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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Estimating Carbon Dioxide Emissions of Freeway Traffic: A Spatiotemporal Cell-Based Model
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Estimating Carbon Dioxide Emissions of Freeway Traffic: A Spatiotemporal Cell-Based Model

机译:高速公路交通估算二氧化碳排放量:基于时空细胞的模型

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摘要

To accurately estimate freeway traffic carbon dioxide (CO2) emissions, this paper proposes a spatiotemporal cellbased model by taking traffic dynamics into account. High-fidelity vehicle trajectory data is used to construct a spatiotemporal traffic (ST) diagram and to calculate the exact CO2 emissions of the traffic in the ST diagram. The factors impacting the CO2 emissions in the ST diagram are selected and taken as model inputs. First- and second-order regression models are employed to fit the exact CO2 emissions. It is found that the relationship between complicated traffic dynamics and CO2 emissions can be simply described by using a linear or nearly linear function; i.e., for larger cells (such as 90 center dot 150 sec center dot m) that are used to construct an ST diagram, a first-order regression model is able to well reflect the relationship, while for small cells (such as 30 center dot 50 sec center dot m) a second-order model is more accurate. To validate the proposed model, another trajectory dataset that was collected in a different freeway segment is introduced, and the transferability and predictability of the model are demonstrated. The proposed spatiotemporal cell-based model allows us to accurately estimate CO2 emissions by inputting the prevailing ST diagram. It opens a gate for estimating CO2 emissions from widely available low-fidelity traffic data, since the ST diagram can be constructed by using various traffic flow data, such as loop detector data and floating car data.
机译:为了准确估计高速公路交通二氧化碳(CO2)排放,本文通过考虑交通动力来提出时尚的蜂窝模型。高保真车辆轨迹数据用于构建时空流量(ST)图,并计算ST图中流量的精确二氧化碳排放。影响ST图中CO2排放的因素被选中并作为模型输入。使用第一和二阶回归模型来适合精确的二氧化碳排放。结果发现,可以通过使用线性或几乎线性函数来简单地描述复杂交通动态和二氧化碳排放之间的关系;即,对于用于构造ST图的较大的小区(例如90中心点150秒4秒M),一阶回归模型能够很好地反映这种关系,而对于小型电池(例如30中心点50秒中心点M)二阶模型更准确。为了验证所提出的模型,介绍了在不同的高速公路段中收集的另一个轨迹数据集,并证明了模型的可转换性和可预测性。所提出的时空电池基模型允许我们通过输入普遍的ST图来准确地估计二氧化碳排放。它打开了一种用于估计来自广泛可用的低保真业务数据的CO2排放的栅极,因为可以通过使用各种流量流数据来构造ST图,例如环路检测器数据和浮动汽车数据。

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