Ultrasound assisted extraction and nanofiltration of phenolic compounds from artichoke solid wastes

Ultrasound assisted extraction and nanofiltration of phenolic compounds from artichoke solid wastes

Accepted Manuscript Ultrasound assisted extraction and nanofiltration of phenolic compounds from artichoke solid wastes Renata S. Rabelo, Mariana T.C...

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Accepted Manuscript Ultrasound assisted extraction and nanofiltration of phenolic compounds from artichoke solid wastes Renata S. Rabelo, Mariana T.C. Machado, Julian Martínez, Miriam D. Hubinger PII:

S0260-8774(16)30018-8

DOI:

10.1016/j.jfoodeng.2016.01.018

Reference:

JFOE 8456

To appear in:

Journal of Food Engineering

Received Date: 9 September 2015 Revised Date:

15 December 2015

Accepted Date: 19 January 2016

Please cite this article as: Rabelo, R.S., Machado, M.T.C., Martínez, J., Hubinger, M.D., Ultrasound assisted extraction and nanofiltration of phenolic compounds from artichoke solid wastes, Journal of Food Engineering (2016), doi: 10.1016/j.jfoodeng.2016.01.018. This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.

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ULTRASOUND ASSISTED EXTRACTION AND NANOFILTRATION OF PHENOLIC

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COMPOUNDS FROM ARTICHOKE SOLID WASTES

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Renata S. Rabelo*, Mariana T.C. Machado, Julian Martínez and Miriam D. Hubinger

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Department of Food Engineering, School of Food Engineering, University of Campinas

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(UNICAMP), 80, Monteiro Lobato Street, P.O. Box 6121, ZIP 13083-862, Campinas/SP, Brazil.

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*

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Telephone number: +55(19)3521-4036

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Fax number: +55(19)3521-4027

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E-mail address: [email protected]

Corresponding author.

ACCEPTED MANUSCRIPT ABSTRACT

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Artichoke wastes from the canning industry are rich in phenolic compounds, which can be used as

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food additives. This his study aims to evaluate the potential of sequential process based on the use

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of ultrasound extraction and membrane technology for phenolic recovery. In the extraction step,

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solvent composition and ultrasound power were evaluated to understand their impact on phenolic

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content and antioxidant capacity. The highest yields were observed for extracts with higher ethanol

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content (50 and 75%). Therefore, these extracts were selected for concentration by nanofiltration in

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a tangential module, using differents membranes (NF270, DK and DL). The flux decrease and the

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phenolic retention were evaluated. Hermia’s models and membrane surface characterization were

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used to investigate the fouling. The highest flux was observed for extracts with 50% of ethanol, and

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a retention higher than 95% of chlorogenic acid was observed in this process. DK membrane

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showed to be less susceptible to fouling, although the cake formation occurred in all evaluated

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membranes. The most suitable process condition to obtain the highest phenolic yields was

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extraction with 50% ethanol and an ultrasound power of 240 W and extracts nanofiltration using

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DK membrane.

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Keywords: Cynara scolymus, phenolic compounds, ultrasound, nanofiltration, fouling mechanism.

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1. INTRODUCTION

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The artichoke (Cynara scolymus L.) is a perennial herb belonging to the family Asteraceae.

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This plant is native from subtropical regions and its inflorescences are consumed widely in

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Mediterranean countries (PANDINO et al., 2012; PISTÓN et al., 2014).

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Besides being a good source of inulin, fiber and minerals, artichoke is a rich source of

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phenolic compounds (RUIZ-CANO et al., 2014). These compounds have been associated with

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scavenging capacities of artichoke extracts against ROS (reactive oxygen species) and RNS

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(reactive nitrogen species) (PISTÓN et al., 2014), and anti-obesity effects (CHO et al., 2010), that

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are some of the reasons for the high popularity of artichoke products around the world. A recent

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paper showed that extracts obtained from artichoke waste have a remarkable delaying effect against

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canola oil oxidation (CLAUS et al., 2015).

