Supplementary data - Nearshore - RealDune/REFLEX
DOI:10.4121/6761187a-61a2-44b7-b86e-11875e3c2a46.v1
        
    
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DOI: 10.4121/6761187a-61a2-44b7-b86e-11875e3c2a46
    DOI: 10.4121/6761187a-61a2-44b7-b86e-11875e3c2a46
Datacite citation style
van Wiechen, Paul; Rutten, Jantien; de Vries, Sierd; Tissier, Marion; Mieras, Ryan et. al. (2023): Supplementary data - Nearshore - RealDune/REFLEX. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/6761187a-61a2-44b7-b86e-11875e3c2a46.v1
        Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
    Dataset
Usage statistics
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            207
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            Geolocation
Sand Engine, Kijkduin, Netherlands
            lat (N): 52.0538
            lon (E): 4.18825
            view on openstreetmap
        Time coverage October 2021 - January 2022
Licence CC BY 4.0
Interoperability
Supplementary data from Rijkswaterstaat for the nearshore field measurements of the November, November - December, and January deployment of the RealDune/REFLEX experiments at the Dutch coast in Autumn/Winter 2021/2022. This dataset is part of the data collection 'Nearshore coastal measurements of calm, moderate, and storm conditions at two artificial dunes along the Dutch Coast during the RealDune/REFLEX experiments'. The data was downloaded from https://www.knmi.nl/nederland-nu/klimatologie/uurgegevens and https://waterinfo.rws.nl/.
History
- 2023-10-11 first online, published, posted
Publisher
4TU.ResearchDataFormat
*.csv, *.py, *.txtFunding
- Extradune: Dune safety during mega-storms [more info...] Topconsortia for Knowledge and Innovation Delta Technology
- REFLEX: Duinafslag hydrodynamica: de rol van frequentie-afhankelijke REFlectie tijdens EXtreme stormen [more info...] Topconsortia for Knowledge and Innovation Delta Technology
Organizations
TU Delft, Faculty of Civil Engineering and Geosciences, Department of Hydraulic EngineeringDATA
Files (3)
- 401,901 bytesMD5:ea89c21f77232804549adbb4c5ad682cdataset_air_pressure_HvH_Voorschoten_KNMI.csv
- 1,023,059 bytesMD5:f73fc1b5218e5b6d511132bd0d1066efdataset_eta_HvH_SCHE_RWS.csv
- 22,484,483 bytesMD5:0485a706da8131e97773d0a21a8af183Raw data and processing.zip
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