Thematic Mapping using GrassGIS

From CUOSGwiki
Jump to navigationJump to search

Purpose

The purpose of this tutorial will be to use multiple tools in Grass GIS that will manipulate vector data. The example to be used in the tutorial will be the analysis of Ottawa City neighbourhoods to determine where would be the most appropriate place to live as a student attending Carleton University. This tutorial will use the following tools:

Extract- selection by attributes, Patch- patch vector layers together, Select- selection by location,

Overlay- clip tool, and Buffer- generate buffer

There will also be some coding using the command console for tools that are not included in the WxGUI.

This is a basic introduction to thematic mapping using the Grass GIS software vector analysis capabilities.

Introduction

The purpose of this tutorial is to show how to represent and visually understand spatial vector data using thematic mapping. This tutorial addresses a problem that many individuals have when looking for new housing. The issue is of finding the most appropriate area to live in based on a multitude of factors. This tutorial focuses on Carleton University students in particular and the confusion or misinformation in choosing an appropriate place to live in Ottawa off campus. This issue is addressed through the use of thematic mapping and criteria outlined by the Carleton University Off-Campus Housing Office. For the sake of time there are only three main factors looked at when looking for where to live, they are: Rent price, Crime/safety, and Proximity to the university.

This tutorial will show how to add and manipulate relevant spatial data in order to make thematic maps representing the criteria students are looking for. The tutorial can act as a precursor to a tool that can be implemented by Carleton University to develop a thematic map that students without the GIS knowledge to use. There is a lot of potential for this to be used for more than just students as well since it helps people find places to look for housing based on ideal criteria.

The data used for this tutorial are available on the Carleton University library website as well as through the City of Ottawa, Ottawa Neighbourhood Study, OCTranso, and Ottawa Police websites.

File.png

Figure 1: The study area of the tutorial central to Carleton University.

Software

Grass GIS

Note: Grass GIS operates on Mac OS and Linux properly, if using Microsoft it is recommended to use a Linux virtual machine.

Data

Data Identification

The data to be used in the tutorial was determined through the identification of criteria and research into the availability of the data required. Carleton University library had all of the data compiled from their original sources. The data available is relatively recent in terms of the last studies conducted (Census) and explains the criteria we are looking for. The data sets included are as follows:

1. Ottawa Thematic Data

2. Ottawa Police Crime Statistics

3. OC Trasnpo 2014 Route Data

4. Ottawa Neighbourhood Study (Both shape files and statistical data)


Data Links and Explanations

1. Ottawa Thematic Data

This data package includes most of the thematic data in Ottawa such as city boundaries, roads, rivers, and parks for example. The shapefiles used from this dataset in this tutorial are Roads, Rivers, Railways, Parkland, Police/Fire/Ambulance, and Hospitals. This will let us how areas of the city important to people looking for housing such as distance to hospitals.

2. Ottawa Police Service

This data package includes crime statistics by Ottawa City Ward. The file we are interested for this tutorial is the 2013 shapefile since it is the most recent compilation of Ottawa crime. The file will allow us to determine the average total crime and solving rate in order to rate safety on areas based on crimes committed.

3. OC Transpo Transit Routes

This data package includes the bus routes around Ottawa. The shapefile of interest it the 2014 Transit routes since it is the most recent addition to the file. This will allow is to determine which bus routes are important to the project.

4. Ottawa Neighbourhood Study

This data packages divides the City of Ottawa into the different neighbourhoods that will be used as the locations for potential residency. This is because the financial information for these different neighbourhoods is readily available to be added to the shapefile.

*Data packages are available on the Carleton University Library website to Carleton students or alumni.

**Files are zipped, an unzipping tool is recommended.


Tutorial

1. Setting up Grass GIS Directory and Location

The following steps help explain how to choose a Grass GIS, location, and set projection.

1. Create a new file and connect to it through the browse option to make it your directory. Create another file in your directory and name it something relevant to the project, this will become the location folder. Place all of the data into the location folder so we can draw upon it later. Use PERMANENT as the default mapset.

F.png

Figure 2: Grass GIS start page where you select directory and location.

2. Set the projection for your newly created location folder to UTM zone 18, and the NAD 83 datum set for this project since that covers the City of Ottawa.

Fff.png Poo.png

Figure 3: (Top) choose the set projections from a list. (Bottom) a picture of chosen projections.

2. Adding Layers to Project

The following images help explain how to add the vector layer data that will be used in the tutorial.

1. Click on the file tab and scroll down to Import vector data, then choose Common imports format [r.in.gdal] as seen in Figure 4.

Sdfsdf.png

Figure 4: How to get to the import vector data tool in Grass GIS.

2. Choose the Directory option under source type. Source type choose ESRI Shapefile and search for your layer folder in the directory. Next choose the layers you want to import to the project as seen in Figure 5.

