Submission ID 103757

Session Title TP - Innovations in Transportation Analysis and Modelling
Title Seamless Integration of Traffic and Transit Assignment with Activity-Travel Scheduling in An Agent-Based Modelling Framework
Abstract or description

A behaviorally sound activity-based travel demand model would enable a realistic analysis of emerging mobility options and their integration into the already complex transportation system. Available regional travel demand models in the Greater Toronto and Hamilton Area (GTHA) use aggregate, static, and deterministic user equilibrium-based network models (e.g., the GTA and GGH models). There is no operational demand model available in the region that is of the entire GTHA multimodal transportation network that can capture the network dynamics and of an agent-based network microsimulation. 

This paper presents such a model. It is based on integrating an activity-based modelling framework named CUSTOM (Comprehensive Utility Maximizing Travel Options Modelling) to a network model, GTASim that is developed using a multi-agent-based transport simulation framework covering the GTHA region.

The CUSTOM considers a 24-hour modelling time frame for the activity-travel scheduling process. It is based on the random utility maximization theory and provides individuals’ joint choice of activity type, location, departure time and mode. The mode choice component is implicitly history-dependent through the choice set formulation and thus, captures the most fundamental physical constraints (i.e., tour constraints). The CUSTOM framework generates preferred activity-travel plans of agents representing the demand of the urban transport system. The GTASim executes the plans assigning travellers in the road and transit networks representing the supply. The demand-supply interaction outcome is the urban transport system's level of service (LOS). The LOS is then fed back to the scheduler, generating adjusted activity-travel plans. This feedback mechanism represents the reality that trip markers modify their behaviours considering scarce and sometimes costly transport network supply. 

However, the GTASim and CUSTOM model is calibrated independently to the Transportation Tomorrow Survey 2016 household travel survey dataset, and the feedback loop is missing to date. Moreover, the current GTASim lacks the capability to accurately account for the time-varying monetary cost of travel. Hence, this paper makes two substantial and noteworthy contributions. Firstly, the study extends GTASIM’s capacity to account for the monetary cost of individual trips in the scoring of each trip leg (with a focus on transit fares). Then, developing the integrated framework which makes it transferable to any study context. 

Our adaptable and forward-thinking framework considers changing travel preferences and provides authorities with a powerful tool for meeting future transportation demands while ensuring safety and efficiency for all.

Presentation Description (for Conference App)
Presenter and/or Author Information Alec Mak, University of Toronto
Sk. Md. Mashrur, University of Toronto
Kaili Wang, University of Toronto
Khandker Nurul Habib, University of Toronto
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