An Agent-Based Model for Dispatching Real-Time Demand-Responsive Feeder Bus
Authored by Xin Li, Ming Wei, Jia Hu, Yun Yuan, Huifu Jiang
Date Published: 2018
DOI: 10.1155/2018/6925764
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Abstract
This research proposed a feeder bus dispatching tool that reduces rides'
effort to reach a feeder bus. The dispatching tool takes in real-time
user specific request information and optimizes total cost accordingly
(passenger access time cost and transit operation cost) by choosing the
best pick-up locations and feeder buses' routes. The pick-up locations
are then transmitted back to passengers along with GPS guidance. The
tool fits well with the Advanced Traveler Information Services (ATIS)
which is one of the six high-priority dynamic mobility application
bundles currently being promoted by the United State Department of
Transportation. The problem is formulated into a Mixed Integer
Programming (MIP) model. For small networks, out-of-the-shelf commercial
solvers could be used for finding the optimal solution. For large
networks, this research developed a GA-based metaheuristic solver which
generates reasonably good solutions in a much shorter time. The proposed
tool is evaluated on a real-world network in the vicinity of Jiandingpo
metro station in Chongqing, China. The results demonstrated that the
proposed ATIS tool reduces both buses operation cost and passenger
walking distance. It is also able to significantly bring down
computation time from more than 1 hour to about 1 min without
sacrificing too much on solution optimality.
Tags
Genetic Algorithms
coordination
Optimization
Strategies
Network-design problem
Public-transit
Route
network
Rail