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Article

Consumption of Hydrocarbons and Its Relationship with Ozone Formation in Two Chinese Megacities

1
Research Center for Environmental Changes, Academia Sinica, Taipei 11529, Taiwan
2
Department of Chemistry, Chung Yuan Christian University, Taoyuan 32023, Taiwan
3
Department of Chemistry, National Central University, Chungli 320, Taiwan
*
Author to whom correspondence should be addressed.
Atmosphere 2020, 11(4), 326; https://doi.org/10.3390/atmos11040326
Submission received: 21 February 2020 / Revised: 21 March 2020 / Accepted: 24 March 2020 / Published: 27 March 2020
(This article belongs to the Special Issue Atmospheric Volatile Organic Compounds (VOCs))

Abstract

:
Continuous measurements of ozone and its precursors were performed at sites in two Chinese megacities, i.e., an urban site in Beijing and a suburban site in the Pearl River Delta (PRD). At both sites, the total oxidants (O3 + NO2) varied with the ratio of ethylbenzene to m,p-xylenes, which serves as an indicator of photochemical aging. An observation-based method (OBM) was derived for calculating the photochemical consumption of individual non-methane hydrocarbons (NMHCs) based on the observed NMHC concentrations and the ratio of ethylbenzene to m,p-xylenes. The results show a strong correlation between the oxidant level and the derived consumption of precursors at the two sites (R2 = 0.81 for the PRD site and R2 = 0.83 for the Beijing site), demonstrating a strong cause–effect relationship. The relative “consumption efficiency” among NMHCs was calculated based on the integrated amount of hydroxyl radicals derived from the ratio of ethylbenzene to xylenes. Thus, the percent contributions to ozone formation from each individual NMHC can be calculated. This concept of consumption is purely observation-based and provides an easy way to bypass complicated modeling and the necessity of knowing instantaneous concentrations of hydroxyl radicals, which are highly illusive in nature.

1. Introduction

Beijing, the capital of China, is a major urban center located on the North China Plain. Over the last few decades, rapid economic growth and an increased number of vehicles in Beijing increased its atmospheric pollution. High ozone levels and fine particulate matter (PM2.5) were common over the 1998–2015 period in the Beijing area [1,2,3,4]. Following strict pollution control measures introduced in 2013, PM2.5 levels dropped significantly, but ozone pollution did not improve [4,5]. The ozone levels in Beijing frequently exceeded the national daily ozone standard (0.20 mg/m3, approximately 100 ppb), with more occurrences in the summer than in other seasons [6]. In the south, the Pearl River Delta (PRD), adjacent to Hong Kong on the southern coast of China, has been China’s most populated and rapidly developing region since the early 1980s. The rapid economic growth was accompanied by worsening air quality, with ozone being one of the most important pollutants [4,7,8]. It is well known that ozone in the lower troposphere is directly linked to its precursors—volatile organic compounds (VOCs) and NOX (e.g., [9,10,11]). Most investigations of the relationship between ozone and its precursors are based on models that rely on inputs of precursor emission rates, chemical reactions and atmospheric dynamics. Model simulation is widely accepted as a useful means for diagnosing ozone–VOC–NOX chemistry. However, model-based predictions of ozone concentrations are dependent on assumptions and approximations of chemical kinetics and transport and precursor emission rates. Model results can vary significantly given different assumptions and uncertain emission inventories.
Several observation-based methods (OBMs) were developed to assess the relationship between ozone and its precursors directly from field observations (e.g., VOCs, reactive nitrogen and peroxides), bypassing the reliance on model assumptions. The results obtained from OBMs can be used to study region-specific ozone-formation processes and tailor effective ozone-control strategies [12,13,14,15,16]. To develop effective OBMs, the amounts of precursors consumed by photochemistry during ozone formation, also known as precursor consumption, must be known and quantified beforehand.
In the present study, we estimate the precursor consumption by measuring ambient non-methane hydrocarbons (NMHCs) and the ratio of ethylbenzene to m,p-xylenes as an indicator of photochemical removal or aging. The method considers the “cumulative consumption” of precursor NMHCs in a moving air parcel and uses it to evaluate the relationship between ambient ozone levels and photochemically consumed NMHCs. The concept of consumption is similar to the one used in correlations of NOZ with ozone [17,18]. O3–NOZ correlations were used to assess NOX-sensitive chemistry and to estimate ozone production efficiency (ozone molecules produced per NOX of molecule consumed), where NOZ represents the sum of species produced by the removal of NOX. In this study, the consumption of NMHCs was estimated based on the kinetics of reactions of individual NMHCs with the hydroxyl radicals (OH). Consumption was assessed for each individual NMHC and the method was subsequently extended to calculate the consumption of carbon monoxide (CO).

