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Developing high-resolution urban scale heavy-duty truck emission inventory using the data-driven truck activity model output

机译:使用数据驱动的卡车活动模型输出来开发高分辨率城市规模的重型卡车排放清单

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Air quality modelers often rely on regional travel demand models to estimate the vehicle activity data for emission models, however, most of the current travel demand models can only output reliable person travel activity rather than goods/service specific travel activity. This paper presents the successful application of data-driven, Spatial Regression and output optimization Truck model (SPARE-Truck) to develop truck-related activity inputs for the mobile emission model, and eventually to produce truck specific gridded emissions. To validate the proposed methodology, the Cincinnati metropolitan area in United States was selected as a case study site. From the results, it is found that the truck miles traveled predicted using traditional methods tend to underestimate - overall 32% less than proposed model - truck miles traveled. The coefficient of determination values for different truck types range between 0.82 and 0.97, except the motor homes which showed least model fit with 0.51. Consequently, the emission inventories calculated from the traditional methods were also underestimated i.e. -37% for NOx, -35% for SO2, -43% for VOC, -43% for BC, -47% for OC and -49% for PM2.5. Further, the proposed method also predicted within similar to 7% of the national emission inventory for all pollutants. The bottom-up gridding methodology used in this paper could allocate the emissions to grid cell where more truck activity is expected, and it is verified against regional land-use data. Most importantly, using proposed method it is easy to segregate gridded emission inventory by truck type, which is of particular interest for decision makers, since currently there is no reliable method to test different truck-category specific travel demand management strategies for air pollution control. (C) 2017 Elsevier Ltd. All rights reserved.
机译:空气质量建模人员通常依靠区域旅行需求模型来估算排放模型的车辆活动数据,但是,大多数当前旅行需求模型只能输出可靠的人员旅行活动,而不能输出特定于商品/服务的旅行活动。本文介绍了数据驱动的,空间回归和输出优化卡车模型(SPARE-Truck)在为移动排放模型开发与卡车相关的活动输入并最终产生卡车特定的网格化排放方面的成功应用。为了验证所提出的方法,选择了美国辛辛那提大都会地区作为案例研究地点。从结果可以发现,使用传统方法预测的卡车行驶里程往往被低估-总体上比拟议模型低32%。不同类型卡车的确定系数值在0.82至0.97之间,除了汽车房模型拟合度最小的值为0.51。因此,通过传统方法计算的排放清单也被低估了,即NOx -37%,SO2 -35%,VOC -43%,BC -43%,OC -47%和PM2 -49%。 5,此外,所提出的方法还预测所有污染物的排放量将占国家排放清单的7%左右。本文使用的自下而上的网格化方法可以将排放物分配给预计会有更多卡车活动的网格单元,并已根据区域土地使用数据进行了验证。最重要的是,使用提议的方法很容易按卡车类型分类网格化的排放清单,这对于决策者特别重要,因为当前尚没有可靠的方法来测试针对空气污染控制的不同卡车类别特定出行需求管理策略。 (C)2017 Elsevier Ltd.保留所有权利。

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