- Processing, analyzing data gathered by airborne and satellite sensors;
Data Values
Digital representation of physical or man made elements in GIS
The data is discrete
Examples are Shapefiles (Esri), Triangulated Irregular Networks (TINs) and AutoCAD (.dxf files)
Vectors are more database oriented and are very good at representing features such as rivers, boundaries and roads
Sources - GPS Surveys, manual digitizing
This model uses grids to store map data. It creates a continuous surface defined by series of discrete grid cells. Each cell has a value that represents attribute data at that location
Cell size determines resolution. The smaller the cell size the better the resolution. For example a 50 meter Landsat image means that each cell is 50 meters on the ground. A smaller cell size means more details
The data is a continuous representation of a study area and is therefore suited to data that is continuous such as terrain, vegetation and natural resources. With raster data you can create atmosphere models, density models and remotely sensed data
Primary sources
Raster:
Vector:
Secondary sources
Raster:
Vector:
The input GIS data that is encoding may consist errors derived from the original data source or introduced during the encoding process
Data editing & verification is in response to the errors that arise during the encoding of spatial & non-spatial data
Data quality is the degree of data excellency that satisfy the given objective
Data quality components are the key elements to explain quality of the data and the results of the data analysis
These components of data quality includes:
Accuracy is the closeness of results of observations to the true values or values accepted as being true
Basically two types of accuracy exist;
Precision refers to the amount of detail that can be distinguished
Precision affects the degree to which a database is suitable for a specific application or level of generalization
Generalization includes elimination & merging of entities, reduction in detail, and aggregation of classes
Its the measure of totality of features or shows how much data is missed from the original
This includes consideration of holes in the data, unclassified areas, and any compilation procedures that may have caused data to be eliminated
The absence of conflicts in a particular database
This typically involves spatial or topological errors/inconsistencies such as incorrect line intersections, duplicate lines or boundaries, or gaps in lines
It determines the faithfulness of the data structure for a data set
Describes the history of a data set
Contains information about how, when, where & who
has build the data set
It contains information which describes;
The 5Ms of GIS
Where are we?
How far is the nearest hospital from the site of the accident?
What is the size of Kenya Tea Development Corporation?
What would happen if . . . A chemical leaked into a Ruiru river?
Where does . . . Flooding occur most in Nyando?
Has . . . Population changed over the last ten years?
Is there a spatial pattern related to . . . Volume rainfall and location of landslide
Simplified representation of a phenomenon or system
Utilizes a set a of transformation tools that derive new geographic datasets from existing datasets
Geo-processing functions take information from existing datasets, apply analytic functions, and write results into new derived datasets.
To find the proper symbology for a map, one has to execute a cartographic data analysis
Data will be of a qualitative or quantitative nature
Information about qualities; information that can't actually be measured. Deals with descriptions. Data can beobserved but not measured. Examples
The application of colour would be the best solution
The colours used have to be of equal visual weight or brightness
Each of the elements should get equal attention, and none should stand out above the others
Deals with numbers. Data which can be measured and ranked. Examples
We use two types of quantitative data in the realm of GIS
Absolute quantitative data describe intrinsic characteristic of the feature being measured
To map absolute quantitative data the symbols used should have quantitative perception properties
Symbols varying in size with varying in quantity
Relative quantitative data is data related to geographic distributions
The size
of the geographic unit will influence the perceptional properties too much
The numbers now have a clear relation with the area they represent
Value(brightness) is the best method of mapping Relative quantitative data
Queries about this Lesson, please send them to:
*References*
- Geographic Information System Basics, 2012
J.E.Campbell & M. Shin
- Fundamentals of GIS, 2017
Girmay Kindaya
- GIS Applications for Water, Wastewater, and Stormwater Systems, 2005
U.M. Shamsi
- Analytical and Computer Cartography, 2nd ed.
Keith C. Claike
- Geographic Information Systems: The Microcomputer and Modern Cartography, 1st ed.
Fraser Taylor
Courtesy of Open School