TY - JOUR
T1 - Capacitated transit service network design with boundedly rational agents
AU - Liu, Jiangtao
AU - Zhou, Xuesong
N1 - Funding Information:
We appreciate many insightful comments from a number of scholars in this field, especially Dr. Hani S. Mahmassani at Northwestern University and Dr. Jeffrey Stempihar at Arizona State University. We also appreciate three anonymous reviewers for their constructive comments. The second author wants to thank Dr. Thomas F. Rutherford at University of Wisconsin-Madison and Dr. Yafeng Yin at University of Florida for their discussions on network equilibrium. This paper is partially supported by National Science Foundation – United States under Grant No. CMMI 1538105 “Collaborative Research: Improving Spatial Observability of Dynamic Traffic Systems through Active Mobile Sensor Networks and Crowdsourced Data”. The work presented in this paper remains the sole responsibility of the authors.
Publisher Copyright:
© 2016
PY - 2016/11/1
Y1 - 2016/11/1
N2 - This paper proposes a new alternative modeling framework to systemically account for boundedly rational decision rules of travelers in a dynamic transit service network with tight capacity constraints. Within a time-discretized space-time network, the time-dependent transit services are characterized by traveling arcs and waiting arcs with constant travel times. Instead of using traditional flow-based formulations, an agent-based integer linear formulation is proposed to represent boundedly rational decisions under strictly imposed capacity constraints, due to vehicle carrying capacity and station storage capacity. Focusing on a viable and limited sets of space-time path alternatives, the proposed single-level optimization model can be effectively decomposed to a time-dependent routing sub-problem for individual agents and a knapsack sub-problem for service arc selections through the Lagrangian decomposition. In addition, several practically important modeling issues are discussed, such as dynamic and personalized transit pricing, passenger inflow control as part of network restraint strategies, and penalty for early/late arrival. Finally, numerical experiments are performed to demonstrate the methodology and computational efficiency of our proposed model and algorithm.
AB - This paper proposes a new alternative modeling framework to systemically account for boundedly rational decision rules of travelers in a dynamic transit service network with tight capacity constraints. Within a time-discretized space-time network, the time-dependent transit services are characterized by traveling arcs and waiting arcs with constant travel times. Instead of using traditional flow-based formulations, an agent-based integer linear formulation is proposed to represent boundedly rational decisions under strictly imposed capacity constraints, due to vehicle carrying capacity and station storage capacity. Focusing on a viable and limited sets of space-time path alternatives, the proposed single-level optimization model can be effectively decomposed to a time-dependent routing sub-problem for individual agents and a knapsack sub-problem for service arc selections through the Lagrangian decomposition. In addition, several practically important modeling issues are discussed, such as dynamic and personalized transit pricing, passenger inflow control as part of network restraint strategies, and penalty for early/late arrival. Finally, numerical experiments are performed to demonstrate the methodology and computational efficiency of our proposed model and algorithm.
KW - Agent-based model
KW - Boundedly rational agents
KW - Dynamic transit service network design
KW - Tight capacity constraint
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U2 - 10.1016/j.trb.2016.07.015
DO - 10.1016/j.trb.2016.07.015
M3 - Article
AN - SCOPUS:84980051706
SN - 0191-2615
VL - 93
SP - 225
EP - 250
JO - Transportation Research Part B: Methodological
JF - Transportation Research Part B: Methodological
ER -