Measuring Nanoparticle Attachment Efficiency in Complex Systems

Oct 18, 2017 - Department of Civil and Environmental Engineering, Duke University, Durham, North Carolina 27708, United States. ‡ UCD School of Bios...
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Measuring nanoparticle attachment efficiency in complex systems Nicholas K. Geitner, Niall Joseph O'Brien, Amalia Turner, Enda Cummins, and Mark R. Wiesner Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b04612 • Publication Date (Web): 18 Oct 2017 Downloaded from http://pubs.acs.org on October 18, 2017

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Measuring nanoparticle attachment efficiency in complex systems

Nicholas K. Geitner,1,3 Niall J. O’Brien,1,2 Amalia A. Turner,1,3 Enda J. Cummins,2 Mark R. Wiesner1,3* * Corresponding author ([email protected]) 1. Department of Civil and Environmental Engineering, Duke University, Durham, North Carolina 27708, United States 2. UCD School of Biosystems and Food Engineering, University College Dublin, Belfield, Dublin 4, Ireland 3. Center for the Environmental Implications of NanoTechnology (CEINT), Duke University, Durham, North Carolina 27708, United States

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Abstract

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As process-based environmental fate and transport models for engineered nanoparticles are

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developed, there is a need for relevant and reliable measures of nanoparticle behaviour. The affinity

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of nanoparticles for various surfaces (α) is one such measure. Measurements of the affinity of

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nanoparticles obtained by flowing particles through a porous medium are constrained by the types

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of materials or exposure scenarios that can be configured into such column studies. Utilizing glass

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beads and kaolinite as model collector surfaces, we evaluate a previously developed mixing method

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for measuring nanoparticle attachment to environmental surfaces, and validate this method with an

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equivalent static column system over a range of organic matter concentrations and ionic strengths.

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We found that, while both impacted heteroaggregation rates in a predictable manner when varied

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individually, neither dominated when both parameters were varied. The theory behind observed

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nanoparticle heteroaggregation rates (αβB) to background particles in mixed systems is also

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experimentally validated, demonstrating both collision frequency (β) and background particle

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concentration (B) to be independent for use in fate modelling. We further examined the effects of

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collector particle composition (kaolinite vs glass beads) and nanoparticle surface chemistry (PVP,

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citrate, or humic acid) on α, and found a strong dependence on both.

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Introduction

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Assessing and understanding engineered nanomaterial exposure to dynamic environmental systems

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has been a major driver in the move from material flow analysis of nanomaterials1, 2 to process-

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based fate and transport models.3-5 Experimental assays are required to identify fundamental

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nanoparticle and environmental properties that impact nanoparticle fate and transport in the

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environment and quantify the reaction rates (dissolution, oxidation, sulfidation, heteroaggregation

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etc.) dependent on these properties.6

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Nanoparticles may not reach equilibrium partitioning in the same manner or over the same time-

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scales as dissolved chemicals, and therefore standard tests for determining partitioning or

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adsorption coefficients (e.g. Kow 7 and Kd 8) require special consideration for potential departure from

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thermodynamic expectations. 9, 10 A kinetic consideration of particle attachment to other particles

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(heteroaggregation)11 or to immobile surfaces (deposition), as has been developed in the colloid

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science literature,12-18 can be adapted to describe the fate of nanomaterials in natural and

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engineered systems.11, 19 The attachment efficiency (α) of nanoparticles to another particle or

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surface (collector), along with the nanoparticle-collector collision frequency (ß) and collector

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concentration (B) describes key elements of nanoparticle characteristics and the system in which

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nanoparticles are present. The attachment efficiency is therefore a functional or aggregate property,

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not just of the nanoparticle in question, but of the entire system, including the nanoparticle, its

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surface chemistry, the surfaces nanoparticles encounter, and the chemistry of the dispersing

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medium.

