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Applied Cartography and Introduction to GIS GEOG 2017 EL

Applied Cartography and Introduction to GIS GEOG 2017 EL. Lecture-6 Chapters 11 and 12. Vector Data Analysis. Vector data analysis uses the geometric objects of point, line, and polygon.

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Applied Cartography and Introduction to GIS GEOG 2017 EL

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  1. Applied Cartography and Introduction to GISGEOG 2017 EL Lecture-6 Chapters 11 and 12

  2. Vector Data Analysis • Vector data analysis uses the geometric objects of point, line, and polygon. • The accuracy of analysis results depends on the accuracy of these objects in terms of location and shape. • Topology can also be a factor for some vector data analyses such as buffering and overlay.

  3. Buffering • Based on the concept of proximity, buffering creates two areas: one area that is within a specified distance of select features and the other area that is beyond. • The area that is within the specified distance is called the buffer zone. • There are several variations in buffering. The buffer distance can vary according to the values of a given field. Buffering around line features can be on either the left side or the right side of the line feature. Boundaries of buffer zones may remain intact so that each buffer zone is a separate polygon.

  4. Buffering

  5. Buffer Distances

  6. Buffering with Rings

  7. Buffer Zones

  8. Overlay • An overlayoperationcombines the geometries and attributes of two feature layers to create the output. • The geometry of the output represents the geometric intersection of features from the input layers. • Each feature on the output contains a combination of attributes from the input layers, and this combination differs from its neighbors.

  9. Overlay

  10. Feature Type and Overlay Overlay operations can be classified by feature type into point-in-polygon, line-in-polygon, and polygon-on-polygon.

  11. Point-in-Polygon Overlay

  12. Line-in-Polygon Overlay

  13. Polygon-on-Polygon Overlay

  14. Overlay Methods • All overlay methods are based on the Boolean connectors of AND, OR, and XOR. • An overlay operation is called Intersect if it uses the AND connector. • An overlay operation is called Union if it uses the OR connector. • An overlay operation that uses the XOR connector is called Symmetrical Difference or Difference.

  15. Union Method

  16. Intersect Method

  17. Symmetric Difference Method

  18. Slivers • A common error from overlaying polygon layers is slivers, very small polygons along correlated or shared boundary lines of the input layers. • To remove slivers, ArcGIS uses the cluster tolerance, whichforces points and lines to be snapped together if they fall within the specified distance.

  19. Slivers

  20. Cluster Tolerance

  21. Pattern Analysis • Pattern analysis refers to the use of quantitative methods for describing and analyzing the distribution pattern of spatial features. • At the general level, a pattern analysis can reveal if a distribution pattern is random, dispersed, or clustered. • At the local level, a pattern analysis can detect if a distribution pattern contains local clusters of high or low values.

  22. Point Pattern Analysis Nearest neighbor analysis uses the distance between each point and its closest neighboring point in a layer to determine if the point pattern is random, regular, or clustered.

  23. Point Pattern

  24. Point Pattern

  25. Feature Manipulation • Tools are available in a GIS package for manipulating and managing maps in a database. • These tools include Dissolve, Clip, Append, Select, Eliminate, Update, Erase, and Split.

  26. Dissolve Dissolve removes boundaries of polygons that have the same attribute value in (a) and creates a simplified layer (b).

  27. Clip Clip creates an output that contains only those features of the input layer that fall within the area extent of the clip layer. (The dashed lines are for illustration only; they are not part of the clip layer.)

  28. Append Append pieces together two adjacent layers into a single layer but does not remove the shared boundary between the layers.

  29. Select Select creates a new layer (b) with selected features from the input layer (a).

  30. Eliminate Eliminate removes some small slivers along the top boundary (A).

  31. Update Update replaces the input layer with the update layer and its features. (The dashed lines are for illustration only; they are not part of the update layer.)

  32. Erase Erase removes features from the input layer that fall within the area extent of the erase layer. (The dashed lines are for illustration only; they are not part of the erase layer.)

  33. Split Split uses the geometry of the split layer to divide the input layer into four separate layers.

  34. Raster Data Analysis • Raster data analysis is based on cells and rasters. • Raster data analysis can be performed at the level of individual cells, or groups of cells, or cells within an entire raster. • Some raster data operations use a single raster; others use two or more rasters. • Raster data analysis also depends on the type of cell value (numeric or categorical values).

  35. Raster Analysis Environment The analysis environment refers to the area for analysis and the output cell size.

  36. Local Operations: Single Raster Given a single raster as the input, a local operation computes each cell value in the output raster as a mathematical function of the cell value in the input raster.

  37. Local Operations

  38. Local Operation A local operation can convert a slope raster from percent (a) to degrees (b).

  39. Local Operations: Multiple Rasters • A common term for local operations with multiple input rasters is map algebra, a term that refers to algebraic operations with raster map layers. • Besides mathematical functions that can be used on individual rasters, other measures that are based on the cell values or their frequencies in the input rasters can also be derived and stored on the output raster of a local operation with multiple rasters.

  40. Local Operations The cell value in (d) is the mean calculated from three input rasters (a, b, and c) in a local operation. The shaded cells have no data.

  41. Neighborhood Operations • A neighborhood operationinvolves a focal cell and a set of its surrounding cells. The surrounding cells are chosen for their distance and/or directional relationship to the focal cell. • Common neighborhoods include rectangles, circles, annuluses, and wedges.

  42. Neighborhood Types Four common neighborhood types: rectangle (a), circle (b), annulus (c), and wedge (d). The cell marked with an x is the focal cell.

  43. Neighborhood Means The cell values in (b) are the neighborhood means of the shaded cells in (a) using a 3 x 3 neighborhood. For example, 1.56 in the output raster is calculated from (1 +2 +2 +1 +2 +2 +1 +2 +1) / 9.

  44. Zonal Operations • A zonal operationworks with groups of cells of same values or like features. These groups are called zones. Zones may be contiguous or noncontiguous. • A zonal operation may work with a single raster or two rasters. • Given a single input raster, zonal operations measure the geometry of each zone in the raster, such as area, perimeter, thickness, and centroid. • Given two rasters in a zonal operation, one input raster and one zonal raster, a zonal operation produces an output raster, which summarizes the cell values in the input raster for each zone in the zonal raster.

  45. Zonal Operations Thickness and centroid for two large watersheds (zones). Area is measured in square kilometers, and perimeter and thickness are measured in kilometers. The centroid of each zone is marked with an x.

  46. Physical Distance Measure Operations • The physical distancemeasures the straight-line or euclidean distance. • Physical distance measure operationscalculate straight-line distances away from cells designated as the source cells.

  47. Straight Line

  48. Allocation and Direction • Allocation produces a raster in which the cell value corresponds to the closest source cell for the cell. • Direction produces a raster in which the cell value corresponds to the direction in degrees that the cell is from the closest source cell.

  49. Based on the source cells denoted as 1 and 2, (a) shows the physical distance measures in cell units from each cell to the closest source cell; (b) shows the allocation of each cell to the closest source cell; and (c) shows the direction in degrees from each cell to the closest source cell. The cell in a dark shade (row 3, column 3) has the same distance to both source cells. Therefore, the cell can be allocated to either source cell. The direction of 2430 is to the source cell 1.

  50. Other Raster Data Operations • Operations for raster data management include Clip and Mosaic. • Operations for raster data extraction include use of a data set, a graphic object, or a query expression to create a new raster by extracting data from an existing raster. • Operations for raster data generalization include Aggregate and RegionGroup.

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