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M. Dell’Orco1- R. Di Pace2– M. Marinelli1-F. Galante3
1 Technical University of Bari - Italy, EU 2 University of Salerno - Italy, EU3 University of Napoli “Federico II” - Italy, EU
Application of data fusion for route choice Application of data fusion for route choice modelling by modelling by
Route Choice Driving Simulator Route Choice Driving Simulator
Introduction (1)Introduction (1)
ATIS (Advanced Traveller Information Systems) are aimed to provide information on traffic conditions to travellers so that they can keep their travel decisions with less uncertainty
Travellers’ reaction to the ATIS is modeled in terms of compliance and route choices
a compliant traveler with ATIS chooses the suggested route
Route choice models under ATIS are often developed and calibrated by using Stated Preferences (SP) surveys
Two main types of tools for SP in ATIS contexts are the most popular driving-simulators (DSs) and travel-simulators (TSs)
Both methods are computer-based
DSs are characterised by a greater realism, provided that the respondents are asked to drive in order to implement their travel choices, as it happens in the real world less trials by the same respondent
In TSs, travel choices are entered after having received a description of travel alternatives and the associated characteristics, without any driving
TSs compensate some lack of realism with a minor cost and with less burden for the respondents many more trials by the same respondent
Introduction (2)Introduction (2)
Research GoalsResearch Goals
Here a pilot study is presented (10 respondents), aimed at setting up an SP-tool based on driving simulator developed at the Technical University of Bari
The obtained results are analysed in order to check the accordance with expectations the results of application of data fusion technique are
shown in order to explain how data collected by DSs, can be used to reduce the effect of choice of behavior in unrealistic scenarios in TSs
A PC-based driving simulator of Technical University of Bari has been adopted
The UC-win/Road driving simulator software was used (FORUM8)
The simulation system works on a single computer provided with NVidia Graphic Card (1GB of graphic memory) and a Quad-Core CPU
The simulation is based on a steering wheel (Logitech™ MOMO Racing Force Feedback Wheel), able to provide force feedback, as well as six programmable buttons (ignition, horn, turn signals, etc.), sequential stick shifters and paddle shifters
A 22" wide-screen monitor was used in order to have a good field of view, also showing internal car cockpit with tachometer and speedometer. Environmental sounds are reproduced to create a more realistic situation
Employed simulation tools Employed simulation tools
Experiment description (1)Experiment description (1)
The network reproduced in the virtual experiment refer to real one in Bari
The network is proposed to respondents in the simulations in a double con-figuration, with (3 repeated trials) and without ATIS (3 repeated trials)
The configuration without ATIS was presented to respondents with some variants, reproducing different congestion levels and travel times, accordingly with their statistical distribution in the real world
During the experiment respondents have been asked for choosing a route among three alternativesThe simulated networks were part of a real network in Bari
The choice set can be viewed as composed by a main route (route 1) that connects the considered origin-destination pair
Depending on traffic conditions, the traffic could spill-back up to a later diversion node (detour toward route 2) or even up to an earlier diversion node (detour toward route 3)
These three different conditions (straight route, later detour, earlier detour) are conventionally classified here as three different levels of congestion (free-flow/low congestion, intermediate congestion, high congestion)
ExperimentExperiment descriptiondescription (2)(2)
Design of the experiment Design of the experiment
From ToDistance
(m)
UC-win/Road
Entrance 1st VMS 400
1st VMSI Diversion, Exit 13A-
Mungivacca300
I Diversion, Exit 13A-Mungivacca
2nd VMS 700
2nd VMS 3rd VMS 1100
3rd VMSII Diversion,
Exit 12-Carrassi
150
II Diversione, Exit 12-Carrassi
Queue 900
QueueExit 11-
Poggiofranco500
Route
without ATIS with ATIS
Prob. of being the shortest
Observed
ShareDelta
Prob. of being the
shortest
Observed Share
Delta
1 73% 87% +14.0 13.3% 6.7% -6.6
2 20% 10% -10.0 66.7% 76.6% +10
3 7% 3% -4.0 20.0% 16.7% -3.3
Eulerian
distance
312.0154.45
ActualActual share vs. Observed shareshare vs. Observed share
To incorporate information on system conditions in the choice process, we assume that drivers1.have some experience about the attributes of the transportation system2.use information to update his experience3.choose an alternative according to his updated experience.
The drivers’ knowledge about the transportation system can be expressed in the same way we used for perceived informationSo both drivers’ knowledge and information can be expressed in terms of PossibilityTo update knowledge of the system, drivers aggregate data coming both from their experience and from current information
DataData fusion: Modelling Route Choice fusion: Modelling Route Choice Behavior (1)Behavior (1)
In this work, we have used a route choice model based on uncertainty-based Information Theory as proposed by Dell’Orco at al.*
The information fusion model incorporates important aspects such as:
1. dynamic nature of information integration; the perceived cost of an alternative is influenced by the user’s previous experience and memory;
2. accuracy of the informative system; the more accurate information is, the more important is the effect on the drivers’ perception
3. non-linear relationship between information and perception
*Dell’Orco, M. and Marinelli, M.: Fuzzy data fusion for updating information in modelling drivers’ choice behavior. ICIC 2009, LNAI 5755: 1075-1084 (2009)
DataData fusion: Modelling Route Choice fusion: Modelling Route Choice Behavior (2)Behavior (2)
Acquired data has been fused using the method proposed by Yager and Kelman*.
The result of information fusion is a subnormal fuzzy set because its height hf is less than 1 (e.g. 0.67) as reported in figure
*Yager, R. R., Kelman, A.: Fusion of Fuzzy Information With Consideration for Com-patibility, Partial Aggregation, and Reinforcement, International Journal of Intelligent Systems 15, 93 -122 (1996)
DataData fusion: Modelling Route Choice fusion: Modelling Route Choice Behavior (3)Behavior (3)
In order to interpret the information given by this fuzzy set, tf must be normalized
To pass from Possibility to Probability we use the probabilistic normalization, (Σipi = 1) along with the Principle of Uncertainty Invariance, systematized by Klir and Wang*
The model allows the quantitative calculation of users’ compliance with information, and thus a realistic updating of expected travel time
We have modeled drivers’ choice behavior according to Uncertainty-based Information Theory
We have applied fuzzy fusion to data acquired in Bari at the end of each simulation
*Klir, G. J and Wang, Z.: Fuzzy Measure Theory, Plenum Press, New York (1992)
DataData fusion: Modelling Route Choice fusion: Modelling Route Choice Behavior (4)Behavior (4)
Route
without ATIS with ATISObserv
ed Share
Predicted
ShareDelta
Observed
Share
Predicted
ShareDelta
1 87% 90.8% +3.8 13.3% 34.5% +21.2
2 10% 6.5% -3.5 66.7% 57.7% -9.0
3 3% 2.7% -0.3 20.0% 7.8% -12.2
Eulerian
Distance
16.39 125.44
Results: Observed Share vs Predicted Results: Observed Share vs Predicted ShareShare
Conclusions and future workConclusions and future work
Collected data have to be used in order to increase the effect of reduced realism of TSs Preliminary application of data fusion technique has
been made
Expected travel times are updated according to results of data fusion and the influence of uncertainty on drivers' compliance with provided information is examined according to uncertainty-based Information Theory
In future work… The authors would like to define a methodology of route
choice modeling by mixed data set collect by TSs and DSs Furthermore the authors would like to introduce more test
in order to validate the adopted modelling approach
Thank you for the attention!!Thank you for the attention!!
Any questions? Suggestions?
[email protected]@poliba.it