Abstract
Atmospheric soot and organic particles from fossil fuel combustion and biomass burning modify Earth’s climate through their interactions with solar radiation and through modifications of cloud properties by acting as cloud condensation nuclei and ice nucleating particles. Recent advancements in understanding their individual properties and microscopic composition have led to heightened interest in their microphysical properties. This review article provides an overview of current advanced microscopic measurements and offers insights into future avenues for studying microphysical properties of these particles. To quantify soot morphology and ageing, fractal dimension (Df) is a commonly employed quantitative metric which allows to characterize morphologies of soot aggregates and their modifications in relation to ageing factors like internal mixing state, core-shell structures, phase, and composition heterogeneity. Models have been developed to incorporate Df and mixing diversity metrics of aged soot particles, enabling quantitative assessment of their optical absorption and radiative forcing effects. The microphysical properties of soot and organic particles are complex and they are influenced by particle sources, ageing process, and meteorological conditions. Furthermore, soluble organic particles exhibit diverse forms and can engage in liquid–liquid phase separation with sulfate and nitrate components. Primary carbonaceous particles such as tar balls and soot warrant further attention due to their strong light absorbing properties, presence of toxic organic constituents, and small size, which can impact human health. Future research needs include both atmospheric measurements and modeling approaches, focusing on changes in the mixing structures of soot and organic particle ensembles, their effects on climate dynamics and human health.
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Introduction
Airborne aerosol particles undergo physical and chemical transformations over time in the atmosphere, which can significantly alter their properties, including size, morphology, composition, and mixing state1,2. External and internal mixtures of soot and organic particles are the most prevalent constituents of tropospheric carbonaceous aerosols. Their origins are intertwined with multi-phase emissions resulting from combustion of fossil fuels and biomass burning3. Presently, soot and brown carbon (BrC) in organic aerosols remain focal research points due to their significant roles and their potential contributions to uncertainty in the atmospheric climate system4. A growing body of research is delving into the study of chemistry and microphysics of particles composed of soot and organic mixtures pertaining to diverse atmospheric environments such as remote, urban, ocean, and forested areas, aligned with climate and health impacts in the troposphere3,5,6. These studies underscore the necessity for an improved understanding of their climatic and human health effects, providing motivation for laboratory experiments, test facility studies, and field investigations aimed at advancing fundamental knowledge regarding size, chemical composition, and light absorption properties7,8. Despite these efforts, our understanding of the microphysical properties of soot and organic particles remains limited. The microphysical properties and molecular composition of these particles, encompassing size, phase, morphology, and component-specific mixing states, are pivotal in delineating their climatic and health effects1,9,10,11,12.
The aerosol transformation in the atmosphere refers to “ageing process”. The description of atmospheric aerosols requires distinguishing two types of their mixing states, the “population mixing state” and the “mixing state of individual particles”. Riemer et al.1 defined population mixing state as the distribution of aerosol chemical species (e.g., SO42−, NO3−, NH4+, various organic components, elemental carbon, and metal elements) among the particles in a given population. This is different from the mixing states of individual particles that one particle contains different aerosol components such as soot, mineral, organic, metal, sulfate, nitrate, etc., and refers to the way that these components are arranged within the particle. Riemer et al.1 have reviewed the methods of online measurements and the concepts of population mixing state, particularly their relevance to climate-relevant properties. While their review focused primarily on the chemical mixture of atmospheric particles, it did not delve into the potential impacts stemming from the microphysical properties of soot and organic particles. Recent studies reported significant advances in understanding how the microphysical characteristics of soot and organic particles affect their optical absorption and climate-relevant properties13,14,15. However, this knowledge remains fragmented and requires systematic organization. This review manuscript synthesizes the most recent findings and developments in the microphysical properties of soot and organic particles. It also seeks to chart new directions for further investigations of their atmospheric roles, thereby connecting laboratory studies, field research and atmospheric modeling. Additionally, our manuscript presents the first comprehensive summary of the current scientific knowledge in this area. It also provides a roadmap for future investigations into the physical states of these particles and their implications for the atmosphere. This review is mainly concerned with the physical mixing states of individual particles, and we will use the term “mixing structure” for the remainder of the review to avoid confusion with the population mixing state.
