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Ups and downs in the ocean: Effects of biofouling on the vertical transport of microplastics Merel Kooi, Egbert H Van Nes, Marten Scheffer, and Albert A. Koelmans Environ. Sci. Technol., Just Accepted Manuscript • Publication Date (Web): 14 Jun 2017 Downloaded from http://pubs.acs.org on June 15, 2017
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Environmental Science & Technology
Ups and downs in the ocean: Effects of biofouling on vertical transport of microplastics
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Merel Kooi1,*, Egbert H. van Nes1, Marten Scheffer1, Albert A. Koelmans1,2
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Sciences, Wageningen University & Research, P.O. Box 47, 6700 AA Wageningen, The
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Netherlands
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Aquatic Ecology and Water Quality Management Group, Department of Environmental
Wageningen Marine Research, P.O. Box 68, 1970 AB IJmuiden, The Netherlands
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* Corresponding author: M. Kooi, Aquatic Ecology and Water Quality Management Group,
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Department of Environmental Sciences, Wageningen University & Research, P.O. Box 47, 6700
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AA Wageningen, The Netherlands – E-mail:
[email protected]; Phone: +316 17640777
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Keywords: microplastic, biofouling, settling, fate, vertical distribution, ocean models
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Abstract
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Recent studies suggest size-selective removal of small plastic particles from the ocean surface, an
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observation that remains unexplained. We studied one of the hypotheses regarding this size-
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selective removal: the formation of a biofilm on the microplastics (biofouling). We developed the
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first theoretical model that is capable of simulating the effect of biofouling on the fate of
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microplastic. The model is based on settling, biofilm growth and ocean depth profiles for light,
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water density, temperature, salinity and viscosity. Using realistic parameters, the model simulates
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the vertical transport of small microplastic particles over time, and predicts that the particles either
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float, sink to the ocean floor, or oscillate vertically, depending on the size and density of the
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particle. The predicted size-dependent vertical movement of microplastic particles results in a
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maximum concentration at intermediate depths. Consequently, relatively low abundances of small
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particles are predicted at the ocean surface, while at the same time these small particles may never
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reach the ocean floor. Our results hint at the fate of ‘lost’ plastic in the ocean, and provide a start
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for predicting risks of exposure to microplastics for potentially vulnerable species living at these
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depths.
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Abstract Art – TOC:
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Introduction
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Plastic waste entering the oceans was estimated between 4.8 and 12.7 million metric tons for
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2010, and these amounts are expected to increase one order of magnitude by 2025.1 This plastic
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debris will fragment to smaller particles due to photodegradation, physical erosion or
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biodegradation.2 Consequently, microplastics, defined as plastic particles < 5 mm, are numerically
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more abundant than larger plastic debris, both at the sea surface and in the water column.3–6
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Microplastics can, among others, be ingested by detritivores, deposit feeders, filter feeders and
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zooplankton.7–10 Ingestion may cause chemical leaching and blockage or damage of digestive
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tracks, resulting in satiation, starvation and physical deterioration of organisms.7
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Due to fragmentation of larger plastic, it is expected that the number of particles in the ocean
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increases exponentially with decreasing size.6 However, a size-dependent lack of small particles
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was observed at the ocean surface, suggesting that particles smaller than 1 mm are somehow
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‘lost’.6,11 While microplastic amounts have accumulated in the pelagic zone,12 microplastic fate
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below the ocean surface remains largely unknown.6,13 There are several hypotheses for the
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removal of these smaller particles, such as ingestion by marine organisms,6 vertical transport
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caused by wind mixing,14 the accumulation of organisms on plastics (biofouling) followed by
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settling,6,15 fast degradation to very small particles (‘nanofragmentation’)6 or a combination
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thereof. Here we study whether the biofouling hypothesis can explain the fate of the ‘lost’ plastics.
