发明名称 TRAFFIC PREDICTION USING REAL-WORLD TRANSPORTATION DATA
摘要 Real-time high-fidelity spatiotemporal data on transportation networks can be used to learn about traffic behavior at different times and locations, potentially resulting in major savings in time and fuel. Real-world data collected from transportation networks can be used to incorporate the data's intrinsic behavior into a time-series mining technique to enhance its accuracy for traffic prediction. For example, the spatiotemporal behaviors of rush hours and events can be used to perform a more accurate prediction of both short-term and long-term average speed on road-segments, even in the presence of infrequent events (e.g., accidents). Taking historical rush-hour behavior into account can improve the accuracy of traditional predictors by up to 67% and 78% in short-term and long-term predictions, respectively. Moreover, the impact of an accident can be incorporated to improve the prediction accuracy by up to 91%.
申请公布号 US2014114556(A1) 申请公布日期 2014.04.24
申请号 US201314060360 申请日期 2013.10.22
申请人 PAN BEI;DEMIRYUREK UGUR;SHAHABI CYRUS;UNIVERSITY OF SOUTHERN CALIFORNIA 发明人 PAN BEI;DEMIRYUREK UGUR;SHAHABI CYRUS
分类号 G08G1/00 主分类号 G08G1/00
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