Organic components account for a substantial mass fraction of the accumulation mode aerosols, ranging from ~20% to 50% in the continental air16 and even up to 90% in tropical forest areas17. In contrast, black carbon (or soot) particles contribute less than 10% by mass to the fine particles3. Soot and organic components of carbonaceous aerosols have become focal points in atmospheric science discussions. Terms such as “black carbon”, “soot”, “elemental carbon”, “equivalent black carbon” and “refractory black carbon” are frequently used interchangeably to describe to the most heat-resistant and light-absorbing component of carbonaceous combustion particles. However, it is important to note that each term has distinct definitions and is associated with different measurement methodologies18. In this context, we specifically refer to “soot” from a morphological perspective, characterizing it as agglomerates of carbon spherules composed of graphite-like microcrystallites (Figs. 1 and 2)19. While soot inclusions constitute only minor mass fractions of fine atmospheric particles, their cumulative warming effect on the atmosphere through various forcing mechanisms is significant, estimated as +0.11 [−0.20 to 0.42] W m−2 20. Because of the extensive spatial variability in mass concentrations of soot, ranging from 0.007 to 20 μg m−3 on Earth21,22,23,24, their warming effect within polluted areas holds substantial implications for climate change. Moreover, aged soot particles can be coated by secondary aerosol condensation components (e.g., sulfate, nitrate, secondary organics), enhancing optical absorption of aged particles through “lensing effect”25,26,27. In contrast, a majority of organic aerosol components exert overall cooling effect on the Earth’s atmosphere with radiative forcing at −0.21 [−0.44 to +0.02] W m−2 20. However, certain components of the atmospheric organic mixtures also exhibit significant light absorbing properties, which have been collectively termed as brown carbon (BrC)6,28,29. Overall, BrC can contribute up to 50% of mass absorption efficiency30,31, amplifying the overall radiative forcing effects attributed to carbonaceous aerosol20. Therefore, these carbonaceous particles, spanning from nanometers to micrometers in size, significantly influence the climate system and environment by interacting with radiant energy, influencing cloud properties, and impacting human health. The microphysical properties and mixing of soot and organic components of atmospheric particles holds crucial significance for integrating them into atmospheric models and assessing their environmental impact 1,12.
To comprehend the size, phase, morphology, and mixing state characteristics of particles composed of soot and organic components, there is a pressing need for online and offline measurements capable to provide numeric metrics of their external and population internal mixing states as well as an information on the lateral heterogeneity of individual particles2,10,11,32,33. Over the past decade, atmospheric models have sought to incorporate particle-specific characteristics of aerosol ensembles for a more comprehensive understanding of their atmospheric implications within the troposphere1,12. To improve modeling predictions of particle optical properties, numerous studies have developed a range of numerical optical frameworks, which are discussed in the following section. Additionally, they have compiled extensive metric that encompass various key parameters, such as aggregation structure, refractive index, and particle size dimensions (including both the size of individual microcrystallites and their number in soot particles)34,35,36,37,38. Consequently, a review is warranted to consolidate the present scientific advancements and provide insight into the prospective trajectory of understanding the atmospheric state of particles composed of soot and organic components. The following questions necessitate consideration:
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What methodologies are viable for observing the phase and mixing structure of carbonaceous particles composed of soot and organic components?
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What underlines the primary ageing mechanisms of particle ensembles composed of soot and organic components? How do atmospheric ageing processes alter the mixing structure of the soot-organic particles in polluted air?
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How does atmospheric water affect the phase and mixing structure of the soot-organic particle mixtures? To what extent do inorganic constituents impact the phase and mixing characteristics of particles?
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How does mixing structures of soot and organics transform the morphology and optical properties of particles, influencing their impact on climate dynamics and human health?
Methodologies for the particle-resolved observations of soot-organic mixtures
Various methodologies have been employed to scrutinize the particle mixing states and phases of characteristics of the soot-organic particle mixtures in the ambient environment. Specifically, real-time characterization of particle shape and mixing state has been demonstrated through concurrent measurements of volume-equivalent and mobility diameter of soot-containing particles using a single-particle soot photometer (SP2, DMT)39,40,41,42,43. A centrifugal particle mass analyzer (CPMA) integrated with SP2 (CPMA-SP2) can directly measure the mass of non-refractory coating and soot core based on the coating density and core-shell morphology inferred from the SP244,45. Additionally, custom-built single-particle mass spectrometry, using various laser desorption/ionization methods have been also employed, furnishing size-resolved chemical insights to assess the mixing state of ambient particles composed of soot, organic, and other components46,47,48,49. Notably, the Soot Particle Aerosol Mass Spectrometer (SP-AMS) has been specially designed and developed to facilitate in-situ measurements of soot particles, but it also provides the chemical compositions of both soot and the non-refractory organic components within the same particles50. A number of experimental approaches based on the poke-and-flow technique have been developed to quantify particle viscosity and to investigate the dependence on environmental conditions and particle composition of organic particles11. For example, Virtanen et al.51 developed an electrical low-pressure impactor coupled with a scanning mobility particle sizer and provided the first evidence that aerosol particles smaller than 100 nm could be highly viscous semi-solids or amorphous solids. While these techniques offer real-time particle data and infer the mixing state characteristics of large particle ensembles, they still fall short of providing direct chemical imaging visualization of particle mixing states and heterogeneity of the soot and organic components within individual particles.
