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61.
精细化需求预测是铁路提高收益的重要基础.本文考虑了铁路产品属性对于旅客选择行为的影响,构建具有一定偏好顺序的产品集合来表征不同类型的旅客.在此基础上,利用客票存根及余票数据,建立预售期内旅客选择过程的极大似然函数,求解得到不同旅客类型的出现概率.首先通过仿真算例验证了模型的计算可行性,然后通过实证数据,估算了北京南至上海虹桥方向不同旅客类型在各时段的出现概率,进一步统计得到旅客在不同时段下铁路旅客buy-up行为概率及属性敏感度的变化,并提出一些可用于优化售票策略的建议. 相似文献
62.
铁路运输中旅客购票行为是铁路客运运营策略制定的重要基础.旅客购票行为直接影响着列车能力的占用过程,是铁路客运票额组织的重要依据.根据贵阳—广州高速铁路的旅客购票统计数据,以高铁购票旅客为样本,运用主成分分析法购票行为的特征属性进行综合分析,获得购票行为中重要特征变量.结合单次购票强度提出基于模糊C均值的双重聚类算法,对购票旅客进行聚类,并利用模糊聚类有效性指标Xie-beni和分离系数法确定最佳聚类数.结果表明,高铁旅客购票行为的关键特性为单次出行旅客人数、购票提前天数、出行OD城市人均GDP和购票渠道;不同旅客类型的购票行为有明显特性. 相似文献
63.
随着海事事故与海上违法行为的不断增多,智能的监控方法成为降低海事事故,打击海上违法行为的有效手段.同时,船舶自动识别系统(Automatic Identification System,AIS)的普及及船舶交通管理系统(Vessel Traffic Service,VTS)的扩建,又为智能监控提供了数据支持.鉴于此,利用船舶自动识别系统提供的数据,分析通航水域船舶信息的分布情况,根据其概率分布采用朴素贝叶斯算法,从船舶航速、航向及距航道边界距离3个方面,构建船舶异常行为检测模型.最后,以成山角通航水域为例,检验模型的有效性.实验结果表明,构建的模型能够有效地完成异常行为监测,减少海事监管人员的工作强度,同时根据实验结果分析了成山角水域船舶航行的特点,并对成山角定线制提出合理化建议. 相似文献
64.
为刻画托运人对港口、运输方式及陆港的联合选择行为,将港口费用、等待时间、班轮频率、货物价值、单次运量、运输成本、运输及通关时间、准班率、陆港服务作为效用变量,构建港口选择位于上层、运输方式及陆港选择位于下层的巢式Logit模型.基于辽宁部分城市集装箱托运人的RP/SP调查数据,对模型参数进行估计和检验.结果表明,低运量倾向选择公路运输,托运人对多式联运的运输成本、运输及通关时间比公路运输的更重视,对公路运输的准班率比多式联运的更重视,陆港服务对多式联运具有显著正向影响,巢式Logit模型比MNL模型具有更优的统计学特征. 相似文献
65.
66.
交通调查者的行为对获取真实、有效的交通运输系统原始数据起着关键性作用.通过对调查者行为的影响因素进行分析,依据行为学理论解释交通调查者的行为机理,并提出交通调查者的行为效应模型,具有十分重要的意义. 相似文献
67.
