Dataset
BACI: System State Vector (SSV) land surface time series dataset for the Southern African regional site, 2000-2015, v1.0
Abstract
The BACI Surface State Vector (SSV) dataset for Souther African regional site provides a description of the surface state from a combination of satellite observations across wavelength domains i.e. albedo (visible), Land Surface Temperature (LST) (passive/thermal microwave) and backscatter (active microwave). The dataset contains a unique spatially and temporally consistent (as far as the observations allow) series of observations of the land surface, across optical and microwave domains. The innovation of this approach is in providing a SSV in a common space/time framework, containing information from multiple, independent data streams, with associated uncertainty. The methods used can be used to combine data from multiple different satellite sources. The resulting dataset is intended to make the best use of all available observations to detect changes in the land surface state: the combination of data is likely to show changes that would not be apparent from data in a single wavelength region. The inclusion of uncertainty also allows the strength of the resulting changes to be properly quantified.
Details
Previous Info: |
No news update for this record
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Previously used record identifiers: |
No related previous identifiers.
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Access rules: |
Public data: access to these data is available to both registered and non-registered users.
Use of these data is covered by the following licence(s): http://creativecommons.org/licenses/by/4.0/ When using these data you must cite them correctly using the citation given on the CEDA Data Catalogue record. |
Data lineage: |
Provided by Mathias Disney of the University College London BACI projcet team to CEDA for publication |
Data Quality: |
BACI data validated by Maxim Chernetskiy UCL project team
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File Format: |
netCDF version 4
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Process overview
Title | BACI State Surface Vector Computation (SSV) |
Abstract | The main requirement for BACI SSV dataset was to provide frequent time series of remote sensing information in different domains of electromagnetic spectrum covering largest possible regions. It was important to have data which allows change detection to be as precise as possible without attribution. The dataset combines layers of optical, thermal infrared and microwave data providing comprehensive set of information. The process used MODIS reflectance, MODIS land surface temperature and Sentinel-1 VV/VH backscatter. It also employed linear Kernel BRDF models to normalise reflectance to nadir view. i.e.and an inversion of the Kernel models to obtain kernels and then it is easy to calculate reflectance at nadir. In the case of thermal and SAR information the process used identity operator i.e. smoother to fill gaps and estimate uncertainty. This allows minimum loss of information and makes data sets compatible. Inputs to the BACI SSV are MODIS daily reflectance and LST data, Sentinel 1 backscatter and historical microwave (ENVISAT ASAR). A key innovation of the BACI SSV processing chain is the use of the multitasking facilities of CEMS/JASMIN cluster to process almost 20 years of EO data across domains . |
Input Description | None |
Output Description | None |
Software Reference | None |
- units: K
- var_id: lst
- long_name: Land Surface Temperature Uncertainty
- standard_name: LST SD
- var_id: bs
- var_id: bs_orig
- var_id: bs_orig_sd
- var_id: bs_sd
- var_id: crs
- units: string representation of date: yyyy.mm.dd
- var_id: date_str
- units: Julian day
- var_id: julday
- var_id: julday_obs
- var_id: lat
- units: latitude
- units: degrees_north
- long_name: latitude
- var_id: lat
- var_id: lon
- units: longitude
- units: degrees_east
- long_name: longitude
- var_id: lon
- var_id: lst
- var_id: lst_orig
- var_id: lst_orig_sd
- var_id: lst_sd
- var_id: time
- units: m
- var_id: x
- standard_name: projection_x_coordinate
- long_name: x distance on the projection plane from the origin
- units: m
- var_id: y
- standard_name: projection_y_coordinate
- long_name: y distance on the projection plane from the origin
- var_id: y_fwd
- var_id: y_orig
Co-ordinate Variables
Temporal Range
2000-01-01T00:00:00
2015-12-31T00:00:00
Geographic Extent
-20.0000° |
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13.0500° |
31.9200° |
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-39.9900° |