Open Access Article
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Atmospheric emissions of Ti-containing nanoparticles from industrial activities in China

Qiuting Yang ab, Lili Yang ab, Changzhi Chen bc, Jianghui Yun ab, Chenyan Zhao bc and Guorui Liu *abc
aState Key Laboratory of Environmental Chemistry and Ecotoxicology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, P.O. Box 2871, Beijing, 100085, China. E-mail: grliu@rcees.ac.cn
bUniversity of Chinese Academy of Sciences (UCAS), Beijing, 100049, China
cSchool of Environment, Hangzhou Institute for Advanced Study, UCAS, Hangzhou, 310024, China

Received 21st April 2024 , Accepted 25th July 2024

First published on 7th August 2024


Abstract

Inhalation of exogenous Ti-containing nanoparticles (NPs) can have adverse effects on human health. However, few studies have considered industrial emissions, which contribute significantly to atmospheric levels of Ti-containing NPs. In this study, we quantified Ti-containing NP emissions in samples of fine particulate matter (particle sizes: 40–120 nm) collected from 132 full-scale industrial plants. Coal-fired power plants emitted the highest particle number concentrations of Ti-containing NPs (1.7 × 1010 particles per g), followed by solid waste incineration (7.7 × 109 particles per g) and blast furnace pig iron steelmaking (5.5 × 109 particles per g); coking plants and iron-ore sintering were also significant contributors to Ti-containing NPs emissions. Collectively, these five sources accounted for 99.9% of the annual atmospheric emissions of Ti-containing NPs from 13 industrial sectors in China (total ≈ 9.8 × 1022 particles). Moreover, these industrial emissions increased the atmospheric concentration of Ti-containing NPs by 1.7 × 107 particles per m3, therefore leading to the general population's lifetime average daily dose (LADD) of inhaled Ti-containing NPs being 2.4 × 106 particles per day per kg. The findings presented herein highlight the importance of assessing NP emissions and advancing sustainable global industrial development.



Environmental significance

Exogenous anatase TiO2-NPs have been detected in human cerebrospinal fluids. It has been reported that TiO2-NPs may not penetrate the skin to reach other tissues, but rather, they likely enter via the lungs and migrate to the brain or circulatory system, whereby they can reach other organs (e.g., kidney, liver). In vitro studies of the cytotoxicity of TiO2-NPs in human cells indicate their potential to induce genetic toxicity, DNA damage, oxidative stress, inflammatory responses, or endoplasmic reticulum stress in cells and tissues. TiO2-NPs can also be hazardous to the cardiovascular system, e.g., by causing or exacerbating systemic inflammation, endothelial dysfunction, lipid metabolism disorders, and atherosclerosis. Industrial activities are a cornerstone of human production and development. Despite the implementation of advanced pollution control measures, widespread industrial activities inevitably release fine particulate matter (PM) and toxic substances into the atmosphere, leading to adverse effects on the global environment and human health. Therefore, it is important to assess the emissions of Ti-containing NPs (e.g., TiO2-NPs) from various industrial activities and identify the primary contributor.

1. Introduction

Industrial activities are a cornerstone of human production and development. Despite the implementation of advanced pollution control measures, widespread industrial activities inevitably release fine particulate matter (PM) and toxic substances into the atmosphere, leading to adverse effects on the global environment and human health.1–7 It has been demonstrated that inhaling fine PM can cause cardiovascular damage upon entering the bloodstream.8 Additionally, exogenous PM can breach the blood–brain barrier to enter brain tissue.9 The most significant and abundant components in fine PM are nanoparticles (NPs).10,11 Exogenous anatase TiO2-NPs have been detected in human cerebrospinal fluids. It has been reported12 that TiO2-NPs may not penetrate the skin to reach other tissues, but rather, they likely enter via the lungs and migrate to the brain or circulatory system, whereby they can reach other organs (e.g., kidney, liver). In vitro studies of the cytotoxicity of TiO2-NPs in human cells indicate their potential to induce genetic toxicity,13 DNA damage,13,14 oxidative stress, inflammatory responses,15 or endoplasmic reticulum stress16 in cells and tissues. TiO2-NPs can also be hazardous to the cardiovascular system, e.g., by causing or exacerbating systemic inflammation, endothelial dysfunction, lipid metabolism disorders, and atherosclerosis.17

