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Comparison of Several Traffic Forecasting Methods Based on Travel Time Index Data on Weekends

Comparison of Several Traffic Forecasting Methods Based on Travel Time Index Data on Weekends
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摘要 Traffic forecasting provides the estimation of future traffic state to help traffic control,travel guide,etc. This paper compared several widely used traffic forecasting methods,and analyzed each one's performance in detail to make conclusions,which could redound to researchers choosing an appropriate traffic forecasting method in their own works. Compared with conventional works,this paper creatively assessed the performance of traffic forecasting methods based on travel time index (TTI) data prediction,which made the accuracy of our comparison better. Traffic forecasting provides the estimation of future traffic state to help traffic control,travel guide,etc. This paper compared several widely used traffic forecasting methods,and analyzed each one's performance in detail to make conclusions,which could redound to researchers choosing an appropriate traffic forecasting method in their own works. Compared with conventional works,this paper creatively assessed the performance of traffic forecasting methods based on travel time index (TTI) data prediction,which made the accuracy of our comparison better.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2010年第2期188-193,共6页 上海交通大学学报(英文版)
基金 the National Science and Technology Supporting Program during the 11th Five-year Plan Period of China(No.2006BAJ18B02)
关键词 traffic forecasting travel time index (TTI) performance evaluation traffic forecasting,travel time index (TTI),performance evaluation
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