The Journal of The Korea Institute of Intelligent Transport Systems (한국ITS학회 논문지)
- Volume 3 Issue 1 Serial No. 4
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- Pages.45-52
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- 2004
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- 1738-0774(pISSN)
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- 2384-1729(eISSN)
Study on Imputation Methods of Missing Real-Time Traffic Data
실시간 누락 교통자료의 대체기법에 관한 연구
- Published : 2004.06.01
Abstract
There are many cities installing ITS(Intelligent Transportation Systems) and running TMC(Trafnc Management Center) to improve mobility and safety of roadway transportation by providing roadway information to drivers. There are many devices in ITS which collect real-time traffic data. We can obtain many valuable traffic data from the devices. But it's impossible to avoid missing traffic data for many reasons such as roadway condition, adversary weather, communication shutdown and problems of the devices itself. We couldn't do any secondary process such as travel time forecasting and other transportation related research due to the missing data. If we use the traffic data to produce AADT and DHV, essential data in roadway planning and design, We might get skewed data that could make big loss. Therefore, He study have explored some imputation techniques such as heuristic methods, regression model, EM algorithm and time-series analysis for the missing traffic volume data using some evaluating indices such as MAPE, RMSE, and Inequality coefficient. We could get the best result from time-series model generating 5.0
현재 여러 지자체에서 혼잡한 도시교통의 이동성 및 안전성을 향상시키기 위해 첨단교통관리체계(ITS)를 구축