The impact of the congestion charging scheme on air quality in London. Part 1. Emissions modeling and analysis of air pollution measurements.

Frank Kelly, H Ross Anderson, Ben Armstrong, Richard Atkinson, Ben Barratt, Sean Beevers, Dick Derwent, David Green, Ian Mudway, Paul Wilkinson
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We also analyzed the trends in background concentrations for all London monitoring stations; as distance from the center of the CCZ increased, we found some evidence of an increasing gradation in NO and PM10 concentrations before versus after the intervention. This suggests a possible intermediate effect on air quality in the area immediately surrounding the CCZ. Although London is relatively well served with air quality monitoring stations, our study was restricted by the availability of only a few monitoring sites within the CCZ, and only one of those was at a roadside location. The results derived from this single roadside site are not likely to be an adequate basis for evaluating this complex urban traffic management scheme. 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The secure interpretation of CUSUM requires that the technique be adapted to take proper account of the underlying correlation between measurements without the use of smoothing functions that would obscure a stepped change in concentrations. Although CUSUM was not able to provide a quantitative estimation of changes in pollution levels arising from the introduction of the CCS, the strong signals that were identified were considered in the context of other results from the study. The third method, bivariate polar plots, proved useful. The plots revealed important characteristics of the data from the only roadside monitoring site within the CCZ and highlighted the importance of considering prevailing weather conditions when positioning a roadside monitor. The technique would benefit from further development, however, in transforming the qualitative assessment of change into a quantitative assessment and including an estimate of uncertainty. 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引用次数: 0

Abstract

On February 17, 2003, a congestion charging scheme (CCS*) was introduced in central London along with a program of traffic management measures. The scheme operated Monday through Friday, 7 AM to 6 PM. This program resulted in an 18% reduction in traffic volume and a 30% reduction in traffic congestion in the first year (2003). We developed methods to evaluate the possible effects of the scheme on air quality: We used a temporal-spatial design in which modeled and measured air quality data from roadside and background monitoring stations were used to compare time periods before (2001-2002) and after (2003-2004) the CCS was introduced and to compare the spatial area of the congestion charging zone (CCZ) with the rest of London. In the first part of this project, we modeled changes in concentrations of oxides of nitrogen (NOx), nitrogen dioxide (NO2), and PM10 (particles with a mass median aerodynamic diameter < or = 10 microm) across the CCZ and in Greater London under different traffic and emission scenarios for the periods before and after CCS introduction. Comparing model results within and outside the zone suggested that introducing the CCS would be associated with a net 0.8-microg/m3 decrease in the mean concentration of PM10 and a net 1.7-ppb decrease in the mean concentration of NOx within the CCZ. In contrast, a net 0.3-ppb increase in the mean concentration of NO2 was predicted within the zone; this was partly explained by an expected increase in primary NO2 emissions due to the introduction of particle traps on diesel buses (one part of the improvements in public transport associated with the CCS). In the second part of the project, we established a CCS Study Database from measurements obtained from the London Air Quality Network (LAQN) for air pollution monitors sited to measure roadside and urban background concentrations. Fully ratified (validated) 15-minute mean carbon monoxide (CO), nitric oxide (NO), NO2, NOx, PM10, and PM2.5 data from each chosen monitoring site for the period from February 17, 2001, to February 16, 2005, were transferred from the LAQN database. In the third part of our project, these data were used to compare geometric means for the 2 years before and the 2 years after the CCS was introduced. Temporal changes within the CCZ were compared with changes, over the same period, at similarly sited (roadside or background) monitors in a control area 8 km distant from the center of the CCZ. The analysis was confined to measurements obtained during the hours and days on which the scheme was in operation and focused on pollutants derived from vehicles (NO, NO2, NOx, PM10, and CO). This set of analyses was based on the limited data available from within the CCZ. When compared with data from outside the zone, we did not find evidence of temporal changes in roadside measurements of NOx, NO, and NO2, nor in urban background concentrations of NOx. (The latter result, however, concealed divergent trends in NO, which fell, and NO2, which rose.) Although based upon fewer stations, there was evidence that background concentrations of PM10 and CO fell within the CCZ compared with outside the zone. We also analyzed the trends in background concentrations for all London monitoring stations; as distance from the center of the CCZ increased, we found some evidence of an increasing gradation in NO and PM10 concentrations before versus after the intervention. This suggests a possible intermediate effect on air quality in the area immediately surrounding the CCZ. Although London is relatively well served with air quality monitoring stations, our study