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Nanoparticle attachment efficiencies have been determined in column studies for collector media

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such as silica (glass beads) and soil.19-21 In these systems, fluids containing nanoparticles pass

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through the column, contacting surfaces of the porous medium (collectors) with an efficiency (η0)

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over the column length (L).22 The range of background collector media that can be studied in this

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arrangement is limited, however, to solid phases that can be packed into a column and provide

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sufficient porosity for flow to occur. The breakthrough curves obtained in these experiments provide

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information on the transport and attachment of nanomaterials through the packed column.

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Attachment efficiencies are calculated from these breakthrough curves in one of two ways: , (1)

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applying theory that describes the physics of transport within the column, thereby isolating the

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chemical effects expressed by α or (2) normalizing experimental results to a scenario in which every

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collision results in attachment, such that the factors affecting transport are cancelled out. Other

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methods for measuring the affinity of particles for an immobile surface, such as the quartz crystal

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microbalance, 23 where the background of interest is present as a thin layer, as well as

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complementary confirmatory methods such as SEM and AFM24 are also largely limited to rigid

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materials and suffer from limitations in throughput.

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Instances where the collector surfaces are mobile (heteroaggregation), highly complex, and/or

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otherwise incompatible with column studies, are frequently encountered in the context of complex

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dynamic backgrounds such as wastewater sludge, suspended solids in surface waters, and soil

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particles. Multiple surfaces (e.g. bacteria, algae and clays) may also compete as sites for nanoparticle

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attachment. Theory for colloid aggregation provides us with a framework for considering

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nanoparticle interactions with such “background” particles where an overall attachment (or

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heteroaggregation) rate is determined by the product (αβB), consisting of the attachment efficiency

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(α), which largely describes the chemistry of attachment; the collision rate constant (β), which

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defines the physics of how particles approach collectors; and the collector particle concentration

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(B).25, 26 Each environment (e.g. river, lake, settling tank, etc.) is characterized in part by a value of

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βTOTAL, itself comprised of three principle collision mechanisms: Brownian diffusion (βBROWNIAN ),

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differential settling (βDIFFERENTIAL) and shear-induced collisions (βSHEAR).27

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The importance of heteroaggregation for nanoparticles in environmental systems has been

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repeatedly signalled in the literature.11, 28, 29 The complexity of heteroaggregation in environmental

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systems, which had impeded measurement of the attachment efficiency, has been addressed using a

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mixing method for measuring the “surface affinities” in previous work.11, 30 In the current work we

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validate the mixing method by comparing trends in attachment efficiencies to those obtained by the

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column method. We present measurements of α for PVP-coated silver (PVP-Ag) nanoparticles

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attaching to a mixed suspension of glass beads for a range of environmentally relevant conditions of

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ionic strength (IS) and organic matter (OM) and compare these values to those determined through

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standard column tests with glass beads under equivalent conditions of solution chemistry. We tested

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the influence of βTOTAL and B (as predicted by colloid theory) and their use as separate quantities that

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can be calculated from theory. The mixing method is then applied to a matrix of IS and OM

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conditions to further investigate the relative influence of these two parameters on attachment

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efficiency. Finally, we probe mechanisms of attachment by examining the influence of collector

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particle composition and nanoparticle surface chemistry on attachment efficiency.

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Methods and materials

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Materials

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The nanoparticles used in this study were polyvinylpyrrolidone-functionalised silver (PVP-Ag)

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(diameter = 44.3 nm from TEM measurements) synthesized in-house at the Center for the

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Environmental Implications of NanoTechnology (CEINT, Duke University, Durham, NC), with the

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synthesis and characterisation of these particles previously described.31, 32 Humic acid (HA) was

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Suwanee river humic acid, obtained from the International Humic Substance Society.

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Similar collector surfaces in both experiments were selected to allow comparison of mixing and

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column methods under well-controlled conditions. Four size classes of spherical borosilicate glass

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beads (GBs) were used as background or porous material in this study (all obtained from Potters

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Industries Inc. Berwyn, PA) with mean diameters of 2.2 ± 0.5 µm, 8 ± 2 µm, and 40 ± 10 µm for

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mixing experiments and 360 µm for column experiments. To ensure comparable surfaces for

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nanoparticle attachment, all glass beads were subjected to the same cleaning procedure in the same

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background electrolyte as the subsequent mixing studies,33 in which GBs were washed in the

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exposure medium and allowed to settle. The GBs were then decanted, and this washing procedure

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was repeated at least 5 times.