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ACCEPTED MANUSCRIPT The artichoke processing main residues are the inner and outer bracts. The phenolic

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composition of this waste is similar to the edible parts of the plant (FRATIANNI et al., 2007;

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LOMBARDO et al., 2012; PANDINO et al., 2011; SIHEM et al., 2015), and according to Zuorro

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et al. (2015) it is higher than that those found on grape pomace (LOULI et al., 2004), carrot peels

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(CHANTARO et al., 2008) and spent coffee grounds (RANIC et al., 2014).

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The canning industry discards around 70% of the harvested inflorescence (LÓPEZ-

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MOLINA et al., 2005). The world production of this vegetable grows an average of 6% annually,

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and in 2012 was around 1.6 million tonnes (FAOSTAT, 2012); the amount of waste currently

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generated exceeds one million tons. Therefore, it is important to search for alternatives to recover

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phenolic compounds from artichoke wastes.

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Among the extraction processes, the one assisted by ultrasound emerged as being the

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simplest and the most inexpensive technique; it allows the use of various solvents, low

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temperatures, does not have restrictions on the polarity of the compound of interest nor to the

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moisture of the matrix; it

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(GHITESCU et al., 2015; RASTOGI, 2011). The efficiency of the ultrasound, relative to

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conventional extraction methods, is attributed to the cavitational effect which facilitates the release

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of extractable compounds and enhances the mass transport by diffusion or by disrupting the plant

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cell walls (CHEMAT et al., 2011; ESCLAPEZ et al., 2011; GAETE-GARRETÓN et al., 2011;

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LUQUE DE CASTRO et al., 2011). But like most conventional methods of extraction, one of the

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disadvantages of this method is that does not obtain solvent-free extracts, and a concentration step

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is required after extraction.

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has also good reproducibility and a high potential for scale-up

To concentrate phenolics, the use of nanofiltration membranes shows higher fluxes than the

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reverse osmosis and higher retentions than ultrafiltration (CONIDI et al., 2012), since artichoke

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phenolic acids have a molar mass between 300 and 600 g/mol (ABU-REIDAH et al., 2013). This

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technology allows concentration at mild temperatures, not involving a phase change, preserves the

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biological activity of the compounds and enables the solvent recycling by capturing the permeate,

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which can be reused in further extractions enabling a sustainable process of extraction and

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concentration. The use of different fractions of GRAS (Generally Regarded as Safe) solvents such as

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water and ethanol in the extraction and concentration processes allow the application of the final

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product in foods, drugs and cosmetics, contributes to selective extraction of bioactive compounds

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(GHITESCU et al., 2015) and, due to the membrane-solvent interactions, significantly change the

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permeation features of the membranes (FIRMAN et al., 2013; LABANDA et al., 2013). Thus, the

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importance to investigate different ratio of these solvents in sequential processes.

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The concentration of extracts obtained from different ratios of solvent can lead to different

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interactions between the extract compounds. In hydroalcoholic systems these interactions have not

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yet been deeply analysed, but they can influence membrane permeation. The flux decrease caused

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by concentration polarization and membrane fouling is a major limitation for the industrial

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application of membrane technology. In previous investigations (GRENIER et al., 2008; HWANG

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et al., 2007; NG et al., 2014), a number of mathematical models were utilized to explain fouling

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mechanisms. When particle size present in extract is smaller than or comparable to the membrane

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pore size, the membrane blocking model is commonly used to explain how and when the particle

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blocking occurs (HWANG AND LIAO, 2012).

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mechanisms (complete blocking, intermediate blocking, standard blocking, and cake formation)

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were proposed by Hermia (1982) to characterize the membrane fouling. These models can be a

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useful tool for selecting membranes less susceptible to fouling, especially when it comes to the

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filtration of vegetable hydroalcoholic extracts, due to the sample complexity.

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Based on this model, four different fouling

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The aim of this work was to (1) evaluate the effect of solvent composition and ultrasound

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power in the extraction of phenolic compounds and (2) to concentrate the best extracts by three

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different nanofiltration membranes. Flux decrease, coefficient retention and membrane

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characterization were carried out. At last, we select the most suitable sequential system of

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extraction and concentration of phenolic compounds from artichoke solid waste.