Offline electron microscopes have been used in many studies for direct imaging of dry ambient particles collected on the smooth substrates. The scanning electron microscope (SEM) is the instrument of choice for characterizing surface morphology and composition of individual mixed soot-organic particles, albeit with limited capability to delve into inner mixing structures of individual particles2,10. Additionally, SEM faces challenges in effectively visualizing fine particles below 100 nm in size (e.g., Fig. 1)52,53,54,55. The transmission electron microscope (TEM) offers high-resolution imaging, capable of revealing intricate particle details down to atomic scales and directly observing the inner mixing of different chemical components within individual particles (e.g., Figs. 2 and 3a, b). TEM enables efficient observation of the mixing structures of soot, organic and inorganic components within fine particles, as well as the morphological characteristics of individual particles19,26,56,57,58.
To further elucidate the mixing structures of inorganic and organic/soot particles, recent studies have harnessed a range of additional microscopic instruments, with applications tailored to their specific research goals. The nanoscale secondary ion mass spectrometry (NanoSIMS) has been employed to examine distribution of organic and inorganic fragment ions on the surface of individual particles above size at 50 nm (Fig. 3c–f)59,60. Additionally, scanning transmission X-ray microscope (STXM) coupled with near-edge X-ray absorption fine-structure spectroscopy (NEXAFS) generates chemical images of mixing structures of the soot-organic and inorganic components in individual particles (Fig. 3g–j)10,61. These advancements in nanoscale particle analysis significantly enhance our comprehension of how soot-organic components intermingle with atmospheric inorganic salts and dust within individual particles. However, it is important to note that STXM and NanoSIMS have a lower lateral resolution for determining the mixing structure of individual particles compared to the TEM.
Most of the microscopy and chemical imaging methods noted above necessitate the placement of particles within a high-vacuum chamber. It has been recognized that some organic, sulfate and nitrate components may undergo significant transformations induced by drying under high-vacuum conditions and exposure to the electron beam irradiation (as exemplified by the S-rich component in Fig. 2c), especially in the case of mixed organic and inorganic components32,58. To alleviate these limitations, micro-Raman spectroscopy has been employed in some studies to elucidate the mixing structures of carbonaceous and inorganic components in particles, relying on the characteristic vibrational signatures of organic components62,63,64,65. However, this method encounters constraints because of its much coarser lateral resolution of ~1 µm, which inherently limits chemical component resolution. Emerging as a complementary tool to these high-resolution microscopy techniques, cryogenic transmission electron microscopy (cryo-TEM) has gained prominence. It allows observation of cryo-preserved individual particles composed of organic and inorganic mixtures (as seen in Fig. 3a, b), facilitating more accurate analysis of their mixing structure characteristics60,66,67,68,69,70. In essence, the integrated multi-modal microscopic approaches permit the comprehensive characterization of particles’ mixing structures, deciphering their soot, organic and inorganic components. In turn, detailed information on particle composition holds potential for advancing our understanding of ageing mechanisms and informing modeling studies.
Microphysical properties of soot particles
Fresh (unaged) soot particles have very distinct morphology and fractal agglomerated structures, which consist of clusters of primary soot nanospheres, typically with approximate diameters of 20 nm. These nanospheres contain distinctive features of concentrically wrapped, graphene-like layers of carbon that aggregate to form larger particles in a grape-like morphology (Figs. 1 and 2)19,71. Notably, Fig. 2f illustrates the size distribution of soot particles from various sources, showcasing a typical size range between 40 nm and 2 μm, peaking at ~150–200 nm. Consequently, a significant portion of soot particles have sub-micron sizes, allowing them to remain suspended in the air for extended periods of time. The microphysical property of soot particles comprises two primary aspects: mixing structure and morphology. The fractal dimension (Df) (illustrated in Fig. 2a–d) serves as a the key parameter for describing the fractal morphology of soot particles52,72,73,74. The Df of soot particles obtained through the scaling law72,75 (Eq. (1)), represents a critical morphological attribute, which is mathematically linked to other parameters:
where Df denotes the fractal dimension, Rg stands for the radius of gyration, kg represents the fractal factor, R0 denotes the average radius of the monomer, and N is the number of primary nanospheres within the aggregate. A recent report has summarized the details of fractal models and the methodologies for extracting fractal dimensions, a topic that spans various fields of science and mathematics75. Here, we will not delve into these methods again, but rather highlight the continued importance of microscopy analysis, particularly for determining Df, N, and R0 in internally mixed soot particles through electron microscopy images. Recent advancements in the field have seen the development of innovative computer tools, featuring image recognition techniques and machining learning algorithms to automatically extract microphysical parameters of soot particles from electron microscopy images. This technology progress marks a significant step forward in the study and understanding of soot particles and their characteristics71,76.
The typical Df value for aged urban ambient soot particles ranges around 1.82, varying from 1.50 to 2.6052,56,71,72. Across different emission sources such as vehicles, biomass burning, and coal combustion, the mean Df values for unaged soot particles range from 1.66 to 1.7771. It is generally assumed that the type of combustion source soot particles exerts discernible impacts on soot particles’ fractal morphology. Recent studies have underscored the differences in morphological parameters of freshly emitted soot particles originating from different combustion sources, in particular for finer and coarser sizes of soot particles71,77. Additionally, many studies reported significant changes in the Df values related to the atmospheric ageing processes. For example, microanalysis of soot particles has revealed that mixing diversity among soot particles is common in urban and rural air, particularly influenced by emissions from wildfires aged under relative humidity (RH) levels below 80% worldwide58,74,78,79.
