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Shift in Mass Transfer of Wastewater Contaminants from Microplastics in Presence of Dissolved Substances Sven Seidensticker, Christiane Zarfl, Olaf Arie Cirpka, Greta Fellenberg, and Peter Grathwohl Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b02664 • Publication Date (Web): 01 Oct 2017 Downloaded from http://pubs.acs.org on October 8, 2017
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Environmental Science & Technology
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Shift in Mass Transfer of Wastewater Contaminants
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from Microplastics in Presence of Dissolved
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Substances
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Sven Seidensticker*, Christiane Zarfl, Olaf A. Cirpka, Greta Fellenberg, Peter Grathwohl*
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Center for Applied Geosciences, Eberhard Karls Universität Tübingen, Hölderlinstraße 12,
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Tübingen, Germany
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Corresponding Authors (*):
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Sven Seidensticker: Tel: +49 7071 29 77452; email:
[email protected] 9
Peter Grathwohl: Tel: +49 7071 29 75429; email:
[email protected] 10
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Abstract
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In aqueous environments, hydrophobic organic contaminants are often associated with particles.
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Besides natural particles, microplastics have raised public concern. The release of pollutants
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from such particles depends on mass transfer, either in an aqueous boundary layer or by
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intraparticle diffusion. Which of these mechanism controls mass-transfer kinetics, depends on
16
partition coefficients, particle size, boundary conditions, and time. We have developed a semi-
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analytical model accounting for both processes, and performed batch experiments on desorption
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kinetics of typical wastewater pollutants (phenanthrene, tonalide, benzophenone) at different
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dissolved-organic-matter
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microplastics and water. Initially, mass transfer is externally dominated while finally
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intraparticle diffusion controls release kinetics. Under boundary conditions typical for batch
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experiments (finite bath), desorption accelerates with increasing partition coefficients for
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intraparticle diffusion, while it becomes independent of partition coefficients if film diffusion
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prevails. Contrary, under field conditions (infinite bath), pollutant release controlled by
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intraparticle diffusion is not affected by partitioning of the compound while external mass
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transfer slows down with increasing sorption. Our results clearly demonstrate that
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sorption/desorption time scales observed in batch experiments may not be transferred to field
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conditions without an appropriate model accounting for both mass transfer mechanisms and the
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specific boundary conditions at hand.
concentrations,
which
change
overall
partitioning
between
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Introduction
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The pollution of freshwater ecosystems by an increasing number of chemicals causes adverse
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effects on aquatic organisms and even human health.1 Within these systems, however,
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hydrophobic contaminants are often associated with various kinds of particles rather than being
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freely dissolved. Thus, the investigation of particle facilitated transport is important.2,3 The
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relevant particle types include colloids, such as natural organic substances, suspended sediments,
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different kinds of black carbon, and plastic-debris.4-7 The contamination and ubiquitous detection
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of plastic particles in freshwater ecosystems has attracted both public and scientific attention.8,9
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Microplastics are defined as particles made of any synthetic polymer with a size smaller than 5
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mm.10 These particles can be ingested and accumulated by organisms.11,12 Whether they
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significantly contribute to pollutant transfer is currently discussed in literature.13 They can also
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influence the ecosystem by releasing plastic additives, such as plasticizers and flame retardants,
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and by acting as a vector for transport of hydrophobic contaminants.14,15 It is of relevance to
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which extent microplastics facilitate the transport of organic contaminants in freshwater
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ecosystems, particularly in light that they are often introduced in urban, polluted areas.16,17 The
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potential for microplastics to act as a sorbent for hydrophobic contaminants has been shown in
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several studies.15,18-22 Most of these studies focused on equilibrium partitioning of contaminants
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between microplastics and water.
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The aim of this study is to investigate the sorption kinetics of wastewater pollutants from
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microplastics. Specifically, we analyze shifts of mass transfer from external film diffusion to
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intraparticle diffusion in batch systems as a function of partition coefficients.23 We used
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frequently occurring wastewater contaminants to study their sorption properties from low-
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density-polyethylene (LDPE) particles, which are frequently detected in the environment.24,25 In
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addition, we used standard humic acids (HA) which solubilizes organic contaminants in water
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and thus allows to cover a wide range of partition coefficients.26,27 Previous studies revealed that
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humic acids significantly impact desorption of hydrophobic compounds from organic phases into
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aqueous solutions.28,29 This, however, depends on whether mass transfer is controlled by
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intraparticle or external film diffusion. The latter may be expressed by two mass-transfer
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processes in series, an external and an internal one, respectively.30,31 In the present study, we
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derived a semi-analytical solution of mass transfer between particles and the bulk fluid
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considering both processes and experimentally validated it with compounds of different
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hydrophobicity at different concentrations of dissolved organic matter.
