5.0 Challenges and Limitations in the Use of Traffic
Analysis Tools
As long as they are
used correctly, traffic analysis tools are useful and effective in helping
transportation professionals best address their transportation needs. Each
tool and tool category is designed to perform different traffic analysis
functions, and there is no one analytical tool that can do everything or
solve every problem. This section addresses some of the challenges and
limitations of available traffic analysis tools that should be considered
when selecting a tool:
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Availability of quality data. If good data are not available, the user should consider a
less data-intensive tool category, such as a sketch-planning tool rather
than microsimulation. However, the results of the simpler tool categories
are usually more generalized, so the user should carefully balance the
needs of a more detailed analysis with the amount of data required.
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Limited empirical data. Data collection can often be the most costly component of a study.
The best approach is to look at the ultimate goals and objectives of the
task and focus data collection on the data that are crucial to the study.
-
Limited funding. Limited funding for conducting the study, purchasing tools, running
analytical scenarios, and training users is often a consideration in
transportation studies. Traffic analysis tools can require a significant
capital investment. Software licensing and training fees can make up a
large portion of the budget. Also, the analysis of more scenarios costs
money. When faced with funding limitations, focus on the project's goals
and objectives, and try to identify the point of diminishing returns for the investment.
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Training limitations. Traffic simulation tools usually have steep learning curves
and, as a result, some transportation professionals do not receive adequate
modeling and simulation training.
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Limited resources. Limitations in staffing, capabilities, and funding for building the network
and conducting the analysis should be considered. The implementation of
most traffic analysis tools is a resource-intensive process, especially in
the model coding and calibration (front-end) phases for simulation
analyses. Careful scheduling and pre-agreed upon acceptance criteria are
necessary to keep the project focused and on target.
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Data input and the diversity and inconsistency of data. Each tool uses unique analytical
methodologies, so the data requirements for analysis can vary greatly from
tool to tool and by tool category. In many cases, data from previous
projects contribute very little to a new analytical effort. Adequate
resources must be budgeted for data collection.
-
Lack of understanding of the limitations of analytical tools. Often, limitations
and "bugs" are not discovered until the project is underway. It is
important to learn from experiences with past projects or to communicate
with fellow users of a particular tool or tool category in order to assess
the tool's capabilities and limitations. By researching the experiences of
others, users can gain a better understanding of what they may encounter as
the project progresses.
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Tools may not be designed to evaluate all types of impacts produced by transportation
strategies/applications. The output measures produced by each tool vary, so
the process of matching the project's desired performance measures with the
tool's output is important. In addition, there are very few tools that
directly analyze ITS strategies and the impacts associated with them (e.g.,
reduction in incident duration, agency cost savings, etc.).
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Lack of features. Some analytical tools are not designed to evaluate the specific strategies
that users would like to implement. This is more prevalent in modeling ITS
strategies or other advanced traffic operations strategies. Often,
"tricking" the tool into mimicking a certain strategy is a short-term
solution; however, there should be flexibility so that advanced users may customize the tools.
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Desire to run real-time solutions. Many tools require a significant amount of time for
setup, modeling, and analysis. It is hoped that future tools will be able
to be linked to traffic management centers (TMCs) and detectors so that the
analysis can be implemented directly and in real time. This would allow
transportation professionals to respond to recurring and nonrecurring
congestion using real-time solutions.
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Tendency to use simpler analytical tools and those available in house, although they might
not be the best tools for the job. Because of lack of resources, past
experience, or lack of familiarity with other available tools, many
agencies prefer to use a tool currently in their possession, even if it is
not the most appropriate tool for the project.
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Biases against models and traffic analysis tools. These biases are not only because of the
challenges listed above, but also because models are not always reliable
and are often considered "black boxes." Some transportation professionals
prefer to use "back-of-the-envelope" calculations, charts, or nomographs to
estimate the results. This may be adequate for simpler tasks; however, more
complex projects require more advanced tools.
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Long computer run times. Depending on the computer hardware and the scope of the study (e.g.,
area size, data requirements, duration, analytical time periods, etc.), an
analytical run may range from a few seconds to several hours. The most
effective approaches to addressing this issue involve using the most robust
computer equipment available and/or carefully limiting the scope of the
study to conform to the analytical needs.
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