Ffss.png

Figure 5: How to select layers to import into Grass GIS.

Note: Refer to the Data section of this wiki page to see which layers are to be added for this tutorial.

3. Isolating the Study Area (Carleton)

This section will show how to isolate Carleton University into its own layer since it will be called upon in later steps.

1.To isolate Carleton we will use the Select by attributes tool or v.extract command this can be found in the vector tab as shown in Figure 6.

Hhrr.png

Figure 6: How to access the Selection by attributes tool in the Grass GIS GUI.

2. once in the Select by attributes window select the ONSNeighborhoods2012_SmallFile layer as the vector map, then select the tab that says Selection and type in the SQL command name is 'Carleton University' . This will select the Carleton University neighbourhood and extract it into a separate layer to be used later. This step van be seen in Figure 7.

Lowr.png

Figure 7: How to write the SQL statement required to extract Carleton University into a separate layer.

4. Isolating the Bus Routes that Service Carleton University

For this step we will be using the same tool as in the previous step, Select by attributes. We use this instead of other selection tools because the bus routes are not one continuous line and portions will be left out otherwise. For this step we need to repeat the Select by attributes process for the following transit routes: OTrain, #7, #4, and #111. Figures 8 and 9 will show the steps.

1. Access the Select by attributes window as shown in the previous step and select the TransitRoutes_2014 layer as the vector map.

Hhrrtty.png

Figure 8: Shows which layer to select for the vector map.

2. Go to the tab called Selection and write RTE_NUM is '007' as the SQL statement. This is extract the #7 bus route as a separate layer. Repeat for all of the transit routes listed above.

Dumbbum.png

Figure 9: The SQL statement needed for the extraction of transit routes.

5. Merging the transit routes into one layer

This step will merge the bus routes into one layer, this will be beneficial in saving time when querying the transit routes in later steps.

1. To merge the different transit routes into one layer we will use the Patch tool. This can be found in the vector tab as shown in Figure 10.

Step6.png

Figure 10: How to select the Patch tool in the Grass GUI.

2. Once in the Patch window, select the transit layers created in the previous step as the input vector maps as seen in Figure 11. Name the output vector map CU_Bus_Routes.

Step6.1.png

Figure 11: Shows how to operate the Patch tool.

6. Selection of Neighbourhoods Serviced by Transit that Connects to Carleton University

This step will isolate the neighbourhoods that are directly serviced by transit that connects directly to Carleton University. This will be the main focus on choosing where to live since taking more than one bus or train can be a hassle and undesirable.

1. Click in the vector tab in the Grass GUI and scroll down to Feature selectionand choose the tool labeled Select by another map or v.select. This tool will query two vector maps together to produce a layer based on the criteria chosen. Figure 12 shows how to get to this tool.

Step7.png

Figure 12: How to navigate the Grass GUI to get to Select by another map tool.

2. Once in the Select by another map window, input the information shown in Figure 13 into the different options. The intersects operator will select neighbourhoods that intersect with the transit routes that connect to Carleton University.

Step7.1.png

Figure 13: Inputs needed in the selection tool needed to extract the neighbourhoods 'attached' to Carleton University via transit.

7. Overlay the Crime Wards Layer by the Important Neighbourhoods Layer

This step will overlay the information contained in the crime_wards layer into the newly created important neighbourhoods layer from the previous step. The reason why this is necessary is because the project is using Ottawa's neighbourhoods instead of Ottawa's wards as places to live and the crime data is only available by ward. This will overlay the wards into the different neighbourhoods being looked at.

1. Click on the vector tab and scroll down to Overlay vector maps in the Grass GUI and select the Overlay vector maps tool as seen in Figure 14.

Step8.png

Figure 14: Shows the path to get to the overlay tool in the Grass GIS GUI.

2. Input the information seen in Figure 15 into the Overlay window and choose the and operator. This operator will only choose areas that overlap (i.e where layer 1 AND layer 2 meet).

Step8.1.png

Figure 15. Shows the input information for the overlay tool.

9. Creating a Chloropleth Map for Crime

This step will create a thematic choloropleth map using the total number of crimes committed in each neighbourhood. This will be shown in a colour range from red (Lowest) - orange (Middle) - Brown (High) and all the colours in between those three main colours. This step will also use the Grass GIS command console since the function is not in the Grass GIS GUI.

1. On the Layer Manager window, click the Command Console tab and type in the following code in order to create the chloropleth map.

d.vect.thematic -l map=Crime_In_Imprtnt column= a_total_num algorithm=int nclasses=10 colors=255:0:0,225:100:50,200:75:010,175:0:0,150:0:0, 125:0:0,100:0:0,75:0:0,50:0:0,100:50:0

This can also be seen in Figure 16 below.