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α: Validating mixing method with column method

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Ionic strength

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To investigate the influence of ionic strength on PVP-Ag nanoparticle-GB heteroaggregation rate, 40

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mL PVP-Ag nanoparticles (2 mg/L) were mixed in glass vials with 40 ± 10 µm GBs (22.4 g/L), as a

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representative background particle, and 0.002 mg HA/mg Ag at 350 RPM (time averaged shear rate

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23.7 s-1, calculated from Croughan et al;34 see Supporting Information) in ultra-pure water adjusted

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to pH 7.8 with 0.1 N NaOH. The pH adjustment was necessary to avoid pH shifts during the

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experiment in the presence of bare glass beads in the single-electrolyte system. The initial

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concentrations of both PVP-Ag nanoparticles and 40-µm GBs were selected for ease of detection,

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while still maintaining nanoparticle concentrations well below the concentration of background

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particles. The attachment efficiency of nanoparticles onto background particles is independent of

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these initial concentrations, so long as the background particle concentration (and associated

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available surface area) is significantly greater than that of the nanoparticles. In this medium, PVP-Ag

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nanoparticles possessed a zeta potential of –8.8 ± 2.3 mV (Malvern Instruments, ZetaSizer Nano ZS),

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indicating a nearly neutrally charged surface coating. A time-series of 12 aliquots were taken (350 µl;

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30 s – 1 hr) and the phases allowed to separate in small plastic vials for 30 s, over which time the GBs

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completely settled out of suspension along with all associated nanoparticles. The supernatant (200

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µl) PVP-Ag nanoparticle concentration for each time point was then measured by UV spectrometry

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(Thermo Multiskan MMC) at 400 nm. The lower detection limit of PVP-Ag nanoparticle

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concentration was determined to be 0.07 mg/L, with a resolution of 0.01 mg/L. Control supernatants

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in the absence of PVP-Ag nanoparticles were also measured, which displayed absorbance identical to

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that of control water samples. The residual concentration of the PVP-Ag nanoparticles over time can

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be plotted such that log transformed data obtained from the initial phase of attachment can be

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linearized and used to calculate the rate of nanoparticle removal due to attachment, αβB:11, 30

 ln   = . #1  121

The linear phase was identified as starting from 30 seconds after nanoparticle dosing and was cut off

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based on optimization of the linear regression correlation coefficient. At least 5 time points were

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used in each final fit.

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To investigate the effect of ionic strength on attachment efficiency, a potassium nitrate (KNO3)

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solution was added to the mixing vials. KNO3 is generally considered to be an indifferent electrolyte,

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thereby avoiding confounding surface interactions with minerals and other collector particles

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surfaces. The experiment was repeated with increasing levels of ionic strength of the mixture

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(ranging from 0 to 10 mM) until the measured αβB did not increase further (i.e. α approached 1, or

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all collisions resulted in attachment). Clean GBs in new glass vials were used for each replicate at

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each of the ionic strengths tested, and each mixing study was performed in triplicate. Control

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experiments without GBs were also performed to account for any reduction in suspended Ag

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absorption (at 400 nm) due to homoäggregation, dissolution or sorption to mixing vessel. We further

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verified that any homoäggregation present in a given system was negligible compared to

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heteroaggregation in the linear attachment phase for each condition, as done previously.30 Also note

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from Eqn. 1 that the attachment efficiency is predicted to be independent of the nanoparticle initial

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concentration.

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The values of α obtained from the mixing method at various ionic strengths were then compared

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with those obtained from column experiments using PVP-Ag nanoparticles (2 mg/L) and 360 ± 20 µm

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GBs performed under equivalent conditions (see Supporting Information for details on column set-

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up). The concentrations of PVP-Ag nanoparticles leaving the column were also measured by UV

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spectrometry (Hitachi 2810) at 400 nm.

