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    529 Müggelsee Phaenology

    Title
    Müggelsee Phaenology
    Period
    1980-01-31 till 2018-12-31
    Period length
    38 years 11 months
    Sampling interval
    1 year
    Description

    Lake phaenology containing:

    - algae spring peak based on total algae biomass

    - time of spring clearwater state based on secchi depht

    - diatom spring peak based on phytoplankton diatom biomass

    - daphnia spring peak based on zooplankton individual count

     

    All data based on weekly sampling considering the period from january till may each year.

    Study site
    Müggelsee
    Contact
    Jan Köhler
    Licence for data
    All rights reserved. Please send a request to Jan Köhler if you like to use this data. Mind our data policy: IGB Data Policy

    Data files (e.g. excel)

    TitlecreatedFiletypeActions
    mueggelsee_phaenology.xlsx 14. Feb. 2020 10:09 datatable: .xlsx
    Error: To access file, please get in touch with the contact person.

    Machine Readable Metadata Files

    FRED provides all metadata of this package in a maschine readable format. There is a pure XML file and one EML file in Ecological Metadata Language. Both files are published under the freeODC-ByLicence.

    • Müggelsee_Phaenology.xml
    • Müggelsee_Phaenology.eml

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    Parsing data File

    Estimated Time:

    Why does it take so much time?

    While parsing a file, the database has to perform various tasks, some of them needs a lot of CPU and memory for larger files.

    • preprocessing: means automatic detection of headlines, table body, format values or csv-separators
    • copying: means read the file cell by cell and copy all elements to the database. During this format settings can be calculated (for example iso-time)
    • analyzing: check out for different data types (can be time, numeric or text)