was restricted by the availability of only a few monitoring sites within the CCZ, and only one of those was at a roadside location. The results derived from this single roadside site are not likely to be an adequate basis for evaluating this complex urban traffic management scheme. Our primary approach to assessing the impact of the CCS was to analyze the changes in geometric mean pollutant concentrations in the 2 years before and 2 years after the CCS was introduced and to compare changes at monitoring stations within the CCZ with those in a distant control area (8 km from the CCZ center) unlikely to be influenced by the CCS. We saw this as the most robust analytical approach with which to examine the CCS Study Database, but in the fourth part of the project we did consider three other approaches: ethane as an indicator of pollution dispersion; the cumulative sum (CUSUM) statistical technique; and bivariate polar plots for local emissions. All three were subsequently judged as requiring further development outside of the scope of this study. However, despite their investigative nature, each technique provided useful information supporting the main analyses. The first method used ethane as a dispersion indicator to remove the inherent variability in air pollutant concentrations caused by changes in meteorology and atmospheric dispersion. The technique had the potential to ascertain more accurately the likely impacts of the CCS on London's air quality. Although this novel method appeared promising over short time periods, a number of concerns arose about whether the spatial and temporal variability of ethane over longer time periods would be representative of meteorologic conditions alone. The major strength of CUSUM, the second method, is that it can be used to identify the approximate timing of changes that may have been caused by the CCS. This ability is weakened, however, by the effects of serial correlation (the correlation of data among measurements in successive time intervals) within air pollution data that is caused by seasonality and long-term meteorologic trends. The secure interpretation of CUSUM requires that the technique be adapted to take proper account of the underlying correlation between measurements without the use of smoothing functions that would obscure a stepped change in concentrations. Although CUSUM was not able to provide a quantitative estimation of changes in pollution levels arising from the introduction of the CCS, the strong signals that were identified were considered in the context of other results from the study. The third method, bivariate polar plots, proved useful. The plots revealed important characteristics of the data from the only roadside monitoring site within the CCZ and highlighted the importance of considering prevailing weather conditions when positioning a roadside monitor. The technique would benefit from further development, however, in transforming the qualitative assessment of change into a quantitative assessment and including an estimate of uncertainty. Research is ongoing to develop this method in air-quality time-series studies. Overall, using a range of measurement and modeling approaches, we found evidence of small changes in air quality after introduction of the CCS. These include small decreases in PM10, NO, and CO. The possibility that some of these effects might reflect more general changes in London's air quality is suggested by the findings of somewhat similar changes in geometric means for weekends, when the CCS was not operating. However, since some evidence suggests that the CCS also had an impact on traffic volume on weekends, the CCS remains as one possible explanation for the observed pattern of changes in pollutant concentrations. In addition, the CCS was just one of a number of traffic and emission reduction schemes introduced in London over the 4-year study period; if the other measures had an impact in central London, they might partly explain our findings. Although not the aim of this study, it is important to consider how the trends we observed might be translated into health effects. For example, given that London already has NO2 concentrations in excess of the permitted limit value, we do not know what the effects of an increase in NO2 created by diesel-exhaust after-treatment for particles might mean for health. Further, although it is not likely that NO affects health, the decrease in NO concentrations is likely associated with an increase in ozone concentrations (a pollutant associated with health effects), as has been seen in recent years in London. These and other similar issues require further investigation. Although the CCS is a relatively simple traffic management scheme in the middle of a major urban environment, analyzing its possible impact on air quality was found to be far from straightforward. Using a range of modeling and monitoring approaches to address the impact of the scheme revealed that each technique has its own advantages and limitations. The placement of monitoring sites and the availably of traffic count data were also identified as key issues. The most compelling lesson we take away from this study is that such work is impossible to undertake without a coherent multi-disciplinary team of skilled researchers. In conclusion, our study suggests that the introduction of the CCS in 2003 was associated with small temporal changes in air pollutant concentrations in central London compared with outer areas. However, attributing the cause of these changes to the CCS alone is not appropriate because the scheme was introduced at a time when other traffic and emissions interventions, which might have had a more concentrated effect in central London, were also being implemented.