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The fraction of nanoparticles leaving the column between approximately one and three pore

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volumes typically yields a plateau value, referred to as the clean bed removal, that is related to the

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collector efficiency of a single GB (η0), the attachment efficiency (α), and the length of the column

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(L), as described by equation 2:22 



   = −  .    #2

146



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where dc is the collector diameter, ε is the column total porosity, and C/C0 is the column outlet

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normalized particle concentration of the nanoparticle breakthrough curve, measured in this case

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after two pore volumes. This experiment was repeated and the ionic strength of the mixture again

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increased using KNO3 (0 → 10 mM) until the value of C/Co (or equivalently   did not change

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with further increases in ionic strength. Each column study was performed in triplicate, and each

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replicate performed with a fresh column initially free of Ag nanoparticles.

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By assuming α equals 1 at the maximum observed value of αβB in the mixing studies and αη0L in the

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column experiments, the attachment efficiency (α) can be calculated in each case by dividing the

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observed value of αβB or αη0L by the values of these quantities obtained when attachment

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conditions are favourable (α=1, or every collision results in attachment), thereby eliminating the

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need to calculate or measure B independently:

=



 

!"#$!%&'  

=





!"#$!%&'

#3

158 159

Organic matter

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The influence of organic matter on the attachment rate of PVP-Ag nanoparticles to GBs was

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investigated in experiments where the PVP-Ag nanoparticles were pre-mixed with HA for 5 minutes

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before addition to the GB suspension. The ionic strength of the suspension was held at 5 mM KNO3

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(i.e. α~1 for low HA concentrations) and the HA concentration was increased from zero to 0.4

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mg/mg Ag, the latter concentration observed to yield an attachment efficiency of approximately

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zero in this system. HA concentrations were based on the weight of dry HA salt added as a fully

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dissolved stock solution.

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To validate the attachment efficiencies measured using the mixing method at increasing HA

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concentration, column experiments using PVP-Ag nanoparticles (2 mg/L) and 360 ± 20 µm GBs were

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performed under equivalent conditions as described previously. The HA concentration in the PVP-Ag

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nanoparticle stock was again increased from zero to 0.4 mg/mg Ag, the latter concentration

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observed to yield an attachment efficiency of approximately zero.

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Attachment efficiency was calculated at each HA concentration for both mixing and column

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experiments as described for the ionic strength experiments.

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β: Influence of mixing rate & comparison to modelled values

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PVP-Ag nanoparticles (2 mg/L) and GBs (22.4 g/L 40 ± 10 µm; 1 g/L 8 ± 2 µm; 0.1 g/L 2.2 ± 0.5 μm)

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were mixed at varying mixing rates (60-480 RPM; shear rate 0.7 – 21.9 s-1) in independent mixing

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studies to observe the effect of shear forces on the overall attachment rate (αβB). Experiments

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were performed with three GB sizes to explore the effect of increasing shear force at different

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background particle sizes. Concentrations of GBs were varied to ensure equal available surface area

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across GB sizes. The ionic strength was held at 5mM KNO3 and [HA] at 0.002 mg/mg Ag (i.e. α~1) so

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any variation in the attachment rate would be solely due to the collision rate constant (βTOTAL). A

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time series of 12 aliquots (350 µl; 30 s – 1 hr) were taken, the phases separated either by

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centrifugation (2.2-µm GBs – 15 s, 200 × *; 8-µm GBs – 15 s, 40 × *) or settling (40-µm GBs – 30 s)

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in 1.5 mL centrifuge tubes and analysed by UV spectrophotometery as described previously. βTOTAL

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was extracted from αβB by assuming a constant αB across all experiments. Values for βTOTAL were

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also calculated for each mixing speed (shear rate) and background particle size (GBs) using the

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rectilinear model27 and compared to the measured values. The rectilinear model makes the

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assumption that particles move in straight lines until a collision occurs.35 This model is frequently

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selected for its computational efficiency and qualitative representation of overall trends, but it lacks

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in quantitative accuracy. Because of the large number of assumptions that would be required to

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produce more accurate calculations, the rectilinear model was considered satisfactory for the

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purpose of the current work, which is primarily to compare trends. Further details are provided in

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the Supporting Information.

