Friday, May 5, 2017

GIS 1 Lab 3: Vector Analysis with ArcGIS

Goal: The primary goal of the lab was to determine suitable habitat for bears in Marquette County, Michigan, using various geoprocessing tools.

Methods: Detailed methods are provided under each heading.

Objective One: Map a GPS MS Excel file of Black Bear Locations in Central Marquette County, Michigan.
The lab3.zip file was downloaded and placed in my lab3 folder and this information was added to the map. The bear locations were located in a non-spatial database and needed to be added as an event theme. Once this was completed I exported them to place them in my geodatabase and saved the event theme as bear_locations.

Objective Two: Determine Bear Habitat.

All feature classes in the bear_management_area feature class were added to a data frame. Bear habitat was determined by performing a spatial join operation by using the bear_locations and land_cover feature classes; this new feature class was named bear_cover. I then found the number of bears in each habitat by selecting attributes using the Minor_Type field. The results were used to create a layer called top_bear_habitat_type; the three types of cover were evergreen forest land, forested wetlands, and mixed forest land types.

Objective Three: Determine Bear Locations Within 500 meters of a Stream.

Bear_locations was intersected with the results of a 500 meter stream buffer which was dissolved (named dissolved_500m_stream_buffer), which resulted in 49 out of 68 (72%) of the bears were located within 500 meters of streams in area of interest. Biologists consider any number above 30% to be significant.

Objective Four: Determine Suitable Bear Habitat.

For this objective, I performed an intersection of top_bear_habitat_type and dissolved_500m_stream_buffer and then ran dissolve, which resulted in suitable_bear_habitat.

Objective Five: Suitable Bear Habitat in DNR Managed Land.

I determined the DNR managed land area by performing a clip using the dnr_mgmt and study_area feature classes to eliminate areas that the DNR does not control. An intersection was then performed to determine the suitable bear habitat under DNR control. A dissolve was then performed on the resultant suitable_bear_habitat_dnr_management_area, which I named dissolved_suitable_bear_habitat_dnr_management_area.

Objective Six: Final Determination of  Ideal Bear Management Areas.

The land_cover feature class was used and a select by attributes query (by Major_Type field) was performed to determine urban or built-up areas. The result was used to create a layer called urban_or_built_up_areas. A buffer was performed on this layer which resulted in urban_or_built_up_areas_5k_buffer, which was then dissolved. The resultant dissolved layer (dissolved_urban_or_built_up_areas_5k_buffer) was then intersected with the dissolved_suitable_bear_habitat_dnr_management_area. An erase was then performed on this result which enabled me to find the final_ideal_bear_habitat_area.

Objective Seven: Generate a Map and Data Flow Model. 

The final map was created in ArcGIS with a legend, north arrow, study area insert, source and author information and scale added to conform with cartographic methodologies. A data flow chart was created using MS Visio.

Objective Eight: Introductory Python Scripting.


The purpose of this objective was exposure to Python scripting using simple commands in preparation for more advanced GIS courses. A buffer analysis was performed with the arcpy.Buffer_analysis command. An additional buffer was then run on the streams feature class with a distance of one kilometer. The results of this buffer were then intersected with suitable land use with the command arcpy.Intersect_analysis ([“streams_buf”, suitable_bear_habitat”}, “land_stream”). An erase of the buffer of urban areas was then performed with the command arcpy.Erase_analysis(suitable_bear_habitat”, Urban_area_buff”, suitable_hab_URBAN”). The results can be seen in the last diagram in the results section.  


Results:

The resultant map depicts the areas that the DNR considers ideal bear habitat; it is habitat that contains streams and the proper landcover and is located within DNR management boundaries. The area that fits the ideal bear habitat is quite small; most bears are found on land not controlled by the DNR which could potentially limit the effectiveness of governmental management of bear management.The data flow model outlines the steps that I took in determining ideal bear habitat per DNR guidelines set for the simulated project. The Python script lists the steps and commands used in the simple introductory Python objective.






Sources
All data were downloaded from the State of Michigan Open GIS Data Site at http://gis.michigan.opendata.arcgis.com
Michigan Center for Geographic Information at https://www.mcgi.state.mi.us/mgdl/



Friday, April 7, 2017

GIS 1 Lab 2:  Downloading GIS Data

  
Goal: The lab had three primary goals. The first goal of this lab was to download two datasets from the U.S. Census Bureau which were then used to create two maps in ArcMap. The second goal was to create a web map feature service with ArcGIS online and then produce an interactive online map. The third goal was to complete a blog post with the information produced.

Methods: Detailed methods are provided under each heading.

