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Short-Term Trend Forecast of Different Traffic Pollutants in Minnesota Based on Spot Velocity Conversion

机译:基于点速度转换的明尼苏达州不同交通污染物的短期趋势预测

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摘要

Because traffic pollution is a global problem, the prediction of traffic emissions and the analysis of their influencing factors is the key to adopting management and control measures to reduce traffic emissions. Hence, the evaluation of the actual level of traffic emissions has gained more interest. The Computer Program to calculate Emissions from Road Transport model (COPERT) is being downloaded by 100 users per month and is being used in a large number of applications. This paper uses this model to calculate short-term vehicle emissions. The difference from the traditional research was that the input velocity parameter was not the empirical value, but through reasonable conversion of the spot velocity at one point, obtained by the roadside detector, which provided new ideas for predicting traffic emissions by the COPERT model. The hybrid Autoregressive Integrated Moving Average (ARIMA) Model was used to predict spot mean velocity, after converted it to the predicted interval velocity averaged for some period, input the conversion results and other parameters into the COPERT IV model to forecast short-term vehicle emissions. Six common emissions (CO, NOX, CO2, SO2, PM10, NMVOC) of four types of vehicles (PC, LDV, HDV, BUS) were discussed. As a result, PM10 emission estimates increased sharply during late peak hours (from 15:30 p.m.–18:00 p.m.), HDV contributed most of NOX and SO2, accounting for 39% and 45% respectively. Based on this prediction method, the average traffic emissions on the freeway reached a minimum when interval mean velocity reduced to 40 km/h–60 km/h. This paper establishes a bridge between the emissions and velocity of traffic flow and provides new ideas for forecasting traffic emissions. It is further inferred that the implementation of dynamic velocity guidance and vehicle differential management has a controlling effect that improves on road traffic pollution emissions.
机译:由于交通污染是一个全球性问题,因此,对交通排放量进行预测并对其影响因素进行分析是采取管理和控制措施以减少交通排放量的关键。因此,对实际交通排放水平的评估引起了更多关注。每月有100位用户下载用于计算公路运输模型排放量的计算机程序(COPERT),并且该程序正在大量应用中使用。本文使用此模型来计算短期车辆排放。与传统研究的不同之处在于,输入速度参数不是经验值,而是通过路边检测器获得的单点光点速度的合理转换,这为COPERT模型预测交通排放提供了新思路。使用混合自回归综合移动平均(ARIMA)模型预测点平均速度,将其转换为一段时间内的平均预测间隔速度,然后将转换结果和其他参数输入COPERT IV模型以预测短期车辆排放。讨论了四种类型的车辆(PC,LDV,HDV,BUS)的六种常见排放物(CO,NOX,CO2,SO2,PM10,NMVOC)。结果,PM10排放估算值在高峰时段后期(从下午15:30到下午18:00)急剧增加,HDV贡献了大部分的NOX和SO2,分别占39%和45%。基于这种预测方法,当区间平均速度降低到40 km / h–60 km / h时,高速公路上的平均交通排放量达到最小值。本文建立了排放量与交通流速度之间的桥梁,并为预测交通排放量提供了新思路。进一步推断,动态速度引导和车辆差速管理的实施具有改善道路交通污染排放的控制效果。

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