64 65 66
Materials & Methods The suppliers of all chemicals and instruments are reported in the Supporting Information.
67 68
Batch experiments
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Desorption kinetics was studied in batch experiments involving polyethylene spheres pre-
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loaded with hydrophobic pollutants (phenanthrene, tonalide and benzophenone) with different
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concentrations of humic acid in aqueous solution. Humic acid solutions were prepared by adding
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2 g of a raw humic-acid standard to 1 L ultrapure water containing 2 mM phosphate-buffered
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saline (PBS) buffer solution leading to a slightly alkaline pH of 7.7 and shaken overnight.
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Particles were removed by subsequently passing the solution through 1.5 µm, 0.7 µm, and 0.45
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µm pore sized filters. To obtain a final concentration of 1 g L-1, the solution was diluted in 2 mM
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PBS solution. The organic carbon fraction of the dissolved humic acids was 0.41. In the course
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of the experiments, frequent DOC and pH measurements were performed to control the stability.
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Blank measurements of DOM solutions revealed that they contained no substances which might
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distort the measurement of the dissolved pollutants. The polyethylene (PE) spheres were clear
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particles without dye (density = 0.92 kg L-1) that are usually used as an ingredient of cosmetic
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products. The particles were approximately spherical shaped and had a diameter of 260 µm. The
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microplastics were loaded with pollutants by shaking 2 g of them in a 200 mL methanol/water
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solution (20/80 v/v) for 96 h and adding 80 µg of phenanthrene and 250 µg of tonalide or
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benzophenone. Chemicals were added one at a time in separate experiments to avoid mixture
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effects. Methanol was added to decrease the partition coefficients which accelerates loading with
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hydrophobic compounds. After shaking and sieving with 75 µm mesh, the microplastics were
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rinsed three times with ultrapure water to prevent pollutants precipitating on the surface during
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subsequent drying under a gentle nitrogen stream. A subsample of microplastics were extracted
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afterwards to determine the amount of pollutant uptake in the spheres. The extraction of
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microplastics was performed with cyclohexane. Analyzed concentrations (± relative standard
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deviation) in the plastic were 42.8 (± 2.9%), 124 (± 1.4%), and 15.8 (± 0.5%) µg g-1 of
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phenanthrene, tonalide, and benzophenone, respectively. Relevant properties of the selected
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compounds are shown in Table 1. The concentration of microplastics in batch experiments was
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kept constant (1 g L-1) while six different concentrations of humic acids (0, 0.15, 0.25, 0.50,
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0.75, 1.00 g L-1) were used. We added 0.25 g microplastics, loaded with the contaminants, to 250
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mL of contaminant-free aqueous solutions in 0.25 L amber glass bottles. To avoid
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biodegradation as well as photooxidation, we added 0.05 g L-1 of NaN3 and kept the bottles in
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the dark. The lids were equipped with PTFE seals. The bottles were constantly shaken on a
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horizontal shaker with rotational speed of 150 rpm and kept in a room constantly tempered to
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20° C. We took samples of 1 mL solution in duplicates at 10, 20, 40 min, 1, 2, 4, 8, 24, 48, 96 h,
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and last sampling after 120, 170, or 240 h and processed them as described below. Due to the
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sampling procedure, the liquid-to-solid ratio changed less than 10%, which was neglected in the
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subsequent analysis of the data since the change is in the range of the analytical error. As shown
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later (Figure 3), equilibration occurred latest after 8 h. Sorption to glass walls, seals etc. of the
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batch system was determined in triplicate using a 200 µg L-1 solution of the pollutants and was
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found to be smaller than the uncertainty of the GC measurements.