Li et al.58 introduced the conceptual frameworks outlining the mixing structures of individual soot particles, encompassing “bare-like” (Fig. 2a), “partly coated” (Fig. 2b, c), and “embedded” (Fig. 2d) categories. The Df for these three categories of soot particles ranged from 1.80 to 2.16 in polluted air, with the order of: “bare-like” < “partly coated” < “embedded”52,56. Generally, larger Df values indicate more compact and aged soot aggregates in the atmosphere. For instance, the Df value of 1.96 for the compact soot particle (Fig. 2a), is higher than the Df value of 1.63 for the chain-like soot particle (Fig. 2d), suggesting that soot aggregates tend to collapse during long-range transport52,71,80. This collapse and restructuring occur as a result of liquid coatings acquired through condensation during long-range transport41,81. Surface tension of water is a prominent factor driving this restructuring during condensation82,83,84. Additionally, some studies proposed that droplet evaporation during atmospheric processes might also contribute to the collapse of the soot aggregates85,86. It has been also noted that hygroscopic changes in the coating of soot by secondary aerosol components (i.e., the mixture of organic, nitrate, and sulfate) under varying RH levels is another important factor affecting the Df values87. These coatings can transition from solid to liquid or semi-liquid phases above RH levels of 60–80%88,89,90,91. In essence, Df and the coating thickness of soot particles serve as indicators of soot source and ageing in the atmosphere.
Microphysical properties of organic particles
Organic compounds that are emitted directly in particulate form are termed as primary organic aerosols (POAs) (e.g., depicted in Fig. 4). Many volatile organic compounds emitted in the gas-phase undergo atmospheric oxidation yielding semi- or non-volatile ageing products that condense to form secondary organic aerosol (SOA) (as shown in Fig. 5). The microphysical properties of organic particles include two primary aspects, namely their mixing structure and phase state. The latter describes if the particles are liquid, viscous, semi-solids, and amorphous glassy solids. The mixing structure of organic aerosols pertains to how organic matter is internally mixed with inorganic components (as portrayed in Figs. 3 and 4a, b).
Light-absorbing (brown carbon) tarballs92, a category of the POA particles stemming from biomass burning, coal burning and combustion of heavy fuel oil, adopt a spherical and glassy solids morphology30,31,93,94,95,96,97. Tar balls are amorphous and contain no graphitic carbon98. Examining Fig. 4 unveils that tarballs display the solid phase and spherical shape of tarballs, as evidenced by SEM images (as illustrated in Fig. 4c, d). The size distribution of tarball particles spans the size range from 80 nm to 2 μm, with the mean values varying between 100 nm, 200 nm, and 300 nm, depending upon their distinct sources (e.g., biomass burning, wood burning, and coal burning) (depicted in Fig. 4f). SEM images captured at substrate tilt of 75° distinguish solid tarballs intermingled with flattened S-rich particles (depicted in Fig. 4c). Upon atmospheric ageing, solid tarballs are relatively inert and serve as primary particles accumulating sulfate, nitrate, and SOA components58. Therefore, the ambient tar ball particles are frequently coated by secondary organic components (Figs. 4a, b and 5).
Liquid-like SOA particles within the atmosphere exhibit complex mixing with inorganic components and lack specific morphological characteristics (as depicted in Figs. 2 and 3). These particles demonstrate both the SOA-coated and SOA-homogeneous mixing structures26,58. The pioneering work of You et al.99 first introduced the concept of liquid–liquid phase separation (LLPS) between SOA and sulfate components within individual particles, forming core-shell structures. Cryo-TEM and NanoSIMS images as shown in Fig. 3, both provide evidence of organic matter residing on the particle surface due to the LLPS phenomenon in diverse atmospheric environments, potentially impacting optical, CCN, and heterogeneous reactions on particle surfaces9,60. However, these methods are limited in capturing the internal depth of the LLPS mixture (depicted as Fig. 3a–f). An alternative approach employed STXM to assess dimensions of the LLPS in mixed SOA/inorganic particles inferred from the chemically specific spectro-microscopy records acquired along the radial scans of individual particles (depicted in Fig. 3g, h)61. The collective integration of these microscopic techniques effectively characterizes LLPS observed for laboratory generated and filter collected ambient particles. To investigate the size-dependent behavior of the LLPS, the cryo-TEM imaging has indicated that the majority of atmospheric particles with diameters exceeding 100 nm display LLPS structure60,69,70,100. For example, a field campaign reported an increasing number fraction of LLPS particles as particle size increased beyond 100 nm, with 34% of LLPS particles (by number) in urban air and 55% in rural air in eastern China60, along with 30% in Arctic air100. Various techniques consistently indicate that SOA particles collected at RH conditions of 50%-80% tend to adhere to a substrates upon impact, resulting in their flattening61,66,96,100. Consequently, these SOA particles exhibit semi-solid or liquid phase behavior, characterized by their low viscosity values in the ambient air (e.g., as depicted in Fig. 3g, h and indicated by the orange arrow in Fig. 4e). Notably, the direct measurements have highlighted a strong correlation between the SOA phase and relative humidity, as well as particle size101,102. Factors influencing the phase and viscosity of SOA and POA (including tar balls) have been comprehensively summarized by Reid et al.11 and are not expanded upon here.