The toxicity of NPs depends primarily on their particle size and particle number concentration (PNC),18 rather than their mass concentration. Similarly, toxicological and epidemiological studies19,20 indicate that PNCs of ultrafine particles may exhibit more accurate correlations with health endpoints than their mass concentrations. To date, several studies21–23 have determined the PNCs of Ti-containing NPs in environmental media, particularly in water environments. Relatively few studies have examined the emission sources of TiO2 NPs. One study,24 however, quantified and characterized the release of TiO2 NPs from paint and stain under natural weathering scenarios, reporting concentrations of 6.8 × 1015 NPs per kg-paint and 2.9 × 1013 NPs per kg-stain. However, few studies25,26 have investigated Ti-containing NPs originating from industrial production activities, which are considered the primary source of these NPs. Currently, there is a lack of comprehensive quantitative information about the PNC of Ti-containing NPs emitted from industrial activities. Wu et al.25 determined that Ti-containing NPs are the main metal-NPs in coal fly ash emissions from coal-fired power plants, with concentrations ranging from 2.5 × 1010 to 1.7 × 1011 particles per g. Thus, it is crucial to evaluate Ti-containing NP emissions from various industrial activities. However, there is limited information available regarding atmospheric emissions of Ti-containing NPs from different industries, resulting in insufficient understanding of the health risks to the general population in China who may inhale those Ti-containing NPs. Addressing these knowledge gaps is vital for sustainable global industrial development.

It is difficult to compile a comprehensive emissions inventory because there is limited monitoring data from many industrial plants releasing Ti-containing NPs into the atmosphere. In this study, we collected field samples from 132 full-scale plants across 13 industrial sectors, culminating in one of the largest sample sizes in such research to date. Fine PM samples were collected during industrial production processes, and the particle size distribution (PSD) characteristics of Ti-containing NPs were analyzed. The Ti-containing NP concentrations were quantified using single particle inductively coupled plasma time of flight mass spectrometry (SP-ICP-TOF-MS), and emission factors (EF) were derived for each industrial category. The atmospheric emissions of Ti-containing NPs in mainland China were estimated, and their spatial distributions were mapped (nationally) based on the computed EFs and industrial production activities. We also conducted a comparative analysis of Ti-containing NP emissions from various industrial sectors across different provinces in China. This is crucial to identify and prioritize sources for developing effective control strategies. This research provides practical insights for promoting sustainable industrial development worldwide.

2. Methods

2.1 Sample collection

We collect fine PM from 132 industrial production sites spanning 13 source categories.27 This collection was conducted according to modification of the stationary source sampling methods.28,29 Details about the sampling sites and industrial PM samples are provided in Fig. S1 and Table S1, respectively. For each industrial source, samples were collected from at least five production facilities. For coal-fired power plants (CFPPs), waste incineration (WI) and other pollution sources closely associated with production and daily life, samples were gathered from at least twelve factories each. The sampling sites was at the outlet of the bag filter, marking the end of each production cycle. Each sample comprised a composite meticulously obtained through sampling at various time points. The samples were then mixed to ensure representativeness and to reflect the overall production status during the three-day collection period. To maintain sample integrity, they were promptly transferred to the laboratory for analysis.

2.2 Sample pretreatment

The 132 industrial PM samples were subjected to pretreatment using the extraction method described by Li et al.30 and Tou et al.31 These studies investigated the extraction of NPs in complex matrices, thus providing a valuable reference for the present investigation. The detailed pretreatment procedure is outlined as follows: 20 mg of industrial PM is weighed into a centrifuge tube, and 50 mL of Milli-Q water is added. Ultrasonication is carried out for 20 min (ultrasonic power = 285 W), while maintaining a temperature range of 15–25 °C using ice. The sedimentation method is then employed to separate NPs from large particles. Following Stokes' law, the optimal sedimentation time was determined to be 3.25 hours. Then, 1 mL of the supernatant of the extract (containing particles <1 μm in diameter) was collected and diluted with Milli-Q water (18.2 MΩ) to 50 mL (i.e., a 50-fold dilution), and then further diluted to 500-fold, 5000-fold, and 50[thin space (1/6-em)]000-fold. Before the next processing step, the samples underwent another round of ultrasonication.