107 108
Chemical Analysis
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We determined the concentrations of the selected pollutants in the bulk aqueous solution
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(water including dissolved organic matter) by GC-MS. Samples of 1 mL solution were taken at
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the described time points using a glass pipette and 10 µL of deuterated internal standard were
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added. Subsequently the samples were extracted with 400 µL of cyclohexane and analyzed by
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GC-MS. For separation, a 30 m long dimethylsiloxane-coated capillary column with 0.025 mm
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inner diameter and 0.25 µm film thickness and helium as carrier gas were used (flow rate 0.7 mL
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min-1). The mass-to-charge ratios used for quantification were 105, 178, and 243 for
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benzophenone, phenanthrene, and tonalide, respectively.
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Table 1: Compound-specific properties of the chosen compounds. Daq and DPE are the diffusion
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coefficients in water and polyethylene, respectively. Data were obtained as specified in the
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subtext. Parameter molecular weight [g mol-1]a molecular volume [cm3]a Daq [m2 s-1] after WORCHb DPE [m2 s-1] after LOHMANNc DPE [m2 s-1] after RUSINAd water solubility [mg L-1]a,e melting point [°C]a,f subcooled liquid solubility [mg L-1]g
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log KOWa,e
Phenanthrene
Tonalide
Benzophenone
178.2
258.2
188.2
157.7
280.9
167.5
7.6×10-10
6.2×10-10
7.4×10-10
4.1×10-13
6.7×10-15
3.0×10-13
3.5×10-13
2.8×10-14
2.6×10-13
1.15
1.25
137
99.2
57.0
47.8
4.2
2.9
260
4.5
5.7
3.2
a data obtained from the ChemSpider database (www.chemspider.com)
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b calculated according to Worch32
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c calculated according to Lohmann33 based on the molecular volume
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d calculated according to Rusina et al.34 based on the molecular weight
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e values for Tonalide were taken from Balk and Ford35
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f value for Tonalide was taken from Paasivirta et al.36
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g calculated according to Kan and Tomson37 and Liu et al.38
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Theory
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Equilibrium Partitioning
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Linear partitioning of a compound between two phases, here polyethylene (PE) and water, is given as the concentration ratio in equilibrium (i.e. the partition coefficient in L kg-1):
= in equilibrium
(1)
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By introducing a second dissolved phase, here humic acids, the chemical has to equilibrate
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∗ between the overall between the three phases in the system and the partition coefficient
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aqueous solution and the solids decreases with increasing concentration [kg L-1] of dissolved
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organic matter (DOM) is:39 ∗ =
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= ∗ 1 + ,
(2)
is the partition coefficient [L kg-1] between the dissolved organic matter and pure water.
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Only if the product ∙ becomes larger than unity, a significant change in partitioning
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of a compound between aqueous solution and solids may be expected. Since DOM contents
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typically are below 0.001 kg L-1, only compounds with larger than 1000 are significantly
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∗ affected. represents the concentration in the bulk solution, i.e. the freely dissolved
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concentration plus the concentration in the DOM phase. Based on the mass balance in the three-
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∗ [µg L-1] in the DOM-inclusive aqueous phase phase system, the equilibrium concentration ",
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∗ for given initial concentration (0) [µg kg-1] in the PE and (0) [µg L-1] in the aqueous
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phase (in our experiments always zero) can be computed as a function of the liquid-to-solid ratio
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&" ⁄'( [L kg-1] and via the partition coefficients on the DOM-concentration by: ∗ , =
∗ (0) & (0) + '
& ∗ ' +
(3)
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Mass Transfer Model
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The mass transfer of organic pollutants between the particles and a bulk surrounding solution
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of finite volume comprises diffusion within the plastic particles and subsequent transfer from the
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particle surface through an aqueous boundary layer into the bulk solution.40,41 The slower process
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controls the overall kinetics. The underlying assumptions for the analysis of our finite-volume
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batch experiments are: (i) the bulk solution is homogeneously mixed, (ii) the external mass
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transfer between the particles and the bulk solution is proportional to the difference of the
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aqueous (DOM-inclusive) concentrations between the bulk solution and the particle surface, (iii)
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at the particle surface, local equilibrium between the two phases exists, and (iv) the mass flux
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within the plastic particles is by diffusion in the polymer. Additionally, we assumed equilibrium
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partitioning between water and DOM. This conceptual framework is illustrated in Figure 1,
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where we implicitly assume that the contaminant is restricted to the plastic particle with uniform
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concentration in the initial state.