Atmospheric effects of particles composed of soot and organic mixtures
Light absorption by carbonaceous aerosols
Two primary categories of light-absorbing carbonaceous particles are recognized as BC associated with soot and BrC associated with the light-absorbing components of POA and SOA. Over the past decade, significant advances have been made in utilizing the fractal dimension Df to quantitatively assess the morphology and mixing structure of soot particles52,56,71,73,74,77. Furthermore, practical parameterization schemes have been developed to incorporate these parameters into atmospheric modeling to better understand how the ageing process of soot impact its optical absorption within the atmosphere13,38,103,104. Thus, further development of tools to translate measurement parameters or conceptual frameworks into the numerical modeling predications is imperative. Notably, the Df values can be employed to generate numerical 3D representation of soot particles, which can then be leveraged to calculate the optical absorption by BC fractions of carbonaceous particles13,26,38,72.
In recent years, researchers have successfully devised several numerical optical models aimed at assimilating Df, size, and mixing structure of individual soot particles. These include Mie theory32,102,105,106,107 (Pathway-1 in Fig. 6)25,45,108,109, electron tomography with a transmission electron microscope coupled with discrete dipole approximation (ET-DDA)26 (Pathway-2 in Fig. 6), the Rayleigh–Debye–Gans (RDG) theory110,111, the superposition T-matrix method (MSTM)37, the invariant imbedding T-matrix method (Pathway-3 in Fig. 6), the discrete dipole approximation (DDA)112, and the Single-Particle-Electron-Microscope-to-BC-simulation (SP-EMBS-DDA)38,71 (pathway 4 in Fig. 6). Each of these pathways presents distinct advantages and disadvantages. Presently, most studies, especially when embedded in large-scale chemistry transport models, have taken a simplified approach by assuming a spherical core-shell representation of complex soot-organic mixed particles (illustrated in Fig. 2d). Despite the simplification, the atmospheric models and measurement studies have reasonably inferred their optical absorption25,27,45 (Pathway-1 in Fig. 6). The ET-DDA tool directly captures the complex morphology and mixing structure of individual aged soot particles collected on the TEM substrates and subsequently computes their optical properties (as illustrated in Fig. 2a–d). However, this method necessitates a sophisticated and less common TEM setup26 (Pathway-2 in Fig. 6). Methods of RDG and MSTM can successfully model the fractal morphology of soot aggregates and estimate the parameterization scheme for the cross sections (e.g., extinction, absorption, and scattering), single-scattering albedo (SSA), and asymmetry parameter (g) of pure and aged soot particles, as a function of particle diameter34,35,36. However, these numerical optical models explicitly assume spherical morphology of aged soot particles (Pathway-3 in Fig. 6)37,113, which is different from more common non-spherical coating shapes shown in Figs. 1 and 2. The recently developed SP-EMBS-DDA serves as a simulation tool that can directly assimilate morphology and mixing structure of aged soot particles shown in electron images from SEM or TEM, leading to the calculation of optical properties for soot particles of varying shapes and mixing structures13. Notably, the computational efficiency of Pathway-1 using Mie theory is markedly higher compared to other three pathways, which explains its widespread use38. The optical models listed above generate optical parameters, such as asymmetry parameter, absorption and scattering coefficients (Qabs, Qsca), and SSA, which are the required inputs for the radiative transfer schemes in atmospheric models (as depicted in Fig. 6).