Objective One: Download 2010 Census Data.
The US Census Bureau Fact Finder website was used to find population totals in Wisconsin counties. In Advanced Search, under the Topics option, People, Basic Count/Estimate, and then population totals were chosen in that order. Under the Geographies option, County 050, Wisconsin, and then All Counties within Wisconsin were chosen in that order. This data was then downloaded to the lab2 folder as a zip file then modified after being opened. The second row in the data was deleted as it would count as a record and periods were replaced as they violated the naming rules in ArcMap.

Objective Two: Download the Shapefile for the WI census data.

The map tab was selected under the Geographies option and shapefile was then downloaded as a zip file which was also placed in the lab2 folder.

Objective Three: Join the data together.

The shapefile was added to a new map in ArcMap and the Layers data frame was then renamed Population. The 050_00 shapefile was then joined with the Excel table using the common field GEO_ID.

Objective Four: Map the data.   

The 05_00 shapefile symbology was changed by selecting the shapefile’s properties, symbology, quantities, then graduated colors with D001_new as the value. The D001_new field had to be created as it did not initially show up as an option due its data being imported as a string field type. The number of classes was reduced to four for simplicity and ease of use and the classification method was change to quantile.  

Objective Five: Map a variable of your choice.

The US Census Bureau Fact Finder website was again accessed for information on the number of housing units in Wisconsin by counties. In Advance Search, under the Topics option, Housing, Basic Count/Estimate, and then Housing Units were chosen in that order. This search resulted in the 2010 SF1 100% Data information which was downloaded as a zip file and added to lab2. The same steps were used as outlined in objectives one, three, and four substituting Population with Housing Units; the same shapefile could be used that previously downloaded in objective two.

Objective Six: Build a Layout

 The projection of the data frames was changed to NAD_1983_Wisconsin_TM, which is more accurate for this lab’s display purposes. A north arrow was added to both maps, along with legend, scale, author’s name, date, titles, source of map data, and basemaps.

Objective Seven: Produce a WebMap

A new map file was saved named WebMap_Lab2 after the Housing Units data frame was deleted, along with the basemap and standalone table from the remaining Population layer. ArcGIS Online was accessed using the UWEC account and a feature serve was created after updating the summary, description, and tags fields. The service was then published and a web map was created  after configuring the pop-up to only show population and county name. The title, summary, and tags for the map were then updated.

Results





The maps of population and total number of housing units by county shows a general spatial patter with higher population counties having a larger number of available housing units. South-Eastern Wisconsin is more heavily populated and has more available housing than most of the northern half of Wisconsin, excepting urban centers such as Eau Claire in Eau Claire County and Wausau in Marathon County. There are a few exceptions, however. Ashland, Vilas, and Oneida counties all have more housing units than would be expected given the populations of these counties. A possible explanation is that this represents homes for rent as northern Wisconsin is a popular tourist destination. The same explanation may hold for Door County, which is another popular tourist location.  

Sources
United States Census Bureau American Fact Finder. (2015). [online] Retrieved from  https://factfinder.census.gov/faces/nav/jsf/pages/searchresults.xhtml?refresh=t [Accessed: April 7, 2017].


ESRI, HERE, DeLorme, MapmyIndia, OpenStreetMap contributors, and the GIS user community.