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To consider both internal and external mass transfer in series, we formulate a coupled transport model. Within the plastic particles, we consider the diffusion equation in spherical coordinates:
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163 164
* * . 2 * − + 1 = 0 *+ */ . / */
(4)
* 2 = 0 ∀+ */ 345
(5)
(/, + = 0) = (0)∀/
(6)
with a uniform initial concentration:
where DPE [m2 s-1], r [m], and t [s] denote the diffusion coefficient in PE, the radial coordinate, and time, respectively. CPE [µg kg-1] is the concentration in the plastic sphere. The mass flux
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through the external boundary layer must be identical to the internal mass flux at the particle
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surface: ∗ : = − ; −
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(/( ) * < = = − > 2 ∗ */ 3
(7)
in which J [µg m L-1 s-1] and kW [m s-1] are the mass flux density and the aqueous mass transfer
∗ [µg L-1] denotes the concentration in the bulk solution, rP is the coefficient, respectively.
radius of the spherical particle, and ρPE [kg L-1] denotes its mass density.
In a finite bath, the concentration in the bulk phase changes according to the total mass flux across the area of all particles, leading to the following balance equation: ∗ (/( ) B 3 '
∗ =; ∗ − < = B+ / > &
(8)
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∗ which is subject to a known initial concentration (0), where mP [kg] and VW [L] denote the
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mass of particles and the volume of water, respectively. No mass is stored in the aqueous
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boundary layer.
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We derived the analytical solution of equations 4-8 after Laplace transformation in time (see
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SI), and consider three cases of mass-transfer controls: (1) by external mass-transfer only, i.e. in
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the limit of → ∞, (2) by intraparticle diffusion only, i.e. in the limit = → ∞, and (3) by
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both processes. The analytical Laplace-transform solution of the bulk-phase concentration is
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back-transformed into the time domain by the numerical method of de Hoog42, implemented in
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Matlab.
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We fitted the model to the contaminant concentration data in water of the experiments
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described above. The initial concentrations (0) in the microplastics and "∗ (0) = 0 in the
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water are known from the experimental set-up as well as liquid-to-solid ratio & ⁄' , the radius
/ and mass density > of the spheres. The partition coefficients of the three pollutants
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between PE and the pure water were determined from the late-time concentrations. We assumed
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that the external mass-transfer coefficient = of different pollutants scales with the known
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aqueous diffusion coefficient by H
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on the hydrodynamic conditions in the batch,43,44 which did not differ among the tests. Then,
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= /H , three values of , and three values of (one for each compound) were the
./J
(see Sherwood-relationship in SI). and depends otherwise
./J
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∗ fitting parameters. We fitted all experiments jointly, computing the partition coefficients
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for each DOM-concentration by equation 2. Note, that the intensity of shaking affects the
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external mass transfer, but the shaking was kept constant in all experiments of the present study.
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Thus, the fitted coefficient = /H
./J
is identical for all compounds and needs to be identified by
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jointly fitting all experiments. Fitting = for each compound individually, would have added
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more degrees of freedom, and we may not have retrieved the H -scaling valid for turbulent
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boundary layers.43,44
./J
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Log-parameters were estimated using DREAM(ZS), a Markov-Chain Monte-Carlo method
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that estimates distributions of the log-parameters conditioned on the measurements.45,46 A
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uniform prior distribution within a wide range for each log-parameter was considered. As
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objective function, we took the sum of the absolute differences between all measurements and
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simulated values. The computed mean absolute errors (MAE) and root mean square errors
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(RMSE) as reported in the results are based on a conditional sample size of 3000. Furthermore,
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we report the 5-95% quantiles of the estimated parameters to assess their uncertainty.
