标题: 移动污染空间性影响及风险评估
Spatial Impact and Risk Assessment for Mobile Source Pollution
作者: 蔡世泽
高正忠
环境工程系所
关键字: 移污;风险评估;污染空间分布;街谷模式;永续环境系统分析;mobile source pollution;risk assessment;spatial pollution distribution;modeling simulation;sustainable environmental systems analysis
公开日期: 2007
摘要: 汽机车所排放污染物是都巿空气污染主要来源,且会随着车流、车行里程及人口在不同区域造成不同程度的影响与风险,本研究因而发展适当的方法评估移污所造成的空间性影响及风险。且应用于案例区台北市。
移污空间分布不易估算,虽有人提出道路密度(RND)法,但RND相似不代表车流大,因而会低估高污染区,实际误差可能很大,本研究因而建立车流污染强度密度(VFPID)法改善之,但VFPID法未考量行驶距离不同亦会有不同排放量,故以车行里程污染强度密度(VTPID)法进一步改善之。各方法估算前首先依耗油量估算总污染排放量且将案例区划分为多个网格,再分别依各网格RND、VFPID及VTPID所占的比例分配总污染排放量至各网格中,并以失能人年DALY值来表示风险的大小。三个方法所得之移污分布,再配合人口分布,即可分析移污空间性风险。由于移污亦受街道形式影响,本研究亦因而以OSPM街谷模式模拟街道之移污浓度,再配合街道旁的人口,分析案例区街道移污对街道旁住户的暴露风险。
结果显示依RND法所分配的区域排放量与VFPID法的差异最大可达10000吨。而VTPID结果亦与VFPID结果差异可达5000吨;而由OSPM模拟结果可发现在不同型态街道会造成不同污染浓度,甚至与前三个方法产生不同的结果,例如敦化南路一段的车流虽然大于北安路,但街道宽度比北安路宽58公尺,OSPM模拟的CO浓度反而较后者低。依各方法结果及人口分布所计算的风险值,以PM10的DALYs最高,NOx、CO次之,SOx最小,一般车流较大时人口亦较多,风险亦较高,如中山等区,但亦有因街道较窄而有较大风险的地区,如大安区。相信所发展的方法可改善移污空间分布的推估品质,以利于进行相关的决策分析。
Vehicle exhaust emission is the main source of air pollution in metropolitan areas in Taiwan and greatly affects citizens and causes health risks. Different traffic flows, spatial mobile pollution distributions, and population distributions can cause different levels of impact and health risk. This study was thus initiated to develop appropriate methods for assessing the spatial impact and risk caused by the mobile pollution. The methods were also applied to Taipei City, the case study area for this study.
It is not easy to evaluate the spatial distribution of the mobile pollution. Although a method called the Road Network Density (RND) method had been previously proposed, similar RNDs do not indicate similar traffic flows and thus may underestimate the pollution in high traffic-flow areas, and the error may be quite significant. Therefore, the Vehicle-flow-based Pollution Intensity Density (VFPID) method was proposed in this study to improve the problem. However, the VFPID method does not consider different traveling distances that can cause different emissions. The Vehicle-travel-mileage-based Pollution Intensity Density (VTPID) method was thus proposed. Before implementing the three methods, the total mobile pollution (TMP) emission was estimated according to the amount of gasoline consumed, and the entire study area was divided into grids in the same size. The TMP emission was allocated to each grid according to its RND, VFPID, or VTPID ratio. With the pollution distributions determined by the three methods and the population distribution of the city, spatial effects and health risks caused by mobile pollution were estimated. And the Disability Adjusted Life Years (DALYs) is used to express the risk level. Furthermore, since similar emission in different types of roads would give different distributions of mobile pollution, the Operational Street Pollution Model was adopted to simulate air pollutant concentrations on road sides, and the results obtained were used to assess the exposure risk on the residents living in the road sides.
The results show that the pollution distribution estimated by the RND method can underestimate the pollution up to 10,000 tons when compared with that estimated by the VFPID method. Also the difference between the VTPID and VFPID results can be up to 5,000 tons. According to the OSPM simulation results, it can be observed that different types of streets cause varied pollution concentrations. Significantly different results were observed also when compared to those from the other three methods. For example, the traffic flow of the Section 1 of the Dunhua-South Road is more than that of the Bei-an Road, but the street width of the former is 58 meters wider than the latter street, and subsequently the simulated CO concentration is lower in the former street. According to the risks estimated from the obtained pollution and population distributions, the risk estimated for PM10 is the highest, the SOx risk is the lowest, and NOx and CO have median risks. When the traffic flow is large and population density is high, the associated risk is high too, such as the Zhongshan district. However, some areas have narrow streets that cause high risk, such as the Da-an District. It is believed that the proposed methods can improve the estimation of spatial mobile pollution distribution and subsequently facilitate further decision-making analyses.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079519511
http://hdl.handle.net/11536/41176
显示于类别:Thesis


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