Saturday, March 11, 2017

GIS 1 Lab 1: Base Data


Background: The focus of Lab 1 was to act as an intern for Clear Vision Eau Claire developing a basic report for the Eau Claire Confluence Project. The Confluence Project is a joint public-private between the University of Wisconsin Eau Claire and the Eau Claire Regional Arts Center (Haymarket, LLC) and will consist of a new community arts center, student housing, and retail commercial sites in downtown Eau Claire.
Goal: The focus of this lab project was to become more familiar with spatial data sets of the area where the Confluence Project will be built in the context of public land management, land administration. These spatial data sets were then used to develop six maps of the proposed location.
Methods: I read the various documents provided by the instructor and utilized ArcGIS to examine spatial data of the proposed Confluence Project site using the included feature datasets and feature classes. The result was six maps portraying spatial relationships between several data sets and the proposed location of the Confluence Project. More detail is provided under each objective header.
Objective One: Explore various data sets for the City and County of Eau Claire.
During this lab objective, the PARCEL_FEATURES, TRANPORTATION, DEVELOPMENT, POLITICAL_FEATURES, and CENSUS_FEATURES (all located in the feature datasets were examined individually to become more familiar with the information held in each. During this initial objective, I read the zoning_definitions.pdf to understand what city land areas were used for by how they were defined by zoning codes. I also read the legal description of the locations of the land parcels where the Confluence Project will be built.
Objective Two: Digitize the site for the proposed Confluence Project.
Digitizing the Confluence Project site was the next objective for this lab project. I started by creating a new geodatabase titled EC_Confluence and created a new feature class in the geodatabase titled pro_site (proposed site). To import the parameters of the Eau Claire County Coordinate System I clicked the CENSUS_FEATURES feature dataset then BlockGroups and then add. I then added the pro_site feature class the map, World Imagery from Basemaps, the parcel_area (used in conjunction with LegalOutline.jpg to find location of proposed site on my map), and then digitized the proposed site using the editor toolbar . A high contrast purple was used to easily see the proposed site areas.
Objective Three: Learn about the Public Land Survey System.
Both the 2009-7-13 and the City of Eau Claire geodatabases were used during this objective by adding the PLSS_Townships feature datasets from each. These were added to a new blank map that also had a Basemaps imagery layer added. The townships were then numbered and a stretched color scheme was used to identify patterns in the sections. I then used the identify button to examine the attributes of the section where the proposed Confluence Project site is located after adding the PLSS_Quarter_Quarter_sections and PLSS_qq layers from the two geodatabases to the map. This data provided me with the information needed to legally define the proposed site of the confluence project (Hemstead, 2015).
Objective Four: Examining legal information regarding the proposed site.
 By using the City of Eau Claire’s GIS website I was able to find more information about the parcel, including a summarized legal description. I then viewed the legaldescription.pdf which allowed me to view other information including the parcel number, adjacent streets, and ward location (Legal Description, 2014).
Objective Five: Build a map of all relevant base data for the Confluence Project. 
During the final objective, I created six maps with each displaying relevant spatial data concerning the Confluence Project. Each includes a map scale in miles, a north arrow, legend and a title describing what is represented in each map.
Civil Divisions Map I added the Civil_Divisions located under POLITICAL_FEATURES and changed the symbology and transparency to easily see the divisions and the map underneath. The map was of a smaller scale so a callout was added to identify the location of the proposed site.
Census Boundaries Map The BlockGroups and TractsGroup feature classes, under CENSUS_FEATURES, were added showing population densities in the area around the proposed site of the Confluence Project. I changed the name of BlockGroups to population density and changed the numeric values of density for simplicity.
PLSS Features Map The PLSS_qq data was used to show the parcel division of the areas around the proposed site of the Confluence Project.
EC City Parcel Data Map This map was developed using the Parcel_Area, Water, and Centerlines_3Mile feature classes from the City of Eau Claire geodatabase. I added a transparency effect to the water and highlighted the parcel areas and centerlines to provide a high contrast, easy to read map.
Zoning Map This map added the zoning_areas and Centerlines_3Mile feature classes located in the Eau Claire City geodatabase. The zoning classes were simplified for presentation, using the symbology menu, into six classes based on type, such as residential and industrial and each were given a color based on their unique values.
Voting Districts Map The VotingWards2011 feature class from the City of Eau Claire geodatabase was added to the map, representing voting districts in the city. A halo effect was added to the numbers for them to be more easily discernable.




Results
The results indicate that
-the site of the Confluence Project is located in the City of Eau Claire
-the site is located in a densely populated area; density is between 3,600 and 5,000 people per square mile
-the site is located in a central business district
-the site located in Ward 31
-the site is at the confluence of two rivers in downtown Eau Claire
-the site is located in a central, scenic, and readily accesible location.
References
Hemstead, B. (2015). Plss-legal descriptions plss. [online] Retrieved from http.//www.sco.wic.edu/plss/legal-descriptions.heml [Accessed: March 10 2017].
Legal Description. (2014). [online] Retrieved from file:///Q:/StudentCoursework/Strand/GEOG.335.001.2175/DROSTEJ9710/lab1/legaldescription.pdf [Accessed: March 10 2017].
Lippelt, I. (2002). Understanding wisconsin township, range, and section land descriptions. (online pdf) Madison, WI: pp. 1-4. Retrieved from: file:///Q:/StudentCoursework/Strand/GEOG.335.001.2175/DROSTEJ9710/lab1/PLSS_WI.pdf [Accessed: 7 Mar 2017].
Mapping Services. (n.d.) Retrieved from: http://www.eauclairewi.gov/departments/public-works/engineering/mapping-services [Accessed: March 10 2017].
Zoning Districts and Maps. (2011). [Online] Retrieved from:  file:///Q:/StudentCoursework/Strand/GEOG.335.001.2175/DROSTEJ9710/lab1/Zoning_definitions.pdf [Accessed: March 10 2017].  
Sources 
City of Eau Claire and Eau Claire County 2013