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Analysis of Characteristic Times
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As explained above, overall mass transfer is controlled by an external and an internal process
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in series. To evaluate the relative importance of the two mass transfer processes, we derived the
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characteristic time τch [s] from our Laplace-transform analytical solution. It is defined as: NOP
T
Q5 R"∗ (+) − SB+ = "∗ (0) −
(9)
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and summarizes how long equilibration between the bulk solution and the spheres takes. The
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characteristic time can be split into a characteristic time for the case of external mass transfer: UV3WHX NOP =
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∗ > /
' ∗ Y1 + & Z 3 =
(10)
and a characteristic time for the case of internal mass transfer: [WV3WHX NOP =
/ . ' ∗ Y1 + & Z 15
(11)
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The two characteristic times are additive, i.e. the overall mass transfer is slower than either of
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∗ the single processes. Note, that for increasing , the characteristic time in the case of
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∗ externally controlled mass transfer (equation 10) becomes independent of whereas the
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characteristic time of the internally controlled mass transfer (equation 11) decreases with
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∗ increasing . In rivers or lakes, & tends to infinity (“infinite bath”) and the term in the
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parentheses of equations 10 & 11 becomes 1. While in equation 10 the characteristic time refers
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to 63.2% of the equilibrium concentration achieved, this does not hold for equation 11 where the
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∗ degree of equilibration depends on the liquid-to-solid ratio and (see SI). Hence, for
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∙ ' /& ranging from 0.01 (infinite bath) to 30 (maximum in our experiments),
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[WV3WHX NOP corresponds to the timepoint when 67.5 - 88.9% of the equilibrium concentration has
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been reached.
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The relative importance of the respective mass-transfer process for the overall mass transfer can be expressed as the ratio of their characteristic times: UV3WHX NOP [WV3WHX NOP
∗ 5 > = = /
(12)
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For values > 1, the mass transfer in the water is limiting, whereas mass transfer in the particles
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controls kinetics for values < 1. Equation 12 exemplifies that the relative importance of the two
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mass-transfer processes does not depend on the liquid-to-solid ratio. Mass transfer of
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hydrophobic substances with high partition coefficients are externally limited. Furthermore,
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equation 11 shows that for internally limited kinetics a decreasing partition coefficient slows
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down kinetics in a batch system despite increasing the equilibrium concentration in the water
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(equation 3).
232 233
Results & Discussion
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Equilibrium Partitioning
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Figure 2 (top) shows the measured equilibrium concentrations in the aqueous phase as function
236
of the DOM concentration in the respective batches. The concentration in water increases with
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increasing DOM as expected from equation 3. Figure 2 (bottom) shows the calculated partition
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∗ coefficients between PE and the aqueous solution as function of the DOM concentration.
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∗ ∗ We fixed the measured for zero DOM and calculated as a function of DOM
240
according to equation 2 within the joint fit of all experiments. Figure (2) bottom shows that
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∗ ∗ predicted with equation 2 matches measured values very well. The measured -
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values increase with increasing octanol-water partition coefficient of the compounds as
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expected. Measured and calculated partition coefficients into humic acid ( ) for
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phenanthrene and tonalide show good agreement whereas the partition coefficients for
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benzophenone show relatively large deviations, which we attribute to the insignificant influence
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of DOM. Under equilibrium conditions, increasing the DOM concentration caused the fraction of
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pollutants remaining in the microplastics to decrease.
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Table 2 lists the fitted -values, together with their uncertainty range, for every substance
249
and the associated -values in which the humic acid concentrations are normalized with
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respect to the fraction of organic carbon (0.41). Table 2 also includes two metrics of the quality
251
of the model fits for each compound: the mean absolute error (MAE), and the root mean square
252
error (RMSE). All obtained - values are in good agreement with literature values.47-50
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Possible sorption of DOM on/in microplastics could furthermore alter both the sorption
254
behavior of certain compounds and the sorption properties of the particles themselves.51,52
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However, we performed fluorescence measurements with DOM and different amounts of
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microplastics indicating that no sorption occurred. These results are confirmed by previous
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findings reporting that interactions between DOM and soil particles mainly took place between
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DOM and the mineral phase and that interactions between humic acids and PE were found to be
259
negligible, respectively.52,53
260 261
Desorption Kinetics
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We analyzed desorption kinetics by fitting the complete coupled model described above.
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Figure 3 shows the measured concentration time series and model results of the fitted complete
264
model (blue solid lines), model predictions considering only external mass transfer using the
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parameters of the complete model (red dashed line), and predictions considering only
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intraparticle diffusion (green dashed lines). Equilibrium in the batches was usually reached at
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latest after 8 h. Table 2 contains the estimated values of the mass transfer coefficients and the
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intraparticle diffusion coefficient as well as the ranges of their 5-95% quantiles.
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Table 2: Partitioning and mass transfer parameters. Mean absolute errors (MAE) and root mean
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square errors (RMSE) were calculated based on the variability of the experimental data. KDOM,
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kW, and DPE were fitted within the model (geometric means of the posterior distribution). KDOC
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was subsequently calculated from the 41.2% of OC in the DOM. The estimated values are
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reported together with their respective 5-95% quantiles (range).