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Biofouling is defined as the accumulation of organisms on submerged surfaces and affects the
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hydrophobicity and buoyancy of plastic.15–19 When the density of a particle with biofilm exceeds
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seawater density, it starts to settle.15,18 As seawater density gradually increases with depth, the
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particle can be expected to stay suspended at the depth were its density equals seawater density.6,15
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It has been hypothesized that the depths at which the particles are suspended might be equal to the
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pycno- and thermocline depth.15 It is also possible that particles sink deeper as several studies
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indicate the presence of microplastics on the ocean floor, although the transport mechanisms
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remain unknown.20–22 Biofouling occurs within days, and within weeks algal fouling communities
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are formed on the plastic surfaces.15,17,23 Plastics can start sinking within two weeks, the time
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depending on particle size, type, shape, roughness and environmental conditions.23 Ye and
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Andrady (1991) report sinking of plastics within seven weeks, but also indicate that defouling
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occurs quickly after particle submersion.15 Defouling can be the result of light limitation, grazing,
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or dissolution of carbonates in acid waters.6,15 Fouling also occurs under submerged conditions,
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but with different algae species and at a slower rate.15,17
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The development of dynamic models for biofouling and microplastic settling is essential in order
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to predict the vertical distribution of microplastics. The above shows that there are several
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empirical studies addressing biofouling, however, deterministic quantitative frameworks that are
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capable of simulating the effects of biofouling on the vertical distribution of microplastics are
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lacking. Modelling fouled plastic movement from a theoretical point of view is useful in order to
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evaluate the different factors and processes influencing microplastic biofouling and the associated
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sinking through scenario analysis. In the present study we provide the first theoretical model that
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simulates the effect of biofouling on the settling of microplastics. We modelled particles ranging
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between 10 mm and 0.1 µm in radius, and for convenience refer to all these particles as
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‘microplastics’. We present model simulations that show the effect of particle size, particle type
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(density), and oceanographic variables on the fouling of plastic by attachment of algae and
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subsequent settling. To explain the observed systems behaviour, selected additional calculations
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are performed. These calculations include assessment of the dependence of the model outcome to
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variability in some of the key parameters.
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Modelling the effect of biofouling on the vertical transport of microplastics
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The model simulates settling or rising of microplastic particles, dependent on density differences
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between the composite particles and seawater and uses well-established concepts and
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parameterizations for all of its components. The composite particle density was determined by
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algae attachment, growth, respiration and mortality. Settling of plastic particles over depth was
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modelled as a function of the settling velocity (m s-1).
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= (, )
(1)
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Microplastic particles come in many shapes. Hence, the settling velocity was calculated using a
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modification of the Stokes equation, provided by Dietrich (1982).24 This equation can be applied
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to both spherical and non-spherical particles by using an equivalent spherical diameter24 and was
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recently verified for microplastics, using settling data for spherical, pristine microplastic
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particles:25 ,
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(, ) = −
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in which is the density of the plastic particle with biofilm (kg m-3), , the sea water
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density at depth (kg m-3), , the kinematic viscosity of the seawater (m2 s-1), the
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gravitational acceleration (m s-2) and ∗ the dimensionless settling velocity.24 The dimensionless
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settling velocity ∗ is a function of the dimensionless particle diameter
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settling velocity was calculated as:24
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∗ = 1.74 ⋅ 10'
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log(∗ ) = −3.76715 + 1.92944 log
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0.00056(log
,
∗)
∗ ,
( ∗
'.3
(2)
for ∗
∗
∗.