2. Methodology

2.1. Site Description and Instrumentation

Two corporative measurement campaigns were conducted in PRD and Beijing in 2006. The PRD campaign (Program of Regional Integrated Experiments of Air Quality over the Pearl River Delta, PRIDE-PRD2006) took place from 3 July 2006 to 31 July 2006 [19]. An onsite continuous measurement of ozone and its precursors was performed at Backgarden (BG), a regional background site approximately 60 km northwest of Guangzhou, which is surrounded by agriculture farmlands. During the campaign, the temperature was 28–36 °C and the relative humidity was 60%–90%, typical for a subtropical region during the rainy season. The wind speed was generally < 2 m/s and the wind direction was usually southerly. Thus, BG was expected to be in the downwind region of the PRD during this period. The instruments were installed on the roof of a three-story building (~10 m above ground). An automated gas chromatograph (GC) with flame ionization detection (FID) was deployed to make hourly measurements of 51 target NMHCs in the range C3–C12. Detailed descriptions of the analytical method, the target species and the quality control procedure can be found in Wang et al. [20]. In addition, NOX, O3 and CO were measured onsite simultaneously [21]. In brief, NO2 was measured via photolytic conversion into NO (Droplet Measurement Technologies, Model BLC), followed by NO–O3 chemiluminescence detection (Model 42C-TL, Thermo Electron Co.). Ozone was measured using an ultraviolet (UV) absorption instrument (Model 49C, Thermo Electron Co.), while CO was measured by a non-dispersive infrared (NDIR) gas analyzer (Model 48C, Thermo Electron Co.). Details of the analytical methods and quality assurance can be found in Lou et al. [19]. Continuous measurements of ozone and its precursors were averaged into more than 500 hourly data points.
The second campaign took place from 15 August 2006 to 10 September 2006 and was designed to investigate the chemical conditions that produce the air quality conditions typical of Beijing (CAREBEIJING-2006). The same types of instruments as in the previous campaign were used to provide continuous measurements of ozone and its precursors [20,22]. The instruments were deployed on the campus of Peking University (PKU campus) in the northwest of downtown Beijing; an area that is surrounded by major traffic arteries and residential areas. The air inlet was set up on the roof of a six-story building (~20 m above ground). The weather was hot and humid with a mild southerly breeze during the campaign period. Over 600 hourly average data points were collected.