Parameter MAE [µg L-1] RMSE [µg L-1] KPE-W [L kg-1] KDOM [L kg-1] range [L kg-1] KDOC [L kg-1] range [L kg-1] kW [m s-1] range [m s-1] DPE [m2 s-1] range [m2 s-1]
Phenanthrene
Tonalide
Benzophenone
0.47 0.61 9,630 5,500 5,200-5,800 13,400 12,500-14,100 7.2×10-5 5.6×10-5-9.4×10-5 1.6×10-13 1.3×10-13-1.9×10-13
0.81 1.15 31,800 4,000 3,700-4,300 10,000 9,100-10,400 6.3×10-5 5.0×10-5-8.3×10-5 5.6×10-13 1.4×10-13-5.4×10-12
0.34 0.38 75 700 100-3,000 1,700 200-7,100 7.0×10-5 5.5×10-5-9.3×10-5 1.7×10-12 1.5×10-12-1.9×10-12
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Phenanthrene
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Figure 3A shows an excellent agreement between experimental and simulation results for
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phenanthrene. At very early times, experimental data are lacking. At these times, the model
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shows that external mass transfer always controls the overall mass transfer. At later times,
279
intraparticle diffusion becomes limiting. At zero or small DOM concentrations, the relative
280
importance of external mass transfer is larger than at high DOM concentrations. With increasing
281
∗ decreases and this shifts mass transfer control to intraparticle DOM concentrations
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diffusion and slows down release kinetics in the batch system, which is predicted by equation 11.
283
The good agreement between the model jointly fitted over all DOM concentrations and the
284
measurements indicates that dominant mechanisms are captured well by the model.
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Tonalide
286
Figure 3B shows the experimental and simulation results for the comparably hydrophobic
287
compound tonalide. Here, the kinetics are strongly controlled by the external mass transfer for all
288
DOM concentrations. Only at the highest DOM concentrations, the full model and the model
289
disregarding intraparticle diffusion start to deviate slightly. Compared to phenanthrene and
290
benzophenone, the equilibrium concentration in the aqueous phase is the lowest, which is in
291
accordance with the higher hydrophobicity. KDOM is lower than expected from hydrophobicity
292
which may be due to less specific interactions compared to the highly aromatic phenanthrene. As
293
explained above, the data are not sensitive to intraparticle diffusion, which results in a high
294
uncertainty in the fitted intraparticle diffusion coefficient (Table 2).
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Benzophenone
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Figure 3C shows the experimental and simulation results for the least hydrophobic compound
297
investigated in this study, benzophenone. In comparison to the other compounds, it has the
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highest equilibrium concentration in the aqueous phase. The fraction of benzophenone remaining
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in the microplastics after equilibration ranged from only 6% (without any DOM) to less than 3%
300
(for the three highest DOM concentrations). The effects of DOM on desorption of benzophenone
301
are negligible so that the fitted -values are extremely uncertain. Desorption kinetics are
302
always controlled by intraparticle diffusion, and the associated diffusion coefficient is fairly
303
certain. However, the estimated value is about one order of magnitude larger than values
304
calculated from empirical relationships (see Table 1).
305 306
While comparable studies indicated that increasing the DOM concentration generally
307
accelerates mass-transfer kinetics, we found the opposite in the batch system. This apparent
308
contradiction is explained by different boundary conditions (different liquid-to-solid ratios, finite
309
bath vs. infinite bath) and the use of different polymers.28,29 Note, that increasing DOM
310
accelerates the external mass transfer in the infinite bath and slows it down slightly in the finite
311
bath (Figure 4). Since the diffusion coefficients of DOM are a factor of two to three lower than
312
for our compounds mass transfer changes would be less pronounced if a large fraction partitions
313
into DOM.54 In our study this would, if at all, affect tonalide at high DOM concentrations.
314
However, the data and model do not show any significant influence of DOM and hence we did
315
not specifically account for this effect.