The dimensionless
< 0.05
(3)
− 0.09815(log
for 0.05 ≥
∗
∗)
(.3
− 0.00575(log
∗)
4.3
+
≥ 5 ⋅ 105
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The dimensionless particle diameter was calculated from the equivalent spherical diameter
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(m):24
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∗
=
7 , 89:;
(4)
, 6{l6 ), differential settling (\N |H{69 ) and
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advective shear (\N k|l> ) collision frequencies (m3 s-1). These different encounter kernel rates
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were calculated as:36,38
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\N I>6{l6 = 4M(
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( \N |H{69 = MF
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\N k|l> = 1.3}(F + FN )4
GH
+
N )(F
+ FN )
W
(14)
(
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GH
N
are the diffusivity of the plastic particle and the algae cells (m2 s-1), and } is
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in which
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the shear rate (s-1). For the Brownian encounter kernel rate, the diffusivity of the plastic and algae
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was calculated as:36
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GH
=
and
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~(dA(4.W) L >
and
N
=
~(dA(4.W) L >Q
(15)
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where is the Boltzmann constant (m2 kg s-2 K-1), R the dynamic water viscosity (kg m-1 s-1)
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and where the radius of the total particle, F = FGH + IJ , and the radius of the algae, FN , were
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calculated assuming a spherical particle or algae shape (m).
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Algae growth (term 2 in Equation 11) was modelled as
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R(S , T ) = RG (T )Φ(S )
for Sr{6 < S < Srls
(16)
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where RG (T ) is the growth rate under optimal temperature conditions for a certain light intensity
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T , and Φ(S) is the temperature influence on the growth rate.39
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RG (T ) = Rrls ⋅
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Φ(S ) =
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In the above equations, T is the light intensity at depth (µE m-2 s-1), TG is the optimal light
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intensity for algae growth (µE m-2 s-1), Rrls is the maximum growth rate under optimal conditions
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(s-1), is the initial slope (s-1) and Srls , Sr{6 and SG are the maximum, minimum and optimal
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temperature to sustain algae growth respectively (ºC).39 For S < Sr{6 and S > Srls , Rrls = 0
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and therefore R(S , T ) is zero.39 The light intensity at depth was calculated according to the law
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of Lambert-Beer:
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T = T3 b
g
A unv W g?
(17)
=
(d dunv )(d du; )=
7d? du; 8⋅t7d? du; 87d d? 87d? dunv 87d? Adu; (d 8x
(18)
(19)
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in which T3 is the light intensity at the surface and is the extinction coefficient (m-1). Light
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availability at the sea surface was calculated using a sinusoidal function:40,41
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T3 = Tr sin(2M)
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in which Tr is the light intensity at noon (µE m-2 s-1). When the sinus function of Equation 20
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becomes negative, a value of 0 µE m-2 s-1 was assumed. The light extinction, needed for Equation
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19, is assumed to be dominated by water and algae induced extinctions, and can be calculated as:40
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= + G ]ℎ_ `
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with and G the extinction coefficients for water and chlorophyll respectively.
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Algae mortality and respiration, i.e. terms 3 and 4 of Equation 11 respectively, where modelled
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using a constant mortality and respiration rate. A temperature dependency of respiration was
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realised with a VW3 coefficient. The VW3coefficient indicates how much the respiration rate
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increases when the temperature increases 10 ºC.42,43 As algae growth (Eq 10, term 2) and algae
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respiration (Eq 10, term 4) are temperature dependent, a seawater temperature profile over depth
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was needed. Seawater temperature was empirically approximated using a Hill function,44 which
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adequately captured the characteristic shape of a thermocline:
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S = S>J + 7SI − S>J 8 ? A ?
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in which S is the water temperature at depth (°C), S>J the water temperature at the surface
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(°C), SI the water temperature at the sea bottom (°C), the thermocline depth (m) and a
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parameter defining the steepness of the thermocline.
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As mentioned above, the density difference between the particle and seawater is the main driver of
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the modelled transport. The above Equations 5 – 22 detailed the calculation of the total density
(20)
(21)
?
(22)
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( in Equation 2). Hereafter we focus on the calculation of the seawater density (, in
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Equation 2). Seawater density is determined by temperature and salinity ( ), according to:45
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, = 7`W + `( S + `4 S ( + `' S 4 + `c S ' 8 + 7W + ( S + 4 S ( + ' S 4 +
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c ( S ( 8
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The temperature profile was calculated with Equation 22. A salinity depth profile ( , g kg-1) was
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calculated using a fifth order polynomial function.