Aerosol models that are used within chemical transport models differ in their level of detail in which they represent the aerosol, that is they differ in their representation of the population mixing state, as well as in their representation of aerosol thermodynamics and chemistry processes. For example, the Weather Research and Forecasting model with Chemistry (WRF-Chem) is host model for five different aerosol models, a sectional aerosol model (Model for Simulating Aerosol Interactions and Chemistry, MOSAIC, 4 or 8 sections)114,115, three variations of modal aerosol models (MADE/SORGAM, MADE/VBS, MAM3)116,117, and a bulk aerosol model (GOCART)118. The WRF model has also been coupled with the particle-resolved model PartMC-MOSAIC and to the aerosol two-dimensional bin module for formation and ageing simulation (ATRAS)1,14,119. Some of these aerosol modules have also been implemented in global climate models, i.e., MAM3 is used by E3SM, and ATRAS is used by CAM5120,121,122. While the details of the representation of population mixing state differ, they all have in common that they use Mie theory by default to calculate aerosol optical properties, assuming core-shell morphology or volume mixing for BC-containing particles27. This implies that the details of morphology and mixing structure are usually not included to the extent that more sophisticated optical models would be able to. Some targeted studies exist that explore the importance of more complicated mixing structures for aerosol optical properties within large-scale models. For example, Adachi et al.26 used the Goddard Institute for Space Studies General Circulation Model II-prime to show that the core-shell model assumption leads to an overestimation of the radiative forcing on the order of 20% compared to using DDA calculation. On the other hand, assuming uncoated spherical or aggregated soot particles underestimates the radiative forcing by ~30%. In simulations with a regional CTM, Andersson and Kahnert123 use different optical models depending on the simulated mixing state of black carbon. They treated externally-mixed black carbon as fractal aggregates. For internally-mixed black carbon, they used the “core-grey-shell” model, which uses spherical geometry but parameterizes the coating effect of a black carbon-containing particle by distributing the black carbon mass between the spherical core and the homogeneously mixed shell124. They concluded that the more detailed description of particle morphology and mixing state impacted the aerosol optical properties to a similar degree as the inclusion of aerosol-microphysical processes.
Over the past decades, numerical modeling studies have demonstrated that enhancing the accuracy of Df and mixing structure significantly improves the evaluation of atmospheric optical effects of soot particles1,3,13,26,111,113,124,125 and even for particles containing BrC126,127,128. Beyond the fractal morphology of soot particles129, coating thickness, including that of BrC, has been recognized as a critical factor in determining the optical absorption enhancement of internally mixed soot particles due to the lensing effect25,45,47,104,109,130,131,132. While significant progress has been made in understanding the ageing of light absorbing particles, divergent results from ambient optical measurements or the optical modeling of soot continue to emerge20. An additional challenge arises from the heterogeneous mixing diversity of soot particles, where different embedded fractions between soot and non-soot components within individual particles can lead to discrepancies of 14–51% in soot absorption enhancement13,14,39,46,127,133. Notably, for fully coated soot particles, a hypothesis has been emerged suggesting that LLPS can lead to soot redistribution and weakening the optical absorption of soot-containing particles69, countering the conventional understanding that increased coating thickness in aged soot results in higher optical absorption enhancement. In the UV region, when considering the coating to consist of strongly absorbing BrC in liquid–liquid phase separation particles (Fig. 3b), there is a notable impact on their optical properties. Specifically, the scattering cross sections of these particles can be up to 50% larger compared to those of homogenously mixed particles while their absorption cross sections may be reduced by up to 20%134. This variance highlights the significant influence of particle composition and structure on their optical behavior in the UV spectrum. The evolving comprehension of ageing in light-absorbing carbonaceous aerosols underscores the present need for validation and refinement of existing models that address the microscale changes in individual particles affecting light scattering and absorption122,133,135.
Impacts on radiative forcing
The radiative forcing of light-absorbing carbonaceous aerosols has become a central focus within the scientific community, owing to its direct connection with the global warming of climate8,136,137. However, accurate prediction of the global radiative forcing of soot particles has remained a contentious issue for decades. Various studies have reported conflicting values for the direct radiative forcing (DRF) of soot-containing particles. For instance, different studies have suggested global mean DRF values of +0.55 W m−2 and +0.71 (+0.08 to +1.27) W m−2 in different studies3,27. Conversely, alternative reports suggested smaller DRF of +0.23 (+0.06 to +0.48) W m−2 by Myhre et al.138, +0.11 (effective radiative forcing; the range of −0.20 to +0.42) W m−2 by IPCC20, and +0.15 ± 0.17 W m−2 by Thornhill et al.139. When evaluating the direct radiative forcing (DRF) of aged soot particles, taking into account factors such as the core-shell structures and heterogeneity (including variations in shape and the position of the soot core), there is a notable change in the global DRF of soot particles. Specifically, the DRF decreases from 0.30 ± 0.01 to 0.23 ± 0.01 W m−2, corresponding to about a 23% fractional change133. Despite concerted efforts to refine DRF estimates, the contribution of soot-containing particles to the uncertainty of climate models remains substantial ∼90%3, thereby constraining predictive accuracy.
Numerous studies have undertaken comprehensive investigations to delve into the actual radiative properties of soot-containing particles, leveraging improved insights into factors such as aerosol concentration140, lifetime136,140,141, ageing mechanism109,140, vertical structure141,142, and mixing state111,143,144. For example, Wang et al.140 reduced the global mean atmospheric lifetime of soot from 5.1 to 4.4 days and differentiated soot lifetime based on emission sources and pollution levels. The DRF uncertainty linked to soot mixing structure mitigated by incorporating the core-shell model of soot particles into climate models144. In a bid to refine the representation of mixing structure, climate models have incorporated the core-shell particles with diverse sizes and more intricate mixing structures (Fig. 7)15,111,135,143.
