Leaf Area Index (LAI) - Switzerland [2020, Sentinel-2]

This dataset is an time-serie of Sentinel-2 Analysis Ready Data (ARD)- derived Leaf Area Index (LAI) computed from Sentinel-2 data. LAI is designed to analyze the foliage surface of our planet and it estimates the quantity of leaves in a specific region using the forumla LAI= 3.618*EVI - 0.118. For more details see Boegh et al. (2002) DOI: 10.1016/S0034-4257(01)00342-X LAI is a unitless measure that is calculated as the ratio of the one-sided (illuminated) foliage area to the soil surface it can cover. This vegetation index is important to monitor crop and forest health, the environment, and climatic conditions. Values are provided as integer and multiplied by 1000 Metrics: annual (_annual) and seasonal (_spring; _summer; _autumn; _winter) mean (_nanmean), standard dev (_nanstd), min (_nanmin), max (_nanmax), median (_nanmedian), and amplitude (_range) Data format: GeoTiff This dataset has been genereated with the Swiss Data Cube (http://www.swissdatacube.ch) in the frame of the ValPar.CH project

    Organizational unit
    Swiss Data Cube
    Type
    Dataset
    DOI
    10.26037/yareta:durinmpn7jcd5exsc332kg43ey
    License
    Creative Commons Attribution 4.0 International
    Keywords
    vegetation, leaf, sentinel-2, valpar
Publication date20/09/2022
Retention date17/09/2032
accessLevelPublicAccess levelPublic
SensitivityBlue
licenseContract on the use of data
License
Contributors
  • Chatenoux, Bruno orcid
  • Giuliani, Gregory orcid
  • Rodila, Denisa
  • Schweiger, Anna
23
3
  • Quality (0 Reviews)
  • Usefulness (0 Reviews)

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