Abstract

Day-to-day information is increasingly being implemented in transit networks worldwide. Feeder bus service (FBS) plays a vital role in a public transit network by providing feeder access to hubs and rails. As a feeder service, a space-time path for frequent passengers is decided by its dynamic strategy procedure, in which a day-to-day information self-learning mechanism is identified and analyzed from our survey data. We formulate a frequency-based assignment model considering day-to-day evolution under oversaturated conditions, which takes into account the residual capacity of bus and the comfort feelings of sitting or standing. The core of our proposed model is to allocate the passengers on each segment belonging to their own paths according to multi-utilities transformed from the time values and parametric demands, such as frequency, bus capacity, seat comfort, and stop layout. The assignment method, albeit general, allows us to formulate an equivalent optimization problem in terms of interaction between the FBS’ operation and frequent passengers’ rational behaviors. Finally, a real application case is generated to test the ability of the modeling framework capturing the theoretical consequents, serving the passengers’ dynamic externalities.

Highlights

  • Intelligent information systems have been widely used in public transit

  • Since the frequent passengers are mainly involved in home-origin or work-destination scenarios, they are very used to the trip paths and wish greatly to acquire the desired departure time (DDT), as well as the desired arrival time (DAT)

  • We have introduced a time-valuing utility assignment model based on the frequency of the day-to-day information self-learning evolution oversaturated condition for Feeder bus service (FBS)

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Summary

Introduction

Intelligent information systems have been widely used in public transit. Advanced traveler information systems (ATIS), such as automatic vehicle location (AVL) and auto fare collection (AFC), enable transit agencies to implement data analysis techniques and provide travelers with real-time information (RTI) aimed to support their travel decisions. This paper develops a stochastic user equilibrium (SUE) between a frequency-based feeder bus service and passengers’ day-to-day self-learning evolution behavior In this context, we present a frequency-based travel path choice model that can be self-optimized, considering different congestion effects. A schedule-based dynamic assignment model is developed for transit networks, which takes into account congestion through explicit vehicle capacity constraints. The main contributions of the present study are to model the day-to-day information evolution with the consideration of congested performance, and gain insights into the process of passenger flow evolution on an FBS over time This daily information evolution characteristic in the route choice can be clarified and encourage high-quality service.

Day-to-Day Information Learning Mechanism
Basic Elements and Assumptions
Running
Delay Time
In-FBS
Waiting Utilities
The Total Utilities
Solution Algorithm
Numerical Test
The volume-to-capacity ratio
Topological
Findings
Conclusions
Full Text
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