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Analyzing the Evolution of Membrane Fouling via a Novel Method Based on 3D Optical Coherence Tomography Imaging Weiyi Li, Xin Liu, Yi-Ning Wang, Tzyy Haur Chong, Chuyang Y. Tang, and Anthony Gordon Fane Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.6b00418 • Publication Date (Web): 08 Jun 2016 Downloaded from http://pubs.acs.org on June 12, 2016
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Analyzing the Evolution of Membrane Fouling via a
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Novel Method Based on 3D Optical Coherence
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Tomography Imaging
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Weiyi Lia, *, Xin Liua, b, Yi-Ning Wanga,
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Tzyy Haur Chonga, b, Chuyang Y. Tangc, Anthony G. Fanea, b
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a. Singapore Membrane Technology Centre, Nanyang Technological University, Singapore
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b. School of Civil and Environmental Engineering, Nanyang Technological University, Singapore
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c. Department of Civil Engineering, the University of Hong Kong, Hong Kong SAR, China
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*Corresponding author at:
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Singapore Membrane Technology Centre
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Nanyang Technological University
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1 Cleantech Loop, Clean Tech One
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Singapore, 637141
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Tel: +65 6592 7726
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Email:
[email protected] (W. Li)
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Abstract
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The development of novel tools for studying the fouling behavior during membrane
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processes is critical.
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quantitatively interpret the formation of a cake layer during a membrane process; the
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quantitative analysis was based on a novel image processing method that was able to
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precisely resolve the 3D structure of the cake layer on a micron scale.
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experiments were carried out with foulants having different physicochemical
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characteristics (silica nanoparticles and bentonite particles). The cake layers formed at a
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series of times were digitalized using the OCT-based characterization. The specific
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deposit (cake volume/membrane surface area) and surface coverage were evaluated as a
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function of time, which for the first time provided direct experimental evidence for the
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transition of various fouling mechanisms. Axial stripes were observed in the grayscale
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plots showing the deposit distribution in the scanned area; this interesting observation
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was in agreement with the instability analysis that correlated the polarized particle groups
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with the small disturbances in the boundary layer. This work confirms that the OCT-
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based characterization is able to provide deep insights into membrane fouling processes
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and offers a powerful tool for exploring membrane processes with enhanced
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performance.
This work explored optical coherence tomography (OCT) to
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1. INTRODUCTION Membrane technology is playing an important role in dealing with environmental
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issues.1-5
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membrane fouling, which usually results in the growth of a foulant layer on the
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membrane surface;2, 6-8 extra energy is therefore consumed to overcome the hydraulic
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resistance increased by the fouling. Advancing techniques for mitigating membrane
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fouling entails the knowledge that precisely describes the evolution of membrane fouling,
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that is, the mechanisms accounting for the variation in fouling behavior during a
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membrane process and the effect of parameters that control them, such as crossflow
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velocity, flux and pressure.
The efficiency of a membrane process could be significantly limited by
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The conventional approach for fouling characterization is to measure the variation in
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permeation flux during a constant pressure membrane process9-11 or to measure the
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transmembrane pressure (TMP) as a function of time while maintaining the permeation
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flux at a certain value;12, 13 the degree of fouling is then described using a flux-decline or
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TMP-increment curve. Although it is a relatively simple way to measuring the variation
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in permeation flux or TMP, the information obtained in this way for interpreting the
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fouling is limited. It is even possible to misinterpret the data since the process could be
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significantly affected by some coupled effects, such as concentration polarization (CP).12,
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other advanced microscopy techniques (e.g., atomic force microscopy17, 18) are usually
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employed to autopsy the cake layer formed at a certain time. Nevertheless, it is difficult
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for autopsy characterization to capture the dynamic effects resulting from the complex
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interplay between the foulant particles and fluid flow.