拥堵收费计划对伦敦空气质量的影响。第1部分。排放模型和空气污染测量分析。
2003年2月17日,在伦敦市中心推出了一项交通拥堵收费计划(CCS*),同时推出了一系列交通管理措施。该计划于周一至周五上午7点至下午6点运作。该项目第一年(2003年)的交通量减少了18%,交通拥堵减少了30%。我们开发了一些方法来评估该方案对空气质量可能产生的影响:我们使用了一种时空设计,其中使用了路边和背景监测站的模拟和测量的空气质量数据来比较CCS引入之前(2001-2002年)和之后(2003-2004年)的时间周期,并将拥堵收费区(CCZ)的空间面积与伦敦其他地区进行比较。在本项目的第一部分中,我们模拟了CCS引入前后不同交通和排放情景下CCZ和大伦敦地区氮氧化物(NOx)、二氧化氮(NO2)和PM10(质量中值空气动力学直径<或= 10微米的颗粒)浓度的变化。比较区域内外的模型结果表明,引入CCS将使CCZ内PM10平均浓度净降低0.8微克/立方米,氮氧化物平均浓度净降低1.7 ppb。相比之下,该区域内NO2平均浓度预计净增加0.3 ppb;这在一定程度上可以解释为,由于在柴油公交车上引入颗粒捕集器(与CCS相关的公共交通改善的一部分),预计一次二氧化氮排放量会增加。在项目的第二部分,我们根据伦敦空气质量网络(LAQN)的测量数据建立了一个CCS研究数据库,用于测量路边和城市背景浓度的空气污染监测仪。2001年2月17日至2005年2月16日期间,每个选定监测点的15分钟平均一氧化碳(CO)、一氧化氮(NO)、NO2、NOx、PM10和PM2.5数据均从LAQN数据库中转移过来。在我们项目的第三部分,这些数据被用来比较CCS引入前和引入后2年的几何平均值。将CCZ内的时间变化与距离CCZ中心8 km的控制区类似位置(路边或背景)监测仪同期的变化进行了比较。分析仅限于在该方案运行期间获得的测量数据,并侧重于车辆产生的污染物(NO, NO2, NOx, PM10和CO)。这组分析是基于CCZ内部有限的可用数据。当与区域外的数据进行比较时,我们没有发现氮氧化物、一氧化氮和二氧化氮的路边测量值以及城市氮氧化物背景浓度的时间变化证据。(但后者的结果掩盖了NO下降和NO2上升的不同趋势。)虽然基于较少的站点,但有证据表明,与区域外相比,CCZ内PM10和CO的背景浓度下降。我们还分析了伦敦所有监测站的背景浓度趋势;随着离CCZ中心距离的增加,我们发现了一些证据,表明干预前后NO和PM10浓度的梯度增加。这表明污染可能对污染区域周围的空气质量产生中间影响。虽然伦敦的空气质量监测站相对较好,但我们的研究受到CCZ内只有少数监测点的限制,其中只有一个位于路边。从这个单一的路边站点得出的结果不太可能成为评价这个复杂的城市交通管理方案的充分基础。我们评估CCS影响的主要方法是分析引入CCS前后2年几何平均污染物浓度的变化,并比较CCZ内监测站与不太可能受到CCS影响的遥远控制区(距离CCZ中心8公里)监测站的变化。我们认为这是检验CCS研究数据库的最可靠的分析方法,但在项目的第四部分,我们确实考虑了其他三种方法:乙烷作为污染扩散的指标;累积和(CUSUM)统计技术;本地排放的二元极坐标图。这三种方法随后被认为需要进一步发展,超出了本研究的范围。