The concept of rescheduling is essential to activity-based modeling in order to calculate effects of both unexpected incidents and adaptation of individuals to traffic demand management measures. When collaboration between individuals is involved or timetable based public transportation modes are chosen, rescheduling becomes complex. This paper describes a new framework to investigate algorithms for rescheduling at a large scale. The framework allows to explicitly model the information flow between traffic information services and travelers. It combines macroscopic traffic assignment with microscopic simulation of agents adapting their schedules. Perception filtering is introduced to allow for traveler specific interpretation of perceived macroscopic data and for information going unnoticed; perception filters feed person specific short term predictions about the environment required for schedule adaptation. Individuals are assumed to maximize schedule utility. Initial agendas are created by the FEATHERS activity-based schedule generator for mutually independent individuals using an undisturbed loaded transportation network. The new framework allows both actor behavior and external phenomena to influence the transportation network state; individuals interpret the state changes via perception filtering and start adapting their schedules, again affecting the network via updated traffic demand. The first rescheduling mechanism that has been investigated uses marginal utility that monotonically decreases with activity duration and a monotonically converging relaxation algorithm to efficiently determine the new activity timing. The current framework implementation is aimed to support re-timing, re-location and activity re-sequencing; re-routing at the level of the individual however, requires microscopic travel simulation. 相似文献
68.
This paper applies the relatively new method of latent class transition analysis to explore the notion that qualitative differences in travel behavior patterns are substantively meaningful and therefore relevant from explanatory point of view. For example, because the bicycle may function as an important access and egress mode, a car user who also (occasionally) uses the bicycle may be more likely to switch to a public transit profile than someone who only uses the car. Data from the Dutch mobility panel are used to inductively reveal travel behavior patterns and model transitions in these patterns over time. Additionally, the effects of seven exogenous variables, including two important life events (i.e. moving house and changing jobs), on cluster membership and the transition probabilities are assessed. The results show that multiple-mode users compared to single-mode users are more likely to switch from one behavioral profile to another. In addition, age, the residential environment, moving house and changing jobs have strong influences on the transition probabilities between the revealed behavioral patterns over time. 相似文献
69.
Collecting microscopic pedestrian behavior and characteristics data is important for optimizing the design of pedestrian facilities for safety, efficiency, and comfortability. This paper provides a framework for the automated classification of pedestrian attributes such as age and gender based on information extracted from their walking gait behavior. The framework extends earlier work on the automated analysis of gait parameters to include analysis of the gait acceleration data which can enable the quantification of the variability, rhythmic pattern and stability of pedestrian’s gait. In this framework, computer vision techniques are used for the automatic detection and tracking of pedestrians in an open environment resulting in pedestrian trajectories and the speed and acceleration dynamic profiles. A collection of gait features are then derived from those dynamic profiles and used for the classification of pedestrian attributes. The gait features include conventional gait parameters such as gait length and frequency and dynamic parameters related to gait variations and stability measures. Two different techniques are used for the classification: a supervised k-Nearest Neighbors (k-NN) algorithm and a newly developed semi-supervised spectral clustering. The classification framework is demonstrated with two case studies from Vancouver, British Columbia and Oakland, California. The results show the superiority of features sets including gait variations and stability measures over features relying only on conventional gait parameters. For gender, correct classification rates (CCR) of 80% and 94% were achieved for the Vancouver and Oakland case studies, respectively. The classification accuracy for gender was higher in the Oakland case which only considered pedestrians walking alone. Pedestrian age classification resulted in a CCR of 90% for the Oakland case study. 相似文献
70.
Over the past decades there has been a considerable development in the modeling of car-following (CF) behavior as a result of research undertaken by both traffic engineers and traffic psychologists. While traffic engineers seek to understand the behavior of a traffic stream, traffic psychologists seek to describe the human abilities and errors involved in the driving process. This paper provides a comprehensive review of these two research streams.It is necessary to consider human-factors in CF modeling for a more realistic representation of CF behavior in complex driving situations (for example, in traffic breakdowns, crash-prone situations, and adverse weather conditions) to improve traffic safety and to better understand widely-reported puzzling traffic flow phenomena, such as capacity drop, stop-and-go oscillations, and traffic hysteresis. While there are some excellent reviews of CF models available in the literature, none of these specifically focuses on the human factors in these models.This paper addresses this gap by reviewing the available literature with a specific focus on the latest advances in car-following models from both the engineering and human behavior points of view. In so doing, it analyses the benefits and limitations of various models and highlights future research needs in the area. 相似文献