When external fouling is dominant, scanning electron microscopy (SEM)16, 17 or
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A variety of novel techniques have been explored for in situ characterization of fouling
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during membrane processes and most of these techniques are based on either non-optical
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or optical signal detection.19 Typical examples of fouling monitoring techniques via non-
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optical signal detection are ultrasonic time domain reflectometry (UTDR)16,
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electrical impedance spectroscopy (EIS),21-24 which detect the growth of a foulant layer
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using sound waves and alternating electrical currents, respectively. Optical microscopes
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have been extensively employed to observe fouling processes and various modifications
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have been made to enhance the sensitivity and resolution. For example, Li et al.25
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proposed the direct observation through the membrane (DOTM) technique that focuses
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the objective lens on the fluid-membrane interface during the filtration process, though its
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application is limited to membranes that are transparent when wet. As a conventional
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optical technique, microscopy is able to instantaneously generate images that are readily
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used to analyze the surface coverage as a function of time.26, 27 However, microscopy-
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based fouling characterization has difficulty in generating the depth profiles of the cake
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layer, except for some special cases (e.g., lateral view is achievable when imaging the
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foulant deposition on the outer surface of hollow fibers28).
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and
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Of particular interest in analyzing the evolution of a foulant layer is the variation in
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local thickness, which can be measured in situ using advanced optical techniques. Gao et
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al. demonstrated the potential of visualizing the velocity field29 and the growth of a
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fouling layer30 via optical coherence tomography (OCT), which has the ability to obtain
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depth profiles using low coherence interference (LCI).31, 32 Compared with confocal laser
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scanning microscopy (CLSM),17,
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sectioning by precisely controlling the depth of focus, OCT is able to scan the sample at a
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which also has the ability to perform optical
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relatively high rate while achieving a microscale resolution.34
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advantages, OCT is getting more attention in the field of membrane technology and
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several studies have recently investigated the growth of a biofilm in a membrane cell via
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OCT.35-37
Owing to these
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Although quantitative analysis based on OCT imaging has been developed to
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investigate membrane fouling in recent studies,30, 37 the precision of resolving the cake
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morphology was limited by the adopted image processing algorithms and therefore the
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analysis was restricted to a rough estimation of the deposit amount. The objective of this
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work was to quantitatively investigate the evolution of membrane fouling by particulate
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foulants using a novel OCT-based characterization method that was able to precisely
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detect the distribution of the foulants in close proximity to the membrane surface. Both
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silica nanoparticles and bentonite particles were employed as the model foulants for the
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ultrafiltration (UF) tests; the cake-layer formation was recorded by continuously
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performing 3D OCT scans to evaluate the specific deposit (volume/membrane surface
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area) and surface coverage. The proposed data-analysis method allowed studying the
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distribution of the foulants on a micron scale and capturing the dynamic effects that
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underscored the important role of boundary-layer instability during the cake-layer
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buildup.
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2. EXPERIMENTAL PROCEDURES
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2.1 3D OCT imaging
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Compared with conventional optical imaging, OCT is able to reconstruct depth profiles
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of a semi-transparent sample in terms of the reflectivity variation in the sample
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structure.34 A Fourier-domain OCT system (GANYMEDE-SP5, Thorlabs, USA) was
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employed in the current study to achieve relatively high scan rates and its basic principle
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is schematically displayed in Figure 1. The probe beam is emitted from a broadband light
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source and split into the sample and reference arms. The light beam backscattered from
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the sample is then recombined with the one reflected from a fixed reference mirror; the
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resulting light beam is then resolved into its frequency components using a diffraction
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grating.
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generate the intensity spectrum that is Fourier-transformed to yield a complex signal.
The spectrometer measures the intensity of each frequency component to
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In terms of scattering theory,38 the magnitude of the complex signal is actually the
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interferogram whose envelope (i.e., the outline of the high frequency fluctuations)
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characterizes the reflectivity variation in the depth direction.
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intensity as a function of optical distance was used to reconstruct the depth profile at a
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certain point in the sample (A-scan). The depth resolution (i.e., the coherence length)
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yielded by the adopted light source (central wavelength 905 nm with a bandwidth of
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~200 nm) was ~2 µm in water, whereas the lateral resolution determined by the scan lens
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(LSM03-BB) had a relatively large value of ~4 µm. As depicted in the right panel of
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Figure 1, 2D and 3D imaging were achieved by performing a series of A-scans along a
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single line and a set of parallel lines, respectively. Moreover, the phase shift of the
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complex signal was used to distinguish the moving particles from the stagnant cake layer,
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i.e., the Doppler OCT imaging.34
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Membrane fouling experiments were implemented using the constant pressure mode.
