Travel Demand Model of a Sequential Short-time in an Urban Area
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概要
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In this paper, the structure of a time-of day travel demand forecasting model system is discussed. A short-time Origin-Destination [OD] model is constructed to estimate traffic volume in each time class during a day. A short-time traffic assignment is also proposed considering some trips do not always arrive at a destination within the same time class and link into the next phase. Also, sequential short-time modal split must consider traffic conditions of each time class. Therefore, joint modal split and assignment model is constructed. In these models, time distributions and trip-length are required. These models are analyzed considering differences in characteristics of trip purposes and personal attributes and estimated by model parameters from the Person Trip Survey data.
- 九州大学の論文
著者
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TOI Satoshi
Department of Urban and Environmental Engineering
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KAJITA Yoshitaka
Department of Urban and Environmental Engineering
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Toi Satoshi
Department Of Urban And Environmental Engineering Faculty Of Engineering Kyushu University
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Kajita Yoshitaka
Department Of Urban And Environmental Engineering Faculty Of Engineering Kyushu University
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KUBO Yuho
Department of Urban and Environmental Engineering, Graduate School of Engineering, Kyushu University
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Kubo Yuho
Department Of Urban And Environmental Engineering Graduate School Of Engineering Kyushu University
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