Using electronic and non-electronic methods to conduct distance and azimuth surveys.
Introduction:
Our objective for this week was to work as part of a two
person team using different methods to gather point data including distance and
azimuth. I was partnered with Amy Bartel. The data we gathered was then loaded
into a Geographic Information System (GIS) mapped and examined for accuracy.
Methods to gather data included the use of low tech compass to gather azimuth
data, and range finder to gather distance data; and a more advanced True Pulse
laser range finder which gathers distance and azimuth data at the same time.
We gathered our data on two separate dates and at two
separate locations (figure 1). The first location was on Monday, 18 February 2013 at the
University of Wisconsin Eau Claire (UWEC), Eau Claire, Wisconsin. We gathered
data on several objects and trees that are located between the south edge of
the Phillips Science Building and the north edge Phillips parking lot. This
location was convenient for the time available and the number of objects
present to record data for. The data for the second location were gathered on
Friday, 22 February 2013 at Randall Park, located two blocks north of Water
Street in Eau Claire, Wisconsin, just blocks from the UWEC campus. For this
portion of the project we were to gather data from an area of ¼ hectare plot
and include at least 50 points. The location of this park made it a convenient
walk from campus it also contained enough points for our project. The park,
however, is larger than ¼ hectare. I used the measuring tool in Google Earth to
get the size of the park; the distance from sidewalk to side walk is
approximately 82 meters by 142 meters, just over one hectare. This was
necessary to gather the required number of points.
Fig. 1. This image shows a portion of Eau Claire, WI. Randall Park and the Phillips Science Building on the UWEC campus have been highlighted along with the location of Water Street. |
Methods:
Preparation for this include going to the State
cartographers website, (http://www.sco.wisc.edu/mapping-topics/magnetic-declination.html) where I found a link to the National Geophysical Data Center (NGDC)
part of the National Oceanic and Atmospheric Administration (NOAA). The NGDC
webpage has a calculator to compute your declination. You will need the
latitude and longitude of your study location. If you do not know your latitude
and longitude you can enter your zip code and click the get location button. The
calculator gives your latitude and longitude; if you know them you can just
enter them. Then you enter the correct date and click the compute declination
button. The website gives you the magnetic declination for your area. In Eau
Claire, Wisconsin the magnetic declination is 0°58’. We had to adjust our
instruments for the declination.
We used a compass and sonic range finder to locate several
point within a narrow strip between the Phillips Science Building and the
Phillips parking lot. I took azimuth readings with a compass and operated the
acoustic range finder while recording the data in a notebook. Amy walked to the
points being recorded with the receiver. We used a small tree near the
south-east corner of the building as our origin; this should be visible from
aerial images. After recording the data for several points we created an excel
spread sheet with the headings (attributes): point_number, X, Y, distance,
azimuth, and notes (table 1). Point number was simply the 1st, 2nd,
3rd… points we recorded. Distance and azimuth were what we measured.
To get the X and Y data we used aerial imagery in ArcGIS.
point_number
|
x
|
y
|
distance
|
azimuth
|
notes
|
1
|
-91.499610
|
44.796492
|
9.69
|
107
|
blood
|
2
|
-91.499610
|
44.796492
|
7.93
|
140
|
cone
|
3
|
-91.499610
|
44.796492
|
19.06
|
136
|
tree
|
4
|
-91.499610
|
44.796492
|
22.8
|
135.5
|
tree
|
5
|
-91.499610
|
44.796492
|
14.85
|
151
|
phone
|
6
|
-91.499610
|
44.796492
|
10.79
|
265
|
tree
|
7
|
-91.499610
|
44.796492
|
19.74
|
271
|
tree
|
8
|
-91.499610
|
44.796492
|
34.67
|
281
|
tree
|
9
|
-91.499610
|
44.796492
|
44.05
|
285
|
tree
|
10
|
-91.499610
|
44.796492
|
54.58
|
287
|
building
|
After opening Arcmap we set the data frame projection to a Geographic
Coordinate System (GCS) World Geodetic System (WGS) 84, this will allow us to work with latitude and
longitude. Then we loaded a base map from World Imagery and zoomed in to our
area of interest (AOI). In the image we located the tree we measured from and
using the identify tool found the coordinates of the tree (-91.499610,
44.796492). These coordinates were put into the excel file as X and Y for all
of the points since we gathered them all from the same location. We opened Arccatalog and created a new file geodatabase (GDB), we imported our excel file
into the GDB then in Arcmap using Arccatalog input the data into the data
frame. Using the toolbox in Arcmap we opened Data Management, and then Features.
