Sample size analysis of GPS probe vehicles for urban traffic state estimation

ITSC(2011)

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摘要
Nowadays, probe vehicles equipped with Global Position System (GPS) are an effective way of collecting real-time traffic information. This paper first briefly introduces the Curve-Fitting Estimation Model (CFEM), which is one of the typical methods using GPS data to estimate the traffic flow state. After that, it is detailedly analyzed how many probe vehicles the CFEM requires in order to ensure enough estimated accuracy. Furthermore, a sample size algorithm is developed to calculate the minimum sample size of the CFEM. In the algorithm, the road type, the length of road section, and sample frequency are taken into account. Finally, the proposed algorithm of sample size analysis are tested by the experiments using the data collected from the road network of the whole center region of Shanghai.
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关键词
global positioning system,cfem,urban traffic state estimation,road vehicles,probes,traffic flow state,global position system,curve fitting,sample size analysis,real-time traffic information,road network,probe vehicles,road traffic,gps probe vehicles,shanghai,curve-fitting estimation model,traffic flow,sample size,sampling,estimation theory,algorithms
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