2.3 Instrumental analysis and data processing

Single particle analysis of the 132 diluted industrial PM extracts was conducted using ICP-TOF-MS (TOFWERK icpTOF 2R/CETAC Iridia-Bio, Switzerland) to determine the PNC and PSD of Ti-containing NPs. Element-specific instrument sensitivities were calibrated using a multi-element solution mixture derived from a multi-element standard solution (0, 0.05, 0.1, 0.2, 0.5, 1 μg L−1 for multi-element standard [QC21, NIST SRM, SPEX, USA] diluted in 1% HNO3 from Beijing Institute of Chemical Reagents, China). The transport efficiency (TE) was determined via the known size approach, employing both AuNPs with a certified particle size of 40 nm (NCRM-Au 40 nm, National Centre for Nanoscience, China) in Milli-Q water and Au ionic standard solutions (GSB 04-1726-2004, National Nonferrous Metals and Electronic Materials Analysis and Testing Centre, China) of 0, 0.05, 0.1, 0.2, 0.5, and 1 μg L−1 (diluted in 1% HNO3). The linear correlation coefficient (R) of the Ti ion standard curve was 0.999, and that of the Au ion standard curve was 0.997 (Fig. S2a and b, respectively). Before analysis, the ICP-TOF-MS mass spectra were calibrated with a standard tuning solution based on 23Na+, 80Ar2+, and 208Pb+ target isotopes using TofDaq Viewer (Version, TOFWERK). We applied the kinetic energy discrimination (KED) mode with a collision cell gas comprising 4.5% hydrogen gas in helium to mitigate multi-atomic interference. Each sample was collected over 180 s, and the pipeline was washed with Milli-Q water between each set of samples.

The particle detection threshold was calculated according to a compound Poisson distribution using the expression in eqn (1),

 
threshold = mean + (3.29σ + 2.71)(1)
where mean and σ are the mean and standard deviation of the background signal in the analysis window of 100 data points.

The PNC of Ti-containing NPs was determined according to eqn (2):

 
image file: d4en00347k-t1.tif(2)

The data obtained from the single-particle experiments were analyzed using the time-of-flight single-particle investigator (TOF-SPI), which is an in-house LabVIEW program (LabVIEW 2018, National Instruments, TX, USA). Specifically, TOF-SPI is an open-source software written by Alexander Gundlach-Graham (https://github.com/TOFMS-GG-Group) and designed to process SP-ICP-TOF-MS data combined with liquid calibrations. In the data processing for this study, the element-specific backgrounds, critical values, absolute sensitivities, particle intensities, and elemental masses (in grams) per particle were all determined using this software.

2.4 Estimation method and uncertainty

We used the EF methodology recommended by EMEP/EEA32 and UNEP33 to estimate the emission inventory of Ti-containing NPs from 13 industrial sectors. This prevalent estimation method involves integrating data about the occurrence of human activities (i.e., activity data; AD) with coefficients that quantify emissions or removals per activity unit, i.e., EFs, according to the expression, Emission = AD × EF.

Therefore, in this study:

 
Ti-containing NP emission (particles) = production (103 t)① × EF(3)
 
image file: d4en00347k-t2.tif(4)
 
image file: d4en00347k-t3.tif(5)
Note that ① AD are sourced from official websites of international organizations and institutions, as well as the China Statistical Yearbook released by the National Bureau of Statistics of China (for details, see our previous research27); ② and ③ are specified by the Method and Coefficient Manual of Industrial Source Pollution Discharge Accounting34 (see our previous research27).

To minimize variance in the PNCs of Ti-containing NPs among industrial PM samples within each industry, we used MS Excel data processing to remove extreme values and outliers (outside the ±1.5 inter-quartile range). The zero value was also removed. The remaining PNC values were averaged to obtain the reported values.

