...
首页> 外文期刊>Atmospheric environment >Prediction of PM_(10) concentrations at urban traffic intersections using semi-empirical box modelling with instantaneous velocity and acceleration
【24h】

Prediction of PM_(10) concentrations at urban traffic intersections using semi-empirical box modelling with instantaneous velocity and acceleration

机译:使用瞬时速度和加速度的半经验盒模型预测城市交通交叉口的PM_(10)浓度

获取原文
获取原文并翻译 | 示例
           

摘要

At urban traffic intersections, vehicles frequently stop with idling engines during the red-light period and speed up rapidly during the green-light period. The changes of driving patterns (i.e., idle, acceleration, deceleration and cruising patterns) generally produce uncertain emission. Additionally, the movement of pedestrians and the influence of wind further result in the random dispersion of pollutants. It is, therefore, too complex to simulate the effects of such dynamics on the resulting emission using conventional deterministic causal models.rnFor this reason, a modified semi-empirical box model for predicting the PM_(10) concentrations on roadsides is proposed in this paper. The model constitutes three parts, i.e., traffic, emission and dispersion components. The traffic component is developed using a generalized force traffic model to obtain the instantaneous velocity and acceleration when vehicles move through intersections. Hence the distribution of vehicle emission in street canyon during the green-light period is calculated. Then the dispersion component is investigated using a semi-empirical box model combining average wind speed, box height and background concentrations. With these considerations, the proposed model is applied and evaluated using measured data at a busy traffic intersection in Mong Kok, Hong Kong. In order to test the performance of the model, two situations, i.e., the data sets within a sunny day and between two sunny days, were selected to examine the model performance. The predicted values are generally well coincident with the observed data during different time slots except several values are overestimated or underestimated. Moreover, two types of vehicles, i.e., buses and petrol cars, are separately taken into account in the study. Buses are verified to contribute most to the emission in street canyons, which may be useful in evaluating the impact of vehicle emissions on the ambient air quality when there is a significant change in a specific vehicular population.
机译:在城市交通路口,车辆在红灯期间经常空转发动机停车,在绿灯期间迅速加速。行驶模式的变化(即怠速,加速,减速和巡航模式)通常会产生不确定的排放。另外,行人的移动和风的影响进一步导致污染物的随机散布。因此,使用常规的确定性因果模型来模拟这种动力学对最终排放的影响太复杂了。为此,本文提出了一种改进的半经验盒模型来预测路边的PM_(10)浓度。 。该模型包括三个部分,即交通,排放和扩散成分。使用通用的力交通模型开发交通组件,以获取车辆通过十字路口时的瞬时速度和加速度。因此,计算了绿灯期间街道峡谷中车辆排放的分布。然后使用半经验盒模型研究了分散成分,该模型结合了平均风速,盒高和背景浓度。考虑到这些因素,在香港旺角一个繁忙的交通路口,使用实测数据对建议的模型进行了应用和评估。为了测试模型的性能,选择了两种情况,即晴天内和两个晴天之间的数据集,以检查模型性能。预测值通常与不同时隙中的观测数据完全吻合,除了一些值被高估或低估了。此外,在研究中分别考虑了两种类型的车辆,即公共汽车和汽油车。经验证,公交车是造成街道峡谷排放量最大的因素,当特定车辆人口发生重大变化时,这可能有助于评估车辆排放对周围空气质量的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号