Exploring the Multi-modal Demand Dynamics During Transport System
Disruptions
- URL: http://arxiv.org/abs/2307.00877v1
- Date: Mon, 3 Jul 2023 09:15:28 GMT
- Title: Exploring the Multi-modal Demand Dynamics During Transport System
Disruptions
- Authors: Ali Shateri Benam, Angelo Furno, Nour-Eddin El Faouzi
- Abstract summary: This study takes a data-driven approach to explore multi-modal demand dynamics under disruptions.
We first develop a methodology to automatically detect anomalous instances through historical hourly travel demand data.
Then we apply clustering to these anomalous hours to distinguish various forms of multi-modal demand dynamics occurring during disruptions.
- Score: 0.47267770920095536
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Various forms of disruption in transport systems perturb urban mobility in
different ways. Passengers respond heterogeneously to such disruptive events
based on numerous factors. This study takes a data-driven approach to explore
multi-modal demand dynamics under disruptions. We first develop a methodology
to automatically detect anomalous instances through historical hourly travel
demand data. Then we apply clustering to these anomalous hours to distinguish
various forms of multi-modal demand dynamics occurring during disruptions. Our
study provides a straightforward tool for categorising various passenger
responses to disruptive events in terms of mode choice and paves the way for
predictive analyses on estimating the scope of modal shift under distinct
disruption scenarios.
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