In this study, the equation used to estimate the increase in Ti-containing NPs (particles per m3) in the atmosphere of China caused by emissions from the 13 industrial sources was the following:

 
Ti-containing NPs (particles per m3) = Ti-containing NP emission (particles) ÷ national territorial area (km2)① ÷ vertical height of PM2.5(m)②(6)

Note that ① the national territorial area (km2) was determined from https://www.stats.gov.cn/zt_18555/ztsj/hjtjzl/2006/202303/t20230302_1922569.html, and https://www.cia.gov/the-world-factbook/countries/; and ② Ti-containing NPs are mainly wrapped with PM2.5, where the vertical height35 of PM2.5 aggregation is considered to be the height of Ti-containing NPs released from industrial sources into the atmosphere and distributed vertically in the air.

The lifetime average daily dose of Ti-containing NPs through inhalation exposure (LADDinh) caused by 13 industrial sectors could be assessed by using the eqn (7). Parameters utilized in the eqn (7) are displayed in Table S2.

 
image file: d4en00347k-t4.tif(7)

3. Results

3.1 Particle number concentrations of Ti-containing NPs from industrial activities

Toxicological and epidemiological studies19,20 have suggested that the PNCs of ultrafine particles may be more closely correlated with health endpoints than mass concentrations. However, few studies25 have focused on Ti-containing NPs emitted during industrial production activities. Fig. 1 and Table S3 present the PNCs of Ti-containing NPs (particles per g) across 132 industrial activities and 13 types of industrial sources. Notably, the PNCs vary by one to two orders of magnitude across the 13 industrial sectors.
image file: d4en00347k-f1.tif
Fig. 1 PNCs of Ti-containing NPs (particles per g) released from 132 industrial activities. PNC = particle number concentration; NP = nanoparticle; PCu = primary copper smelting; SCu = secondary copper smelting; SAl = secondary aluminum smelting; SPb = secondary lead smelting; SZn = secondary zinc smelting; EAF = electric-arc furnace steelmaking; WI = municipal solid waste incineration; CK = cement kiln co-processing of solid waste; IOS = iron-ore sintering; COP = coking plant; HWI = hazardous-waste incineration; CFPP = coal-fired power plant; BFI = blast-furnace pig iron steelmaking.

The PNCs of Ti-containing NPs emitted from 13 industrial sources ranged from 107 to 1011 particles per g. Coal-fired power plants (CFPPs) emitted the highest PNC of Ti-containing NPs into the air (mean = 1.7 × 1010 particles per g; range = 6.8 × 108 to 4.2 × 1011 particles per g; median = 1.1 × 1010 particles per g), consistent with Wu et al.'s findings25 that Ti-containing NPs emitted from CFPP sources ranged in PNC from 2.5 × 1010 to 1.7 × 1011 particles per g. A possible reason is that TiO2 may be doped in some mineral components of coal.36 Waste incineration is a vital method for disposing of both municipal solid waste (WI) and hazardous waste (HWI). However, this approach emits high concentrations of Ti-containing NPs into the air. Specifically, for the WI process: mean = 7.7 × 109, median = 7.9 × 109, range = 9.7 × 108 to 2.6 × 1010 particles per g; and for the HWI process: mean = 2.2 × 109, median = 2.8 × 109, range = 6.7 × 108 to 4.2 × 1010 particles per g. This may result from the extensive use of TiO2 (ref. 37–39) in pigments, coatings, food additives, pharmaceuticals, cosmetics, and electronic devices. High temperatures during waste incineration can release Ti-containing NPs from these substances. Blast-furnace pig iron steelmaking (BFI) represents the initial steelmaking process, where iron ore is melted with coke in a blast furnace to produce pig iron or molten iron for steel refining. In contrast, electric-arc furnace steelmaking (EAF) uses scrap steel and electrical energy to facilitate steel recycling; this method is preferred in developed and rapidly developing countries. However, both of these steelmaking sectors emit relatively high PNCs of Ti-containing NPs, i.e., BFI: mean = 5.5 × 109 (range = 1.1 × 109 to 1.0 × 1010 particles per g; median = 5.3 × 109 particles per g); and EAF: mean = 2.0 × 109 (range = 2.7 × 108 to 5.7 × 109 particles per g; median = 5.7 × 109 particles per g). Co-disposing of solid waste in cement kilns (CK) involves introducing waste into the kiln, which yields cement clinker, while safely disposing of waste. However, this process inevitably emits significant PNCs of Ti-containing NPs into the atmosphere (mean = 1.9 × 109; range = 3.2 × 108 to 1.9 × 1010; median = 8.2 × 108 particles per g). Based on these PNC values, we propose that it would be most effective to target the industrial sources that release the highest concentrations of Ti-containing NPs, i.e., CFPP, WI, BFI, HWI, EAF, and CK, to achieve significant emissions reductions.