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= W c + ( ' + 4 4 + ' ( + c +
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Below J{s , the depth at which the salinity profile becomes constant, a constant value J{s is
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assumed. Last, the kinematic viscosity, , (m2 s-1), as was used in Equation 2, was calculated as
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, =
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based on the seawater density and the dynamic viscosity, R, (kg m-1 s-1). The dynamic
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viscosity of seawater was calculated using empirical equations.45 Viscosity was derived from the
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temperature and salinity profile, by first calculating the water dynamic viscosity R, , followed by
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calculation of the seawater dynamic viscosity: 45
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R, = 4.2844 ⋅ 10c + 3.Wc(d A'.554)=5W.(5
(26)
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R, = R, (1 + O + ( )
(27)
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in which
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O = 1.541 + 1.998 ⋅ 10( S − 9.52 ⋅ 10c S (
(28)
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= 7.974 − 7.561 ⋅ 10( S + 4.724 ⋅ 10' S (
(29)
(23)
for < J{s
,
(24)
(25)
,
W
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Parameters and numerical model implementation. Model parameters were estimated based on
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literature data, and are summarized in Table S1 of the supporting information (SI). Here some key
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choices are briefly discussed. In this model, no specific algae species is modelled. Instead, we
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modelled an average marine species, with the parameter characteristics defined by the mean or
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median values reported for “marine algae” or “marine phytoplankton”. By default, the biofilm
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density (IJ , Equation 5) was set at 1388 kg m-3, which is the median of the measured values of
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Fisher et al. (1983). This median value is of the same order of magnitude as the 1250 kg m-3 used
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in the modelling study by Besseling et al. (2017).46,47 An algae cell volume (N , Equation 10) of
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2.0⋅10-16 m3 was used, which represents the median value reported by Lopéz-Sandoval et al.
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(2014).48 Algae biomass was lost through respiration and mortality (Equation 11). In this study a
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(grazing) mortality of 0.39 d-1 was used, a mean value for oceanic habitats.49 A respiration rate of
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0.1 d-1 was used in combination with a respiration VW3value of 2, which is a commonly used
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value.43,48,50–52 The maximum growth rate (Rrls , Equation 16) was set at 1.85 d-1, the value
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reported for Nannochloropsis oceanica by Bernard and Rémond (2012).39 A light intensity at noon
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of 1.2⋅108 µEm-2d-1 was used, together with an optimal light intensity of 1.8⋅1013 µEm-2d-1 (Tr
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and TG in Equation 20 and 17, respectively).39,53 A light : dark duration of 12 hours each was
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assumed. The conversion from carbon to algae cells is highly variable, ranging between 35339 to
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47.76 pg carbon cell-1.32 We choose the median value, 2726⋅10-9 mg carbon cell-1.
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Parameter values for the depth profiles of temperature and salinity were obtained from the NASA,
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choosing the North Pacific near Hawaii as a default location.54,55 For temperature, Equation 22
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was fitted through the data points obtained from the surface to 4000 m depth, with a resulting R2
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of 0.99. The salinity profile was fitted as a 5th order polynomial function (R2 = 0.74) from the
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surface to 1000 m depth, followed by a constant value from 1000 m to 4000 m depth. Parameters
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of these fits are also provided in Table S1.
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The model was solved using MATLAB R2012a with GRIND for MATLAB (http://www.sparcs-
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center.org/grind.html). Because the modelled system appeared to be a stiff system, the
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MATLAB’s ode23s solver was used.
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Model simulations. Different analyses were done with the model described above, focussing on
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the effect of particle density and size on vertical transport in the water column. The effect of
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particle density was studied by simulating the most common polymer types: high density
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polyethylene (HDPE), low density polyethylene (LDPE), polypropylene (PP), polyvinylchloride
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(PVC) and polystyrene (PS). HDPE, LDPE and PP are initially buoyant plastics (density plastic