A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections

Time-dependent turning movement flows are very important input data for intelligent transportation systems but are impossible to be detected directly through current traffic surveillance systems. Existing estimation models have proved to be not accurate and reliable enough during all intervals. An i...

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Main Authors: Pengpeng Jiao, Tuo Sun, Lin Du
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2014/607195
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spelling doaj-023d65d2e92f4b1f8de7bd20308f973f2020-11-24T23:08:52ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472014-01-01201410.1155/2014/607195607195A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at IntersectionsPengpeng Jiao0Tuo Sun1Lin Du2School of Civil and Transportation Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, ChinaSchool of Civil and Transportation Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, ChinaSchool of Civil and Transportation Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, ChinaTime-dependent turning movement flows are very important input data for intelligent transportation systems but are impossible to be detected directly through current traffic surveillance systems. Existing estimation models have proved to be not accurate and reliable enough during all intervals. An improved way to address this problem is to develop a combined model framework that can integrate multiple submodels running simultaneously. This paper first presents a back propagation neural network model to estimate dynamic turning movements, as well as the self-adaptive learning rate approach and the gradient descent with momentum method for solving. Second, this paper develops an efficient Kalman filtering model and designs a revised sequential Kalman filtering algorithm. Based on the Bayesian method using both historical data and currently estimated results for error calibration, this paper further integrates above two submodels into a Bayesian combined model framework and proposes a corresponding algorithm. A field survey is implemented at an intersection in Beijing city to collect both time series of link counts and actual time-dependent turning movement flows, including historical and present data. The reported estimation results show that the Bayesian combined model is much more accurate and stable than other models.http://dx.doi.org/10.1155/2014/607195
collection DOAJ
language English
format Article
sources DOAJ
author Pengpeng Jiao
Tuo Sun
Lin Du
spellingShingle Pengpeng Jiao
Tuo Sun
Lin Du
A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections
Mathematical Problems in Engineering
author_facet Pengpeng Jiao
Tuo Sun
Lin Du
author_sort Pengpeng Jiao
title A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections
title_short A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections
title_full A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections
title_fullStr A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections
title_full_unstemmed A Bayesian Combined Model for Time-Dependent Turning Movement Proportions Estimation at Intersections
title_sort bayesian combined model for time-dependent turning movement proportions estimation at intersections
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2014-01-01
description Time-dependent turning movement flows are very important input data for intelligent transportation systems but are impossible to be detected directly through current traffic surveillance systems. Existing estimation models have proved to be not accurate and reliable enough during all intervals. An improved way to address this problem is to develop a combined model framework that can integrate multiple submodels running simultaneously. This paper first presents a back propagation neural network model to estimate dynamic turning movements, as well as the self-adaptive learning rate approach and the gradient descent with momentum method for solving. Second, this paper develops an efficient Kalman filtering model and designs a revised sequential Kalman filtering algorithm. Based on the Bayesian method using both historical data and currently estimated results for error calibration, this paper further integrates above two submodels into a Bayesian combined model framework and proposes a corresponding algorithm. A field survey is implemented at an intersection in Beijing city to collect both time series of link counts and actual time-dependent turning movement flows, including historical and present data. The reported estimation results show that the Bayesian combined model is much more accurate and stable than other models.
url http://dx.doi.org/10.1155/2014/607195
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AT tuosun abayesiancombinedmodelfortimedependentturningmovementproportionsestimationatintersections
AT lindu abayesiancombinedmodelfortimedependentturningmovementproportionsestimationatintersections
AT pengpengjiao bayesiancombinedmodelfortimedependentturningmovementproportionsestimationatintersections
AT tuosun bayesiancombinedmodelfortimedependentturningmovementproportionsestimationatintersections
AT lindu bayesiancombinedmodelfortimedependentturningmovementproportionsestimationatintersections
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