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Access to and Add Value of Archived Data - Methodology of Data Integration and Mining for 1:1M Land Type Mapping of China Prof. Liu Chuang Prof. Shen Yuancen Global Change Information and Research Center IGSNRR/Chinese Academy of Sciences PPF-WSIS Phase II, 14 November 2005, Tunis
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1 China’s Scientific Data Sharing Program 2 Opportunities and Challenges: Access to and Add Value of the Archived Data 3 Methodology of Adding Value of Archived Data 4Example: 1:1M Land Type Mapping of China
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1China’s Scientific Data Sharing Program China has an implementation program in enhancing open access to scientific data, a national long-term (2005-2020) program: Scientific Data Sharing Program (SDSP) which is initialed in 2003 About 40 data centers, 300 major databases covering almost all of the basic sciences will be long term supported, a series of data policies and data standards will be established to meet the needs of open access to the archived data.
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Besides, e-Government programs in agencies of China and e-Sciences program in CAS will promote the scientific data sharing program greatly. For example, the quick response system of water resources management system.
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About 250 TB data archived with the standard or near standard manners in China (June 2005)
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2 Opportunities and Challenges: Access to and Add Value of the Archived Data The progress makes great opportunities for scientists in research: the location of data the way to access free or low costs
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Two Major Challenges in China: Preservation and open access: more stable, more open, more fast, more easy and more low cost in services, which is a long way to go Add Value: new methodology in data integration and mining, which is a new way to be created
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3 Methodology of Adding Value of Archived Data The value of scientific data can be divided into: value for scientific research value for social benefit value for economic income
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Relationship between data value and data integration/mining Dataset 1 Dataset 2 Dataset 3 time value
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Reference Hierarchical Model for Data Integration and Data Mining data model knowledge Data Selection Data Integration Object Simulating Cal/Val Computational Process Distributed Information Infrastructure Innovated Ideas/Society Needs
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Data Selection: two important issues in this stage (1) how to select the necessary data among the distributed data holders in order to meet the need of modeling for a specific objective (2) how to determine the weights of each selected datasets
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Data Integration: one issue, very difficult issue, in this stage has to be solved - making the selected datasets compatible including data standard, termination, definition, format, unit, resolution, time period, method of capture the data ….
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Object simulating: two issue, the critical issues, in this stage need to be solved - establish a relationship between the datasets selected (model) - determine the parameters in the model
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Cal/Val for the new dataset: How the new dataset quality could be: - how quality is or what conditions the new dataset or knowledge could be high quality? - Are there any way to help the dataset quality enough?
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New knowledge/new dataset created go to publication and data archiving process
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Reference Hierarchical Model for Data Integration and Data Mining data model knowledge Data Selection Data Integration Object Simulating Cal/Val Computational Process Distributed Information Infrastructure Innovated Ideas/Society Needs
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Example: Data Integration and Mining for 1:1M Land Type Mapping of China
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Land type research and 1:1M mapping in China There is a long history in China in land type studies, the earlier record in 170 BC, identified the China land into 9 types. The most resent land type studies in 1:1M mapping started in 1987, the first land type classification system for 1:1M mapping of China created in 1990 led by Prof. Zhao Songqiao. landtypeclaSytemChina.doclandtypeclaSytemChina.doc
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The stage of completed part of the 1:1M Land Type Map of China
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Datasets : The datasets used in this paper include: (1) Climate datasets in more than 600 climate stations from CMA (2) Soil map in 1:1M from CAS (3) MODIS-NDVI/EVI, 250m, 1kmresolution, 16-day and 10 days composite 2002, from NASA and CAS (4) MODIS-NDSI, 1 km resolution, 10 days and monthly composite 2002, from CAS (5) SRTM in 90 Meters in USGS and DEM in 1:250k from Geomatic Center of China (6) Ground truth survey datasets in Northeast China, Inner Mongolia, Tibet, Gansu, Zhejiang, Guizhou … (7) historical records including documentation and maps from CAS (8) yearbooks of agriculture and land use from Statistic Bureau of China
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MODIS-NDVI 16-days composite datasets, 2002, 1km Field sites
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NDVI = (MODIS2-MODIS1)/ (MODIS2+MODIS1) EVI = 2.5*(MODIS2-MODIS1)/(MODIS2+6*MODIS1- 7.5*MODIS3+1) NDSI = (MODIS4-MODIS6)/(MODIS4+MODIS6)
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Forest (Betula) 0 NDVI 0.83 Single peak Location: Far East Russia and Daxingan Mountain in Helongjian Province
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Location: Great Hinggan Mt. Forest (Larix+Betula, up) Meadow steppe (down)
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Location: Huang-Huai-Hai Plain Rotated crops land with winter wheat and maize
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Location: North Korea Forest (purple) Rice (white)
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Wetland (reed) 0 NDVI 0.53 0 EVI 0.42 Location: Yellow River Delta
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Temperate Meadow 0 NDVI 0.6 Temperate Meadow 0 NDVI 0.8 Temperate Steppe 0 NDVI 0.4 Temperate Steppe 0 NDVI 0.6 Location: Xilingol, Inner Mongolia
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Temperate Desert 0 NDVI 0.25 Temperate Desert Steppe 0 NDVI 0.2 Sand Steppe 0 NDVI 0.45 Sand Steppe 0 NDVI 0.35 Location: Xilingol, Inner Mongolia
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Location: Coastal area in Northern Jiangsu province Wetland 0 NDVI 0.52 0 EVI 0.35
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Location: Qinghai Province Alpine Meadow
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Gobi in arid region in northwestern China Location: MinQin County, Gansu Province Gobi
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Location: MinQin County (Oasis), Gansu Province Spring Wheat Crop Land
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June 2001 April 2001 August 2001 Location: Gongbujiangda area located at the Eastern Tibet
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Location: Nyainqntanglha Mountains NDSI >0.4 and MODIS2 > 0.11 Up left: Feb.2002 Up right: June 2002 Down left: Sep. 2002
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Conclusion: The reference Hierarchical mode of data integration and mining is very important for innovated knowledge development, the computational science plays a critical role in the new methodology. The new methodology in data integration and mining will take China land type studies into a new milestone.
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Thank you !
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