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B: Role of background concentration

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To observe the effect of collector particle concentration (B) on measured attachment rate (αβB), the

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40-µm GB concentration was varied (2.5, 5, 10, 20, 40, 80 g/L), while holding constant the

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suspension ionic strength (5mM KNO3) and mixing speed (350 RPM; shear rate 14.4 s-1). Samples

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were taken and analysed as described for the ionic strength experiments.

201 202

Roles of Collector Particle Composition and Nanoparticle Surface Chemistry

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To reveal the roles of collector particle composition and nanoparticle surface chemistry, the same 2

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mg/L PVP-Ag nanoparticles were introduced to 1 g/L kaolinite clay in ultra-pure water, pH 7.8. The

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mixing study solution contained 0.5 mM KNO3 and no additional HA. Further, we performed mixing

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studies on both 40 µm GBs and the above kaolinite clay together with 2 mg/L Ag nanoparticles with

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citrate (Cit-Ag nanoparticles) and HA (HA-Ag nanoparticles) surface coatings. These particles were

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prepared using the same initial core material as used for PVP-Ag nanoparticles, but with the surface

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coating reducing agent replaced by sodium citrate. HA-Ag nanoparticles were prepared from Cit-Ag

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nanoparticles by pre-incubating 20 mg/L nanoparticle solutions with 10 mg/L HA. In the above

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mixing solution buffer, the zeta potentials for Cit-Ag and HA-Ag nanoparticles were -38 ±4 and -32 ±6

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mV, respectively. Attachment efficiencies were derived as described above, with α=1 measurements

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made independently for GBs and kaolinite. Phase separation of GBs from free nanoparticles was

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performed as described above. Phase separation of kaolinite clays from a 750 µL aliquot was

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accomplished by 30 seconds of ultracentrifugation at 7000 × * in 1.5 mL centrifuge tubes.

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Application: α heat-map

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The combined effect of IS and OM on attachment efficiency was evaluated by measuring αβB using

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the mixing method (2 mg/L PVP-Ag nanoparticles; 22.4 g/L 40 µm GB; shear rate 14.2 s-1) over an

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environmentally relevant range of IS and humic acid (0.5-10 mM KNO3; 0.1-1.6 mg HA/mg Ag). α was

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then calculated by dividing by the value of βB experimentally determined earlier under conditions

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of favourable attachment ( → 1.

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Results and Discussion α: Comparison between mixing with column methods

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The attachment efficiencies (α) of PVP-Ag nanoparticles to GBs measured by the mixing method

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closely followed the trends obtained from column experiments in equivalent conditions (Figure 1 a,

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b), with a Pearson correlation coefficient of 0.989 between the two sets of results. The transition

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from unfavourable (i.e. α=0, or no collisions result in attachment) to favourable heteroaggregation

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regimes (i.e. α approaching 1, or every collision results in attachment) occurred over a relatively

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narrow range of electrolyte concentration (critical coagulation concentration (CCC) ~ 5mM KNO3)

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(Figure 1 a), while the transition from favourable (at the CCC) to unfavourable heteroaggregation

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with increasing humic acid concentration also occurred over a relatively narrow HA concentration

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range (0 → 0.4 mg/mg Ag) (Figure 1 b). The observed increase in PVP-Ag attachment at higher IS has

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been previously ascribed to a compression of the electric double layer of the particle and the only

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slightly charged PVP coating, thereby enhancing polymer coating interactions with the uncoated

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collector surface36 The decrease in attachment with increasing HA concentration has been explained

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by a mitigation of PVP attachment to GB surfaces through active site reduction and additional

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electrosteric stabilization of the nanoparticles by HA. The lower values of attachment efficiency

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determined by the mixing method relative the column studies at higher humic acid concentrations

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(Figure 1b) are attributed to a greater extent of these HA interactions with nanoparticle surfaces.

