Spatial Modeling of Airport Surface Fuel Burn for Environmental Impact Analyses

Q2 Social Sciences Journal of Air Transportation Pub Date : 2023-04-18 DOI:10.2514/1.d0294
S. Badrinath, James M. Abel, H. Balakrishnan, Emily Joback, T. Reynolds
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引用次数: 1

Abstract

The assessment of the fuel burn and emissions impact of airport surface operations is a key part of understanding the environmental impacts of aviation. These assessments are needed at two levels: the analysis of inventories (the total amount of fuel burned and emissions discharged over some period of time), and the analysis of spatial distributions (the amount of emissions experienced at a particular location within or near the airport). Although the availability of taxi times for the operations of interest is sufficient for inventory analysis, the analysis of spatial distributions requires estimates of where on the airport surface an aircraft is located as it consumes fuel. In this paper, we show how a data-driven queuing network model can be developed in order to estimate the time that an aircraft spends at different congested locations on the airport surface. These models are useful both in spatial distribution analysis and in accurately predicting taxi times in the absence of measurements (for example, for projected demand sets). We use measurements of ultrafine particles at Los Angeles International Airport to demonstrate that the proposed model can help predict the measured emissions at different monitoring sites located in the vicinity of the airport. In the process, we show how one could develop a machine learning model of the spatial distribution of airport surface emissions given the pollutant measurements, air traffic demand, and prevailing weather conditions. Finally, we develop a clustering-based method to evaluate the generalizability of our surface operations modeling framework.
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用于环境影响分析的机场地面燃料燃烧空间建模
对机场地面运行的燃油消耗和排放影响的评估是了解航空环境影响的关键部分。这些评估需要在两个层面上进行:分析清单(在一段时间内燃烧的燃料总量和排放的排放物)和分析空间分布(在机场内或附近的特定地点所经历的排放物量)。虽然有关业务的滑行时间足以进行库存分析,但对空间分布的分析需要估计飞机在机场表面的位置,因为它消耗燃料。在本文中,我们展示了如何开发一个数据驱动的排队网络模型,以估计飞机在机场表面不同拥挤位置花费的时间。这些模型在空间分布分析和在没有测量的情况下准确预测出租车时间(例如,预测需求集)方面都很有用。我们使用洛杉矶国际机场的超细颗粒测量数据来证明,所提出的模型可以帮助预测机场附近不同监测点的测量排放量。在此过程中,我们展示了如何在污染物测量、空中交通需求和当时的天气条件下开发机场表面排放空间分布的机器学习模型。最后,我们开发了一种基于聚类的方法来评估我们的表面操作建模框架的泛化性。
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来源期刊
Journal of Air Transportation
Journal of Air Transportation Social Sciences-Safety Research
CiteScore
2.80
自引率
0.00%
发文量
16
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