SOC-PHSYSYNov 8, 2019

Measuring and reducing the disequilibrium levels of dynamic networks through ride-sourcing vehicle data

arXiv:1905.053863 citationsh-index: 16
Originality Incremental advance
AI Analysis

For transportation network companies and traffic managers, this provides a practical way to measure and mitigate traffic disequilibrium using existing ride-sourcing data without compromising privacy.

This paper proposes a method to estimate the network disequilibrium level (NDL) from ride-sourcing vehicle data and introduces a zone-to-zone travel time data-sharing scheme. Using real-world data from Chengdu and Pittsburgh, they show that NDL-based routing on a small fraction of vehicles can reduce disequilibrium, with NDLs being high during high-demand periods.

Transportation systems are being reshaped by ride-sourcing and shared mobility services in recent years. The transportation network companies (TNCs) have been collecting high-granular ride-sourcing vehicle (RV) trajectory data over the past decade, while it is still unclear how the RV data can improve current dynamic network modeling for network traffic management. This paper proposes to statistically estimate network disequilibrium level (NDL), namely to what extent the dynamic user equilibrium (DUE) conditions are deviated in real-world networks. Using the data based on RV trajectories, we present a novel method to estimate the real-world NDL measure. More importantly, we present a method to compute zone-to-zone travel time data from trajectory-level RV data. This would become a data-sharing scheme for TNCs such that, while being used to effectively estimate and reduce NDL, the zone-to-zone data reveals neither personally identifiable information nor trip-level business information if shared with the public. In addition, we present an NDL based traffic management method to perform user optimal routing on a small fraction of vehicles in the network. The NDL measures and NDL-based routing are examined on two real-world large-scale networks: the City of Chengdu with trajectory-level RV data and the City of Pittsburgh with zone-to-zone travel time data. We found that, on weekdays in each city, NDLs are likely high when travel demand is high (thus when congestion is mild or heavy).

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