Step9.png

Figure 16: How to create a chloropleth map in the Grass GIS Command Console.

Note: There is an explanation of all the elements put into the d.vect.thematic command on the Grass GIS help website for further understanding.

Placing Buffers Around Carleton University and the Transit Routes

This step will create buffers around Carleton University and the selected transit routes in order to simulate ideally how close to Carleton University students would live and walk to school and ideally how far away from one of the transit routes students would live away. This project uses 1 km as the ideal distance students would walk to school from home, and 500 m as the ideal distance to live away from a transit route that connects to Carleton University.

1. Click the Vector tab and scroll down to the Buffer Vectors tool or v.buffer command as seen in Figure 17.

Step10.png

Figure 17: Shows how to get to the Buffer tool in the Grass GIS GUI.

2. select the vector map to put the buffer around and name it something relevant to the project. This can be seen in Figure 18.

Step10.1.png

Figure 18: Shows how to select the vector map and name the output vector map.

3. Click on the Distance tab and input the distance of 1000 m (1 km) (the map units are in meters since we are projected in UMT coordinates). This will place a 1 km buffer around Carleton University as seen in Figure 19. Once the layer is created make the layer fill transparent so we can see only the outline. This can be done by right clicking the layer in the Layer Manager and clicking on properties/colours then clicking the box that says transparent beside the layer fill colour.

Step10.2.png

Figure 19: Shows where to input the distance information for the buffer.

4. Repeat the same process but for the bus routes that were extracted in step 6 and use a distance of 500 m.


Extract the Experimental Farm

This step will extract the Experimental Farm neighbourhood that will be used in the next step. This process is exactly like step 4 except using the neighbourhood name of Civic Hospital - Central Park instead of Carleton University since we are interested in that area.

1. Follow and repeat step 4 using the different neighbourhood name.


Overlay the Experimental Farm Layer and the 1 km Buffer Layer

This step will isolate the portion of the Experimental Farm and the 1 km ideal walking distance buffer around Carleton University that overlap. This is to create a blocked out area that shows that there is no actual housing there and is a portion of a large park. This step is exactly like step 8 using different layers.

1. Follow and repeat step 8 using the two different layers. Change the layer fill colour to black once it is created by right clicking it in the Layer Manager window and clicking properties/colour and the layer fill colour box.


Adding a New Column and Data in the Important Neighbourhoods Attribute Table

This step will show you how to add data to the attribute table of a vector map. This project will use the Important neighbourhoods vector map created in step 7 to add average rent prices per neighbourhood.

1. Click in the Database tab in the Grass GIS GUI and scroll down to Vector database connections and select the Add columns tool as seen in Figure 20.

Step13.png

Figure 20: Shows how to get to he add columns tool in the Grass GIS GUI.

2. Once in the Add column window select the vector map you want to add data to. In this case our Important neighbourhoods layer. Then input the title of the new column, call this Avg_Rent and put INTafter so it is a column that will use integers. This can be seen in Figure 21.

Step13.1.png

Figure 21: Shows the input information to create an average rent column in the Important neighbourhoods vector map.

3. Go to the Ottawa Neighbourhood Study website and look up each of the neighbourhoods in the Important neighbourhoods vector map and find the average rent. Then go to the newly created average rent column and add the average rent to that column.


Creating a Chloropleth Map for Average Rent

Because Grass GIS 7.0 does not have a command that will allow it to create a graduated symbols we will create a colour thematic map of average rent like we did for crime in step 9. This will be done using the d.vect.thematic command like in step 9 but will call upon the Important neighbourhoods vector map and use different colours.

1. Input the following command into the Command Console:

d.vect.thematic -l map=Important_Hoods column=Avg__Rent algorithm=int nclasses=8 colors=000:000:255,000:050:255,000:075:255, 000:100:255,000:125:255,000:150:255,000:175:255,000:200:255

A new layer showing the average rents should appear and move from dark blue (Lower rent) to light blue (Higher rent).


Creating the Final Maps

The creation of final maps is a task that cannot be completed on this version of Grass GIS. The Cartographic Compser in this version is buggy and will not create any useable maps. To overcome this I have included two screenshots shown in Figures 22 and 23 below that show the crime chloropleth and average rent chloropleth maps. From these images and the information provided above we can analyze the two maps and make decisions on where the best neighbourhoods to live in Ottawa are as students attending Carleton University. The ability to add in new vector map layers such as hospitals or city parks might influence choice and therefore it is encouraged that the user inputs whatever information they deem important to their decision.

Crimemap.png

Figure 22: Chloropleth map of total crime in the important neighbourhoods.

Rentmap.png

Figure 23: Chloropleth map of average rent in the important neighbourhoods.


Conclusion