abstract: Modern intelligent transportation systems (ITS) make driving more efficient, easier, and safer. Knowledge of real-time traffic conditions is a critical input for operating ITS. Real-time freeway traffic state estimation approaches have been used to quantify traffic conditions given limited amount of data collected by traffic sensors. Currently, almost all real-time estimation methods have been developed for estimating laterally aggregated traffic conditions in a roadway segment using link-based models which assume homogeneous conditions across multiple lanes. However, with new advances and applications of ITS, knowledge of lane-based traffic conditions is becoming important, where the traffic condition differences among lanes are ...
Variable techniques have been used to collect traffic data and estimate traffic conditions. In most ...
Summarization: Three filtering-based approaches to freeway traffic state estimation are studied usin...
This research developed a real-time traffic condition assessment and prediction framework using Vehi...
Recently, development in intelligent transportation systems (ITS) requires the input of various kind...
This dissertation is motivated by the practical problems of highway traffic estimation and incident ...
Freeway networks are generally equipped with different types of sensors which are able to measure tr...
In recent years, rapid advances in information technology have led to various data collection system...
Traffic information systems play an important role in the world as numerous people rely on the road ...
In this thesis, seven multi-sensor data fusion based estimation techniques are investigated. All met...
The importance of travel time estimation has increased due to the central role it plays in a number ...
Real-data testing results of a real-time nonlinear freeway traffic state estimator are presented wit...
Road traffic is important to everybody in the world. People travel and commute everyday. For those w...
AbstractIntelligent transportation system (ITS) infrastructures contain sensors, data processing, an...
AbstractThis paper explores the traffic state estimation on freeways in urban areas combining point-...
The purpose of this study is to develop a traffic estimation framework which combines different data...
Variable techniques have been used to collect traffic data and estimate traffic conditions. In most ...
Summarization: Three filtering-based approaches to freeway traffic state estimation are studied usin...
This research developed a real-time traffic condition assessment and prediction framework using Vehi...
Recently, development in intelligent transportation systems (ITS) requires the input of various kind...
This dissertation is motivated by the practical problems of highway traffic estimation and incident ...
Freeway networks are generally equipped with different types of sensors which are able to measure tr...
In recent years, rapid advances in information technology have led to various data collection system...
Traffic information systems play an important role in the world as numerous people rely on the road ...
In this thesis, seven multi-sensor data fusion based estimation techniques are investigated. All met...
The importance of travel time estimation has increased due to the central role it plays in a number ...
Real-data testing results of a real-time nonlinear freeway traffic state estimator are presented wit...
Road traffic is important to everybody in the world. People travel and commute everyday. For those w...
AbstractIntelligent transportation system (ITS) infrastructures contain sensors, data processing, an...
AbstractThis paper explores the traffic state estimation on freeways in urban areas combining point-...
The purpose of this study is to develop a traffic estimation framework which combines different data...
Variable techniques have been used to collect traffic data and estimate traffic conditions. In most ...
Summarization: Three filtering-based approaches to freeway traffic state estimation are studied usin...
This research developed a real-time traffic condition assessment and prediction framework using Vehi...