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Specifically, the lower relative surface area of GBs in mixing studies increases the probability of

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direct adsorption of HA onto Ag nanoparticle, as opposed to the more likely adsorption of HA onto

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glass bead surfaces in column studies, which in many cases will be onto empty sites with no

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nanoparticle adsorption. These HA interactions with nanoparticles are expected to lower attachment

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efficiencies onto glass beads by providing additional electrosteric stabilization; this hypothesis is

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examined further below.

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Attachment efficiency (α)

1.2

(a)

Mixing Method

Column Method

1.0 0.8 0.6 0.4 0.2 0.0 0.1

1

10

Ionic Strength (mM KNO 3 ) Attachment efficiency (α)

1.2

(b)

1.0 0.8 0.6 0.4 0.2 0.0 0.001

0.01

0.1

1

[Humic Acid] (mg/mg Ag)

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Figure 1: (a) Mixing & Column α vs IS (HA concentration = 0.002) (b) Mixing & Column α vs HA (IS = 5 mM). The

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shown error bars stand for standard deviations from three replicates.

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Agreement in the trends and numerical values of attachment efficiency determined by the mixing

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and column methods validates the use of these mixing studies across a range of system parameters.

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The viability of this batch mixing method could allow the range of materials for which attachment

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measurements are currently possible through column studies to be expanded to more complex and

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dynamic systems (e.g. soil, wastewater sludge, biological systems), as well as systems with sparse

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background particle concentrations. 30

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β: Influence of mixing rate

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For a known value of attachment efficiency (α) and collector particle concentration (B), the mixing

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method can be used to determine the value of the collision rate (βTOTAL) under given conditions. As

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predicted by the rectilinear model for colloidal suspensions (Supporting Information), the collision

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rate increased with mixing rate (shear rate) for PVP-Ag nanoparticles with 8 µm GB background

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particles, with reduced impact of mixing speed for 2.2 µm and 40 µm GBs (Figure 2). In Figure 2, the

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collision rate βTOTAL for a range of mixing speeds is plotted relative to the β obtained at 60 rpm in

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order to highlight the relative impact of mixing speed on collision rates. These findings for varied

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background particle size qualitatively agree with trends in βTOTAL as a function of mixing speed as

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predicted by the rectilinear collision model, where shear rate has a significant influence on βTOTAL

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only over a limited background particle size range of approximately 1-10 µm (Figure 2, inset). Also

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qualitatively consistent with theory, the smallest background particle size (2.2 µm) yielded small

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values for the collision rate kernel that were relatively insensitive to mixing speed.

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273 274

Figure 2: Modelled and measured values for collision rate (βTOTAL) vs background particle size. Normalized

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collision rate was calculated for a range of system mixing speeds and plotted relative to results at 60 rpm.

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Inset: Relative contributions of βBROWNIAN, βSHEAR and βDIFFERENTIAL to βTOTAL at 480 rpm

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This experimental determination of β and its qualitative agreement with modelled trends only for

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collector particles ≥ 50 µm in diameter highlights the utility of β as a separate and calculable

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parameter in modelling attachment of nanoparticles to these larger collectors. However, the model

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appears limited to general trends for collector particles of 5-20 µm, and is somewhat lacking in

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predictive power for the smallest collector particles. These results highlight the utility of the present

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approach, in which values of β are essentially eliminated from consideration by holding βB constant

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while measuring α under varying conditions that could affect collision rates in ways otherwise

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difficult to fully address.

286 287

B: Role of background concentration

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The influence of background particle (GB) concentration was found to follow heteroaggregation

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theory (Equation 1), with overall attachment rates (αβB) varying proportionally with collector

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concentration. In these tests, the exposure medium, nanoparticles, and mixing speeds were all held

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constant while varying collector particle concentration, B. The collector concentration ratio

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(1:2:4:8:16:32) (equivalent on mass, # and SA bases) closely matched the measured αβB (Figure 3).