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2. METHODS 2.1. Extraction process Artichoke wastes (external and internal bracts) were donated by Bonsucesso factory (São

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Roque/SP, Brazil). This material was stored in a freezing chamber at -18 °C and thawed according

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to the quantity required for each extraction. All trials were carried out with the same lot of raw

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material.

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Initially, the wastes were crushed and placed in a jacketed reactor (6.5 cm of internal

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diameter and maximum volume of 250 mL). For extraction, an ultrasonic cell disruptor at 20 kHz,

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equipped with a titanium alloy 13 mm diameter flat tip probe (UNIQUE, São Paulo, Brazil) was

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fitted into the reactors. The w/v ratio was fixed at 1:10 (g/mL). The ultrasonic power evaluated was

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0, 240, 480 and 720 W. The solvent compositions studied were 0, 25, 50 and 75% ethanol in water

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(v/v). After 60 minutes of extraction, the extracts were filtered with filter paper, and characterized.

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A total of 16 experiments were carried out, each done in duplicate. The experimental conditions

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that showed the best yields of phenolic compounds were selected, and kinetic studies (5, 10, 20, 30,

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40 50 and 60 min) were performed in order to reduce extraction time. Finally, a new extraction

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time was fixed, and the experimental conditions selected were used as feed in the extract

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concentration step. All extractions were performed in batches of 100 mL at 25 ± 1 °C.

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2.2. Concentration process

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The tests were performed in a tangential filtration system (INVICT, MENTEST, Brazil)

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using flat sheet membranes (NF270, DK and DL), presented in Table 1. This system had 2 L

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capacity, an effective permeation area of 7.7x10-3 m2, and the maximum liquid recirculation flow

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rate was 60 L/h.

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A new membrane was used in each test to assure the same initial conditions. Conditioning

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of the membranes consisted of their immersion during 12 hours in solutions with the same

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alcoholic concentrations of the extracts. During concentration, the system pressure was maintained

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at 20 bar and temperature was 25 °C. The initial feed volume was 900 mL and the concentration

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process was carried out to a volume reduction factor of 2.5.

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2.2.1. Evaluated parameters The volumetric flux of permeate (Jv) was calculated by Equation 1, and the average

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permeate flux (Js) was obtained from the straight line inclination described by the function  = f

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( × ), according to Tylkowski et al. (2010).

Jv =

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mp

ρ .t . A p

[1]

Where Jv is the volumetric flux of the permeate (L/m²h); mp is the permeate collected mass (g); ρ is

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the density (g/L), t is the time (h), and Ap is the membrane permeation area (m²).

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The flux decrease (Df) was calculated according to Equation 2.

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(J i − J s )

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The retention coefficient (R) was calculated by Equation 3:

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[3]

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CP CA

Where Cp and CA are the concentration of solute in the permeate and in feed, respectively. The volumetric concentration factor (VCF) was determined by Equation 4, where Vi and Vf are the initial and the final feed volume (L), respectively.

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[2]

 =





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2.2.2. Fouling mechanisms

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Where Ji is the initial and Js is the average permeate flux (L/m²h).

R(%) = 1 − 143

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The models proposed by Hermia (1982) were used to identify the predominant fouling

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mechanism in the evaluated processes; these models incorporate four mechanisms of fouling (cake

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formation, partial and complete blocking of the pores, and the absorption of solute particles in the

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inner walls of the pores), that are described in Table 2 according to NG et al. (2014).

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2.2.3. Surface membranes characterization

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All the membranes were maintained for 24 hours in a desiccator before characterization.

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Unconditioned (or virgin membranes), conditioned and fouled membranes were characterized

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according to the purpose of the analysis. 6

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a) Atomic force microscopy (AFM) The analysis were performed according to Carvalho et al. (2011). The membranes were

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analysed in an atomic force microscopy (Park Scientific Instruments, Alto Probe CP, Korea).

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Images with a length of 1.0, 3.0, 5.0 and 10.0 µm in the same sample area, and three different

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regions of each membrane were analysed. Quantitative analysis of surface roughness was

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performed using the software Gwyddion 2.39 (Czech Metrology Institute, Czech Republic).

