Title: WP 8 CAPRI GIS Link
1WP 8 CAPRI GIS Link
Agricultural Policy The Dynamic and Spatial
Dimension (CAPRI-DynaSpat)
Relevant spatial datasets for the disaggregation
of CAPRI-DynaSpat parameters Description - Use -
Constraints
Renate Köble and Adrian Leip
2SPATIAL DATA SETS
- LAND COVER/LAND USE MAPS
- determine mainly the spatial resolution of the
disaggregation - LAND USE/COVER AREA FRAME STATISTICAL SURVEY
- can be used to create a decision matrix how to
allocate the statistical agricultural activity
data and model outputs to the land cover classes - SPATIAL DATA ON ELEVATION, BIOGEOGRAPHICAL
REGIONS AND SOIL - deliver additional information to allocate
statistical agricultural activity data and
model outputs especially for complex land cover
classes
3CORINE LAND COVER/LAND USE 1990
- CORINE (Coordination of Information on the
Environment) land cover mapping program was
proposed in 1985 by the EU Commission to satisfy
the need of precise and easy accessible
information on land cover in Europe - CLC describes land cover (and partly land use)
according to a nomenclature of 44 classes
organised hierarchically in 3 levels - Elaborated based on the visual interpretation of
satellite images and ancillary data (aerial
photographs, topographic maps etc.) - Acquisition period of satellite images 1985 to
1995 - Smallest surface mapped 25 ha. Scale of the
output product 1100 000 - The 100 m2 grid data set is available for the
CAPRI-DynaSpat area of interest except Sweden - For Switzerland a national land cover map is
available with classes corresponding to Level II
of the CORINE classification system
4CORINE LAND COVER/LAND USE 2000
- An update of the CORINE Land cover database for
the year 2000 is under processing - The update will be more time consistent
(satellite images from 2000 /-1year) - Improvement of the geometric accuracy
- CORINE LC90 will be revised (land cover classes
and geometry will be reviewed) - Maps with land cover changes from 1990 to 2000
will be produced - Currently data is available for Ireland,
Netherlands, Latvia, Luxembourg and Malta - Data for Lithuania, Poland, Spain, Sweden, Italy
might be available before summer - the aim is to finish 80 of EU25 ( Bulgaria,
Croatia, Romania) by the end of 2004
5CORINE CLASSIFICATION
6CORINE LC IN THE BONN AREA
CAPRI DYNASPAT KICK-OFF MEETING
7PELCOM LAND COVER/LAND USE
- The Pan-European Land Cover Monitoring (PELCOM)
project was carried out 1996-99. Funded as a
shared cost action within FP4. - The PELCOM land cover map distinguishes 14 land
cover classes (4 agricultural classes) - Classification is based on 1km resolution
satellite images (NOAA AVHRR) and ancillary data
as e.g. topographic information,
rivers/lakes/coastlines - Acquisition period of satellite images 1997
- Covers Europe and parts of Russia and the Middle
East
8CORINE/PELCOM LC CLASSIFICATION
CORINE
PELCOM
9CORINE AND PELCOM LAND COVER
Pastures Complex cultivation pattern Land
princip. occ. by agric. sign areas of nat.
veg. Not irrigated arable land Forest Urban area
Grassland
Rhein-Sieg-Kreis
10LAND COVER DATA SETS AVAILABLE FOR THE
CAPRI-DynaSpat AREA
11COMPARISON OF CLC90 AND FARM STRUCTURE SURVEY
DATA
RECLASSIFIED STATISTICS
CLC90 11 agricultural classes, FSS 42 classes
Kayadjanian et al. (2001)
LANDCOVER MAP
12THE POSSIBLE REASONS FOR THE DEVIATIONS ARE
MANYFOLD
- Data is related to different time spans (FSS
1990, CLC 1985-95) - Per definition CLC omits areas lt25 ha, therefore
non irrigated arable land may be included to some
extend also in other CLC classes as e.g. Complex
cultivation patterns with significant area of
natural vegetation or Grassland - FSS classes can not be exactly regrouped in the
CLC classes due to different classification
systems (e.g. within irrigated land) - Photo-interpretation inaccuracy for CLC
- Errors in the FSS
13LUCAS SURVEY
- The Land Use/Cover Area Frame Statistical
Survey (LUCAS) has been launched by Eurostat and
DG Agri to - obtain harmonised data (unbiased estimates) at EU
15 level of the main Land Use / Cover areas and
changes. - evaluate the strengths and weaknesses of a point
area frame survey as one of the pillars of the
future Agriculture Statistical System (area frame
means that the observation units are territorial
subdivisions instead of agricultural holdings as
in the Farm Structure Survey).
Decision N1445/2000/EC of the European
parliament and of the Council of the 22.05.2000
on the application of area-frame survey and
remote-sensing techniques to the agricultural
statistics for 1999 to 2003.
14ORGANISATION OF THE LUCAS SURVEY
- Main land cover/use survey raster 18 km by 18 km
with 10 subsampling Units - Phase 1 field survey at 100000 observation
points in EU15 (spring) - Phase 2 interview with 5000 farmers to obtain
additional technical or environmental information
(autumn) - The first survey has been carried out in 2001 (UK
2002) - 57 land cover classes are separated including 34
agricultural classes - High geometrical accuracy of the sampling
locations (/- 3m)
Sampling design
Primary sampling units in NL
15LUCAS SURVEY CLASSIFICATION
16FINE SCALING CORINE LC CLASSES WITH LUCAS DATA
- Based on a study from J. Gallego (2002)
- Fine scaling in this case means estimating the
proportion of other land cover classes within a
given CORINE class as e.g. pastures - To examine the possibility of fine scaling the
CLC classes J. Gallego overlaid the CLC with the
point observation of the LUCAS 2001 survey - The operation produces a matrix with 56 columns
(LUCAS land cover classes) and 44 rows (CLC) that
allows to analyse the composition of other land
cover classes within a specific CLC land cover
class
17FINE SCALING CLC 2000 WITH LUCAS DATA
LUCAS
Test for Ireland
CORINE
18SPATIALISATION OF STATISTICALLAND USE WITHIN ONE
LAND COVER CLASS
- A study of the Geographical Information
Management (G.I.M, 2002) group showed to possible
value of using topographical (elevation, slope)
and soil information to disaggregate CLC land
cover classes with complex patterns into single
classes . - Example CLC class complex cultivation patterns
contains 30 arable land, 40 pasture, 30 forest
(based on CLC/LUCAS analysis). Roughly speaken
arable land will be attributed to the best
growing/farming conditions -gt good soils / low
altitudes / flat terrain - The G.I.M method will be reviewed
- Analysis if the assumptions can be improved by
looking at relationships between LUCAS data
soil topography
19CHANGES IN AGRICULTURAL AREABASED ON CLC90 AND
CLC2000
94
20LAND COVER CHANGES IN NL
Agricultural area to Artificial surfaces
Agricultural area to Forest seminatural areas
Amsterdam
Agricultural area to Wetlands
21INFRASTRUCTURE FOR SPATIAL DATA IN EUROPE
(INSPIRE)
- With the INSPIRE initative, the European
Commission intends to trigger the creation of a
European Spatial Data Infrastructure (ESDI) - The ESDI has to be set up in a way that will
allow public users at European to local level to
discover, access and acquire spatial data from a
wide range of sources for a wide range of
applications - INSPIRE expert groups has been set up for several
topics e.g. - Reference data and metadata
- Data policy and legal issues
- Architecture and standards (reference system,
projections, European reference grid system) -