The industrial sectors, iron-ore sintering (IOS), secondary copper smelting (SCu), primary copper smelting (PCu), coking plants (COP), secondary aluminum smelting (SAl), secondary lead smelting (SPb), and secondary zinc smelting (SZn) emit relatively lower PNCs of Ti-containing NPs into the air (all approximately 108 particles per g). Specifically, the average PNCs from highest to lowest were COP (8.8 × 108), SCu (3.3 × 108), IOS (3.2 × 108), SAl (3.1 × 108), SPb (2.8 × 108), PCu (1.4 × 108), and SZn (1.3 × 108) particles per g.

The PNCs of Ti-containing NPs released from these industrial processes comprise important first-hand data from a large-scale investigation of industrial activities. In particular, sectors such as CFPP, WI, BFI, HWI, EAF, and CK emit high PNCs of Ti-containing NPs and are therefore crucial for understanding the current emission status of many industries in China.

3.2 Particle size distributions of Ti-containing NPs from industrial activities

The samples obtained from the industry sources have complex compositions, including Ti-containing NPs (primarily TiO2 in two crystal forms: rutile and anatase). Thus, the PSD of Ti-containing NPs was calculated separately for rutile and anatase. The particle sizes of Ti-containing NPs were determined based on the mass and density of each type (ρrutile = 4.25 g cm−3; ρanatase = 3.78 g cm−3; mass values listed in Table S4). The PSDs of Ti-containing NPs from various industrial sources were determined using SP-ICP-TOF-MS (Fig. 2 and S3). The PSDs of Ti-containing NPs from similar industrial sources were consistent across different factories. However, variations were observed among different industrial sources. For example, BFI, IOS, WI, HWI, and EAF predominantly have particle sizes ranging from 80–120 nm, whereas CFPP, CK, COP, and SCu typically have particle sizes within the range of 40–80 nm. Overall, most particles are less than 120 nm in diameter.
image file: d4en00347k-f2.tif
Fig. 2 PSDs of Ti-containing NPs released from CFPP and WI sources.

For CFPP, assuming all Ti-containing NPs are anatase, the mean particle size ranged from 76.1 to 96.2 nm, with a median size between 70.6 and 83.5 nm and an overall range of 56.4 to 373.6 nm. This is consistent with Wu et al.'s findings25 that the PSD for CFPP ranged from several nanometers to 200 nm. For WI, Ti-containing NPs (anatase) had mean particle sizes ranging from 83.8 to 127.3 nm and median sizes ranging from 82.0 to 115.3 nm, with all particles falling within the range of 70.6 to 418.2 nm. The mean, median, and overall range of particle sizes of anatase NPs emitted from the other industrial sources are presented in Table S5. Anatase-NPs from BFI and HWI had the larger sizes: mean = 103.1–167.0 nm and 77.9–152.0 nm, and median = 91.6–174.3 nm and 77.9–160.0 nm, with overall particle sizes ranging from 68.9–488.6 nm and 70.4–318.8 nm, respectively.

Assuming all Ti-containing NPs are rutile leads to similar PSDs to those of anatase. The detailed mean, median, and overall range of particles size of rutile-NPs from the 13 industrial sources are presented in Table S6. Herein, we discuss a few industrial sources as examples. For CFPP, the mean particle size of rutile-NPs ranged from 73.1 to 92.5 nm (median = 67.9 to 80.3 nm, range = 54.2 to 359.3 nm). In contrast, rutile-NPs from WI, BFI, and HWI were generally larger: mean = 80.6–137.2, 99.1–160.6, and 75.3–146.2 nm; median = 78.8–110.8, 88.1–167.7, and 75.3–153.8 nm; and range = 67.9–402.2, 66.3–469.9, and 67.7–306.6 nm, respectively. In this study, SP-ICP-TOF-MS was employed to detect the PSDs of Ti-containing NPs emitted from industrial sources. The data obtained are comprehensive and important for increasing our understanding of emitted particle sizes.

