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Environmental GIS

Environmental GIS. Nicholas A. Procopio, Ph.D, GISP nick@drexel.edu. Data Types. In GIS, there are three main types of data Spatial Attribute Metadata. Zygo, Lisa, Baylor University, Lecture Notes, 2002. Data Sources. Data Types

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Environmental GIS

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  1. Environmental GIS Nicholas A. Procopio, Ph.D, GISP nick@drexel.edu

  2. Data Types • In GIS, there are three main types of data • Spatial • Attribute • Metadata Zygo, Lisa, Baylor University, Lecture Notes, 2002

  3. Data Sources • Data Types • Primary – Measurements collected through first-hand observations • Secondary – Measurements collected through a secondary source (i.e., neighborhood surveys)

  4. Metadata • Data documentation • Data about the data • Explains the form, content, accuracy, precision, usability, creator, purpose, etc. • Metadata standards exist • Metadata is apart of geospatial data

  5. Metadata • Metadata information includes • Identification – title, area, dates, owners, organizations, etc. • Data quality – attribute accuracy and spatial precision, consistency, sources of info, and methods of data production • Spatial data organization – raster-vector format and organization of features in the data set, data model • Spatial reference – map projections, datums, and coordinate system

  6. Metadata • Metadata is created to… • Protect investment in data • Staff turnover, memory loss • Makes it easier to reuse and update data • Provides documentation of sources, quality • Easier to share data • Helping the user understand the data • Provides consistent terminology • Focuses on key elements • Helps user determine fitness for use • Facilitates data transfer, interpretation by new users

  7. Federal Geographic Data Committee http://www.fgdc.gov/ Under Executive Order No. 12906, all federal agencies and organizations must document their geospatial data using the FDGC Content Standard for Digital Geospatial Metadata

  8. Federal Geographic Data Committee • Compliance with this executive order will… • Minimize duplication of data • Foster cooperative digital data collection activities • Establish a national framework of quality data

  9. Metadata Use ArcCatalog to create and edit metadata

  10. Database Models • Database – a collection of non-redundant data, which can be shared by different application systems • Geographic database – database linked to geographic data for a particular area and subject.

  11. Attribute Data The “where” of GIS is determined by the spatial data The “what” is determined by the attribute data The attribute data is just as important as the spatial data

  12. Databases Attribute data are stored in database tables

  13. Databases • Advantages of a DBMS include • Reduced redundancy of data duplication • Various data access methods are possible (queries) • Data is stored independently of the application for which they will be used • Access to data is controlled and data is centralized • Ease of updating and maintaining data

  14. Creating a database • Consider the following… • Storage media • How will the database change over time? • What security is needed? • Should the database be distributed or centralized? • How should database creation be scheduled?

  15. Codd’s Principles for Databases Only one value per cell All values in a column are about the same subject Each row is unique No significance to the sequence of columns No significance to the sequence of rows Keep your table simple!

  16. Attribute Types • Qualitative • No measurement or magnitude • Non-numeric descriptions • No numeric meaning, even if shown as code numbers (i.e., 1=category 1)

  17. Attribute Types • Quantitative • Numeric and have mathematical meaning • Serve as measurements or magnitudes of the features they refer • Example: city population

  18. Types of Databases • Relational • Presents data organized in a series of two-dimensional tables, each containing records for one entity

  19. Relational Database • Flexible approach to linkages between records comes closest to modeling the complexity of spatial relationships between objects • Links attributes contained in separate files with a key attribute • The key attribute is usually a non-redundant, unique identification number for each record • The most popular DBMS model for GIS

  20. Data • Most data is input into a database by keycoding • Other data may be obtained through government sources • USGS • US Census • NOAA • State Agencies • Data may also be obtained from other projects

  21. Methods of Spatial Data Entry • Manual “heads-up” digitizing • Scanners • Appropriate for encoding raster data since this is the output format for most scanners. • Problems may include • Scanning unwanted information • Optical distortion • The higher the resolution, the more volume of data produced

  22. Methods of Spatial Data Entry • Electronic Data Transfers • Downloading data from the internet • Downloading data from a GPS unit • Consider when obtaining electronic data • What data is available • Cost • Media • Format

  23. Sources of Electronic Data • United States Geological Survey (USGS) • Digital Line Graphs (DLG) • Digital Elevation Models (DEM) • Digital Orthophoto Quads (DOQ) • United States Census Bureau (USCB) • Topologically Integrated Geographic Encoding Reference System (TIGER) • First comprehensive GIS database at street level for entire U.S. • National Oceanographic and Atmospheric Agency (NOAA) • Satellite and radar images • Bathymetry maps

  24. Other Sources of Spatial Data • Field Data • Global Positioning System (GPS) • Locating position from receiving a signal from orbiting satellites • Manual Input • Remote Sensing • Utilizing satellite images to develop a base view of area of interest

  25. Spatial Data Models

  26. Spatial Databases Real world is infinitely complex Database size is limited Data model converts real world into elements that can be stored in a database

