基于稀疏移动众包数据的交通拥堵环境影响评价

Peng Hao, Chao Wang, Guoyuan Wu, K. Boriboonsomsin, M. Barth
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引用次数: 10

摘要

主干道十字路口和高速公路瓶颈处的交通拥堵使空气质量下降,威胁着公众健康。传统上,空气污染物是由分散的质量保证空气监测点监测的。稀疏的移动人群源数据,如蜂窝网络数据和GPS数据,为评估交通拥堵对环境的影响提供了另一种方法。本研究建立了基于稀疏移动数据和PeMS数据的交通相关空气污染评价框架。该框架集成了交通状态模型、排放模型(EMFAC)和弥散模型(AERMOD)。它开发了一种有效的工具,以准确、及时和经济的方式评估交通拥堵对环境的影响。该模型适用于城市主干道或高速公路上不同的交通状况和多种交通方式。拟议的系统将为运输运营商和公共卫生官员提供建议,以减轻空气污染的风险,并可作为其他潜在应用的平台,如生态路由和生态信号定时。
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Evaluating the environmental impact of traffic congestion based on sparse mobile crowd-sourced data
Traffic congestion at arterial intersections and freeway bottleneck degrades the air quality and threatens the public health. Conventionally, air pollutant are monitored by sparsely-distributed Quality Assurance Air Monitoring Sites. Sparse mobile crowd-sourced data, such as cellular network data and GPS data, provide an alternative approach to evaluate the environmental impact of traffic congestion. This research establishes a framework for traffic-related air pollution evaluation using sparse mobile data and PeMS data. The proposed framework integrates traffic state model, emission model (EMFAC) and dispersion model (AERMOD). It develops an effective tool to evaluate the environmental impact of traffic congestion in an accurate, timely and economic way. The proposed model is applicable to varying traffic conditions and multiple transport modes on either urban arterial or freeways. The proposed system will provide suggestions to the transportation operator and public health officials to alleviate the risk of air pollutant, and can serve as a platform for other potential applications, such as eco-routing and eco-signal timing.
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