SUN Weiwei, HE Zhaocheng, CHEN Ruixiang, et al. Expressway link speed correction model based on multiple types of floating car data[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2018,57(6):88-96.
SUN Weiwei, HE Zhaocheng, CHEN Ruixiang, et al. Expressway link speed correction model based on multiple types of floating car data[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2018,57(6):88-96. DOI: 10.13471/j.cnki.acta.snus.2018.06.011.
Taking into account the multiple types of floating cars and the different vehicles’ performance among distinct vehicle types
in order to obtain more accurate link speed
this paper distinguishes vehicle types and introduces artificial neural network technology to model the velocity of the floating vehicles and link speeds on highway. We apply the floating car data from Guangzhou Airport highway for model verification
and compared with the Bayesian Network based method. The results show that the average absolute relative error (MAPE) of the link speed before correction is about 20%
the average absolute error (ABS) is about 8 km/h
the MAPE of the link speed after correction is less than 10%
and the ABS is less than 5 km/h
which shows that the proposed method has good effect.
关键词
多类型浮动车数据路段速度修正人工神经网络高速公路路段速度
Keywords
multiple types of floating car dataroad speed correctionartificial neural networkroad speed of highway