  27. Toward Realism: Layers A GIS breaks down reality into different layers (themes) A layer can be composed of identical entities such the locational information for trees, manholes, buildings, etc. Layers can be overlapped to show the spatial relationship between various entities Layers can also represent different times

  28. Spatial Databases • There are two primary models for spatial data in a GIS • Raster • a data structure or model based on grid cells • Vector • a data structure composed of nodes, vertices, and arcs or connected points

  29. Raster Data Models • Individual cells are used as the building blocks for creating point, line, and polygon entities • Size of the cell very important because it will reflect how entities are displayed (i.e., more specific shape with greater number of cells). • Cell represents some attribute or a reference ID to a table of attributes

  30. Raster Data Model Raster data are ideal for continuous data such as air temperatures, water pH, etc. What happens when two categories occupy the same cell?

  31. Raster Spatial Databases • Single objects displayed by shading individual cells • Linear features displayed by shading a sinuous series of connected cells • Polygon features displayed by shading a group of connected cells • Relief can be shown by assigning a certain value to each selected cell

  32. Raster Data Models • Cells may be homogenous (each cells contains the same feature) or heterogeneous (one cell contains varying features) • Heterogeneity may be resolved by • Simply looking for the presence or absence of features • Looking at the cell center to determine placement of index code • Dominant area analysis • Transition cells • Percentages

  33. Spatial Databases • Advantages of Raster Format • Simple data structure • Compatible with remotely sensed or scanned data • Simple spatial analysis procedures

  34. Spatial Databases • Disadvantages of Raster Format • Requires large storage space • Graphical output may be less pleasing (depending on resolution) • Projection transformations more difficult • Difficult to maintain topology

  35. Vector Spatial Databases Vector data models arose in the early 1960’s in relation to the development of the hierarchical attribute data structure The first generation were simply lines with an arbitrary start and ending point Files would typically consist of a few long lines and many short lines Often referred to as cartographic spaghetti

  36. Spatial Databases • Vector Data Model • Uses two-dimensional Cartesian coordinates to store the shape of a spatial entity. • The point is the basic building block from which all other spatial entities are constructed. • Lines and areas are constructed by connecting a series of points

  37. Vector Data Models • Uses two-dimensional Cartesian coordinates to store the shape of a spatial entity. • The point is the basic building block from which all other spatial entities are constructed. • Lines and areas are constructed by connecting a series of points (nodes and vertices)

  38. Vector Spatial Databases • Advantages • Requires less storage space • Topology easily maintained • Graphical output usually more pleasing

  39. Vector Spatial Databases • Disadvantages • More complex data structure • Not compatible with remotely sensed data • Spatial analysis operations more difficult • Selecting appropriate number of points to display feature • Too few points would compromise shape or spatial properties (area, perimeter, etc.) • Too many points means possible data duplication and increase costs in terms of data storage

  40. Advancing Toward Topology • The arc/node model developed as a “hierarchy” for spatial data • Based on the principle that each type of structure consists of features built upon simpler features • Coordinates make up points • Connected points make lines • Connected lines make polygons • Allows the user to differentiate between points, line, and polygons, but requires maintenance of links between features

  41. Topologic Models • This new model allowed for drawing a line only once • For example: • If two polygons shared a side, that shared side would have to be traced when both polygons were drawn • This would allow for the possibility of gaps or slivers between the individual lines (topological error) • The new system avoided the error because the one arc “told” which polygon was to the left and which polygon was on the right

  42. Topological Terms • Nodes • Where a line begins, ends, or where two lines intersect • Vertices • Where a line bends • Arcs • Line segment between two nodes Nodes Arcs Vertices

  43. 1 x y 2 x y 3 x y 4 x y 5 x y 6 x y 7 x y 8 x y 9 x y 10 x y 11 x y Points File 3 1 2 4 1 5 A Files of arcs by polygons 1 1,2,3,4,5,6,7 2 1,7,8,9,10,11 Arcs File 11 A: 1, 2, Area, Attributes 6 9 7 2 10 8 Topology Example

  44. Topology Example Topology not attained! Sliver Topology is attained!

  45. 0 0 1 0 0 0 0 0 0 0 Real World 0 0 0 1 0 0 0 0 0 0 1 0 0 0 0 Raster Windmills 0 = No Data 1 = Windmill Summary of Data Models Vector Windmills

  46. Summary of Data Models • Raster • Every location given an object • Vector • Every object is given a location

  47. Vectorization Rasterization Data Conversion • Data can be transformed from one of these data models to the other • You always loose some information when going from one data format to the other

  48. Vector Format Raster Format Rasterization Loose topological features Positional accuracy decreases Zygo, Lisa, Baylor University, Lecture Notes, 2002

  49. Raster Format Vector Format Vectorization Features look “jagged” or “pixelated” in the vector representation Topology is created Zygo, Lisa, Baylor University, Lecture Notes, 2002

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