ABSTRACT
This paper presents an analysis of vehicle breakdown duration on
motorways. The distribution of breakdown duration was shown to be statistically significantly
different for three categories of vehicle type and were shown to conform to a
Weibull distribution. A predictive vehicle breakdown duration model was
developed, based on fuzzy logic theory. The variables used in this model were:
vehicle type, breakdown time, breakdown location and reporting mechanism. The
performance of. the model was tested with encouraging results. Clustering of data
was shown to be due to rounding errors when the operator reported an incident
duration of 60 and
120 minutes. The unexplained variation in the model was due to the limitations
in the specification of the model parameters. This was because the incident data
set available was incomplete. This paper highlights the need for
standardisation in the recording of data used in incident management.
INTRODUCTION
Incident duration analysis has an
important role to play in estimating the efficiency of incident management
strategies. In particular, informing the drivers of the traffic condition can
assist in alleviating congestion problems with consequential benefit to the
environment. Recently, traffic incident has become one of the main causes of traffic
congestion. Studies have shown that incident-induced congestion is between 50% and 75% of total traffic congestion
in the urban area (Lindley. 1). Traffic incident is the event that is not planned, one about
which there is no advance notice, for example emergencies, accidents,
breakdowns, traffic crashes, etc (IEEE. 2). Simply, the traffic incident can be
referred to as
any non- recurring event that causes a reduction of road capacity or an
abnormal increase in demand, (Farradyne, 3).
Among all the incidents, breakdown
is the most common. The incident data on the M4, collected by WS Atkins and
made available for this study, demonstrated that 66%
of all
incidents were vehicle breakdowns
during the period 1 May
2000 and 30 April
2001. Incident management is the systematic planned and co- ordinated use of
human, institutional, mechanical and technical resources to reduce the duration
and impact of incidents and improve the safety of motorists, crash victims and
incident responders (Farradyne, 3). In the main, there are three different
methods of analysing incident duration. These are regression (Sullivan, 4).
hazard duration (Nam and Mannering, 5), and fuzzy logic (Kim and Choi, 6). The
first two methods are statistical analyses that require a large volume of data.
The advantage of the hazard duration method is that it allows the problem to be
formulated in terms of the conditional probabilities of the entities of
interest. Such a formulation can provide valuable insight into the empirical
estimation of the model. However, often, there is insufficient data available
to achieve statistical significance. The alternative approach, using fuzzy
logic, can simulate the human mind in analysing the data as a complex decision
making process. This paper presents the results of a preliminary study that has
looked at the feasibility of using fuzzy logic theory as a method of predicting
incident duration on motorways. The next section presents a description of the
data and is followed by analysis of the characteristics of breakdown duration
data to establish
statistically significant differences. The next section presents the breakdown
duration model based on fuzzy logic theory and the results. The final section
provides a summary and recommendations for the future.
CHARACTERISTICS OF VEHICLE BREAK-
DOWN
Vehicle
breakdown, is a type of traffic incident that suggests that the vehicle is
disabled on the road for a period of time. The main reasons for vehicle
breakdown include: Low battery Flat tyre Mechanical failure Starter motor malfunction
Engine fault Electrical failure Figure 1
Relationship between Vehicle
Breakdown and Month of Year
Normally, only one vehicle IS involved in this kind of incident, and there is no casualty.
The duration of the vehicle breakdown consists of the time to report, verify, respond to and clear away the breakdown
vehicle. After the vehicle breakdown is reported to the traffic control centre,
by using the ETS or other communication media, the recovery company is informed
to deploy
staff to the incident scene to repair the vehicle or tow it away. Sometimes, the police may
be involved to manage the traffic as appropriate, or offer help, especially if
a female driver is involved. Figure 1 shows the frequency of the breakdowns occurring
on the M4 according to the month of the year (starting in May 2000 and ending
in April 2001). The figure shows that the number of vehicle breakdowns
increases from May to August 2000 when
it decreases, varying little up to
April, 2001. It demonstrates that more breakdowns
occur in the
summer compared to the
winter. Figure 2 shows the relationship between the number of breakdowns and
time of the day. From the figure, as expected, most breakdowns occur in the day
time. In contrast, few breakdowns occur at Number of Vehicles Breakdown
vs Time
night and early morning. The number
of breakdowns reaches its peak in the early afternoon. Unfortunately, trafk
flow data was not available for stretches of roads along which vehicle
breakdowns had been reported and therefore no direct relationship between the
number of breakdowns occurring per hour as a function of the vehicle flows over
the month and year could be explored. However, knowing the characteristics of
the traffic along this road, it can be hypothesised that the highest number of
vehicle breakdowns are coincident with the higher vehicle flows measured during
the summer, reaching a peak during the month of August, and during the daytime
hours reaching a ,peak early afternoon. The availability of appropriate traffic
flow data is currently being explored. The next stage of the analysis studied
the distribution of vehicle breakdown duration for all vehicles and then
disaggregated according to vehicle type. The distribution of the vehicle
breakdown duration for all vehicle types is given in Figure 3. This distribution was shown to
conform to a Weibull distribution. A goodness-of-fit analysis was conducted,
and the results showed that the Weibull distribution. It is interesting to note
that there are two sharp
peaks in the distribution that are coincident with 60 minutes and 120 minutes. This was
believed due to rounding errors in the reported breakdown durations of one and
two hours. A test was carried out to prove that this indeed was the case. This
was achieved by randomly generating breakdown durations using the Weibull
distribution fitted to the data. It was shown that these peaks could be
reproduced by assuming the incident durations of 58.
59,'61 and 62 were also 60 and
incident durations of 118, 119, 121 and 122 were also 120 minutes. This result was
shown to be statistically significant at the 70%
confidence level.
RE PLAN
This paper has presented the results of a statistical
analysis of the duration of vehicle breakdowns on motorways. It has shown that
the duration of vehicle breakdown conform to Weibull distribution of different
parameters depending on vehicle size. The vehicle duration model, based on
fuzzy logic theory, was specified and developed using the input variables
vehicle size, breakdown time, location, and report mechanism. The performance
of the model, although encouraging, illustrates a good deal of scatter. A
standard of message set for incident management should be developed. Further
analysis of the model results helped to identify
shortcomings of the existing model. These were shown to include time of day when breakdown occurred, location and
report mechanism. Additional work is needed to improve
the performance by using more variables to modify the fuzzy set, membership,
and fuzzy rules. This work will be conducted in the future.
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