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b) Infrared Fourier transformed spectroscopy

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The attenuated total reflectance (ATR) was used to investigate the functional groups and

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molecular structures on the membranes surfaces, before and after the filtration process, in an

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infrared spectrometer (JASCO Model FT/IR-6100, Japan). For data acquisition, a zinc selenide

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crystal (ZnSe) was used, and the readings were performed with 4 cm-1 resolution.

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c) Contact angle

The sessile drop method was applied on static contact mode for determining the contact

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angle (θ) in a tensiometer (Teclis, Tracker, France). The initial drop volume of water deposited on

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each sample was 5 µL, and all tests were performed at 25 °C and at 53% of relative moisture. The

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results were obtained after 10 seconds of contact between the droplet and the membrane surface,

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and the results were presented as average ± standard deviation from five samples of each

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membrane.

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2.3. Characterization of the extracts

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a) Total phenolic content (TPC)

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The TPC was determined according to Singleton et al. (1999). A standard curve with gallic

acid was plotted to quantify the concentration. Assays were performed in triplicate. b) Antioxidant capacity by DPPH (2,2-diphenyl-1-picryl-hidrazil)

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The antioxidant capacity was determined by inhibition percentage the DPPH using the

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method described by Choi et al. (2002). To determine the reading time, a previous evaluation was

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performed, and a reaction time of 60 min was found. The result was expressed as mg Trolox/g of

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dry matter, and all assays were performed in triplicate.

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c) Antioxidant capacity by FRAP (Ferric reducing antioxidant power)

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The antioxidant capacity was evaluated using FRAP by the method described by Vieira et

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al. (2013). For quantification, a Trolox standard curve was plotted. All assays were performed in

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triplicate. d) Chlorogenic acid content

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The extracts were analysed according to Chisté and Mercadante (2012). The analysis was

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performed on a Dionex Chromatography (LC Standard Ultimate 3000, USA), equipped with a

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diode array detector (Dionex, DAD–3000, USA). The wavelength of 324 nm was monitored, and

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the separation was performed on a reverse phase Poroshel 120 EC-C18 column (100 mm x 4.6 mm

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and 2.7 µm) at 29 °C. All analysis were made in duplicate. e) Particle size distribution

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The size and particle size distribution of the feed and concentrate were determined by laser

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diffraction equipment Mastersizer 2000 (Malvern Instruments, UK), and the diameter was

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determined based on the average diameter of a sphere of the same volume (Brouckere Diameter –

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D4.3). In the permeate, the particle size distribution was determined in Zetasizer Nano-ZS (Malvern

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Instruments, USA).

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f)

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Proximal composition and physico-chemical properties The proximal composition and some physico-chemical properties of the selected extracts

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for the nanofiltration step were determined as follows: moisture (AOAC, 2002; Method n° 925.09),

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ash (AOAC, 2002; Method n° 923.03), protein (AOAC 2002; Method n° 920.152), lipids (BLIGH

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and DYER, 1959), dietary fiber (by difference), carbohydrates (HODGE and HOFREITER, 1962),

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specific mass (Picnometry), apparent viscosity (Flow curves using rheometer AR 1500ex TA

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Instruments, England) and pH using a phmeter (Kasvi, k39-2014B, Brazil).

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2.4. Results analysis

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The normality of the variables was confirmed by the Shapiro-Wilk test and the

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homogeneity of variance by the Levene test. Two-way analysis of variance (ANOVA) was used to

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indicate significant differences among the evaluated conditions in the extraction. The correlations

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ACCEPTED MANUSCRIPT between antioxidant capacity and phenolic contents were assessed using Pearson’s correlation

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coefficients. Tukey test was used to compare the means obtained in the membrane concentration

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processes. All analysis were performed using the PROC GLM (procedure general linear model)

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option of SAS 9.4 (SAS Institute Inc, USA). For evaluation of fouling mechanisms, the

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mathematical modeling was performed with Statistica 8.0 (Statsoft, USA).

