Title of article :
Data Processing Techniques for Real-Time Traveler Information: Use ofDedicated Short-Range Communications Probes on Suburban Arterial
Author/Authors :
Jang, Jinhwan Next Generation Infrastructure Research Center - Korea Institute of Civil Engineering and Building Technology - 283 Goyangdae-Ro - Illsanseo-Gu,Goyang-Si, Gyeonggi-Do10223, Republic of Korea
Pages :
10
From page :
99
To page :
108
Abstract :
Background:As wireless communication technologies evolve, probe-based travel-time collection systems are becoming popular around the globe. However, twoproblems generally arise in probe-based systems: one is the outlier and the other is time lag. To resolve the problems, methods for outlier removaland travel-time prediction need to be applied. Methods:In this study, data processing methods for addressing the two issues are proposed. After investigating the characteristic of the travel times on thetest section, the modified z-score was suggested for censoring outliers contained in probe travel times. To mitigate the time-lag phenomenon, arecurrent neural network, a class of deep learning where temporal sequence data are normally treated, was applied to predict travel times. Results:As a result of evaluation with ground-truth data obtained through test-car runs, the proposed methods showed enhanced performances withprediction errors lower than 13% on average compared to current practices. Conclusion:The suggested methods can make drivers to better arrange their trip schedules with real-time travel-time information with improved accuracy.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Travel time , Probe , Outlier , Prediction , DSRC , Data processing techniques
Journal title :
Open Transportation Journal
Serial Year :
2020
Full Text URL :
Record number :
2562112
Link To Document :
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