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Figure 3: Influence of B on total removal rate due to attachment, αβB, for 40 µm GBs. [KNO3] = 5 mM, mixing

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speed = 350 RPM; shear rate 14.4 s-1

296 297

The agreement of experimental B findings with theory confirms that total collision frequency rates

298

(βB) measured at one B condition may quite easily be adapted and applied to another B condition

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based on particle collision theory. This holds true as long as β is held constant across all values of B

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tested and high concentrations of collector particles favoring significant particle-particle aggregation

301

and subsequent breakup are avoided.

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This empirical method of determining β, B and the combined collision frequency term βB (or its

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equivalent η0L in column studies) removes the need to calculate collision rates from theory based on

304

collision frequencies in mixing conditions11, 26 or collector efficiencies in column studies,22 as well as

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reducing dependence on potentially sensitive unknowns such as collector size or flow rate.37, 38

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Indeed, the presence of multiple collector class sizes and material densities in complex backgrounds

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make the calculation of collision frequencies and collector efficiencies, at best, complex and reliant

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on multiple assumptions or, at worst, impossible.

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Calculating the collision rate, β, is further complicated when βSHEAR changes dramatically within the

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system, which can occur under conditions of irregular or complex geometries or for a distribution of

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mixing regimes (e.g. containers with baffles, end-over-end mixers). In any event, average mixing

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conditions are likely to misrepresent the complex nature of particle passage through local mixing

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environments that are likely to determine the overall rates of aggregation. Biological systems such

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as bacteria and algae30 may be subject to limited mixing so as not to compromise the integrity of the

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sample, while systems with mobile organisms such as invertebrates and fish would be subject to

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collector-driven mixing. In these cases, empirically-derived collision frequencies with a nanoparticle

317

of known α are also preferable to the calculation method.

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Roles of Collector Particle Composition and Nanoparticle Surface Chemistry

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Additional mixing studies were performed, varying both the collector particles (GBs and kaolinite)

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and nanoparticle surface chemistry (Cit-, PVP-, and HA-Ag nanoparticles). The goal of these

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experiments was to determine if trends in one set of alphas determined for a reference surface such

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as glass beads, might be predictive of trends in alphas for the same nanoparticles attaching to more

324

complex surfaces. The resulting α values are provided in Figure 4. The trends for these three types of

325

nanoparticle surface treatments are similar, but not identical. For the PVP-Ag nanoparticles utilized

326

in earlier portions of this study, attachment to GBs was slightly more efficient than that onto

327

suspended kaolinite surfaces (α= 0.92 ± 0.09 vs 0.75 ± 0.05). Attachment efficiencies for both Cit-

328

and HA-Ag nanoparticles were markedly lower than those of PVP-Ag nanoparticles for both collector

329

particle surfaces. However, the relative affinities for GBs and kaolinite was reversed in these cases,

330

with α significantly higher for nanoparticles onto kaolinite than on GBs, particularly for HA-Ag. We

331

hypothesize that these differences are due to differences in electrostatic and steric stabilization

332

against heteroaggregation. The more highly charged Cit-Ag nanoparticles are less likely to adhere to

333

GBs, which are more significantly and uniformly negatively charged than kaolinite, which presents

334

multiple surfaces of different energies.39 Additionally, the electrosteric stabilization of HA-Ag

335

nanoparticles further increased the stability of these particles against heteroaggregation as

336

compared to Cit-Ag nanoparticles, which possess much less steric stabilization. However, more

337

specific interactions could have arisen between the organic HA and kaolinite surfaces, resulting in

338

higher attachment efficiencies. Further, while PVP may provide some steric stabilization against

339

heteroaggregation, this is expected to be less important than for GA. This is due to the uniform and

340

linear structure of PVP compared with the large and highly branched structure of GA. These

341

comparisons display an overall trend of αPVP >> αCit ≥ αHA for both GBs and Kaolinite, but more subtle

342

differences in attachment efficiency occurred due to collector particle composition. Therefore,

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343

detailed knowledge of the nanoparticle core and surface composition in addition to knowledge of

344

the local water chemistry is critical in studies of attachment efficiencies between nanoparticles for

345

fate and transport model development.

