Mobility Compass

Discover mobility and transportation research. Find experts, partners, networks.

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The Mobility Compass is an open tool for improving networking and interdisciplinary exchange within mobility and transport research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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Mouftah, Hussein T.
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Eggermond, Michael Van

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (5/5 displayed)

  • 2025Assessing the effectiveness of an online cycling training for adults to master complex traffic situations2citations
  • 2025Quantifying the effect of road design on urban road driving speed1citations
  • 2023Quantifying the effect of street design on driving speed on urban roadscitations
  • 2022Pool More, Drive Less: An In-Depth Qualitative Investigation of Barriers and Motivators of Ride-Pooling in Autonomous Vehiclescitations
  • 2022Forecasting district-wide pedestrian volumes in multi-level networks in high-density mixed-use areascitations

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Studer, Nora
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Johnson, Lucy
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Knecht, Leah
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Schaffner, Dorothea
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Erath, Alexander
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Stefanelli, Annalisa
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Haiderer, Nicole
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Helle, Veera
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Co-Authors (by relevance)

  • Studer, Nora
  • Johnson, Lucy
  • Knecht, Leah
  • Schaffner, Dorothea
  • Erath, Alexander
  • Stefanelli, Annalisa
  • Haiderer, Nicole
  • Xu, Shuchen
  • Acebillo, Pablo
  • Helle, Veera
  • Mavros, Panos
OrganizationsLocationPeople

document

Forecasting district-wide pedestrian volumes in multi-level networks in high-density mixed-use areas

  • Erath, Alexander
  • Eggermond, Michael Van
  • Xu, Shuchen
  • Acebillo, Pablo
  • Helle, Veera
  • Mavros, Panos

Abstract

This paper is concerned with improvements in the forecasting of pedestrian flows in multilevel pedestrian networks in high-density urban environments. 3D network topology measures are combined with land-use data, and validated against extensive pedestrian counts, to provide both evidence for the applicability of network analysis in tropical metropolises, as well as a calibrated tool for urban planners. The research focuses on four area in Singapore. These areas have in common that they all are prominent transport hubs, but differ in surrounding land-use types and dominant network topology (e.g. indoor, outdoor, above ground, below ground, at grade). Multi-level pedestrian networks were drawn based on OpenStreetMap, include sidewalks on both sides of major roads for a radius up to 2 kilometres from the site centroids. Spatial network analysis was performed using sDNA which allows vertical networks to generate measures describing the spatial configuration of the network. Subsequently, pedestrian counts were conducted during three consecutive days. In total, counts were conducted at more than 250 locations in 2018 and 2019, well before the global COVID19 pandemic. Pedestrian flows are set against a series of variables, including pedestrian attractors and generators (e.g. shops, offices, hotels, dwellings), and variables describing the spatial configuration of the network, using advanced regression models. Our results show that betweenness metrics (i.e. space syntax choice) combined with land-use yield high predictive power. Dependent on the study site, network metrics based on angular distance outperform those based on metric distance or perceived link distance. This research demonstrates that is necessary to account for the multi-level nature of networks, and that indoor flows through private developments cannot be neglected, in particular when planning for integrated transport developments. The paper concludes with recommendations and implications for practice.

Topics

  • forecasting
  • data
  • road
  • generator
  • variable
  • pandemic
  • density
  • recommendation
  • shopping facility
  • regression analysis
  • sidewalk
  • hub
  • pedestrian
  • residence
  • topology
  • transport hub
  • COVID-19
  • pedestrian flow
  • hotel
  • pedestrian count
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