Abstract
Abstract Traffic congestion across the world has reached chronic levels. Despite many technological disruptions, one of the most fundamental and widely used functions within traffic modeling, the volume–delay function has seen little in the way of change since it was developed in the 1960s. Traditionally macroscopic methods have been employed to relate traffic volume to vehicular journey time. The general nature of these functions enables their ease of use and gives widespread applicability. However, they lack the ability to consider individual road characteristics (i.e., geometry, presence of traffic furniture, road quality, and surrounding environment). This research investigates the feasibility to reconstruct the model using two different data sources, namely the traffic speed from Google Maps’ Directions Application Programming Interface (API) and traffic volume data from automated traffic counters (ATC). Google’s traffic speed data are crowd-sourced from the smartphone Global Positioning System (GPS) of road users, able to reflect real-time, context-specific traffic condition of a road. On the other hand, the ATCs enable the harvesting of the vehicle volume data over equally fine temporal resolutions (hourly or less). By combining them for different road types in London, new context-specific volume–delay functions can be generated. This method shows promise in selected locations with the generation of robust functions. In other locations, it highlights the need to better understand other influencing factors, such as the presence of on-road parking or weather events.
Highlights
When the vehicular demand for a road exceeds its free-flow threshold, a journey time-delay is incurred, resulting in congestion
Using fine-resolution data in the form of automated traffic counters (ATC) and aggregated device-based location-informed journey times on a range of roads, we demonstrate the capability of the new data-driven approach for efficiently capturing the volume–delay characteristics of roads in selected roads in Greater London
This study investigates the use of novel real-time crowd-sourced data feeds that have wider spatial coverage and are not generated for estimating volume–delay functions
Summary
When the vehicular demand for a road exceeds its free-flow threshold, a journey time-delay is incurred, resulting in congestion. This research aims to provide an efficient data-driven approach to calibrate the volume–delay curves by incorporating emerging data sources, mainly crowd-sourced travel time information from location and routing service providers, such as Google Maps (Google Inc., 2020). This type of calibration has never been done before to our knowledge. These data are used for estimating the road characteristics (free-flow travel time and capacity) and calibrating the volume–delay curve coefficients. Using fine-resolution data in the form of ATCs and aggregated device-based location-informed journey times on a range of roads, we demonstrate the capability of the new data-driven approach for efficiently capturing the volume–delay characteristics of roads in selected roads in Greater London
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