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In particular, the TMP was maintained at a constant value of ~1.3 bar, though filtration
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tests with higher pressures can be challenged by enhancing the pressure tolerance of the
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observation cell.
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Corporation, USA) with an effective area of ~60 cm2 was positioned in a modified
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membrane cell (182 mm×90 mm×20 mm) whose upper plate accommodated an optical
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window (20 mm×20 mm×2 mm quartz plate) for the OCT scans. A schematic of this
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modified membrane cell is shown in Figure 1 elucidating how the OCT-based
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characterization was incorporated with a membrane fouling process.
The ultrafiltration membrane (OmegaTM UF PES, 10 kDa, Pall
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The foulants employed in the current study were silica nanoparticles (Sigma-Aldrich,
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product No. 637246, USA) and bentonite microparticles (Sigma-Aldrich, product No.
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285234, USA); their size range and particle morphology were measured using Field
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Emission SEM (JSM-7600F, JEOL Ltd., Japan).
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particles in the feed solution (deionized water) was 0.1 g/L for both foulants. 5 L feed
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solution was freshly prepared for each fouling experiment such that the change in the
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foulant concentration was negligible during the fouling. The feed solution was circulated
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through the upper channel (112 mm×53.5 mm×2 mm) using a gear pump (Cole Parmer,
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model No. 75211-35, USA); the crossflow rate was controlled at a constant value of ~140
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mL/min yielding a bulk velocity of ~6 cm/s (the Reynolds number was ~230 in terms of
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the hydraulic diameter of the channel).
The concentration of the foulant
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The duration of each fouling experiment was 180 min and the permeation flux was
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continuously measured using a digital balance (Mettler Toledo, ML4002E, USA). The
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3D OCT scans were performed within a region (2 mm×2 mm) approximately centered at 8 ACS Paragon Plus Environment
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the membrane surface. The scan range in the depth direction was ~1 mm that was
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covered by 700 data points. Although each 3D scan (consisting of 500×500 A-scans)
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could be done in ~10 s using the maximum A-scan rate (30 kHz), extra time (~8 s) was
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needed to transfer the data from the video memory to the hard disk. Therefore, the 3D
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scan rate was set at 2 scans per minute (spm) for the initial fouling and then decreased to
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1 spm and 0.5 spm after 5 min and 90 min, respectively. The Doppler imaging was
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performed at the end of each fouling process by recording the variations in both structural
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intensity and phase angle shift at sampling rate of ~4 fps. All the fouling experiments
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were repeated at least 3 times to ensure a reliable analysis.
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2.3 Data analysis methods
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Each 3D OCT scan generated a dataset containing a 500×500×700 matrix of OCT
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intensities. Every entry in this matrix was referred to as a voxel when converted into a
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grayscale index (0 ~ 1) for 3D image rendering; each of these voxels corresponded to a 4
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µm×4 µm×1.5 µm space that could be occupied by the foulant particles, membrane, or
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liquid. In this study the foulant voxels were defined as the voxels corresponding to the
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regions where the foulant particles were significantly concentrated or formed a stagnant
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layer. The data analysis was then aimed at identifying the foulant voxels that were
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connected with the voxels representing the membrane surface. It was expected that these
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foulant voxels had the most valuable information characterizing the fouling, which were
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therefore referred to as the fouling voxels.
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In prior studies30,
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the pixels/voxels identification was implemented simply using
background subtraction.39 That is, all datasets were digitally compared with the one
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sampled at time 0 and it was assumed that the pixels/voxels showing a significant
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intensity change should correspond to the foulant layer. However, this approach may fail
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to deal with the datasets describing the initial fouling that is a critical period of the cake
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formation. The major concern is that the membrane surface could be shifting due to
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several factors (e.g., membrane compaction and flow fluctuations), whereas the
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background subtraction assumes that the background (i.e., the membrane and fluid) never
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changes. The errors caused by the unstable membrane surface cannot be ignored when
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only a small amount of foulants is conveyed onto the membrane surface during the initial
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fouling.
