Publication | Open Access
Traffic Missing Data Imputation: A Selective Overview of Temporal Theories and Algorithms
21
Citations
87
References
2022
Year
Transport Network AnalysisTraffic TheoryEngineeringSelective OverviewIntelligent Traffic ManagementData ScienceData MiningData ImputationTraffic PredictionManagementBig DataData ManagementTransportation EngineeringStatisticsTransportation SystemsTemporal TheoriesPredictive AnalyticsComputer ScienceTraffic EngineeringTraffic MonitoringImputation StylesTraffic DataTraffic ManagementData Modeling
A great challenge for intelligent transportation systems (ITS) is missing traffic data. Traffic data are input from various transportation applications. In the past few decades, several methods for traffic temporal data imputation have been proposed. A key issue is that temporal information collected by neighbor detectors can make traffic missing data imputation more accurate. This review analyzes traffic temporal data imputation methods. Research methods, missing patterns, assumptions, imputation styles, application conditions, limitations, and public datasets are reviewed. Then, five representative methods are tested under different missing patterns and missing ratios. California performance measurement system (PeMS) data including traffic volume and speed are selected to conduct the test. Probabilistic principal component analysis performs the best under the most conditions.
| Year | Citations | |
|---|---|---|
Page 1
Page 1