3.3 Emissions factors of Ti-containing NPs from industrial activities

An EF reflects the average pollutant emission per unit of activity for a particular source. In this study, the EF was used to quantify the Ti-containing NPs emissions per ton of steel, copper, aluminum, lead, zinc, or disposed waste. It can also be used to assess emissions from coal-fired power generation of 1 terawatt hour (TW h). The EFs of Ti-containing NPs for various industrial sources were determined using eqn (4) (refer to the Method section).

The EFs for Ti-containing NPs across the 13 tested industrial sectors ranged from 4.0 × 109 to 1.7 × 1013 particles per t-product (Fig. 3 and Table S7). The number of Ti-containing NPs emitted by the production of one ton of cement was the largest (up to 1.7 × 1012 particles), which indicates that advanced bag filter systems are necessary for CK sewage discharge control. The industrial sources with relatively high EFs of Ti-containing NPs included COP (3.9 × 1011), BFI (2.5 × 1011), EAF (2.1 × 1011), SPb (1.9 × 1011), SCu (1.6 × 1011), and SAl (1.5 × 1011 particles per t-product); the industrial sources with relatively low EFs of Ti-containing NPs included WI (7.6 × 1010 particles per t-disposal), SZn (6.7 × 1010 particles per t-product), PCu (3.8 × 1010 particles per t-product), HWI (2.2 × 1010 particles per t-disposal), and IOS (2.1 × 1010 particles per t-product). Notably, for every TW h generated by a CFPP, 1.7 × 1016 Ti-containing NPs are emitted into the atmosphere. These rarely-reported EFs provide a valuable reference for estimating Ti-containing NP emissions from industrial activities, both within China and worldwide.


image file: d4en00347k-f3.tif
Fig. 3 Emission factors (particles per t or particles per TWh) of Ti-containing NPs for 13 industry sectors (note: the emission factor is the number of Ti-containing NPs emitted to the atmosphere by producing one ton of steel, copper, aluminum, lead, or zinc; disposing of one ton of waste; or producing one TWh).

3.4 Atmospheric emissions of Ti-containing NPs from industrial activities

China is a rapidly advancing industrialized nation that stands among the global leaders in terms of production output across 13 key industrial sectors. Moreover, China prides itself on possessing advanced technology and industrial production equipment that are on par with those of developed nations. Thus, examining the emissions of Ti-containing NPs from these 13 industrial activities in China can establish a valuable benchmark for developed nations to assess their own emissions. This evaluation also carries considerable weight in obtaining an initial estimation of the total global emissions of Ti-containing NPs.

It is crucial to elucidate the sources and quantities of Ti-containing NPs released from industrial activities to enable effective source management. We applied the EF methodology recommended by the European Monitoring and Evaluation Programme (EMEP) of the European Environment Agency (EEA)32 and the United Nations Environmental Program (UNEP)33 to estimate the emission inventory. Atmospheric emissions of Ti-containing NPs from different industrial sources in China are presented in Fig. 4 and Table S8 (organized based on geographical distribution).


image file: d4en00347k-f4.tif
Fig. 4 Total emissions (unit: particles) of Ti-containing NPs from thirteen industrial sources (the map is based on free vector data sourced from the “Database of National Catalogue Service for Geographic Information [GS (2020)4619]” (https://www.resdc.cn/DOI/doi.aspx?DOIid=122) and created using ArcGIS software). PCu = primary copper smelting; SCu = secondary copper smelting; SAl = secondary aluminum smelting; SPb = secondary lead smelting; SZn = secondary zinc smelting; EAF = electric-arc furnace steelmaking; WI = municipal solid waste incineration; CK = cement kiln co-processing of solid waste; IOS = iron-ore sintering; COP = coking plant; HWI = hazardous-waste incineration; CFPP = coal-fired power plant; BFI = blast-furnace pig iron steelmaking.

Our assessment of these 13 industrial sources indicated that annual atmospheric emissions of Ti-containing NPs in China reach approximately 9.8 × 1022 particles. This level of emissions could elevate the atmospheric concentration of Ti-containing NPs in China by 1.7 × 107 particles per m3 (further details in the Method section). Such an escalation in concentration may lead to the general population's lifetime average daily dose (LADD) of inhaled Ti-containing NPs being 2.4 × 106 particles per day per kg.

