Potential travel cost saving in urban public-transport networks using smartphone guidance
Authored by Cuiying Song, Wei Guan, Jihui Ma
Date Published: 2018
DOI: 10.1371/journal.pone.0197181
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MATLAB
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Abstract
Public transport (PT) is a key element in most major cities around the
world. With the development of smartphones, available journey planning
information is becoming an integral part of the PT system. Each traveler
has specific preferences when undertaking a trip, and these preferences
can also be reflected on the smartphone. This paper considers transit
assignment in urban public-transport networks in which the passengers
receive smartphone-based information containing elements that might
influence the travel decisions in relation to line loads, as well as
passenger benefits, and the paper discusses the transition from the
current widespread choosing approach to a personalized decision-making
approach based on smartphone information. The approach associated with
smartphone guidance that considers passengers' preference on travel
time, waiting time and transfer is proposed in the process of obtaining
his/her preferred route from the potential travel routes generated by
the Deep First Search (DFS) method. Two other approaches, based on the
scenarios reflecting reality, include passengers with access to no real
time information, and passengers that only have access to the arrival
time at the platform are used as comparisons. For illustration, the same
network proposed by Spiess and Florian is utilized on the experiments in
an agent-based model. Two experiments are conducted respectively
according to whether each passenger's choosing method is consistent. As
expected, the results in the first experiment showed that the travel for
consistent passengers with smartphone guidance was clearly shorter and
that it can reduce travel time exceeding 15\% and weighted cost
exceeding 20\%, and the average saved time approximated 3.88 minutes per
passenger. The second experiment presented that travel cost, as well as
cost savings, gradually decreased by employing smartphone guidance, and
the maximum cost savings accounted for 14.2\% of the total weighted
cost.
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Transit assignment model