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| Applying
Appropriate Data |
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The following
section provides a few recent case studies with
which the authors have been involved when asked
to provide suitable height data to a 3D GIS. |
| Case Study 1
– 3D Visualisation of Elevated Roadway |
This project
involved the visualisation of a proposed elevated
roadway in Karachi. The roadway is to be built
along an existing corridor between multi-story
buildings. The task was to illustrate the visual
impact of the roadway on the cityscape. As the
task was primarily one of information and promotion,
the client was keen to maximise the reality of
the visualisation. It needed to be interactive
and lifelike, to stir enthusiasm amongst the decision
makers for the project. Field crews took digital
photographs of the major buildings so as to provide
the necessary building texture and appearance
to the visualisation (Fig 5). The road design
was incorporated into the visualisation dataset.
The client was also keen on maximising the accuracy
of the visualisation, but the local aviation and
government infrastructure was not able to support
a LiDAR survey of the route. Instead, building
locations and heights were approximated with basic
field survey techniques. The result was a high
resolution (LoD 2), low accuracy visualisation,
employed in an application which gave interactive
flythrough capabilities to the client. In this
case, the level of accuracy did not detract significantly
from the project outcomes. |
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| Case Study 2
– Supplying the 3rd Dimension in a Marine
Cadastre |
As urban
development around coastal waterways increases,
the need for legal clarity on who is responsible
for which areas is becoming more important. Most
jurisdictions have legislation which refers to
tidal boundaries. Terms such as “low water
mark”, “Highest Astronomical Tide”,
“tidal influence” etc abound in legislation,
but cannot be easily marked out on the ground.
Problems arise when these boundaries have to be
delineated accurately on the ground as their extent
depends upon tidal variations, and upon coastal
terrain models. Recent examples involved a cadastral
boundary extending down to “the high water
mark”, the local Ports Authority responsible
for areas “to the High Spring Tide”
mark, but the Environment Department interested
in “5m above the high water mark”
for the monitoring of acid-sulphate soils. The
issue is further complicated as coastal terrain
models are frequently changing by erosion and
accretion.
In Australia, the Queensland Department of Natural
Resources and Mines is undertaking a pilot programme
which seeks to clarify the processes and derive
the tools to resolve these boundary conflicts
(Todd (2005)). The programme uses a LiDAR definition
of the coastal zone (flown at low tide) to define
the current terrain shape, plus a series of tide
gauges to establish the local tide model. Specialised
software was written to find the intersection
between the two 3D surfaces: terrain shape and
tide model. From these lines of intersections,
the horizontal extent of the legal boundaries
can be found.
In the example shown in Fig 6, the landowner thinks
he owns the property defined by the black lines
(the “cadastral boundaries”). However
State Legislation limits his ownership to “Mean
High Water Spring Tide”, show in blue. Clearly
there are large areas of land where he thinks
he owns but does not. Finally, the red line denotes
“Highest Astronomical Tide” defining
the extent where the landowner has limited control
as separate legislation has conferred rights and
obligations to the local Ports Authority.
Only by applying the 3rd dimension to this application
has the true legal boundaries been established.
The consequences of these queries are often minor,
but can become considerable when applied to prime
riverside properties, or in areas under consideration
for development. This research is also being used
to create storm-surge models in coastal areas. |


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| Case Study 3
– Constructing 3D City Models |
Recently,
AAMHatch created a 3D model of the City of Melbourne.
The odel was created using specialised photogrammetric
techniques, which involve the measurement of the
building’s 3D shape from highresolution
aerial photography. These 3D city models have
an inherently high degree of accuracy so they
can be confidently used in analysis and measurement,
such as when determining height restrictions.
The 3D model is a “living model”,
which will be regularly updated from new aerial
photography. The savings in development proposal
review, consultation and dispute resolution are
potentially significant, and now form the major
business justifications for 3D visualisation in
city management. Large savings annually in legal
and submission costs have been demonstrated.
In practice, the 3D model is used as the reference
for appraising proposed developments interactively,
by inserting the proposal in the model to determine
the shadows and reflections it casts, which views
it obscures and what it will look like from any
viewpoint.
Advances in 3D computer software and performance
have meant that more realism can be employed in
the 3D model by using digital photos of the actual
building facades, as well as trees and other objects
such as street furniture, as textures for the
3D model.