As shown in Fig. 4, CFPP (9.4 × 1022 particles), CK (3.6 × 1021 particles), BFI (2.2 × 1020 particles), and COP (1.8 × 1020 particles) are the top industrial contributors of Ti-containing NPs in China, collectively contributing 99.9% of the total annual atmospheric emissions of the 13 investigated industrial sources. Wide variations in Ti-containing NP emissions are observed across provinces for several industrial sources. For example, the disparities within SPb and HWI span up to four orders of magnitude; those for CFPP, PCu, SCu, and SAl reach three orders of magnitude, and those for COP, CK, EAF, WI, BFI, IOS, and SZn are up to two orders of magnitude.

We also roughly estimated the total global emissions of Ti-containing NPs from the 13 categories of industrial activities as 1.8 × 1023 particles (Table 1). China alone accounts for 54.2% of these emissions, which validates the broad importance of assessing the status of Ti-containing NP emissions in China. Similar to the case in China alone, CFPP (1.7 × 1023 particles), CK (7.4 × 1021 particles), BFI (3.3 × 1020 particles), COP (2.7 × 1020 particles), and EAF (1.2 × 1020 particles) are the most significant industrial contributors of Ti-containing NPs globally. Collectively, these sectors contribute 99.9% of the total annual atmospheric emissions from the 13 investigated industrial sources. Thus, our first-hand findings confirm the important industrial sources of Ti-containing NPs both in China and globally.

Table 1 Industrial activity data and Ti-containing NPs emissions (units: particles) of 13 industrial sectors in China and globally
Industry China production (thousand tons) Global production (thousand tons) Ti-containing NPs emission in China Ti-containing NPs emission global
BFI 883[thin space (1/6-em)]800 1[thin space (1/6-em)]345[thin space (1/6-em)]200 2.2 × 1020 3.3 × 1020
CFPP (TWh) 5468 10[thin space (1/6-em)]041 9.4 × 1022 1.7 × 1023
CK 2[thin space (1/6-em)]129[thin space (1/6-em)]512 4[thin space (1/6-em)]360[thin space (1/6-em)]000 3.6 × 1021 7.4 × 1021
COP 471[thin space (1/6-em)]161 683[thin space (1/6-em)]000 1.8 × 1020 2.6 × 1020
EAF 118[thin space (1/6-em)]641 556[thin space (1/6-em)]748 2.5 × 1019 1.2 × 1020
HWI 84[thin space (1/6-em)]612 1[thin space (1/6-em)]175[thin space (1/6-em)]219 1.8 × 10 18 2.5 × 1019
IOS 1[thin space (1/6-em)]105[thin space (1/6-em)]517 2[thin space (1/6-em)]560[thin space (1/6-em)]000 2.3 × 1019 5.4 × 1019
PCu 6614 22[thin space (1/6-em)]000 2.5 × 1017 8.4 × 1017
SAl 5504 74[thin space (1/6-em)]700 8.0 × 1017 1.1 × 1019
SCu 2301 18[thin space (1/6-em)]900 3.7 × 1017 3.0 × 1018
SPb 2198 6670 4.2 × 1017 1.3 × 1018
SZn 659 13[thin space (1/6-em)]800 4.4 × 1016 9.2 × 1017
WI 117[thin space (1/6-em)]892 271[thin space (1/6-em)]960 8.9 × 1018 2.1 × 1019


Industrial development is vital for societal progress, especially in densely-populated countries like China, because it has a significant influence on national advancement and can improve living standards. Evaluating Ti-containing NP emissions through regional economic bodies helps with policy formulation and promotes emission reduction efforts. China's socioeconomic development is often evaluated by region, i.e., eastern, central, western, and northeastern. The proportions of Ti-containing NP sources across different regions are shown in Fig. 5. The eastern regions are the top emitters, followed by the western and central regions. Therein, CFPP, WI, BFI, HWI, EAF, and CK are the sources with significant potential for effective reduction, and therefore, greater efforts are needed in these regions. In addition, because CFPP, CK, BFI, and COP are important industrial contributors, efforts should be concentrated in the corresponding high-emission regions. In terms of CFPP emissions, the eastern region is the largest contributor (41.9%), followed by the western (30.9%) and central regions (21.2%). Increased efforts toward emission reduction of CK sources in eastern, western, and central China are therefore required. In the case of BFI, the eastern region is the dominant emitter, contributing 51.8% of the Ti-containing NP emissions in China. For COP, the western region plays a pivotal role, contributing 35.4% of Ti-containing NP emissions, while the central and eastern regions contribute 33.2% and 23.5%, respectively.


