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Working with Raster Grids and Map Algebra. Katherine Paybins, USGS. Basic Ingredien ts. Grid of data, such as the National Land Cover dataset, from 2006, and a point, line, or polygon feature dataset. Area of interest, such as the Coterminous US, or the boundary of WV, or drainage areas in WV
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Working with Raster Grids and Map Algebra Katherine Paybins, USGS
Basic Ingredients • Grid of data, such as the National Land Cover dataset, from 2006, and a point, line, or polygon feature dataset. • Area of interest, such as the Coterminous US, or the boundary of WV, or drainage areas in WV • Topic of interest, such as coincidence of dam locations with land cover that is related, like water bodies, wetlands, and emergent woody wetlands. • Well-defined scale of interest.
Area and topic of interest, and scale • NLCD data is available for the NE, NW, SE, and SW, from 2006 imagery. • The grid cells are 30X30 meters. • The land use or cover is classified from LANDSAT satellite images • National Inventory of Dam locations is a point coverage of all types of dams, ranging from < 20 cubic feet of storage, up to >2.5 million cubic feet of storage.
Step one • Increase processing speed by zeroing in on your area of interest. • Select a processing area in the options window • open the toolbox, and select raster processing-clip • Set the new extent and the name of the new grid
Next- select the type of land cover you are interested in • In the toolbox, open the Spatial Analyst tools, and then the Extraction toolset- you want to extract by attributes of the raster
Now, convert point coverage to a grid of 1 = dam, nodata = nodam • Open the conversion tools in the ArcToolbox • Open the “to Raster” directory • Choose feature to Raster • Make sure to reset the cell size to equal the cell size you wish to compare the data to, so for this example, use 30X30 meters.
Some data analysis • The WV_dam_grd has 645 dam locations cells = 1 in the grid • The wv_water_dam combination results in values of 12 and 91. In other words, the addition of the two grids found no dams coincident with emergent woody wetlands • Additionally, the raster combination of water and dams has only 284 cells with data, so we can tell from this analysis that 2/3 of the dam locations are not coincident with the NLCD water or wetlands designation
Other possible grid combinations for analysis • Extract urban areas from the NLCD or from USGS DRGs in raster format using the values in the raster.vat to produce an impervious surface raster • Calculate change in forest or farm areas using multiple years of NLCD data • Compare multiple years of land cover data, and animate in ArcScene the change of of land cover over time.
considerations • Know your scale– a 30 meter grid is admittedly coarse for the analysis within, for instance a county. It is well-suited for state-wide or US-wide analyses. • A 30 meter grid of land cover may be your only resource other than orthoimages, though Aaron Maxwell earlier illustrated that efforts are ongoing to improve land cover resolution • Some ground-truthing will add certainty in your results, • Use the Xtools Pro toolbar function to see a photo of the area of concern (Go to Google Earth function)Slide 21 • The NLCD data are good for more than just an interesting and pretty background