Using Tensor Completion Method to Achieving Better Coverage of Traffic State Estimation from Sparse Floating Car Data

Traffic state estimation from the floating car system is a challenging problem. The low penetration rate and random distribution make available floating car samples usually cover part space and time points of the road networks. To obtain a wide range of traffic state from the floating car system, many methods have been proposed to estimate the traffic state for the uncovered links. However, these methods cannot provide traffic state of the entire road networks. In this paper, the traffic state estimation is transformed to solve a missing data imputation problem, and the tensor completion framework is proposed to estimate missing traffic state. A tensor is constructed to model traffic state in which observed entries are directly derived from floating car system and unobserved traffic states are modeled as missing entries of constructed tensor. The constructed traffic state tensor can represent spatial and temporal correlations of traffic data and encode the multi-way properties of traffic state. The advantage of the proposed approach is that it can fully mine and utilize the multi-dimensional inherent correlations of traffic state. We tested the proposed approach on a well calibrated simulation network. Experimental results demonstrated that the proposed approach yield reliable traffic state estimation from very sparse floating car data, particularly when dealing with the floating car penetration rate is below 1%.

[1]  Jieping Ye,et al.  Tensor Completion for Estimating Missing Values in Visual Data , 2009, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[2]  Jianping Wu,et al.  An urban traffic speed fusion method based on principle component analysis and neural network , 2010, The 2010 International Joint Conference on Neural Networks (IJCNN).

[3]  Guangdong Feng,et al.  A Tensor Based Method for Missing Traffic Data Completion , 2013 .

[4]  B. Recht,et al.  Tensor completion and low-n-rank tensor recovery via convex optimization , 2011 .

[5]  Guangdong Feng,et al.  Traffic volume data outlier recovery via tensor model , 2013 .

[6]  T Zhu,et al.  Real-time traffic information repair algorithms based on FCD , 2007 .

[7]  Jianqiang Wang,et al.  RFID-Based Vehicle Positioning and Its Applications in Connected Vehicles , 2014, Sensors.

[8]  Dianfu Ma,et al.  Missing Data Compensation Model in Real-Time Traffic Information Service System , 2008, 2008 Fifth International Conference on Fuzzy Systems and Knowledge Discovery.

[9]  Gaetano Valenti,et al.  Traffic Estimation And Prediction Based On Real Time Floating Car Data , 2008, 2008 11th International IEEE Conference on Intelligent Transportation Systems.

[10]  Bin Cheng,et al.  A Tensor Completion-Based Traffic State Estimation Model , 2014 .

[11]  Lei Zhang,et al.  An Adaptive Longitudinal Driving Assistance System Based on Driver Characteristics , 2013, IEEE Transactions on Intelligent Transportation Systems.

[12]  Yi Zhang,et al.  A BPCA based missing value imputing method for traffic flow volume data , 2008, 2008 IEEE Intelligent Vehicles Symposium.

[13]  Der-Horng Lee,et al.  Probe Vehicle Population and Sample Size for Arterial Speed Estimation , 2002 .

[14]  Tamara G. Kolda,et al.  Scalable Tensor Factorizations with Missing Data , 2010, SDM.

[15]  Bin Ran,et al.  A New Traffic Prediction Method based on Dynamic Tensor Completion , 2013 .

[16]  Muhammad Tayyab Asif,et al.  Low-dimensional models for missing data imputation in road networks , 2013, 2013 IEEE International Conference on Acoustics, Speech and Signal Processing.

[17]  Yi Zhang,et al.  PPCA-Based Missing Data Imputation for Traffic Flow Volume: A Systematical Approach , 2009, IEEE Transactions on Intelligent Transportation Systems.

[18]  Zhipeng Li,et al.  A New Method For Urban Traffic State Estimation Based On Vehicle Tracking Algorithm , 2007, 2007 IEEE Intelligent Transportation Systems Conference.

[19]  WonkaPeter,et al.  Tensor Completion for Estimating Missing Values in Visual Data , 2013 .

[20]  Jianping,et al.  A BP neural network based information fusion method for urban traffic speed estimation , 2010 .

[21]  Bin Ran,et al.  Robust Missing Traffic Flow Imputation Considering Nonnegativity and Road Capacity , 2014 .

[22]  Huachun Tan,et al.  Low Multilinear Rank Approximation of Tensors and Application in Missing Traffic Data , 2014 .

[23]  Bin Ran,et al.  Perspectives on Future Transportation Research: Impact of Intelligent Transportation System Technologies on Next-Generation Transportation Modeling , 2012, J. Intell. Transp. Syst..

[24]  Yanan Zhao,et al.  The Entropy-Cost Function Evaluation Method for Unmanned Ground Vehicles , 2015 .

[25]  Weifeng Lv,et al.  An FCD Compensation Model Based on Traffic Condition Trends Matching , 2009, 2009 Fourth International Conference on Computer Sciences and Convergence Information Technology.