Estimating and predicting traffic conditions in arterial networks using probe data has proven to be a substantial challenge. In the United States, sparse probe data represents the vast majority of the data available on arterial roads in most major urban environments. This article proposes a probabilistic modeling framework for estimating and predicting arterial travel time distributions using sparsely observed probe vehicles. We evaluate our model using data from a fleet of 500 taxis in San Francisco, CA, which send GPS data to our server every minute. The sampling rate does not provide detailed information about where vehicles encountered delay or the reason for any delay (i.e. signal delay, congestion delay, etc.). Our model provides an i...
With the advances in sensing technologies along with innovative modelling and estimation method, a v...
While vehicular flows on freeways are often treated as uninterrupted flows, flows on arterials are c...
Congestion in urban areas causes financial loss to business and increased use of energy compared wit...
Predicting travel times of vehicles in urban settings is a useful and tangible quantity of interest ...
Travel time is a crucial variable both in traffic demand modeling and for measuring network perform...
Traffic information systems play an important role in the world as numerous people rely on the road ...
Traffic congestion is a perpetual challenge in metropolitan areas around the world. The ability to u...
The use of probe vehicles to provide estimates of link travel times has been suggested as a means of...
International audienceEstimating and analyzing traffi c conditions on large arterial networks is an ...
Most optimal routing problems focus on minimizing travel time or distance traveled. Oftentimes, a mo...
The collection of actual traffic delays and road traffic speed data is essential in modelling urban ...
Recent advances in the probe vehicle deployment offer an innovative prospect for research in arteria...
The collection of actual traffic delays and road traffic speed data is essential in modelling urban ...
While vehicular flows on freeways are often treated as uninterrupted flows, flows on arterials are c...
Travel time is an important network performance measure and it quantifies congestion in a manner eas...
With the advances in sensing technologies along with innovative modelling and estimation method, a v...
While vehicular flows on freeways are often treated as uninterrupted flows, flows on arterials are c...
Congestion in urban areas causes financial loss to business and increased use of energy compared wit...
Predicting travel times of vehicles in urban settings is a useful and tangible quantity of interest ...
Travel time is a crucial variable both in traffic demand modeling and for measuring network perform...
Traffic information systems play an important role in the world as numerous people rely on the road ...
Traffic congestion is a perpetual challenge in metropolitan areas around the world. The ability to u...
The use of probe vehicles to provide estimates of link travel times has been suggested as a means of...
International audienceEstimating and analyzing traffi c conditions on large arterial networks is an ...
Most optimal routing problems focus on minimizing travel time or distance traveled. Oftentimes, a mo...
The collection of actual traffic delays and road traffic speed data is essential in modelling urban ...
Recent advances in the probe vehicle deployment offer an innovative prospect for research in arteria...
The collection of actual traffic delays and road traffic speed data is essential in modelling urban ...
While vehicular flows on freeways are often treated as uninterrupted flows, flows on arterials are c...
Travel time is an important network performance measure and it quantifies congestion in a manner eas...
With the advances in sensing technologies along with innovative modelling and estimation method, a v...
While vehicular flows on freeways are often treated as uninterrupted flows, flows on arterials are c...
Congestion in urban areas causes financial loss to business and increased use of energy compared wit...