首页> 外文OA文献 >Wider Dissemination of Household Travel Survey Data Using Geographical Perturbation Methods
【2h】

Wider Dissemination of Household Travel Survey Data Using Geographical Perturbation Methods

机译:利用地理扰动方法更广泛地传播家庭旅行调查数据

摘要

Public agencies spend vast amounts of money collecting information about passenger travel in household travel surveys. These data are valuable for the rich and detailed information they provide, which contribute to regional and statewide travel demand models. These data have utility beyond travel demand modeling in their application to transportation policy and travel behavior research. As the demand on these data increase, so have the quantity of information collected. Detailed geospatial referencing of the home, work and other travel destinations are common practice and permit the integration with other spatially archived data sources, such as land use characteristics, transportation system information, and other built environment, social and economic data. Other public agencies, private consultancies, non-profits and educational institutions may benefit from access to the original data with applications to areas such public health, equity, transportation safety and urban planning. Oregon Modeling Collaborative (OMC) has entered into an agreement with Oregon Modeling Steering Committee (OMSC) to host and make available Oregon Household Activity Survey (OHAS) datasets. But wide distribution of these important and expensive data is limited by the requirement to protect the confidentiality of survey participants, who are guaranteed anonymity in exchange for participation. Data are often aggregated to a geographic level such as Census tracts or transportation analysis zones (TAZs) before disseminating to the public, which limits the utility of this information. This project aims to develop a methodology to permit dissemination of these spatially-explicit data to a wider range of public constituents while at the same time, protecting the identities of study participants. Making use of these data, this project will use geographical perturbation methods to add noise to the original data to protect confidentiality while at the same time allowing the detailed geo-spatial referencing to be included in the disseminated data. The process includes: The coordinates (locations) will be geographically perturbed (masked) so that they do not reveal the identity of the traveler while at the same time retaining spatial relevance and resolution. Here the limits of the perturbation (minimum and maximum displacement) need to be determined that a) ensure confidentiality and b) minimize the errors introduced to the data. The original and perturbed (masked) data will be compared using various statistical approaches to develop a set of confidence measures for different types of transportation applications. For example, geographically perturbed (masked) may be more robust for automobile travel measures, such as vehicle miles traveled (VMT) or transit accessibility than for detailed pedestrian or bicycle trip attributes. This exercise will allow spatially-explicit OHAS data to be released to the public with some information about the confidence to which it can be applied. These data will be archived at Portland State University and made available to the public. The information and algorithms can be shared with other agencies collecting and archiving travel data, such as the National Household Travel Survey, metropolitan planning organizations and state departments of transportation, to permit wider dissemination of their data.
机译:公共机构在家庭旅行调查中花费大量金钱来收集有关旅客旅行的信息。这些数据对于它们提供的丰富而详细的信息非常有价值,这些信息有助于区域和全州旅行需求模型。这些数据在旅行政策和旅行行为研究中的应用具有超越旅行需求建模的作用。随着对这些数据的需求增加,收集的信息量也随之增加。房屋,工作和其他旅行目的地的详细地理空间参考是常见的做法,并且可以与其他空间归档的数据源(例如土地使用特征,运输系统信息以及其他建筑环境,社会和经济数据)集成。其他公共机构,私人咨询公司,非营利组织和教育机构可以从原始数据的访问中受益,并将其应用于公共卫生,公平,交通安全和城市规划等领域。俄勒冈建模合作组织(OMC)已与俄勒冈建模指导委员会(OMSC)达成协议,以托管并提供俄勒冈家庭活动调查(OHAS)数据集。但是,这些重要且昂贵的数据的广泛分发受到保护调查参与者机密性的要求的限制,调查参与者必须保证匿名,以换取参与。数据在发布给公众之前通常会汇总到地理区域,例如人口普查区或运输分析区(TAZ),这限制了此信息的实用性。该项目旨在开发一种方法,以允许将这些空间明晰的数据传播给更广泛的公共成分,同时保护研究参与者的身份。利用这些数据,该项目将使用地理扰动方法在原始数据中添加噪声,以保护机密性,同时允许将详细的地理空间参考包含在已分发的数据中。该过程包括:坐标(位置)将在地理上受到干扰(掩盖),以使它们在保持空间相关性和分辨率的同时不会泄露旅行者的身份。在这里,需要确定摄动的极限(最小和最大位移),以便a)确保机密性,b)最小化引入数据的误差。将使用各种统计方法对原始数据和扰动(掩盖的)数据进行比较,以针对不同类型的运输应用开发一套置信度度量。例如,相对于详细的行人或自行车出行属性,地理扰动(掩盖)对于汽车出行度量(例如,行进的车辆英里数(VMT)或交通可及性)可能更健壮。这项练习将允许在空间上使用明确的OHAS数据,以及有关可以应用的置信度的一些信息,向公众发布。这些数据将在波特兰州立大学存档,并向公众开放。该信息和算法可以与收集和存档旅行数据的其他机构共享,例如国家家庭旅行调查,大城市规划组织和州交通部门,以允许更广泛地传播其数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号