2.2. Method of Estimating Consumption of Precursor NMHCs

The OBM used to estimate the precursor consumption was derived from a study by Lee et al. [23], in which an innovative concept was raised in that the observed mixing ratio of a given NMHC should be deemed a residue left over from photochemical reactions.
The amounts of consumed NMHCs were estimated by subtracting the observed ambient concentrations (residue) from their derived initial concentrations. The details and validation of the method were described in an earlier publication [24]. In this study, the ratio of ethylbenzene to m,p-xylenes (m-xylene plus p-xylene) was used as an indicator of photochemical aging to estimate the degree of photochemical removal. Ethylbenzene and m,p-xylenes primarily originate from common anthropogenic sources and have a nearly constant emission ratio [25]. Because separating m- and p-xylene by gas chromatography (GC) without compromising the overall separation of most major NMHCs is technically difficult, the combined signal was used, yielding a weighted average rate constant of 20.5 × 10−12 cm3·s−1 for the joint m,p-xylenes by taking their separate rate constants with OH of 23.1 × 10−12 cm3·s−1 for m-xylene and 14.3 × 10−12 cm3·s−1 for p-xylene [26]. The m-xylene/p-xylene ratio was found to be 2.33 ± 0.30, based on 706 samples [25].
The rate constant for m,p-xylenes is larger than that for ethylbenzene by a factor of 3, leading to faster removal of m,p-xylenes than ethylbenzene in ambient air [27,28]. Assuming an air parcel follows a Lagrangian trajectory, the difference in removal rates causes the ethylbenzene/m,p-xylenes (E/X) ratio of the air parcel to increase as photochemistry progresses [27], as indicated by the following kinetic equation:
( E / X ) t = ( E / X ) 0 exp ( ( k e k x ) 0 t [ O H ] d t ) )
where (E/X)t represents the concentration ratio of ethylbenzene to m,p-xylenes at time t and (E/X)0 is the initial concentration ratio of ethylbenzene to m,p-xylenes in the early morning (t = 0) before significant photochemistry takes place. As given above, the rate constants for ethylbenzene (ke) and m,p-xylenes (kx) were 7.0 × 10−12 cm3·s−1 and 20.5 × 10−12 cm3·s−1, respectively [26]. The initial value (E/X)0 was around 0.69 ± 0.12 (mean ± standard deviation) for BG (PRD) and 0.58 ± 0.08 for PKU (Beijing). Note that (E/X)0 may be different in different cities or regions, but it is generally fixed in a given area [25,29]. Using the measured values of (E/X)t and (E/X)0, the degree of photochemical processing, denoted 0 t [ O H ] d t , can be obtained from Equation (1).
We used the observed individual NMHC concentrations at time t and the derived degree of photochemical processing ( 0 t [ O H ] d t ) to obtain the initial concentrations of individual NMHCs (t = 0). These were calculated using Equation (3), which is derived from the simplified Equation (2), assuming that air parcels follow Lagrangian trajectories with only NMHC loss from a pseudo-first-order reaction with OH:
d [ NMHC ] / d t = k i [ NMHC ] [ O H ]
[ NMHC ] t = [ NMHC ] 0 exp ( k i 0 t [ O H ] d t )
where ki is the rate constant for the reaction of each individual NMHC with OH [26] and [NMHC]t and [NMHCs]0 represent the concentrations of a given NMHC at times t and zero, respectively. The observed NMHC concentration at time t and 0 t [ O H ] d t derived from Equation (1) were used in Equation (3) to obtain the initial NMHC concentration (t = 0). Subsequently, the consumption of each individual NMHC between early morning (t = 0) and time t was calculated by subtracting the observed NMHC concentration at time t (the quantity remaining after photochemical reaction) from the initial NMHC concentration. In our calculation, we took into account the chain length of each NMHC and its stepwise degradation (with each step likely leading to oxidant formation) by multiplying the carbon number of an NMHC by the amount consumed with a unit ppbC.
The amount of CO consumed by OH was also derived using this method. Although CO is not as reactive as NMHCs, it is highly abundant in urban environments, potentially contributing a non-negligible amount of oxidant [30,31].
Isoprene was treated separately from anthropogenic VOCs due to its extremely high photochemical reactivity and very different source nature from other observed NMHCs [23,32,33,34,35]. The two field campaigns were carried out in the summer, when isoprene emissions thrived, peaking at noon and falling rapidly at night. The isoprene mixing ratios observed at both sites were mostly overwhelmed by the nearby vegetation source. Because of its dramatic diurnal feature, we took half of the observed isoprene to represent the steady-state concentration. The consumption of isoprene is estimated slightly differently than other species, which is assumed to be proportional to both the steady-state concentrations of isoprene and ambient OH, as well as the reaction time t:
Consumption   of   isoprene   ( from   time   0   to   t ) = k isoprene   ×   [ isoprene ] t / 2   ×   0 t [ O H ] d t
where [isoprene]t/2 represents the average concentration of isoprene from early morning (t = 0) to time t (the build-up phase).
To evaluate the atmospheric relationship between ozone production and NMHC (and CO) consumption in the atmosphere, we used total oxidants (O3 + NO2) instead of ozone alone. O3 and NOX are rapidly interchanged via NO titration in an intense photochemical condition [36,37,38,39]; thus, using only ozone concentrations leads to underestimates of photochemically produced ozone. Using total oxidant instead provides more accurate estimates of ozone formation during a photochemical process.