316
Regarding mass transfer under field conditions, studies on passive sampling indicated that it is
317
usually clearly limited by external mass transfer, for compounds with values similar to or
318
higher than for phenanthrene.55,56 Such passive samplers are frequently made of PE but are far
319
thinner than the spheres used in our study33 so that intraparticle diffusion is less restrictive
320
because of shorter diffusion distances. Only a limited number of studies indicated that
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intraparticle diffusion might be important for assessing the vector function of microplastics.19
322
Koelmans et al.57 investigated the role of surfactants and organic matter on desorption kinetics,
323
concluding that the internal mass transfer might typically be the rate limiting process. While the
324
latter authors modeled the kinetics by two first-order mass-exchange processes in series, we
325
considered true intraparticle diffusion. Both our model and the experimental findings suggest
326
that intraparticle diffusion is not permanently controlling the kinetics. However, Koelmans et
327
al.57 applied their model to larger particles with diameters of 0.4 and 1.3 mm which might
328
explain this contrast since internal mass transfer times becomes more relevant with increasing
329
particle size.
330
Other polymers such as polystyrene (PS), polyvinyl chloride (PVC), and polyamide (PA) have
331
glass transition temperatures > 50° C which are much higher than in polyethylene (-78° C) and
332
thus smaller diffusion coefficients.58,59 Therefore, we expect that diffusion coefficients of organic
333
compounds are lower within PS, PVC, and PA than in PE, so that the intraparticle diffusion may
334
be more restrictive in the overall mass-transfer process. Furthermore, for porous (as PS) or
335
weathered particles the effective diffusion coefficient needs to be derived for each individual
336
case. On the other hand, diffusion in polydimethylsiloxane (PDMS), which is frequently used as
337
a passive sampler, is much faster and hence mass transfer is often controlled by external mass
338
transfer.34 Often thin PDMS fibers are used (i.e. diameters of 6.5 µm)29 which also favors
339
external mass transfer control.
340
Finally, DOM concentrations used in the batch experiments are higher than concentrations
341
usually found in rivers or lakes. High DOM-concentrations are more likely for (urban)
342
wastewater which are also hotspots for organic contaminants and microplastics.17,60 Since
343
sorption and desorption kinetics are equal, the mass transfer under high DOM conditions can be
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used to estimate the loading of microplastics with contaminants in wastewater whereas the
345
results from experiments without or with low DOM concentrations can be applied to assess the
346
microplastics-facilitated transport of pollutants in large aquatic ecosystems (rivers and lakes).
347
The equilibration times would increase under field conditions where the volume-to-solids ratio
348
∗ for intraparticle diffusion, but increase approaches infinity (and become independent on
349
∗ with increasing for external mass transfer control).
350 351
Mass Transfer Analysis and Implications
352
While the experimental data reflect the specific conditions of the analyzed batch system, the
353
model can be applied to different conditions from a finite bath with high solid-to-liquid ratio to
354
the infinite bath in which particles are strongly diluted. In the experiments, we could show how
355
differences in effective partition coefficient alter not only sorption equilibrium but also the mass-
356
transfer kinetics. In this section, we use the calibrated model to explore conditions which are
357
more comparable to the field. We do this by means of the characteristic times, computed by
358
∗ and solid-toequations 10-12, spanning wide ranges of effective partition coefficients
359
liquid ratios ' /& .
360
Figure 4 shows the corresponding characteristic times, keeping the diffusion coefficients
361
constant. While Figures 4C and 4D show the individual contributions of internal and external
362
mass transfer to the characteristic time according to equations 11 and 10, respectively, Figure 4A
363
shows the total characteristic time of mass transfer (equation 9), and Figure 4B the ratio of the
364
two times (equation 12). At high ' /& ratios, overall mass-transfer kinetics are accelerated
365
∗ with increasing , whereas they are slowed down at very low ' /& ratios, and approach
366
infinite bath conditions. Under finite bath conditions, a decreasing effective partition coefficient
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[WV3WHX increases the characteristic time NOP of internal mass transfer while that of external mass
UV3WHX transfer NOP is hardly affected when considering strongly sorbing compounds (Figure 4 C
369
∗ and D). We manipulated the effective partition coefficient in our experiments by adding
370
DOM, thus covering a wide range of kinetics limited by both internal and external mass transfer.
