An Exact System Optimum Assignment Model for Transit Demand Management
Xia Zhou, Mark Wallace, Daniel D. Harabor, and Zhenliang Ma

TL;DR
This paper introduces an exact system optimum model for transit assignment that accurately captures congestion reduction potential, surpassing previous approximate methods, and provides practical insights for transit system improvements.
Contribution
It develops an exact SO method for the STAP that incorporates realistic constraints, improving accuracy over approximate models and enabling better congestion management strategies.
Findings
Exact SO solution reduces congestion cost by 36.35%
Approximate SO underestimates potential congestion reduction
Method applied to Hong Kong MTR network with detailed insights
Abstract
Mass transit systems are experiencing increasing congestion in many cities. The schedule-based transit assignment problem (STAP) involves a joint choice model for departure times and routes, defining a space-time path in which passengers decide when to depart and which route to take. User equilibrium (UE) models for the STAP indicates the current congestion cost, while a system optimum (SO) models can provide insights for congestion relief directions. However, current STAP methods rely on approximate SO (Approx. SO) models, which underestimate the potential for congestion reduction in the system. The few studies in STAP that compute exact SO solutions ignore realistic constraints such as hard capacity, multi-line networks, or spatial-temporal competing demand flows. The paper proposes an exact SO method for the STAP that overcomes these limitations. We apply our approach to a case study…
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Taxonomy
TopicsTransportation Planning and Optimization · Railway Systems and Energy Efficiency · Transportation and Mobility Innovations
