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Embedding local driving behaviour in regional emission models to increase the robustness of on-road emission inventories

机译:将本地驾驶行为嵌入区域排放模型以提高道路排放清单的稳健性

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This study presents the development of operating mode (opmode) distributions derived from local drive cycle construction methods developed based on real-world GPS data collection, and their impacts on average-speed emission factors (EFs). A data collection campaign was conducted between March and July 2018 whereby 82 research participants were recruited to record daily driving behaviors in the Greater Toronto and Hamilton Area (GTHA) for a period of one week. A drive cycle construction methodology was employed to build representative drive cycles based on micro-trips. The constructed drive cycles were compared with the interpolated drive cycles derived from the default database of the USEPA MOVES model. The results indicate that the MOVES default opmode distributions lead to higher average-speed EFs than the ones derived from local data. The difference between two drive cycle construction methods was also evaluated by comparing the variability in opmode distributions and the resulting average speed EFs. We observed that EFs were similar within each speed category, and the variation in cumulative opmode distributions was highest for an average speed of 40 mph. Moreover, a Monte Carlo Simulation was conducted to generate EF distributions based on local opmodes, further illustrating that local drive cycles generated significantly lower emission estimates than those based on the default database of MOVES. Finally, the minimum number of GPS data points required to develop a local opmode database with adequate variability was determined, illustrating that 4400-19,300 s were needed to generate robust distributions for different speed categories and road types.
机译:这项研究介绍了从基于实际GPS数据收集开发的本地驾驶循环构建方法得出的运行模式(opmode)分布的发展情况,及其对平均速度排放因子(EFs)的影响。在2018年3月至2018年7月之间进行了数据收集活动,招募了82名研究参与者,以记录大多伦多地区和汉密尔顿地区(GTHA)的日常驾驶行为,为期一周。采用了驾驶循环构建方法,以基于微行程建立具有代表性的驾驶循环。将构建的驱动周期与从USEPA MOVES模型的默认数据库得出的内插驱动周期进行比较。结果表明,MOVES默认opmode分布导致的平均速度EF高于从本地数据得出的平均速度。还通过比较opmode分布的变化性和由此产生的平均速度EFs来评估两种驱动循环构建方法之间的差异。我们观察到,在每个速度类别中,EF都是相似的,并且累积opmode分布的变化最高为40 mph的平均速度。此外,进行了蒙特卡洛模拟以基于局部操作模式生成EF分布,进一步说明与基于默认数据库MOVES相比,局部驱动周期产生的排放估算值明显更低。最后,确定了开发具有足够可变性的本地opmode数据库所需的最少GPS数据点数量,这说明需要4400-19,300 s才能生成针对不同速度类别和道路类型的稳健分布。

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