Within features is a tool called Bearing Distance to Line. We used this tool to
import our data as a layer in the form of lines from the point of origin to all
the points that were recorded. The lines are directionally based on our azimuth
readings and the line length is based on our distance measures. Then we used
another tool also located in Features called Feature Vertices to Points, again
we are able to import the data as a layer however this layer is comprised of
points. The points represent the data points that we measured in the field. We
now have a map containing a base map layer and point and line layers
representing our data (figure 2).
During our second data gathering excursion we went to
Randall Park. We used a True Pulse 360 B laser range finder made by Laser
Technologies Inc. to measure distance and azimuth. The park is quite large but
it was necessary to record at least 50 data points for the project. Within the
park there are a lot of obstructions, mainly trees. In order to gather all the
needed points we used four separate origins located at the four corners of the
park. We began at the south-east corner
of the park (figure 3); Amy operated the True Pulse while I recorded the data (figure 4). We had to
locate a suitable point of origin that could be located on aerial images. We
used the north-west corner of the yellow ‘rumble’ strip on the side walk, the
strip contrasts well with the surrounding concrete. From this point of origin
we gathered data on 12 points. We then moved to the south-west corner of the
park (figure 5), here we used the base of an electric pole as our point of origin and
recorded 12 more points. When we moved to the north-west corner of the park Amy
and I switched jobs (figure 6), she recorded the data while I operated the range finder.
At this corner we again used an existing electric pole as our point of origin
and recorded 12 additional points. At the last corner, the north-east corner (figure 7),
of the park we gathered the remaining points using the south-west corner of the
yellow ‘rumble’ strip in the sidewalk just as we had on the south-east corner (figure 8).
Fig.3. View from the south-east corner of Randall Park. |
Fig.4. Amy using the True Pulse to gather distance and azimuth data from the south- west corner of Randall Park. |
Fig.5. View from the south-west corner of Randall Park. |
Fig.6. Stacy using the True Pulse to gather distance and azimuth data from the north- east corner of Randall Park. |
Fig.7. View from the north-east corner of Randall Park, Note the yellow rumble strip in the foreground of the image. |
Fig.8. A corner of the yellow rumble strips used to tie the survey data to X,Y data gathered from aerial imagery in Arcmap. |
As in the first example we built an excel spreadsheet
containing our data with headings: point, X, Y, distance, azimuth and name (table 2).
Point was the point number while distance and azimuth were the data we had measured
and name was the object at the point we recorded the data for. Object names
included a statue, trees, lamp posts, benches, picnic tables and the posts at
the corners of a pavilion. We used Arcmap, setting the data frame projection to
GCS WGS 84 and located our four points of origin. The rumble strips were easily
located because of their contrasting color. The base of the electric poles was
determined by first finding the pole and then locating the shadow of the pole on
the ground. We used the point where the pole met its shadow as our point of
origin. We used the identify tool to get the X and Y coordinates for each of
these four points and correctly apply them to the corresponding sets of points
in the excel spreadsheet.
