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Real World Driving Dynamics Characterization and Identification of Emission Rate Magnifying Factors for Auto-rickshaw

机译:现实世界驾驶动态特征及自动人力车发射率放大因素​​的识别

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Most urgent transport related problems in India are traffic congestion and concomitant air pollutant emissions. During traffic flow, the common causes of congestion in urban centres are pedestrian interruption, unregulated traffic signals, unregulated bus stoppages and unauthorized roadside parking, which together, particularly during peak hours, create erratic traffic pattern causing higher emissions. In this study, we characterized auto-rickshaw driving dynamics by instantaneous measurements of speed and emission at different times of the day. Traffic speed is an important factor that is perceived by commuters. The speed variables and traffic volume are used as a base variable to examine the traffic flow patterns. The speed variables such as average speed (AS), velocity noise (VN, standard deviation of speed), and the coefficient of variation of speed (CV, the ratio of VN and AS) were examined with respect to traffic volume. The polynomial fit of CV shows three distinct zones of variations with increasing traffic volume, explaining the dynamics of traffic flow. Further, time, speed and mileage variable were investigated for the emission rate analysis in different traffic flow pattern. The analysis depicted that the combined factor of lower speed (speed ≤12 km/h) and higher time of travel in correspondence cause higher emission rate. Similarly, vehicle mileage of ≥52,000 km has significant impact on emission for pollutants CO, HC and NOx. The results provide real-time information on traffic flow characteristics and impacts of dynamic and age variables on emission rate in on-road driving condition, which may be useful for the public and transport related agencies.
机译:印度最紧迫的交通相关问题是交通拥堵和伴随的空气污染物排放。在交通流量期间,城市中心拥挤的常见原因是行人中断,未调节的交通信号,未调节的总线停车和未经授权的路边停车,特别是在高峰时段,造成不稳定的交通模式,导致较高的排放。在这项研究中,我们通过当天不同时间的速度和排放的瞬时测量来表征自动人力车驾驶动力学。交通速度是通勤者所察觉的重要因素。速度变量和流量卷用作基础变量以检查流量流模式。相对于交通量,检查了交通量的平均速度(AS),速度噪声(VN,速度,速度的标准偏差)和速度变化系数(CV,VN和AS)的变化系数。 CV的多项式拟合显示出具有增加的交通量的三个不同的变化区,解释了交通流量的动态。此外,研究了不同交通流量模式的发射率分析的时间,速度和里程变量。分析描绘了较低速度(速度≤12km/ h)的组合因子和相应的行进时间较高,导致发射率更高。同样,≥52,000公里的车辆里程对污染物CO,HC和NOx的排放产生了重大影响。结果提供了关于交通流动特性和动态和年龄变量对道路驾驶条件的排放率的影响的实时信息,这对公共和运输相关机构可能有用。

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