Impacts of disability on daily travel behaviour: A systematic review

K Park, HN Esfahani, VL Novack, J Sheen… - Transport …, 2023 - Taylor & Francis
While people with disabilities have different travel patterns compared with the general
traveller population, such discrepancies are ignored in mainstream travel demand modelling …

[HTML][HTML] DeepTSP: Deep traffic state prediction model based on large-scale empirical data

Y Liu, C Lyu, Y Zhang, Z Liu, W Yu, X Qu - … in transportation research, 2021 - Elsevier
Real-time traffic state (eg, speed) prediction is an essential component for traffic control and
management in an urban road network. How to build an effective large-scale traffic state …

A Bayesian deep learning method for freeway incident detection with uncertainty quantification

G Liu, H Jin, J Li, X Hu, J Li - Accident Analysis & Prevention, 2022 - Elsevier
Incident detection is fundamental for freeway management to reduce non-recurrent
congestions and secondary incidents. Recently, machine learning technologies have made …

Deep spatio-temporal neural network based on interactive attention for traffic flow prediction

H Zeng, Z Peng, XH Huang, Y Yang, R Hu - Applied Intelligence, 2022 - Springer
Traffic flow forecasting is of great significance to urban traffic control and public safety
applications. The key challenge of traffic flow forecasting is how to capture the complex …

The changing accuracy of traffic forecasts

JM Hoque, GD Erhardt, D Schmitt, M Chen… - Transportation, 2022 - Springer
Researchers have improved travel demand forecasting methods in recent decades but
invested relatively little to understand their accuracy. A major barrier has been the lack of …

Deep-ensemble-based uncertainty quantification in spatiotemporal graph neural networks for traffic forecasting

T Mallick, P Balaprakash, J Macfarlane - arXiv preprint arXiv:2204.01618, 2022 - arxiv.org
Deep-learning-based data-driven forecasting methods have produced impressive results for
traffic forecasting. A major limitation of these methods, however, is that they provide …

Value of information in incentive design: A case study in simple congestion networks

BL Ferguson, PN Brown… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
It is well-known that system performance can experience significant degradation from the
self-interested choices of human users. Accordingly, in this article, we study the question of …

Determining contract conditions in a PPP project among deep uncertainty in future outturn travel demand

K Kim, J Kim, H Cho, D Yook - Transportation, 2024 - Springer
Accurate travel demand forecasting is crucial before finalizing the decision to implement a
public–private partnership (PPP). While government needs to determine the government …

Adaptive Modeling of Uncertainties for Traffic Forecasting

Y Wu, Y Ye, A Zeb, JJ Yu… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Deep neural networks (DNNs) have emerged as a dominant approach for developing traffic
forecasting models. These models are typically trained to minimize error on averaged test …

Are public transit investments based on accurate forecasts? An analysis of the improving trend of transit ridership forecasts in the United States

JM Hoque, I Zhang, D Schmitt, GD Erhardt - Transportation Research Part …, 2024 - Elsevier
Historically, forecasts of travel demand on public transit infrastructures have been found to
be optimistically biased. However, there has been a lack of data available for statistically …