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In order to overcome the difficulty in analyzing the initial fouling, a novel strategy was
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proposed in this study. The key idea was to identify the membrane surface voxels from
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the dataset sampled at time 0 and to track the surface shifting in the subsequent datasets.
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Knowing the precise coordinates of the membrane surface, one can readily determine the
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foulant voxels in a way independent of the initial dataset; that is, an intensity-based
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threshold39 for the foulant voxels can be chosen merely in terms of the background noise
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in the liquid regions since the membrane voxels (i.e., the voxels beneath the membrane
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surface) have been ruled out. In this work the coordinates of the membrane surface in the
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OCT intensity matrix were estimated by thresholding the corresponding matrix of
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intensity gradients and labeling the connected voxels in the resulting binary matrix.39
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The surface shifting was determined by comparing the intensity matrix with the one
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sampled at an earlier time and the shifted coordinates were then calculated in terms of the
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statistical similarity (i.e., shifting the coordinates to a position that minimizes the cross-
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correlation coefficient40). A foulant voxel was identified as a fouling voxel if it was 10 ACS Paragon Plus Environment
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connected with at least one foulant voxel directly touching the membrane surface. All
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these algorithms were programmed using MATLAB.
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3. RESULTS AND DISCUSSION
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3.1 Visualizing a cake layer via 3D OCT imaging
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The intensity of a foulant voxel is mainly determined by the relative refractive index
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(RI) of the foulant compared with the liquid. When the particle sizes are much smaller
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than the diameter of the light beam, it is reasonable to assume that the OCT intensity
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should be approximately proportional to the concentration of the particles.
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assumption is the key to understanding the OCT images obtained from the fouling
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experiments with the silica nanoparticles whose sizes were ~10 nm as shown by the SEM
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(in Supporting Information Figure S-1a) and much smaller than the light-beam size (~4
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µm).
This
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Although single silica nanoparticle could not be visualized by the OCT, significant
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signals were detected within the regions where the nanoparticles were concentrated or
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formed a cake. Using the algorithms described in Section 2.3, the fouling voxels were
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identified in each OCT dataset and used to describe the fouling process in a 3D fashion.
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The upper panel of Figure 2a shows a 3D rendering that was generated from the
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identified fouling voxels corresponding to the sample at t=180 min. It is evident that the
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rejected silica nanoparticles formed a cake layer with a number of tapered protuberances
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or peaks. The lower panel of Figure 2a displays a cross section of the cake layer, which
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clearly indicates that the calculated surface coordinates (denoted in red) consistently
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matches the interface between the membrane and cake layer, while the foulant cake (the
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upper boundary is denoted in green) is precisely separated from the background.
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Compared with the cake layer formed by the silica nanoparticles, whose roughness was
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~37.5 µm in terms of the roughness parameter Ra,41 the cake layer formed by the
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bentonite particles had a relatively smooth surface (Ra=~12.3 µm) as given by the 3D
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rendering (upper panel) and cross section (lower panel) in Figure 2b, which were
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generated by the OCT dataset sampled at t=180 min.
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morphology could be primarily attributed to the difference in the particle shape. Unlike
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the spherical silica nanoparticles, the bentonite particles are platelets whose larger
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dimensions (~10 µm) could be a hundred times greater than their thicknesses (see the
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SEM in Supporting Information Figure S-1b). It is interesting to note that some striped
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patterns appeared on the surface of the bentonite cake and the orientation of these stripes
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was coincident with the bulk flow direction (denoted by the blue arrow). It will be clear
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in the later discussion that these stripes could result from particle groups moving on the
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cake surface.
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3.2 Quantifying the evolution of membrane fouling
The changes in the cake
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The classical fouling models account for the external fouling during a membrane
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process in terms of surface blockage42 and cake filtration.43, 44 These fouling mechanisms
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were rarely validated by direct observations in prior studies. The data analysis method
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proposed in this study makes it possible to apply the 3D OCT imaging to quantify the
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evolution of a fouling process. That is, useful information on the fouling process can be
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obtained by analyzing the variation in the digitalized cake layer.
