Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections

Intersections are the bottlenecks of the road network. The capacity of signalized intersections restricts the operation of the road network. Dynamic estimation of capacity is necessary for signalized intersections refined management. With the development of technology, more and more detectors were i...

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Main Authors: Yi Wang, Jian Rong, Chenjing Zhou, Yacong Gao
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Information
Subjects:
Online Access:https://www.mdpi.com/2078-2489/11/4/178
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spelling doaj-796084e6655544e4a90d4db12fba56872020-11-25T02:39:34ZengMDPI AGInformation2078-24892020-03-0111417810.3390/info11040178info11040178Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized IntersectionsYi Wang0Jian Rong1Chenjing Zhou2Yacong Gao3Beijing Key Laboratory of Traffic Engineering, Beijing Engineering Research Center of Urban Transport Operation Guarantee, Beijing University of Technology, Beijing 100124, ChinaBeijing Key Laboratory of Traffic Engineering, Beijing Engineering Research Center of Urban Transport Operation Guarantee, Beijing University of Technology, Beijing 100124, ChinaSchool of Civil and Transportation Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, ChinaBeijing Key Laboratory of Traffic Engineering, Beijing Engineering Research Center of Urban Transport Operation Guarantee, Beijing University of Technology, Beijing 100124, ChinaIntersections are the bottlenecks of the road network. The capacity of signalized intersections restricts the operation of the road network. Dynamic estimation of capacity is necessary for signalized intersections refined management. With the development of technology, more and more detectors were installed near the intersection. It had been the information-rich environment, which provided support for dynamic estimation of capacity. A dynamic estimation method for a saturation flow rate based on a neural network was developed. It would grasp the dynamic change of saturation flow rates and influencing factors. The measure data at three scenarios (through lanes, shared right-turn and through lanes, shared left-turn and through lanes) of signalized intersections in Beijing were taken as examples to validate the proposed method. Firstly, the traffic flow characteristics of the three scenarios and factors affecting the saturation flow rate were analyzed. Secondly, neural network models of the three scenarios were established. Then the hyperparameters of neural network models were determined. After training, the neural network structure and parameters were saved. Lastly, the test set data was validated by the training model. At the same time, the proposed method was compared with the Highway Capacity Manual (HCM) method and the statistical regression method. The results show that both regression models and neural network models have better accuracy than HCM models. In a simple scenario, the neural network models are not much different from the regression models. With the increase of complexity of scenarios, the advantages of neural network models are highlighted. In through-left lane and through-right lane scenarios, the estimated saturation flow rates used by the proposed method were 7.02%, 4.70%, respectively. In the complexity of traffic scenarios, the proposed method can estimate the saturation flow rate accurately and timely. The results could be used for signal control schemes optimizing and operation managing at signalized intersections subtly.https://www.mdpi.com/2078-2489/11/4/178traffic engineeringsignalized intersectionsdynamic estimationneural networksaturation flow rate
collection DOAJ
language English
format Article
sources DOAJ
author Yi Wang
Jian Rong
Chenjing Zhou
Yacong Gao
spellingShingle Yi Wang
Jian Rong
Chenjing Zhou
Yacong Gao
Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections
Information
traffic engineering
signalized intersections
dynamic estimation
neural network
saturation flow rate
author_facet Yi Wang
Jian Rong
Chenjing Zhou
Yacong Gao
author_sort Yi Wang
title Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections
title_short Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections
title_full Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections
title_fullStr Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections
title_full_unstemmed Dynamic Estimation of Saturation Flow Rate at Information-Rich Signalized Intersections
title_sort dynamic estimation of saturation flow rate at information-rich signalized intersections
publisher MDPI AG
series Information
issn 2078-2489
publishDate 2020-03-01
description Intersections are the bottlenecks of the road network. The capacity of signalized intersections restricts the operation of the road network. Dynamic estimation of capacity is necessary for signalized intersections refined management. With the development of technology, more and more detectors were installed near the intersection. It had been the information-rich environment, which provided support for dynamic estimation of capacity. A dynamic estimation method for a saturation flow rate based on a neural network was developed. It would grasp the dynamic change of saturation flow rates and influencing factors. The measure data at three scenarios (through lanes, shared right-turn and through lanes, shared left-turn and through lanes) of signalized intersections in Beijing were taken as examples to validate the proposed method. Firstly, the traffic flow characteristics of the three scenarios and factors affecting the saturation flow rate were analyzed. Secondly, neural network models of the three scenarios were established. Then the hyperparameters of neural network models were determined. After training, the neural network structure and parameters were saved. Lastly, the test set data was validated by the training model. At the same time, the proposed method was compared with the Highway Capacity Manual (HCM) method and the statistical regression method. The results show that both regression models and neural network models have better accuracy than HCM models. In a simple scenario, the neural network models are not much different from the regression models. With the increase of complexity of scenarios, the advantages of neural network models are highlighted. In through-left lane and through-right lane scenarios, the estimated saturation flow rates used by the proposed method were 7.02%, 4.70%, respectively. In the complexity of traffic scenarios, the proposed method can estimate the saturation flow rate accurately and timely. The results could be used for signal control schemes optimizing and operation managing at signalized intersections subtly.
topic traffic engineering
signalized intersections
dynamic estimation
neural network
saturation flow rate
url https://www.mdpi.com/2078-2489/11/4/178
work_keys_str_mv AT yiwang dynamicestimationofsaturationflowrateatinformationrichsignalizedintersections
AT jianrong dynamicestimationofsaturationflowrateatinformationrichsignalizedintersections
AT chenjingzhou dynamicestimationofsaturationflowrateatinformationrichsignalizedintersections
AT yaconggao dynamicestimationofsaturationflowrateatinformationrichsignalizedintersections
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