As attention shifted toward the absorption capacity of BrC, efforts were made to estimate the direct radiative effect of BrC within global models29,145,146,147. Such estimates of the direct radiative effect have varied, spanning from +0.03 to +0.6 W m−229,140,145,147,148. Nevertheless, the parameterization scheme employed in these models have generally been simplified and unable to fully account for BrC’s absorption behavior across wavelength, as well as its variability related to factors such as sources and mixing structure145,149,150. Furthermore, the assessment of BrC’s radiative forcing in models still grapples with a shortage of input data because of the lack of spectrally resolved light scattering and absorption data for BrC relevant to various emission sources. Therefore, the estimates of BrC’s impact within the global models remain burdened by considerable uncertainty.
Impacts on clouds
Model estimates suggest that aerosols resulting from human activities caused an increase in the scattering and absorption of solar radiation by a range of 14–29% as well as an increase of cloud droplet number concentration by a range 5–17% during the period of 2005–2015 in comparison to the year 1850151. Soot-containing particles, as potent absorbing aerosols, have a considerable influence on radiative forcing through both direct and indirect effects20. Certain particles containing soot can even serve as ice nucleating particles (INP) within cirrus clouds and mixed-phase clouds152,153. Freshly emitted soot particles have ice-nucleating ability at −30 °C and exhibits significant variability from various sources yielding greater INP concentration154. Initially, freshly emitted soot particles exhibit hydrophobic characteristics, while atmospheric ageing processes involving condensation of trace gases and oxidation can lead to increased hygroscopicity of aged soot84,155. These mixing attributes of soot particles are closely tied to their interactions in aerosol-cloud processes156,157. In cloud droplet residuals, soot particles have been detected, indicating their impact on cloud activation and contribution to CCN103,158,159. On average, the cloud radiative response to soot particles encompasses both indirect and semi-direct effects. Koch et al.160 indicate a positive cloud response because soot particles provide a deposition sink for secondary aerosols, thereby reducing the nucleation and evolution of viable CCN. Theoretical calculation have recently illustrated that alternations in soot mixing structures and morphological characteristics due to the cloud process can result in an increase of light absorption by a factor of 1.57 to 2.01103. Furthermore, Lohmann et al.136 presented global climate simulations revealing that soot ageing led to the augmentation of thick, low-level clouds, which in turn decreased negative shortwave effective radiative forcing by 0.2 to 0.3 W m−2, compared to pre-industrial conditions. Therefore, the interplay between soot and clouds in the troposphere (as shown in Fig. 5) remains a complex and open question due to wide variability of emission sources and ageing mechanisms affecting soot particles.
Organic matter is widely observed within atmospheric cloud droplets. The organic coatings illustrated in Fig. 4 include both hydrophilic and hydrophobic constituents, including organic acids and diacids, proteins, and humic-like substances161. The presence of an organic coating at the gas–liquid interface of aerosols can potentially impact the aerosol’s ability to act as CCN by depressing surface tension162,163. Additionally, presence of organic layers can enhance ice nucleation within the droplets by providing a template for hexagonal ice164. Notably, there is evidence suggesting that organic aerosol particles can act as CCN without the need for inorganic material mixing159. In a context of droplet activation, the hygroscopic properties of organics are governed less by solubility and more by the molecular weight of the organic species162,163. Consequently, it becomes important to grasp the organic mixing structures and molecular weights as they relate to the ageing process of atmospheric aerosols107.
Other possible effects
Light-absorbing aerosol particles (as shorter-lifetime aerosols) undergo removal through both dry and wet depositions and change the reflectivity of snowpacks and glacier surfaces, as illustrated in Fig. 5. A recent focal point of investigation involves gaining a comprehensive understanding of the intricate relationship between deposits of the light-absorbing aerosols (e.g., soot, BrC, and mineral dust) in the snow albedo reduction. Snow strongly reflects sunlight, while the reflection extent depends strongly on factors such as the snow grain size and morphology and the mixing state of soot with the snow matrix. Although few reports considered mixing structures of soot particles in the glacier–snowpack atmosphere165, no study investigated their actual mixing structures in snowpacks. Specifically, a model study from He et al.166 assumed internal mixing of soot particles within snow and found a substantial reduction in snow albedo, with the factors of 1.2 to 2.0, depending on the content of soot content and the shape of snow gains.
Soot and organic particles, as depicted in Fig. 5, play a pivotal role in exacerbating air quality issues and contribute substantially to the worldwide public health challenges. Soot particles, dominating within the size range of 50–500 nm (Fig. 2f), comprise large fractions of polycyclic aromatic hydrocarbons (PAHs) and various other toxic hydrocarbons167. The mixing state of soot and organic particles has the potential to exacerbate the associations between associations between soot/organic exposure and health effects, as it influences particle properties such as water solubility, surface characteristics, and size-related deposition efficacy within the respiratory tract168.