point
|
x
|
y
|
distance
|
azimuth
|
name
|
1
|
-91.505758
|
44.804196
|
8.4
|
292.0
|
tree
|
2
|
-91.505758
|
44.804196
|
21.0
|
318.8
|
tree
|
3
|
-91.505758
|
44.804196
|
41.0
|
327.4
|
tree
|
4
|
-91.505758
|
44.804196
|
7.7
|
0.9
|
tree
|
5
|
-91.505758
|
44.804196
|
27.6
|
350.4
|
tree
|
6
|
-91.505758
|
44.804196
|
44.0
|
336.4
|
table
|
7
|
-91.505758
|
44.804196
|
22.3
|
339.1
|
tree
|
8
|
-91.505758
|
44.804196
|
38.5
|
310.7
|
lamp
|
9
|
-91.505758
|
44.804196
|
69.0
|
305.4
|
lamp
|
10
|
-91.505758
|
44.804196
|
91.9
|
305.0
|
bench
|
11
|
-91.505758
|
44.804196
|
86.0
|
308.2
|
bench
|
12
|
-91.507619
|
44.804213
|
127.0
|
307.0
|
lamp
|
13
|
-91.507619
|
44.804213
|
8.9
|
82.0
|
tree
|
14
|
-91.507619
|
44.804213
|
19.0
|
76.9
|
tree
|
15
|
-91.507619
|
44.804213
|
76.0
|
74.3
|
statue
|
16
|
-91.507619
|
44.804213
|
11.0
|
39.7
|
tree
|
17
|
-91.507619
|
44.804213
|
19.8
|
48.2
|
tree
|
18
|
-91.507619
|
44.804213
|
38.5
|
56.9
|
lamp
|
19
|
-91.507619
|
44.804213
|
92.9
|
62.9
|
bench
|
20
|
-91.507619
|
44.804213
|
11.1
|
38.9
|
tree
|
21
|
-91.507619
|
44.804213
|
35.0
|
29.7
|
bench
|
22
|
-91.507619
|
44.804213
|
17.9
|
18.5
|
tree
|
23
|
-91.507619
|
44.804213
|
78.3
|
57.8
|
bench
|
24
|
-91.507621
|
44.804952
|
76.0
|
84.5
|
tree
|
25
|
-91.507621
|
44.804952
|
46.2
|
128.2
|
lamp
|
26
|
-91.507621
|
44.804952
|
26.9
|
136.0
|
tree
|
27
|
-91.507621
|
44.804952
|
10.1
|
131.5
|
tree
|
28
|
-91.507621
|
44.804952
|
24.1
|
151.1
|
tree
|
29
|
-91.507621
|
44.804952
|
92.0
|
126.1
|
statue
|
30
|
-91.507621
|
44.804952
|
83.0
|
126.2
|
bench
|
31
|
-91.507621
|
44.804952
|
53.9
|
106.6
|
tree
|
32
|
-91.507621
|
44.804952
|
13.9
|
98.4
|
tree
|
33
|
-91.507621
|
44.804952
|
39.9
|
94.1
|
tree
|
34
|
-91.507621
|
44.804952
|
53.3
|
162.1
|
tree
|
35
|
-91.507621
|
44.804952
|
84.1
|
112.4
|
pavilion
|
36
|
-91.507621
|
44.804952
|
84.0
|
113.6
|
pavilion
|
37
|
-91.505759
|
44.804971
|
93.9
|
233.2
|
statue
|
38
|
-91.505759
|
44.804971
|
38.0
|
231.1
|
lamp
|
39
|
-91.505759
|
44.804971
|
75.4
|
243.4
|
pavilion
|
40
|
-91.505759
|
44.804971
|
74.5
|
244.0
|
pavilion
|
41
|
-91.505759
|
44.804971
|
36.0
|
219.8
|
tree
|
42
|
-91.505759
|
44.804971
|
11.0
|
213.8
|
tree
|
43
|
-91.505759
|
44.804971
|
26.1
|
219.4
|
tree
|
44
|
-91.505759
|
44.804971
|
22.6
|
238.7
|
tree
|
45
|
-91.505759
|
44.804971
|
42.2
|
243.3
|
tree
|
46
|
-91.505759
|
44.804971
|
32.7
|
248.5
|
tree
|
47
|
-91.505759
|
44.804971
|
48.0
|
251.9
|
tree
|
48
|
-91.505759
|
44.804971
|
14.8
|
253.9
|
tree
|
49
|
-91.505759
|
44.804971
|
23.6
|
258.9
|
tree
|
50
|
-91.505759
|
44.804971
|
28.4
|
266.3
|
tree
|
distance and azimuth lines and object points in Arcmap.
