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Development of a hybrid modelling approach for the generation of an urban on-road transportation emission inventory

机译:开发用于生成城市道路运输排放清单的混合建模方法

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The development of accurate emission inventories at an urban scale is of utmost importance for cities in light of climate change commitments and the need to identify the emission reduction potential of various strategies. Emission inventories for on-road transportation are sensitive to the network models used to generate traffic activity data. For large networks (cities or regions), average-speed models have been relied upon extensively in research and practice, primarily due to their computational attractiveness. Nevertheless, these models are myopic to traffic states and driving cycles and therefore lack in accuracy. The aim of this study is to improve the quality of regional on-road emission inventories without resorting to computationally-intensive traffic microsimulation of an entire region. For this purpose, macroscopic, mesoscopic, and microscopic emission models are applied and compared, using average speed, average speed and its standard deviation, and instantaneous speeds. We also propose a hybrid approach called the CLustEr-based Validated Emission Re-calculation (CLEVER), which bridges between the microscopic and mesoscopic approaches. CLEVER defines unsupervised traffic conditions using a combination of mesoscopic traffic characteristics for selected road segments, and identifies a representative emission factor (EF) for each condition based on the microscopic driving cycle of the sample. Regional emissions can then be estimated by classifying segments in the regional network into these conditions, and applying corresponding EFs. The results of the CLEVER method are compared with the results of microsimulation and of mesoscopic approaches revealing a robust methodology that improves the emission inventory while reducing computational burden.
机译:鉴于气候变化承诺以及需要确定各种战略的减排潜力,在城市规模上建立准确的排放清单对于城市而言至关重要。公路运输的排放清单对用于生成交通活动数据的网络模型很敏感。对于大型网络(城市或区域),平均速度模型已广泛用于研究和实践中,这主要是由于它们的计算吸引力。然而,这些模型对于交通状态和驾驶周期是近视的,因此缺乏准确性。这项研究的目的是在不依靠整个区域的计算密集型交通微观模拟的情况下,提高区域公路排放清单的质量。为此,使用平均速度,平均速度及其标准偏差和瞬时速度来应用和比较宏观,介观和微观发射模型。我们还提出了一种混合方法,称为基于CLustEr的验证排放重新计算(CLEVER),它在微观方法和介观方法之间架起了桥梁。 CLEVER使用选定路段的介观交通特征的组合来定义无监督交通状况,并基于样本的微观行驶周期为每种状况标识代表性排放因子(EF)。然后,可以通过将区域网络中的分段分类为这些条件并应用相应的EF来估算区域排放。将CLEVER方法的结果与微观模拟和介观方法的结果进行了比较,揭示了一种健壮的方法,可以改善排放清单,同时减少计算负担。

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