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Lecture 24: More on Data Quality and Metadata By Austin Troy ------Using GIS-- Introduction to GIS.

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Presentation on theme: "Lecture 24: More on Data Quality and Metadata By Austin Troy ------Using GIS-- Introduction to GIS."— Presentation transcript:

1 Lecture 24: More on Data Quality and Metadata By Austin Troy ------Using GIS-- Introduction to GIS

2 ©2005 Austin Troy Random and Systematic error Error can be systematic or random Systematic error can be rectified if discovered, because its source is understood A common example is where an remote sensing instrument consistently measures data erroneously because of bad calibration—if the problem in calibration can be understood and accounted for, then that error is called systematic Another example: projecting map data using the wrong zone would result in consistently wrong data Introduction to GIS

3 ©2005 Austin Troy Random and Systematic error Random error cannot be controlled for because its source is not understood. Random errors are often introduced in little bits at each stage of data collection and processing Sources can range from slight air turbulence when an airplane is collecting RS data to a file getting corrupted in data transfer Introduction to GIS

4 ©2005 Austin Troy Random and Systematic error Systematic errors affect accuracy, but are usually independent of precision; data can use highly precise methods but still be inaccurate due to systematic error Introduction to GIS Accurate and precise: no systematic, little random error inaccurate and precise: little random error but significant systematic error Accurate and imprecise: no systematic, but considerable random error inaccurate and imprecise: both types of error

5 ©2005 Austin Troy Types of Error Sources Burrough (1986) divides error sources into : 1.Obvious sources of error. 2.Errors resulting from natural variations or from original measurements. 3.Errors arising through processing. The third type is the least obvious Introduction to GIS

6 ©2005 Austin Troy 1. Obvious Error Sources Areal cover: E.g. cloud cover in remote sensing or missing/incomplete data at coverage boundaries Older maps where parts are unknown Introduction to GIS Currency/ timeliness: Being obviously out of date Timeliness, or currency are not so easy to judge: depends on the types of data looking at

7 ©2005 Austin Troy 2. Measurement Errors Positional accuracy: Random or systematic equipment malfunction, and misuse Bad GPS measurements, Map digitizing errors or other input errors Location of imprecise boundaries (e.g. vegetation stands, soil zones, flood zones, wetlands, climatic zones) can be compromised by the criteria used to define and classify these zones, as well as by errors in measurement Interpolation error Introduction to GIS

8 ©2005 Austin Troy 2. Measurement Errors Attribute accuracy Misclassification of categorical data(automated or manual) The chance for misclassification grows as number of possible classes increases Quantitative measurement errors: e.g. truncation A common error is to measure a phenomenon in only one phase of a temporal cycle: bird counts, river flows, average weather metrics, soil moisture Introduction to GIS

9 ©2005 Austin Troy 3. Processing Errors Numerical processing (math operations, data type, rounding, etc) Geocoding (e.g. rural address matching and street interpolation) Topological errors from digitizing (overshoots, dangling nodes, slivers, etc) Automated classification steps, like unsupervised or supervised land cover classification in remote sensing, can result in processing errors Introduction to GIS

10 ©2005 Austin Troy Error propagation and cascading These can accumulate and cascade through processing steps; each succeeding layer that uses the erroneous processing method compounds the error Propagation: where one error leads to another Example: if a key reference point was mis-digitized in layer A and that point was used to “register” layer B to layer A, then the error is propagated in layer B and all subsequent layers based on either of them; this error can propagate additively or multiplicatively Introduction to GIS

11 ©2005 Austin Troy Error propagation and cascading Cascading: Refers to when errors are allowed to propagate unchecked from one layer to the next and on to the final set of products or recommendations Cascading error can be managed to a certain extent by conducting “sensitivity analysis” on different data layers to see how slight changes in one or several layers would affect the final outcome or product Cascading can occur with positional as well as with attribute errors; e.g. errors in the z value of a raster layer would yield cascading errors in map algebra Introduction to GIS

12 ©2005 Austin Troy Documentation and Metadata To avoid many of these errors, good documentation of source data is needed Metadata is data documentation, or “data about data” Ideally, the metadata describes the data according to federally recognized standards of accuracystandards of accuracy Almost all state, local and federal agencies are required to provide metadata with geodata they make Introduction to GIS

13 ©2005 Austin Troy Documentation and Metadata Metadata usually include sections similar to these Introduction to GIS

14 ©2005 Austin Troy Documentation and Metadata The federal geographic data committee (FGDC) is a federal entity that developed a “Content Standard for Digital Geospatial Metadata” in 1998, which is a model for all spatial data users to followFGDC Purpose is: “to provide a common set of terminology and definitions for the documentation of digital geospatial data. The standard establishes the names of data elements and compound elements (groups of data elements) to be used for these purposes, the definitions of these compound elements and data elements, and information about the values that are to be provided for the data elements” (FGDC) All federal agencies are required to use these standards Introduction to GIS

15 ©2005 Austin Troy Documentation and Metadata The information requirements in FGDC metadata were chosen based on the four roles that they see metadata playing: “availability -- data needed to determine the sets of data that exist for a geographic location. fitness for use -- data needed to determine if a set of data meets a specific need. access -- data needed to acquire an identified set of data. transfer -- data needed to process and use a set of data.” (FGDC) Introduction to GIS

16 ©2005 Austin Troy Documentation and Metadata Critical components usually break down into: Dataset identification Administrative information Dataset overview Data quality Data definition Spatial reference information Introduction to GIS

17 ©2005 Austin Troy Documentation and Metadata Data identification, overview and administrative info: Often combined General info: name and brief ID of dataset and owner organization, geographic domain, general description/ summary of content, data model used to represent spatial features, intent of production, language used, reference to more detailed documents, if applicable Contact info, constraints on access and use This is usually where info on currency is found Introduction to GIS

18 ©2005 Austin Troy Documentation and Metadata Data quality should address: Positional accuracy Attribute accuracy Logical consistency Completeness Lineage Processing steps Introduction to GIS

19 ©2005 Austin Troy Documentation and Metadata Spatial reference should include: horizontal coordinate system (e.g. State Plane) Includes projection used, scale factors, longitude of central meridian, latitude of projection origin, distance units Geodetic model (e.g. NAD 83), ellipsoid, semi- major axis Introduction to GIS

20 ©2005 Austin Troy Documentation and Metadata Data definition, also known as “Entity and Attribute Information,” should include: Entity types (e.g. polygon, raster) Information about each attribute, including label, definition, domain of values Sometimes will include a data dictionary, or description of attribute codes, while sometimes it will reference a documents with those codes if they are too long and complex Introduction to GIS

21 ©2005 Austin Troy Documentation and Metadata Data distribution info usually includes: Name, address, phone, email of contact person and organization Liability information Ordering information, including online and ordering by other media; usually includes fees Introduction to GIS

22 ©2005 Austin Troy Documentation and Metadata Metadata reference, or meta-metadata This is data about the metadata Contains information on When metadata updated Who made it What standard was used What constraints apply to the metadata Introduction to GIS


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