significantly advanced the field of coastal oceanography. This...
Recent and historic events have demonstrated the European vulnerability to coastal floods. Larger an...
Low frequency, high impact storm events can have large impacts on sandy coasts. The physical process...
Low frequency, high impact storm events can have large impacts on sandy coasts. The physical process...
Coastal communities are threatened by the impact of severe storms that may cause significant loss or...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
The most densely populated and economical most valuable areas in The Netherlands lie below mean sea ...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
Au cours des dernières décennies, la quantité de données relatives aux risques côtiers a fortement a...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
International audienceSubmersion risks assessment requires different tools and methods from regional...
Prediction of coastal vulnerability is of increasing concern to policy makers, coastal managers and ...
The rise of machine learning (ML) has significantly advanced the field of coastal oceanography. This...
Recent and historic events have demonstrated the European vulnerability to coastal floods. Larger an...
Low frequency, high impact storm events can have large impacts on sandy coasts. The physical process...
Low frequency, high impact storm events can have large impacts on sandy coasts. The physical process...
Coastal communities are threatened by the impact of severe storms that may cause significant loss or...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
The most densely populated and economical most valuable areas in The Netherlands lie below mean sea ...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
Au cours des dernières décennies, la quantité de données relatives aux risques côtiers a fortement a...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
International audienceSubmersion risks assessment requires different tools and methods from regional...
Prediction of coastal vulnerability is of increasing concern to policy makers, coastal managers and ...
The rise of machine learning (ML) has significantly advanced the field of coastal oceanography. This...