We returned to the GDB in Arccatalog that we set up earlier
and imported the new spreadsheet. We opened the environments and set the work space defaults to our GDB. This makes saving and using tools much easier
because we didn't have to look for our GDB each time. Then in ARCmap, in the
same data frame we already have open and projected we use the Bearing Distance
to Line tool located in the toolbox, Data Management, and Features to import
the data as a layer showing the direction and distance from the four points of
origin to each of the fifty points measured. In the tool we selected our excel
file as the input, saved the output to our GDB and selected each of the
appropriate headings for X, Y, distance and azimuth and clicked OK to run the
tool. When it was finished we right clicked on the line symbol for the data
layer and selected a good contrasting color for the symbol (sulfur yellow). While
analyzing the data we were interested in the distance to each object. To add
distance information about each of the lines we right clicked on the layer name
and selected label features, this added the distance measure to each of the
lines. Then we right clicked the layer name and selected properties then
selected labels; first we selected label all features the same and selected the
distance field, left the font size at 8, then we set the color of the labels to contrast with the
background (figures 9,10)(tourmaline green). Because of the large number of lines in a small
area it gets quite messy when viewed with labels at a smaller scale so we set
the scale range to not show the labels beyond a scale of 1:1,000(figures 11,12).
Fig.9. The line data that was generated using the bearing distance to line tool. The lines have been labeled with distances (meters). |
Fig.10. The line data that was generated using the bearing distance to line tool. Data is shown over base map layer. The lines have been labeled with distances (meters). |
Fig.11. Line and point data from survey 2 shown over a base map layer scaled at 1:1000 with labels visible. |
Fig.12. Line and point data from survey 2 shown over a base map layer scaled at 1:1250 with no labels visible. |
In order to display the points we gathered data on we used
the Feature Vertices to Points tool located in Arctoolbox under Data management
and Features. In the tool we selected the distance line layer as the input and
saved the output in our GDB, we ran the tool. When the point’s layer appeared
on the screen it was not very visible, so we right clicked on the point symbol
and selected a good contrasting color (Tourmaline green). We were also interested
in what the point was. To show this information we right clicked on the point
layer and selected properties. In the properties tab we selected labels, we
selected label all features the same, selected the name field for the labels
and left the font size at 8. Again the density of the points with labels viewed
at small scales gets messy so we set the labels to not show beyond a scale of
1:1,000. We selected a good contrasting color for the labels (Medium apple) and
clicked OK to close. We noticed an issue with this tool; however, it also puts
points on the origin ends of the lines and gives them a default label (figure 13). To
remove these point and labels we opened the editor toolbar and selected start
editing. Using the selector tool we selected each of the points at the origins
and deleted them which automatically deleted the corresponding labels, we saved
our edits and selected stop editing (figure 14). Now we were able to view the data we
gathered layered over aerial imagery and analyze the data for accuracy and to
see where our methods may need improvement (figure 15).
Fig.13. map of Randall Park with point and line layers, note the points and labels at the origin vertices. |
Fig.14. The point data that was generated using the feature vertices to points tool. The points have been labeled with the object names. |
Fig.15. Labeled points viewed over a base map layer of Randall Park. |
Discussion:
For the first portion of this project we measures a small set
of objects and used a tree for our point of origin. This was more or less a
practice run to become familiar with the equipment and to improve our methods.
