Estimating Large-Scale Urban Traffic Emissions with Incomplete Covered Traffic Flow Data—A Case of Core Areas of Guangzhou, China

IF 2 4区 社会学 Q3 ENVIRONMENTAL STUDIES
Keyu Lu, Hui Meng, Xinhang Liu, Dan Zou, Qiuping Li
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引用次数: 0

Abstract

Estimating vehicle emissions across large urban road networks requires extensive data, particularly traffic flow data, which is essential for reliable emission estimation for the entire vehicle population. Due to the sparse distribution of data collection devices, traffic flow data is often unavailable for some roads, leading to inaccurate emission estimates. To address this, this study introduces a machine learning-based model to infer unobserved traffic flow using auxiliary urban data like population, points of interests (POIs), and taxi GPS data. After that, the complete traffic flow data are integrated with the localized Motor Vehicle Emission Simulator (MOVES) to estimate road-level emissions of carbon monoxide (CO), nitrogen oxides (NOx), volatile organic compounds (VOCs), and fine particulate matter (PM2.5). A Case study from the core areas of Guangzhou, China, reveasl significant spatial and temporal disparities in emissions. CO emissions are evenly distributed across the roads, while NOx and VOCs are concentrated on expressways. CO and PM2.5 emissions peak in the morning, while NOx and VOCs peak in the evening. All four types of emissions follow power-law distributions, with a small number of heavily polluted roads accounting for most emissions, and NOx and VOCs showing the greatest spatial disparity. These findings provide a detailed measurement of large-scale urban traffic emissions and offer actionable insights for urban environmental protection and sustainable development strategies.

基于不完全覆盖交通流数据的大尺度城市交通排放估算——以广州核心区为例
估计大型城市道路网络中的车辆排放需要广泛的数据,特别是交通流量数据,这对于可靠地估计整个车辆群的排放至关重要。由于数据采集设备分布稀疏,一些道路往往无法获得交通流量数据,导致排放估算不准确。为了解决这个问题,本研究引入了一个基于机器学习的模型,利用辅助城市数据(如人口、兴趣点(poi)和出租车GPS数据)来推断未观察到的交通流量。之后,将完整的交通流数据与本地化的机动车辆排放模拟器(move)相结合,估算道路水平的一氧化碳(CO)、氮氧化物(NOx)、挥发性有机化合物(VOCs)和细颗粒物(PM2.5)的排放量。以广州核心区为例,分析了城市碳排放的时空差异。CO排放在道路上分布均匀,而NOx和VOCs主要集中在高速公路上。CO和PM2.5的排放在早晨达到峰值,而NOx和VOCs的排放在晚上达到峰值。四种排放类型均服从幂律分布,其中少数重污染道路排放占大部分,NOx和VOCs的空间差异最大。这些发现提供了大规模城市交通排放的详细测量,并为城市环境保护和可持续发展战略提供了可操作的见解。
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来源期刊
CiteScore
3.80
自引率
5.30%
发文量
57
期刊介绍: Description The journal has an applied focus: it actively promotes the importance of geographical research in real world settings It is policy-relevant: it seeks both a readership and contributions from practitioners as well as academics The substantive foundation is spatial analysis: the use of quantitative techniques to identify patterns and processes within geographic environments The combination of these points, which are fully reflected in the naming of the journal, establishes a unique position in the marketplace. RationaleA geographical perspective has always been crucial to the understanding of the social and physical organisation of the world around us. The techniques of spatial analysis provide a powerful means for the assembly and interpretation of evidence, and thus to address critical questions about issues such as crime and deprivation, immigration and demographic restructuring, retailing activity and employment change, resource management and environmental improvement. Many of these issues are equally important to academic research as they are to policy makers and Applied Spatial Analysis and Policy aims to close the gap between these two perspectives by providing a forum for discussion of applied research in a range of different contexts  Topical and interdisciplinaryIncreasingly government organisations, administrative agencies and private businesses are requiring research to support their ‘evidence-based’ strategies or policies. Geographical location is critical in much of this work which extends across a wide range of disciplines including demography, actuarial sciences, statistics, public sector planning, business planning, economics, epidemiology, sociology, social policy, health research, environmental management.   FocusApplied Spatial Analysis and Policy will draw on applied research from diverse problem domains, such as transport, policing, education, health, environment and leisure, in different international contexts. The journal will therefore provide insights into the variations in phenomena that exist across space, it will provide evidence for comparative policy analysis between domains and between locations, and stimulate ideas about the translation of spatial analysis methods and techniques across varied policy contexts. It is essential to know how to measure, monitor and understand spatial distributions, many of which have implications for those with responsibility to plan and enhance the society and the environment in which we all exist.   Readership and Editorial BoardAs a journal focused on applications of methods of spatial analysis, Applied Spatial Analysis and Policy will be of interest to scholars and students in a wide range of academic fields, to practitioners in government and administrative agencies and to consultants in private sector organisations. The Editorial Board reflects the international and multidisciplinary nature of the journal.
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