371
Nevertheless, the microplastic concentration used in our study was considerably higher than
372
values found in the environment. Mintenig et al.61 sampled effluents of wastewater treatment
373
plants and identified and quantified microplastics down to a size of 20 µm. Using a microplastics
374
concentration of 9 × 10J `a/+bcdef ' J as it was detected in the effluent of a wastewater
375
treatment plant in Germany61 and assuming that a quarter of these particles might be PE with a
376
radius comparable to that of the particles used in our study, we estimate environmentally relevant
377
PE concentrations in urban areas on the order of 1.7 × 10 i kg L l and correspond to infinite
378
bath conditions. We further assume partition coefficients as assembled for various organic
379
pollutants in the literature,33 resulting in the parameter range indicated by the red dashed line in
380
Figure 4. Applying such ' /& ratio, characteristic times of mass transfer may range between
381
hours (for compounds with low partition coefficients: intraparticle diffusion limits) and weeks
382
(for those with high partition coefficients external mass transfer limits). As discussed above, the
383
relative importance of internal and external mass transfer does not depend on the solid-to-liquid
384
ratio, improving the transferability from experimental lab conditions to the field. However, it
385
may depend on particle size (which can easily be measured) and on the mass-transfer constant
386
=" , which depends on the strength of turbulence in rivers. The exact expression of mass transfer
387
depend on the shape of the particles and can be derived for other geometric forms. The
388
qualitative findings on the relative importance of external and internal mass transfer are not
389
affected by the shape. Furthermore, microplastics may be covered with biofilms affecting the
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external mass transfer.62 Since the effective diffusion in biofilms is slower than in water, the
391
external mass transfer would be slowed down. To consider this, diffusive mass transfer through
392
the biolayer could explicitly be modelled. The water film thickness in our experiments was in the
393
range of 10 µm and hence the external mass transfer may be substantially slowed down if the
394
biofilm cover exceeds a certain thickness or density. A reliable model on this, however, requires
395
more experimental data, in particular on diffusion coefficients in biofilms and biofilm-plastic
396
partitioning.
397
The theoretical considerations of our study also apply to other suspended particles such as
398
suspended sediments in rivers where the solid-to-liquid ratio is typically in the range of
399
10 m kg L l to 10 J kg L l (which corresponds to our laboratory conditions).63 Well-defined
400
microplastic particles, as used here, are ideally suited for mass transfer studies under controlled
401
conditions but ultimately are only surrogates for particles occurring in the environment,
402
including microplastics in urban runoff and contaminated sediment particles. The latter are very
403
likely much more frequent than microplastics but undergo the same mass transfer characteristics
404
as discussed in this study.
405 406
Supporting Information
407
Details on the used chemicals and instruments as well as on the derivation of the model, mass
408
transfer analysis, and the fitting procedure. Furthermore, three Matlab codes are provided for
409
detailed comprehensibility.
410 411
Acknowledgements
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We would like to thank Thomas Wendel and Renate Seelig for their support regarding the
413
work in the laboratory. Furthermore, we thank Jana Meierdierks and Beate Escher for valuable
414
discussions and their support during the preparation of this manuscript. This work was funded by
415
the Deutsche Forschungsgemeinschaft (DFG) under the grant agreement GR 971/13-1. We also
416
thank three anonymous reviewers for valuable remarks and useful comments.
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Figure 1: Conceptual framework of the mass transfer model. A hypothetical concentration profile of a substance is shown. The concentration in the particle decreases from the center to the edge whereas the concentration in water decreases with increasing distance from the ∗ particle. and denote the concentration in water and particle, respectively. At the
interface, local equilibrium is assumed hence the concentration at the interface is: =
596
∗ ∗
597
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Figure 2: Measured equilibrium concentrations in the aqueous phase against the concentration ∗ of DOM in the batch (top) and relationships between partition coefficients and the
concentration of DOM in the solution (bottom), dashed lines are calculated by equation 3 (top) and equation 2 (bottom) based on values reported in Table 2.
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Figure 3: Desorption kinetics of, phenanthrene (A), tonalide (B), and benzophenone (C) from microplastics at different DOM contents. Models for film diffusion, intraparticle diffusion, and the coupled diffusion are shown with the red dashed, 599
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Figure 4: Characteristic times of mass transfer as function of the solid-to-liquid ratio ' /& and ∗ the partition coefficient . A: total characteristic time; B: ratio of external to internal
characteristic time; C: internal characteristic time; D: external characteristic time of mass transfer. The solid red line shows the range of experimental conditions while the dashed red line refers to microplastics concentrations found in the environment.61 Solid-to-liquid ratios of suspended sediments in rivers typically range from 10 m − 10 J kg L l .63 600
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