3. Results and Discussion

3.1. Relationship between Consumed NMHCs and Total Oxidant

The time series of oxidant (O3 + NO2) concentrations and E/X ratios at both sites are shown in Figure 1, which illustrates the diurnal variation of photochemical processing. At both sites, the oxidant concentration and the E/X ratio vary simultaneously, suggesting that their relationship is tightly coupled. Note that the coherence of the two was clear and apparent, since the measurements were continuous, which may not be easily observed if conducted by random sampling. The daily maximum E/X ratio occurred in the early afternoon (1 p.m. to 3 p.m. at BG and 12 p.m. to 2 p.m. at PKU), coinciding with the oxidant peak. Figure 2a,b shows the correlation between daily maximum oxidant concentrations and their corresponding E/X ratios at BG (R2 = 0.53) and PKU (R2 = 0.68). The positive correlation suggests a close relationship between the two observed variables, which underscores the potential usefulness of E/X as an indicator of photochemical processing. At BG, a typical suburban site on the outskirts of Guangzhou, both the maximum E/X and oxidant values occurred around 3 p.m., about an hour later than at PKU (2 p.m.). We speculate that the 1-hour difference was caused by a longer transport time to BG than to PKU due to the greater distance from the source region to the measurement site at BG.
Oxidant and NMHC concentrations are usually uncorrelated, because the observed NMHCs at a given time have not participated in the prior oxidant formation; thus, they do not contribute to the preexisting oxidant levels. Shown in Figure 2c,d, the scatter plots of oxidant (O3 + NO2) versus observed total NMHC concentrations during the periods with daily maximum oxidants revealed that they were nearly uncorrelated. Interestingly, after the amounts of consumed NMHCs and CO are calculated, a much-improved correlation appears between the observed oxidant level and the total consumed NMHCs + CO, with R2 = 0.81 for BG and R2 = 0.83 for PKU. (Figure 2e,f). The improved correlation can be explained as follows: the more NMHCs and CO are consumed, the higher the oxidant level that can be expected. The result also indicates that the oxidant level is linked to the degree of photochemical processing and the precursors’ level. Observational and modeling results suggest that ozone formation in urban areas is a VOC-limited chemical regime, whereas ozone formation in rural regions is NOX-limited [4,11,40]. The excellent correlations between NMHC consumption and oxidant (O3 + NO2) indicate that the relative NOX levels are either high or constant and that ozone formation in these two Chinese cities is VOC-limited and not NOX-limited. This concept of consumption is purely observation-based. It provides an easy way to bypass complicated modeling. Other parameters that are required for modeling, such as meteorology and OH concentration, are implicitly included in 0 t [ O H ] d t , which is determined from the observed values of (E/X)0 and (E/X)t.

3.2. Uncertainties in the Relationship between Oxidant and Precursors

Uncertainties in this method can affect the overall quality of the relationship seen in Figure 2e,f. Other than the two possible sources of error that could affect the accuracy of aging and consumption calculation, i.e., the injection of fresh emissions and pre-existing ozone [24], another source of uncertainty is the missing C2 NMHCs not measured by the online GC. The online GC used at both stations measured C3–C12 NMHCs [41] but no C2 species (ethane, ethene and ethyne), due to instrumental limitations. Ignoring these species can result in an underestimation of the total NMHC consumption. Our earlier findings at both BG and PKU showed that ethane, ethene and ethyne together accounted for about 15% of the total C2–C11 NMHC carbon-number-adjusted abundance [41,42]. However, due to their relatively low reactivity, C2 species only accounted for approximately 5% of the total NMHC consumption at both BG and PKU (calculated using the method proposed in this study). Even though the consumption of most alkenes happens mainly through their reaction with OH, some alkenes can react with ozone and NO3, especially during daytime [43]. The consumption of alkenes by ozone and NO3 can cause underestimates of the alkenes’ consumption. Even so, it does not change the fact that alkenes are important parts of the total consumption due to the relatively larger contribution from OH than from ozone and NO3. Although sources of uncertainty like these generally decrease the correlation between observed oxidant level and estimated precursor consumption, the high correlations seen in Figure 2e,f demonstrate that these factors are not significant and do not seriously obscure the photochemical relationship between the oxidant and its precursors.

