Estimating probabilistic dynamic origin-destination demands using multi-day traffic data on computational graphs
Wei Ma, Sean Qian

TL;DR
This paper introduces a data-driven framework for estimating the probabilistic dynamic origin-destination demand using multi-day traffic data, improving understanding of demand variability for transportation planning.
Contribution
It develops a novel computational graph-based method that estimates mean and standard deviation of demand distributions, incorporating statistical distances like Wasserstein to enhance accuracy.
Findings
2-Wasserstein distance balances accuracy in mean and std estimation
Framework effectively reduces overfitting by modeling demand variation
Demonstrated on real-world networks with improved demand variability insights
Abstract
System-level decision making in transportation needs to understand day-to-day variation of network flows, which calls for accurate modeling and estimation of probabilistic dynamic travel demand on networks. Most existing studies estimate deterministic dynamic origin-destination (OD) demand, while the day-to-day variation of demand and flow is overlooked. Estimating probabilistic distributions of dynamic OD demand is challenging due to the complexity of the spatio-temporal networks and the computational intensity of the high-dimensional problems. With the availability of massive traffic data and the emergence of advanced computational methods, this paper develops a data-driven framework that solves the probabilistic dynamic origin-destination demand estimation (PDODE) problem using multi-day data. Different statistical distances (e.g., lp-norm, Wasserstein distance, KL divergence,…
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Taxonomy
TopicsTransportation Planning and Optimization · Traffic Prediction and Management Techniques · Urban Transport and Accessibility
MethodsEmirates Airlines Office in Dubai