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In this study an important quantity employed to characterize the progress of the fouling
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process is the specific deposit, which is defined as the volume of the foulants deposited
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over a unit membrane area and has the units of [mm3/mm2]. When a cake layer is
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digitalized using the proposed method, the specific deposit can be approximately
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evaluated by,
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Specific Deposit ≈
Number of Fouling Voxels ⋅ Voxel Height . Number of Membrane Surface Voxels
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In addition, the surface coverage, i.e., the fraction of membrane surface covered by
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foulants, is also of particular interest in analyzing the initial fouling. In terms of the
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digitalized cake layer, this quantity can be approximately evaluated by,
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Surface Coverage ≈
Number of Foulant Voxels Directly Connected with the Surface . Number of Membrane Surface Voxels
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A series of OCT datasets was sampled during the 180-minute fouling; the specific deposit
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and surface coverage were then calculated for each dataset. The calculated results are
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plotted as a function of time and compared with the measured flux decline curves in
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Figure 3.
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As a conventional approach to demonstrating a fouling process, the plots of permeation
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flux versus time in Figure 3a clearly indicate that more severe flux decline resulted from
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the fouling by the bentonite particles. However, it is difficult to infer the underlying
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models44-46 can be used to obtain a best fit to the flux decline data, which offers some
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insight into the mechanisms dominating different fouling periods, direct experimental
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evidence is not available to support the modeling.
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Figures 3b and 3c illustrate the temporal variations in the specific deposit and surface
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coverage, respectively.
These OCT characterization results clearly demonstrate a
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transition of the fouling mechanisms; that is, both the fouling processes were dominated
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by surface blockage during the initial fouling (~10 min), while cake growth accounted for
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the long term fouling behavior. To the best of our knowledge, this is the first time that
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direct experimental evidence has been provided to validate the fouling-mechanism
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transition predicted by various mathematical models.44, 46 The flux decline curves shown
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in Figure 3a indicate that the fouling mechanism transition should correspond to the
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initial period in which the fouling resulted in a relatively high decline rate, but the flux
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decline curves themselves provide little information about the transition.
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Comparing the two foulants, a relatively rapid surface blockage was observed for the
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bentonite particles where most of the membrane surface (~95%) was covered by the
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bentonite particles after ~20 min, while it took ~40 min for the silica nanoparticles to
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achieve the same coverage. It should be noted that the bentonite particles had a flake-like
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shape whose larger dimensions were ~10 µm, whereas the silica nanoparticles were
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spheres with a diameter of ~10 nm. Therefore, it is reasonable to infer that a larger area
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could be covered by the bentonite particles than the silica nanoparticles when the same
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amount of foulants was conveyed onto the membrane surface, thereby giving rise to a
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higher blockage rate. However, what needs to be emphasized here is that, owing to the
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surface coverage measured by the OCT-based method could be less than the true values.
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For example, an extremely thin deposition layer (e.g., a monolayer of the silica particles)
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may result in a very small change in the signal intensity that could be covered by the
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background noise.
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As claimed in prior studies,47 the competition between the particle polarization and
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depolarization mechanisms will limit the growth of the cake layer formed during a
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constant TMP process. This prediction is directly validated by the OCT results for the
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bentonite particles, whose specific deposit attained a maximum at t=~60 min as shown in
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Figure 3b. However, this maximum was followed by a dramatic decrease before it
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reached a relatively stable value. This decrease in the specific deposit could be caused by
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the increase in the cross-flow velocity since the cake layer (~0.09 mm) markedly reduced
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the effective height of the fluid channel (~1 mm). Another possible reason could be cake
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compaction considering the loose packing of the bentonite platelets.
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It is interesting to note that the corresponding permeation flux continued to decrease
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even when the specific deposit had become effectively constant. This is possible as the
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voids in the cake layer could be gradually infiltrated and clogged by small particles that
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cannot be detected by the OCT. Similar trends were observed by Baker et al.48 during
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crossflow filtration of TiO2 suspensions.