3.3. Absolute Abundance versus Consumed NMHCs and CO

As previously discussed, for an air parcel advected to the observation site with minimal mixing, the observed NMHC concentrations represent the remaining NMHCs, i.e., unreacted NMHCs. Section 2.2 describes an OBM used to calculate NMHC consumption, reflecting NMHC reactivity with OH integrated over a period determined by both (E/X)0 and (E/X)t. Figure 3 shows consumption of individual NMHCs at BG and PKU during the periods of daily maximum oxidant occurrence. Note that CO consumption was surprisingly large as compared to that of NMHCs, accounting for over 15% of the total consumption at BG and 12% at PKU. It was the extremely high abundance of CO (the red bar in Figure 3 × 1000 = true mixing ratio in ppbv) that contributes to the substantial consumption despite its month-long atmospheric lifetime. Note that the isoprene’s percent consumption was significant (about 17% at BG and 9% at PKU) due to its extremely high reactivity. Higher isoprene concentrations were observed at BG than at PKU because of the suburban–rural nature of the BG site where vegetation is substantially more abundant. Propene was another major contributor at BG, following only isoprene and CO in the ranking and accounting for 13% of the consumption at BG, compared to about 3% at PKU. The higher propene and propane levels at BG were likely driven by incomplete combustion of liquefied petroleum gas (LPG) used as vehicle fuel in the PRD [41]. Although the observed alkene levels were much lower than levels of alkanes and aromatics at both sites, the overall higher reactivities of alkenes accentuated their role, leading to their large contributions to total consumption.
To measure the efficiency with which a given precursor is consumed, the “consumption efficiency” is determined by calculating the ratio of the consumed amount of each species ([NMHC]0 − [NMHC]t) to the initial amount ([NMHC]0), as shown in Equation (5), which is derived from Equation (3):
Consumption   efficiency = 1 exp ( k i 0 t [ O H ] d t )
This value is a function of the rate constant of reaction with OH and the degree of aging ( 0 t [ O H ] d t ); thus, it is compound-dependent and can be compared across species. The higher the consumption efficiency, the more oxidant can be formed from an NMHC species during a photochemical process. Of the three groups of NMHCs, alkanes had the lowest average efficiency (0.25 at BG and 0.14 at PKU); hence, they were the least effective in producing oxidant. In contrast, alkenes had the highest average efficiency (0.74 at BG and 0.62 at PKU) and were, thus, the most efficient in producing oxidants. Aromatic efficiency was intermediate: 0.44 at BG and 0.30 at PKU. The efficiencies at BG were generally higher than those at PKU because of the greater degree of aging at BG, as evidenced by the larger 0 t [ O H ] d t value. Although the consumption of CO was large, the CO consumption efficiency was only about 0.01 at both BG and PKU.

4. Conclusions

An OBM was developed to quantify the relationship between the consumption of precursors and the concentration of oxidants based on the aging indicator E/X. We propose a simple cause–effect hypothesis: the greater the amount of a precursor is consumed, the higher the oxidant level that can be produced. Large contributions to total consumption were seen at BG for isoprene (17%) and propene (13%) due to strong emissions from biogenic sources and the widespread use of LPG in vehicles, respectively. Alkenes and aromatics were more efficient in oxidant formation than alkanes at both BG (0.74 and 0.44 vs. 0.25, respectively) and PKU (0.62 and 0.30 vs. 0.14, respectively). The method introduced here provides an easy quantitative way to assess the consumption efficiency of individual NMHCs. To most efficiently reduce ozone in non-attainment areas and to strike a delicate balance between economic development and air quality, the calculation of consumption of precursors provides quantitative guidance to optimize abatement of precursors with high consumption potentials to achieve the most cost-effective results.