While this review does not cover the broad topic of the impact of soot and organic particles on snow/ice and human health, it is important to mention a notable gap in the field. Currently, there is a scarcity of data describing the microphysical properties of soot and organic particles, with limited information inferred from various empirical and theoretical considerations. This lack of real-world data highlights a critical area for future research and underscores the need for more in-depth studies in this domain.
Summary and future perspectives
The physical and chemical characteristics of soot and organic particles undergo significant alternations as a result of atmospheric ageing. In this review, we delved into their physical attributes, including morphology, mixing structure, and phase, within diverse atmospheric conditions and discussed their implications influences on climate, CCN formation, and human health. The considerable attention directed toward light-absorbing carbonaceous particles in the climate system stems from their strong light-absorption properties.
However, the accurate estimation of optical absorption remains a challenge, with significant uncertainties across all scales—local, regional, and global. These uncertainties can be attributed to several factors: (1) Current atmospheric models struggle to incorporate complex microphysical parameters of particles derived from various field measurements. (2) Discrepancies arise from the diverse array of online and offline measurements that yield different parameter values for explaining the optical absorption of soot and BrC. (3) Beyond the microphysical property of light-absorbing particles, their chemical composition, particularly BrC undergoes continuous changes due to atmospheric ageing or variations arising from different formation pathways and sources. (4) Improved optical models of realistic mixing structures are required to accurately predict the optical properties of aged soot and organic particles, particularly those exhibiting complex mixing structures and morphologies. The implementation of these advanced techniques can significantly decrease the computation time and facilitate the creation of extensive optical database for climate models169,170,171,172,173. As atmospheric models progress and advanced instruments evolve, it is expected these discrepancies in description of soot and BrC characteristics will gradually diminish.
While understanding of the chemical composition of soot and BrC is critical for characterizing their atmospheric, recent years have witnessed increased interest in the microphysical properties of these particles, bolstered by a refined understanding of individual particles properties1,2,11. The review underscores the significance of the microphysical properties of individual particles in determining atmospheric optical changes, CCN behavior, and health impacts (Fig. 5). Recent studies have unveiled novel phenomena such as LLPS, intricate mixing structure, soot redistribution, and diverse physical phases (solid, semi-solid, liquid) of organic particles. In line with these insights into individual particles properties, innovative applications of chemical imaging tools like Cryo-TEM, NanoSIMS, STXM-NEXAFS, and Aerosol optical Tweezers have been employed to advance aerosol science2,9,59,60,61,174. Moving forward, future research should prioritize the development of advanced microscopic approaches to better observe the microphysical properties and chemical compositions of large samples of individual particles. An example is atomic force microscopy-based infrared spectroscopy (AFM-IR), an emerging technique that enables chemical analysis and compositional mapping with nanoscale resolution under ambient conditions175. Moreover, integrating various microscopic techniques offers an efficient approach to comprehensively understand the microphysical properties of individual particles.
Building upon the improved understanding of experimental measurements for individual particles, novel numerical models have emerged, enabling precise accounting for complex soot particle properties, such as shape and mixing structures. Experimental methods like SP71, EMBS-DDA13,38, and ET-DDA26 have greatly enhanced our grasp of how the microphysical properties of soot and organic particles influence optical absorption, cloud forming propensity and health implications168. However, a gap remains in incorporating these physical and chemical attributes of aerosol particles into atmospheric models. Future research should strive to establish a refined framework for comprehending the physical and mixing structure characteristics of soot and organic particles, facilitating improved measurements of microphysical ageing process on a global scale.
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Acknowledgements
W.L. acknowledges funding from the National Key Research and Development Program of China (2023YFC3706301), the National Natural Science Foundation of China (42075096), and the Fundamental Research Funds for the Central Universities (K20220232). A.L. acknowledges support from the U.S. Department of Energy’s (DOE) Atmospheric System Research program, Office of Biological and Environmental Research (OBER), award DE-SC0021977. N.R. acknowledges support from the U.S. Department of Energy’s (DOE) Atmospheric System Research program, Office of Biological and Environmental Research (OBER), award DE-SC0022130.
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W.L. led the review. N.R., W.L., L.X., Y.W. and A.L. prepared Figs. 1–4 and contributed to the laboratory experiment parts. W.L. and A.L. wrote the draft and designed Fig. 5. A.L. and Z.S. contributed Fig. 6. Z.S., D.Z., Z.Z. and A.L. contributed to experimental parts, interpretation, and writing. K.A. and N.R. contributed to modeling parts, interpretation, and writing. All authors contributed to manuscript preparation, interpretation, discussion, and writing.
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Li, W., Riemer, N., Xu, L. et al. Microphysical properties of atmospheric soot and organic particles: measurements, modeling, and impacts. npj Clim Atmos Sci 7, 65 (2024). https://doi.org/10.1038/s41612-024-00610-8
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DOI: https://doi.org/10.1038/s41612-024-00610-8
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