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measured directly by cake removal and analysis. Although cake load tended to plateau,
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the resistance continued to grow and this coincided with a measured increase in the fine
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content of the cake. The trend for the silica nanoparticles in our study was different as
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the specific deposit continued (toward a far asymptote) (Figure 3b) and flux slowly
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declined (Figure 3a). These trends are consistent with our other studies using colloidal
In that study cake load (mass/area) was
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SiO2 for UF at constant flux, where deposit height increased toward an asymptote and
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resistance steadily increased; in this case the increase was attributed to slow cake layer
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aggregation due to colloid instability.49
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3.3 Analyzing the fouling behavior on a micron scale
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While the temporal variations in the specific deposit and surface coverage characterize
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the fouling process in a statistical sense, the variation in the foulant distribution can be
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readily analyzed on a micron scale by converting the 3D intensity matrices into a series
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of grayscale 2D images. The grayscale values range from 0 to 1 and each of them
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correspond to the cake thickness at a spot (~4 µm×4 µm), which was scaled by the
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maximum of the cake thicknesses throughout the 180-min fouling.
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Approximately 140 datasets were sampled (at varied sampling rates) in each fouling
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experiment. All these datasets were converted into a series of grayscale images that was
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used to generate a video clip showing the variation in the foulant distribution in a
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continuous fashion.
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representative datasets ( t=1, 2, 5, 10, 20, 30, 60, 120, and 180 min) are used to elucidate
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the fouling evolution, while the corresponding video clips can be found in Supporting
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Information Figures S-2 and S-3.
Owing to format limitations, image sequences composed of 9
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Figure 4 displays the image sequence for the fouling by the silica nanoparticles. It is
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evident that a number of particle groups were randomly deposited on the membrane
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surface during the very initial fouling (t=0 to 2 min) and the number and size of these
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particle groups were progressively increased (t=2 to 10 min). As a result, the covered
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20 min). Although the deposition tended to balance the cake thicknesses at different
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locations, some protuberances consistently appeared on the cake surface during the long
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term fouling (t=30 to 180 min) as indicated by the spots that are markedly darker than the
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neighboring regions. Another interesting observation is the dark stripes appearing in
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Figures 4h and 4i, though they are hardly discernible in the corresponding 3D rendering
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(Figure 2a).
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The image sequence in Figure 5 depicts the fouling by the bentonite particles.
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Although these grayscale images indicate a similar transition from surface blockage to
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cake growth, the stripes were much more significant and almost dominated the entire
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fouling process. A similar striping phenomenon was reported about 30 years ago in a
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study by Jonsson50 that investigated concentration polarization during UF. This work
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demonstrated pictures taken by a traditional camera that showed dark stripes on the white
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membrane surface where the concentration boundary layer was formed by iron dextran,
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which is a red colored macromolecular complex. In comparison, imaging the striping
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phenomenon via OCT is to a great extent independent of the colors of the particles and
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membrane. Therefore, the stripes can be clearly observed in the grayscale images even
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when most of the membrane surface has been covered by a thick cake layer, which could
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significantly reduce the contrast between the stripes and background in an image taken by
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a traditional camera.
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In 1991, Larsen51 proposed a mathematical model that accounts for the striping
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phenomenon in terms of the linear theory of hydrodynamic stability.
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indicates that the stripes could be dissipative structures arising from small disturbances in
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corresponding to different spatial wavenumbers, Larsen established a stability criterion
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indicating that only the normal mode with a specific spatial wavenumber kc can be
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sustained for a particular hydrodynamic environment, i.e., the neutral stability. The
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dimensionless spatial wavenumber γ≡kc·h was mathematically correlated with a modified
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permeate Reynolds number that was defined as Re'≡(JV·h/υ)(h/δ0), where JV , h, υ, and δ0
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are the permeate flux, channel height, solution kinematic viscosity, and the thickness of
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the concentration boundary layer, respectively.
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The γ-Re' correlation derived by Larsen can be used to estimate the spatial
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wavenumber of the stripes when assuming a quasi-steady state. The thickness of the
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concentration boundary layer can be estimated using the equation that correlates the
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Sherwood number with the Reynolds and Schmidt numbers.52 For the bentonite particles
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whose sizes are approximately 10 µm, the estimated thickness of the concentration
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boundary layer is approximately 3 µm and thereby gives rise to Re'≈14. In terms of the
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γ-Re' correlation, the estimated spacing between the stripes is ~80 µm when achieving
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the neutral stability, which is close to that observed in Figure 5 (the spacing typically
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