When we were gathering the X, Y data from the base map we found we had to be
precise out as many significant digits as were available. When we first
attempted to use abbreviated coordinates we found our plotted data about a half
a mile south of where we gathered it from, by using all 6 decimal places we
were able to get the data reasonably close to our study area. Another problem
we ran into was using a tree as our point of origin. First, when gathering the
data we rotated around the tree which progressively pushed our data off their
marks. Second, when we tried to locate the exact point of the trunk it was
obscured by the branches overhead so we had to use our best judgment of its
placement.
During the second portion of our project we had to overcome
the size of the study area, the best way to do that was to use multiple points
of origin. The west points in the park were simple enough using the electric
poles as our origins. To locate the base of these in the aerial image we found
the pole but the base of it was difficult to see so we used the shadow of the
pole to aid us. We used the point where the shadow ended or appeared to intersect
the pole as our origin. Many of these points seem fairly accurate; however
there were 2 points that were not. At the south-west corner we have one point
that shoots off to the north-west at a considerable distance, this should have
been a lamp located within the park (figure 16). There are several reasons that could have
contributed to this including; the instrument could have had an error, the
instrument may have been misread or the numbers may not have been communicated
or written down accurately. The second point that is severely misaligned is at
the north-west corner. There is a tree that should be within the confines of
the sidewalk (figure 17). Again any of the same problems may have occurred and both of
these points should be redone.
Fig.16. This image shows the incorrect line and point for a lamp post shot from the south-east corner of Randall Park. |
Fig.17. View of the north-west corner of Randall Park and the incorrect line and point data for a tree. |
On the east end of the park we used the rumble strips in the
sidewalk as our origins. We carefully documented which corner of the strip was
used at each corner of the park. These strips were easy enough to find in the
aerial images; however, they were small enough and without shadows to
corroborate their position it was difficult to get a precise reading on the
corners. When we imported our data on this end of the park they are less
accurate than the west end. I had commented that we should use the fire
hydrants as our origins (figure 18). We decided against this because they were across the
street and nearly covered in snow (figure 19). Doing this again, I would use the hydrants.
Fig.18. This fire hydrant would have made a better origin. Do to its color and size it should have been easily recognizable in aerial images. |
Fig.19. This fire hydrant was located across the street from the north-east corner of Randall Park. the rumble strip in the foreground was used as the origin. |
Comparing the tools used in the first part of this project
to the second I believe they are equally accurate. The compass method takes
more time to get precise azimuth readings while the True Pulse records both
distance and azimuth at the same time; however it is not without fault. It
seemed to me that it was more difficult to record data on a small object such
as a lamp post at a distance with the True Pulse. The problem was holding the
instrument steady long enough to get a reading. In a pinch it is quite feasible
to accurately gather data with the more primitive methods. They may not fail
when technology does.
The process of adding labels to the layers in the map took a
couple of extra minutes but it gave us
the ability to see the values associated with each of the points and lines.
Conclusion:
This project allowed us to use methods that ranged from the
more primitive to the more technological. Knowledge of each method is a great
advantage if one method fails or another unforeseen circumstance arises.
Instruments such as a compass and a tape measure do not have batteries which do
not always like the environment they are being used in. Also, technology itself
can simply fail without a fix in the field.
The group work is always a test in coordinating the
schedules of the participants and working around each other’s prearranged
activities and other priorities. This is a great skill to carry forward into
the workplace as you may be coordinating projects with many people and
organizations.
This project was also an experience in dealing with changing weather conditions. Much of the week the weather was dry but cold, when we did our survey on Friday, 22 February 2013, we were dealing with several inches of new snow and light snow was falling (figure 20).
Fig.20. Several inches of new snow had fallen before we did our survey. We did not have a ruler with to measure the snow depth but this notebook is about 5.25 inches to the top of the spirals. |