Samples of Melbourne CBD streetscape modelling
are shown in Fig 8 and 9. |
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| Case Study 4
– 3D Utility Mapping in Electricity Industry |
Another
interesting application where the 3rd dimension
is now available to GIS is in the Electricity
Industry. Utility GIS systems have evolved in
line with advances in software and survey techniques.
First generation GIS systems were largely schematic,
where network and assets were largely recorded
by connectivity diagrams. Next came the AM/FM
applications where their geographic location could
be entered with full asset and connectivity details.
Spatial queries such as “identify five year
old insulators within 10km of the substation”
were now possible. The emergence of LiDAR as a
viable survey technique has provided the Electricity
Industry with the third dimension on their transmission
networks. Spatial queries such as “Identify
those spans along this route where the conductors
are closer than 5m to the underlying vegetation”
(see Fig 10). These queries can be extended to:
“If I were to pump 5% more electricity down
this line, the temperature of the conductors will
rise by 4°, and will sag 0.5m lower. Show
me the spans where this 0.5m sag will cause clearance
concerns”. In these days of increasing energy
demand and high cost of building new transmission
lines, these queries can be very powerful.
A project recently completed for Tenaga Nasional
Berhad (TNB) supplied the third dimension to the
major north-south transmission lines running between
Kuala Lumpur and Penang. The LiDAR project provided
the 3D survey data, software and training for
TNB to perform these lineoptimisation queries,
to allow TNB to achieve the maximum line loading
in a safe and well managed process (Fig 11). |
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| Case Study 5
– 3D Topology in an Industrial Site |
The final
case study presented here involves a 3D survey
in an industrial site. The project involved a
major expansion to a minerals processing plant.
The design engineers needed an accurate plan of
the current structure, so they could design, construct
and fit the extension structures with minimal
downtime on the operating plant. The third dimension
in this case was supplied by Terrestrial Laser
Scanning (TLS). This survey technique employs
a similar technology to the LiDAR system, except
that the laser sensor is mounted on a tripod and
the measuring laser measures the structure to
millimetre precision and millimetre point spacing.
The benefit of the TLS is that it is able to supply
an accurate 3-dminesional definition of complex
structures as diverse as piping, building facades,
structures under load or rock faces. The data
is acquired without contact, allowing definition
of unstable landforms, hot engineering surfaces,
vibrating elements or inaccessible structures.
The project involved over 120 TLS setups and literally
a billion data points collected. From this wealth
of accurate 3D data (Fig 12), the relevant pipes
and structures were identified by the engineering
team. Those features relevant to the expansion
plans were converted to CAD elements (Fig 13).
The ability to define the CAD elements in their
true position, orientation and condition allowed
the engineers to design their expansion elements
knowing that they were fitting to “actual”
elements and not just “as built” plans.
Of the 503 connection points in the expansion,
all bar 3 fitted without need for rework. Those
three problematic joints were traced to changes
in
design, not errors in the 3D GIS. |
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| In Closing |
The paper
has presented the philosophy that there is no
such thing as bad”
spatial data, only “inappropriate”
data. Estimating building heights may be suitable
for a visualisation, but would be of limited use
to the telco engineers. Investing heavily in a
vector-based photogrammetric cityscape will need
subsequent users to utilise both the accuracy
and appearance of the buildings to have that significant
investment returned. Project managers need to
consider the implications of their decisions specifying
resolution, accuracy, currency and format.
The exciting part is that survey techniques and
application development is now allowing users
to dictate the characteristics that their dataset
requires to meet their project needs. It is critical
to document and retain these characteristics with
the dataset to ensure that all subsequent uses
of the data are appropriate to their respective
needs. |
| References |
Kolbe,
T. (2006) and S. Bacharach, Directions Magazine
online, June 2006
Todd, P. (2005) and D. Jonas; The Use of ALS and
Tidal Data to Achieve NRM Outcomes while Preserving
Legal Certainly and Quantifying Spatial Uncertainty”.
Proceedings of SSC2005 Spatial Intelligence, Innovation
and Praxis: The National Biennial Conference of
Spatial Science Institute, September 2005. Melbourne |
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David Jonas
Business Development Manager, AAMHatch,
d.jonas@aamhatch.com.au |
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Nils Mathews
Operations Manager, RESGIS,
nilsm@resgis.com.my |
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| <<...Back |
| November 2006 |
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