Effective prediction of turning movement counts at intersections through efficient and accurate methods is essential and needed for various applications. Commonly predictive methods require extensive data collection, calibration, and modeling efforts to estimate turning movements. In this study, three models were proposed to estimate turning movements at signalized intersections using approach volumes. Two sets of data from the United States and Canada were obtained to develop and test the proposed models. Machine learning-based regression models, including random forest regressor (RFR) and multioutput regressor (MOR) in addition to an artificial neural network (ANN) model, were developed and trained to analyze the relationship between appr...
Navigating a car at intersections is one of the most challenging parts of urban driving. Successful ...
Abstract: In recent years, an increasing number of models and algorithms based on time series predic...
Abstract: In recent years, an increasing number of models and algorithms based on time series predic...
Intersection turning movements' counts are critical input data for traffic studies, analysis, and fo...
Accurate turning movement counts in interchanges and intersections are priceless information in traf...
41887417Technical Assistance; Aug. 1998 - May 1999PDFTech Reporthttp://ntl.bts.gov/lib/21000/21900/2...
Time-dependent turning movement flows are very important input data for intelligent transportation s...
In dependence upon a given geometric configuration, an actual or forecasted number of vehicles arriv...
Vehicle-to-Infrastructure (V2I) communication has provided a solution for the improvement of the tra...
Building on the research performed in Phases I and II of this study, the authors develop in Phase II...
This paper presents an alternative approach for estimating the turning radius using machine learning...
A recently developed machine learning technique, multivariate adaptive regression splines (MARS), is...
Copyright © 2013 Kun Xu et al. This is an open access article distributed under the Creative Commons...
Urban arterials connect multiple areas in the city and encourage non-motorist activities. Hence, the...
Turning vehicle volumes at signalized intersections are critical inputs for various transportation s...
Navigating a car at intersections is one of the most challenging parts of urban driving. Successful ...
Abstract: In recent years, an increasing number of models and algorithms based on time series predic...
Abstract: In recent years, an increasing number of models and algorithms based on time series predic...
Intersection turning movements' counts are critical input data for traffic studies, analysis, and fo...
Accurate turning movement counts in interchanges and intersections are priceless information in traf...
41887417Technical Assistance; Aug. 1998 - May 1999PDFTech Reporthttp://ntl.bts.gov/lib/21000/21900/2...
Time-dependent turning movement flows are very important input data for intelligent transportation s...
In dependence upon a given geometric configuration, an actual or forecasted number of vehicles arriv...
Vehicle-to-Infrastructure (V2I) communication has provided a solution for the improvement of the tra...
Building on the research performed in Phases I and II of this study, the authors develop in Phase II...
This paper presents an alternative approach for estimating the turning radius using machine learning...
A recently developed machine learning technique, multivariate adaptive regression splines (MARS), is...
Copyright © 2013 Kun Xu et al. This is an open access article distributed under the Creative Commons...
Urban arterials connect multiple areas in the city and encourage non-motorist activities. Hence, the...
Turning vehicle volumes at signalized intersections are critical inputs for various transportation s...
Navigating a car at intersections is one of the most challenging parts of urban driving. Successful ...
Abstract: In recent years, an increasing number of models and algorithms based on time series predic...
Abstract: In recent years, an increasing number of models and algorithms based on time series predic...