然而,尽管它们具有调查性质,但每种技术都提供了支持主要分析的有用信息。第一种方法使用乙烷作为扩散指标,以消除由气象和大气扩散变化引起的空气污染物浓度的固有变异。 这项技术有可能更准确地确定CCS对伦敦空气质量的可能影响。虽然这种新方法在短时间内看起来很有希望,但人们对乙烷在较长时间内的时空变化是否仅能代表气象条件产生了一些担忧。第二种方法CUSUM的主要优势在于,它可以用来确定可能由CCS引起的变化的大致时间。然而,由于季节性和长期气象趋势造成的空气污染数据中的序列相关性(连续时间间隔内测量数据之间的相关性)的影响,这种能力被削弱了。对CUSUM的安全解释要求对技术进行调整,以适当考虑测量之间的潜在相关性,而不使用平滑函数,因为平滑函数会掩盖浓度的阶梯式变化。虽然CUSUM无法就引入碳捕集系统后污染程度的变化提供定量估计,但我们已将所发现的强烈信号与研究的其他结果结合起来考虑。第三种方法,二元极坐标图,被证明是有用的。这些图显示了CCZ内唯一一个路边监测点的数据的重要特征,并突出了在定位路边监测点时考虑当时天气条件的重要性。但是,这项技术将受益于进一步的发展,将对变化的定性评价转变为定量评价,并包括对不确定性的估计。目前正在研究将这种方法用于空气质量时间序列研究。总体而言,使用一系列测量和建模方法,我们发现了引入CCS后空气质量发生微小变化的证据。其中包括PM10、NO和CO的小幅下降。这些影响中的一些可能反映了伦敦空气质量更普遍的变化,这一发现表明,在CCS不运行的周末,几何平均值也发生了类似的变化。然而,由于一些证据表明CCS也对周末的交通量有影响,CCS仍然是对观察到的污染物浓度变化模式的一种可能的解释。此外,在为期4年的研究期间,CCS只是伦敦引入的众多交通和减排计划之一;如果其他措施对伦敦市中心有影响,它们可能部分解释了我们的发现。虽然这不是这项研究的目的,但重要的是要考虑我们观察到的趋势如何转化为健康影响。例如,考虑到伦敦的二氧化氮浓度已经超过了允许的极限值,我们不知道柴油尾气对颗粒物的后处理造成的二氧化氮浓度增加对健康的影响。此外,尽管一氧化氮不太可能影响健康,但一氧化氮浓度的下降很可能与臭氧浓度(一种与健康影响有关的污染物)的增加有关,这一点近年来在伦敦已经看到。这些和其他类似问题需要进一步调查。虽然CCS是一个在主要城市环境中相对简单的交通管理方案,但分析其对空气质量的可能影响远非易事。使用一系列建模和监测方法来解决方案的影响表明,每种技术都有其自身的优点和局限性。监测场址的安置和交通统计数据的提供也被确定为关键问题。我们从这项研究中得到的最令人信服的教训是,如果没有一个由熟练的研究人员组成的连贯的多学科团队,这样的工作是不可能进行的。总之,我们的研究表明,2003年CCS的引入与伦敦市中心与外围地区相比,空气污染物浓度的小时间变化有关。然而,将这些变化的原因单独归因于CCS是不合适的,因为该计划是在其他交通和排放干预措施同时实施的时候引入的,这些措施可能会在伦敦市中心产生更集中的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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