image file: d4en00347k-f5.tif
Fig. 5 Proportions of Ti-containing NP emissions by industrial source in the four economic regions of China. PCu = primary copper smelting; SCu = secondary copper smelting; SAl = secondary aluminum smelting; SPb = secondary lead smelting; SZn = secondary zinc smelting; EAF = electric-arc furnace steelmaking; WI = municipal solid waste incineration; CK = cement kiln co-processing of solid waste; IOS = iron-ore sintering; COP = coking plant; HWI = hazardous-waste incineration; CFPP = coal-fired power plant; BFI = blast-furnace pig iron steelmaking.

3.5 Sustainable development and prioritizing industrial sources for Ti-containing NP emissions reductions

China is a leading industrial powerhouse with advanced technology, and therefore, it is pivotal to evaluate Ti-containing NP emissions from its main industrial sources. This evaluation can inform developed nations about their emissions to promote and guide global industrial sustainability. Emissions of Ti-containing NPs differ significantly (by one to two orders of magnitude) among Chinese provinces. We identified nine provinces with the highest Ti-containing NP emissions and assessed specific industrial sector contributions therein (Fig. 6), thereby providing crucial insights for emission control strategies.
image file: d4en00347k-f6.tif
Fig. 6 The distribution of Ti-containing NP emissions across the 31 provinces in mainland China and industrial sector-specific contributions in the nine provinces with the highest Ti-containing NP emissions.

These nine provinces (Shandong, Inner Mongolia, Jiangsu, Guangdong, Xinjiang, Shanxi, Hebei, Anhui, and Henan) collectively accounted for 5.7 × 1022 particles of Ti-containing NPs (Fig. 6), corresponding to 58.3% of the total emissions from the 31 provinces in mainland China. Shandong leads with annual Ti-containing NP emissions of 9.1 × 1021 particles, followed by Inner Mongolia (8.4 × 1021 particles) and Jiangsu (7.9 × 1021 particles). Consequently, residents in these provinces may face elevated exposure risks. Focusing on these nine provinces when formulating Ti-containing NP emission reduction policies in China can lead to significant emissions reductions.

Among the nine provinces with the highest emissions of Ti-containing NPs (Fig. 6), four are situated in the eastern region, three in the central region, and two in the western region. This distribution is logical and can be attributed to the intense industrialization and rapid economic growth in the eastern and central regions of China. Significantly reducing emissions requires addressing two key industrial activities (i.e., CFPP and CK) within these nine high-emission provinces. Additionally, provinces like Hebei should prioritize improvements in BFI, while Shanxi should focus on optimizing COP. Enhancing the efficiency of pollution control devices will mitigate health risks substantially for residents in provinces with high emissions.

Data availability

All data in this study are contained in the manuscript and ESI.

Author contributions

Qiuting Yang conducted the production site field surveys, collected samples, designed the experiments, analyzed the data, and wrote the manuscript. Lili Yang contributed to sample collection and revised the manuscript. Changzhi Chen, Jianghui Yun, and Chenyan Zhao assisted in the sample collection. Guorui Liu conceptualized the study, conducted production site field surveys, wrote and revised the manuscript, and acquired funding.

Conflicts of interest

The authors declare no competing interests.

Acknowledgements

This work was supported by the Strategic Priority Research Program of the Chinese Academy of Sciences (Grant No. XDB07500400) and the National Natural Science Foundation of China (Grant No. 92143201 and 22076201). We thank Professors Chungang Yuan, DeAn Pan, Cheng Li, Pu Lv, Feihua Yang, Yinming Li, Jianxin Yang, Xiaojin Han, and Hua Yin for their help in sample collection.

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Footnote

Electronic supplementary information (ESI) available. See DOI: https://doi.org/10.1039/d4en00347k

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