Back to Search
Start Over
An Imputation Method for Missing Traffic Data Based on FCM Optimized by PSO-SVR
- Source :
- Journal of Advanced Transportation. Annual, 2018, Vol. 2018
- Publication Year :
- 2018
-
Abstract
- Missing traffic data are inevitable due to detector failure or communication failure. Currently, most of imputation methods estimated the missing traffic values by using spatial-temporal information as much as possible. However, it ignores an important fact that spatial-temporal information of the traffic missing data is often incomplete and unavailable. Moreover, most of the existing methods are verified by traffic data from freeway, and their applicability to urban road data needs to be further verified. In this paper, a hybrid method for missing traffic data imputation is proposed using FCM optimized by a combination of PSO algorithm and SVR. In this method, FCM is the basic algorithm and the parameters of FCM are optimized. Firstly, the patterns of missing traffic data are analyzed and the representation of missing traffic data is given using matrix-based data structure. Then, traffic data from urban expressway and urban arterial road are used to analyze spatial-temporal correlation of the traffic data for the determination of the proposed method input. Finally, numerical experiment is designed from three perspectives to test the performance of the proposed method. The experimental results demonstrate that the novel method not only has high imputation precision, but also exhibits good robustness.<br />1. Introduction With the continuous increase in travel demand, the urban road traffic congestion is becoming ever more serious. However, it is not sufficient to solve the problem of traffic [...]
- Subjects :
- Algorithm
Algorithms -- Methods
Subjects
Details
- Language :
- English
- ISSN :
- 01976729
- Volume :
- 2018
- Database :
- Gale General OneFile
- Journal :
- Journal of Advanced Transportation
- Publication Type :
- Academic Journal
- Accession number :
- edsgcl.591394616
- Full Text :
- https://doi.org/10.1155/2018/2935248