Author Contributions

Conceptualization, C.-C.C. and J.-L.W.; methodology, C.-C.C.; validation, H.-K.Y., C.-C.C.; formal analysis, C.-C.C.; investigation, C.-C.C.; resources, C.-C.C.; data curation, H.-K.Y.; writing—original draft preparation, C.-C.C.; writing—review and editing, J.-L.W.; visualization, H.-K.Y.; supervision, J.-L.W.; project administration, C.-C.C. All authors have read and agreed to the published version of the manuscript.

Acknowledgments

The authors would like to thank the PRIDE-PRD2006 and CAREBEIJING-2006 campaign teams (Yuanhang Zhang, Tong Zhu, Shaw-Chen Liu, Min Shao, Yutaka Kondo, Kazuyuki Kita, Charles C. K. Chou, etc.). Special thanks to Limin Zeng and Sihua Lu for their kind assistance and logistic support at the field sites.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Time-series of oxidant (O3 + NO2) observations and E/X ratios at (a) Backgarden (BG), PRD and (b) PKU, Beijing.
Figure 1. Time-series of oxidant (O3 + NO2) observations and E/X ratios at (a) Backgarden (BG), PRD and (b) PKU, Beijing.
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Figure 2. Scatter plots of oxidant (O3 + NO2) versus ethylbenzene/m,p-xylenes ratio, observed total NMHC concentrations, and total consumed NMHCs+CO at BG, PRD (a,c,e) and PKU, Beijing (b,d,f). Data were selected from 13:00 to 15:00 at BG and 12:00 to 14:00 at PKU. (ppbC: parts per billion carbon, ppbv: parts per billion by volume).
Figure 2. Scatter plots of oxidant (O3 + NO2) versus ethylbenzene/m,p-xylenes ratio, observed total NMHC concentrations, and total consumed NMHCs+CO at BG, PRD (a,c,e) and PKU, Beijing (b,d,f). Data were selected from 13:00 to 15:00 at BG and 12:00 to 14:00 at PKU. (ppbC: parts per billion carbon, ppbv: parts per billion by volume).
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Figure 3. Average observed mixing ratios and contribution to total consumption of individual NMHCs and CO at (a) BG, PRD; (b) PKU, Beijing during the periods of the daily maximum oxidants (13:00 to 15:00 at BG and 12:00 to 14:00 at PKU). The red bar denotes the mixing ratio of CO/1000. (2,4-DMB: 2,2-dimethylbutane, 2,4-DMP: 2,4-dimethylpentane, 2,3-DMP: 2,3-dimethylpentane, 2,2,4-TMP: 2,2,4-trimethylpentane, 1,3,5-TMB: 1,3,5-trimethylbenzene, 1,2,4-TMB: 1,2,4-trimethylbenzene).
Figure 3. Average observed mixing ratios and contribution to total consumption of individual NMHCs and CO at (a) BG, PRD; (b) PKU, Beijing during the periods of the daily maximum oxidants (13:00 to 15:00 at BG and 12:00 to 14:00 at PKU). The red bar denotes the mixing ratio of CO/1000. (2,4-DMB: 2,2-dimethylbutane, 2,4-DMP: 2,4-dimethylpentane, 2,3-DMP: 2,3-dimethylpentane, 2,2,4-TMP: 2,2,4-trimethylpentane, 1,3,5-TMB: 1,3,5-trimethylbenzene, 1,2,4-TMB: 1,2,4-trimethylbenzene).
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Chang, C.-C.; Yak, H.-K.; Wang, J.-L. Consumption of Hydrocarbons and Its Relationship with Ozone Formation in Two Chinese Megacities. Atmosphere 2020, 11, 326. https://doi.org/10.3390/atmos11040326

AMA Style

Chang C-C, Yak H-K, Wang J-L. Consumption of Hydrocarbons and Its Relationship with Ozone Formation in Two Chinese Megacities. Atmosphere. 2020; 11(4):326. https://doi.org/10.3390/atmos11040326

Chicago/Turabian Style

Chang, Chih-Chung, Hwa-Kwang Yak, and Jia-Lin Wang. 2020. "Consumption of Hydrocarbons and Its Relationship with Ozone Formation in Two Chinese Megacities" Atmosphere 11, no. 4: 326. https://doi.org/10.3390/atmos11040326

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