GBs

HA

Kaolinite

Citrate PVP 0.0

0.2

0.4

0.6

0.8

1.0

α

346 347

Figure 4: Values of attachment efficiency (α) for three different silver nanoparticle surface chemistries (humic

348

acid[HA], citrate, and polyvinylpyrrolidone [PVP]) and two collector particles (glass beads [GBs] and kaolinite

349

clay).

350 351

Application: α heat-map

352

The full range of possible values for α (i.e. 0 → 1) were observed when ionic strength (KNO3) and

353

organic matter (humic acid) concentration were varied within realistic environmental bounds.

354

Neither IS nor HA concentration dominated attachment efficiency determination over the

355

environmental range tested; rather, the IS:HA ratio drove α (Figure 5). The interplay between these

356

two characteristics of the system, ad their effect on attachment efficiency, suggests that all particle

357

and media characteristics that influence particle-surface interactions (e.g., van der Waals (vDW),

358

hydrophobic, steric) are of critical importance in the investigation of what drives attachment

359

efficiency in complex systems.40, 41 Extending the α-mapping presented here across multiple media

360

with differing characteristics (e.g. pH, different salts, different classes of organic matters) and across

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particles with different characteristics (size, morphology and functionalisation) will help build

362

predictive models for nanoparticle attachment.6

Humic Acid (mg/mg Ag)

361

0.5 0.002 0.01 0.05 0.1 0.2 0.4 0.8 1.6

Ionic Strength (mM KNO3) 1 2.5 5

10

0.061

0.180

0.777

0.918

1.000

0.045

0.031

0.256

0.789

0.939

0.026

0.036

0.069

0.269

0.792

0.026

0.026

0.064

0.152

0.640

-

0.000

0.025

0.048

0.382

-

-

0.012

0.020

0.159

-

-

-

0.017

0.076

-

-

-

-

0.000

Alpha (α) > 0.5 0.1 - 0.5 0.02 - 0.1 < 0.02

363 364

Figure 5: Heat-map summary of alpha (α) results as a function of both Humic Acid concentration and solution

365

ionic strength. “-“ indicate values of α below detection limits.

366

The mixing method investigated here proved to be effective for measuring nanoparticle attachment

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to glass beads in mixed systems with widely varying physicochemical properties, as well as in a

368

model suspended clay system. The predicted attachment efficiencies for PVP-coated Ag

369

nanoparticles closely matched those measured in standard column studies, while extending the

370

utility of attachment measurement to diverse, non-static systems.

371

This work demonstrates that attachment efficiencies for nanoparticle heteroäggregtion can be easily

372

obtained from simple laboratory experiments without complex instrumentation or the need for

373

direct calculation of collision frequencies or total collector surface areas. This functional assay42

374

opens the door for parameterization of models for heteroaggregation and deposition, while also

375

suggesting a means of characterizing physical regimes for mixing and flow in complex environmental

376

systems. Therefore, with careful characterization of water chemistry parameters such as ionic

377

strength, pH, and organic content, as well as nanoparticle core composition and surface chemistry,

378

glass bead studies may prove effective in measuring approximate comparisons in attachment

379

efficiencies between nanoparticles for fate and transport model development.

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380

Acknowledgements

381 382 383 384 385 386 387

This material is based upon work supported by the National Science Foundation (NSF) and the Environmental Protection Agency (EPA) under NSF Cooperative Agreement EF-0830093 and DBI1266252, Center for the Environmental Implications of NanoTechnology (CEINT). Any opinions, findings, conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the NSF or the EPA. This work has not been subjected to EPA review and no official endorsement should be inferred. NO’B was funded by the European Union Seventh Framework Programme (FP7/2007-2013) under grant agreement n°329903.

388 389

Supporting Information is Available

390

Supporting information is available. Column experimental setup, shear rate calculations, rectilinear

391

model equations, sample raw data from mixing studies

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