KerkiniLake-Phenological Annual Summary Statistics-2019/2020

DOI

Phenological Annual Summary Statistics based on Ecosystem Functional Attribute framework. The result are based on S2 interpolated with a bayesian implementation of Harmonic Model.

Details of the method can be found in Vicario S, Adamo M, Alcaraz-Segura D, Tarantino C (2019) Bayesian Harmonic Modelling of Sparse and Irregular Satellite Remote Sensing Time Series of Vegetation Indexes: A Story of Clouds and Fires. Remote Sens 12:83 . doi: 10.3390/rs12010083

The phenology is not a scalar variable but it is an ensamble of sub-variables all based on MCARI2 vegetation index and for each one two statistics are given: expected value (mean) and a mask for all pixel with standard deviation of uncertianities larger than 10% the mean (CVmask)

within the general name rule proposed:

locality_variable_timestamp.extension

variable formed in: Phenology-SubvariableStatistics

The subvariables are:

mean: mean value across the year - values range between 0-0.5 stdintra: standard deviation of the value across the year - values range between 0-0.05 maxpos: day of the year of the maximum value - values range between 0-0.5 sdinter: standard deviation across years - values range between 0-0.05

The statistics are:

mean: Expected value of the subvariable across 100 simulation CVmask: 0-1 mask with value 1 for pixel with less than 10% of standard deviation compared to the mean

The timestamp refer to a year or to two years

Identifier
DOI https://doi.org/10.23728/b2share.536114446997472eb390c5c2770271d5
Source https://b2share.eudat.eu/records/536114446997472eb390c5c2770271d5
Metadata Access https://b2share.eudat.eu/api/oai2d?verb=GetRecord&metadataPrefix=eudatcore&identifier=oai:b2share.eudat.eu:b2rec/536114446997472eb390c5c2770271d5
Provenance
Creator Saverio Vicario; Chiara Richiardi; Maria Adamo; Cristina Tarantino
Publisher EUDAT B2SHARE; Consiglio Nazionale delle Ricerche - Istituto sull'Inquinamento Atmosferico
Publication Year 2022
Rights Creative Commons Attribution (CC-BY); info:eu-repo/semantics/openAccess
OpenAccess true
Contact saverio.vicario(at)cnr.it
Representation
Resource Type Dataset
Format zip
Size 558.5 MB; 1 file
Discipline 3.3.2 → Earth sciences → Environmental science