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Disaggregate Traffic Mode Choice Model Based on Combination of Revealed and Stated Preference Data

机译:基于显性和陈述性偏好数据相结合的分解交通模式选择模型

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摘要

The conventional traffic demand forecasting methods based on revealed preference (RP) data are not able to predict the modal split. Passengers' stated intentions are indispensable for modal split forecasting and evaluation of new traffic modes. This paper analyzed the biases and errors included in stated preference data, put forward the new stochastic utility functions, and proposed an unbiased disaggregate model and its approximate model based on the combination of RP and stated preference (SP) data, with analysis of the parameter estimation algorithm. The model was also used to forecast rail transit passenger volumes to the Beijing Capital International Airport and the shift ratios from current traffic modes to rail transit. Experimental results show that the model can greatly increase forecasting accuracy of the modal split ratio of current traffic modes and can accurately forecast the shift ratios from current modes to the new mode.
机译:基于透露偏好(RP)数据的传统业务需求预测方法无法预测模态分割。乘客的说明书对于新交通模式的模态分体式预测和评估是必不可少的。本文分析了所说的偏好数据中包含的偏差和误差,提出了新的随机实用程序功能,并提出了基于RP和所述偏好(SP)数据的组合的非偏见的分解模型及其近似模型,分析参数估计算法。该模型还用于预测北京资本国际机场的铁路过境旅客体积以及从当前交通模式到轨道交通的班次比率。实验结果表明,该模型可以大大提高预测电流交通模式的模态分流比的准确性,可以准确地预测从当前模式到新模式的换档比率。

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