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3. RESULTS AND DISCUSSION

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3.1. Extraction process

The effects of extraction variables on phenolic compounds, antioxidant capacity and

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chlorogenic acid are shown in Figure 1.

The highest extraction yields were obtained using 50 and 75% EtOH. Ethanol reduces the

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dielectric constant of the solvent, thus enhancing the solubility and diffusion of phenolic

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compounds (GARCIA-CASTELLO et al., 2015).

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The analysis of variance (R2 ≥0.98) confirmed that this variable was the most significant

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(p<0.001) in the extraction process. The use of ultrasound was also significant for the extraction

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efficiency (p<0.05), but ultrasound power higher than 240 W did not contribute to increasing

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phenolic yields (p<0.05). This condition was used to continue this study in the nanofiltration step.

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The interaction between the solvent composition and ultrasound power had no significant

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effect on the phenolic compound content, whereas for chlorogenic acid content, DPPH and FRAP

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had. All responses evaluated had high correlation by Pearson test, where the highest correlation

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was observed for chlorogenic acid and DPPH (r = 0.99; p<0.001), and the lowest for TPC and

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DPPH (r = 0.94; p<0.001). This result may indicate that most of the antioxidant capacity of

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artichoke extracts is related to the phenolic acid content present.

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The yield of chlorogenic acid ranged from 0.02 to 16.47 mg of chlorogenic acid/g dry

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matter (Figure 1D). For Pandino et al. (2011) and Sihem et al. (2015), the chlorogenic acid content

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determined in artichoke bracts were 4.16 and 3.18 mg of chlorogenic acid/g of dry matter,

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respectively. Lombardo et al. (2010) evaluated the influence of genotype and harvest time in

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artichoke bracts and the levels of this compound ranged from 0.02 to 14.84 mg of chlorogenic

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acid/g dry matter. These studies used conventional extraction methods, and the extractions were

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performed with 70, 95 and 60% of methanol in water (v/v), respectively. We can conclude that the use of EtOH for phenolics extraction using ultrasound is an

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efficient alternative. The extracts with 50 and 75% EtOH were better than 0 and 25% EtOH to

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recover phenolic compounds. Kinetic curves (Figure 2) were carried out for these extracts and 10

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min of sonication were sufficient to obtain a good yield of chlorogenic acid. This time was much

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lower than the time usually required for extractions by conventional extraction methods. Therefore,

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these extracts were used in the concentration processes.

3.2.1. Retention of phenolic compounds

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3.2. Concentration process

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Differences among feed, concentrate and permeate were significant (p<0.001) to all

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evaluated membranes. Evaluating the retention coefficients (Figure 3), differences among the

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membranes were observed to TPC, FRAP and chlorogenic acid content. Comparing the extracts (50 and 75% EtOH), for DL membrane, a significant difference

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was observed for chlorogenic acid content. For DK, the difference was observed to TPC, and for

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NF270, to TPC, FRAP and chlorogenic acid content. For DPPH, no significant differences were

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observed between feed and membranes.

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For all the membranes, the highest retention was obtained in processes that were conducted

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with extracts containing 50% EtOH. The major retention of chlorogenic acid was 97.86% for DK

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(50% EtOH) and the smaller retention for this compound was observed for NF270 in the extract

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with 75% EtOH (88.67%). This result indicated that EtOH may be promoting the transport of

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phenolic compounds through the membrane pores. This behaviour was also verified by Pinto et al.

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(2014) in hydroalcoholic extract (52% and 80% EtOH) obtained from eucalyptus bark. They had

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also worked with polyamide membranes and claimed that these membranes had been more

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effectively solvated by water than EtOH. Thus the increase on ethanol percentage leads to a larger

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pore effective diameter, and hence a smaller hurdle to phenolic acids transport (in the case of

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authors, tannic acid), which reflects a greater retention of these compounds in 52% EtOH than in

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80% EtOH. Despite a smaller retention observed in the 75% EtOH extracts, the retention coefficients to

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chlorogenic acid were high for all treatments, close to those reported by Conidi et al. (2013), which

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found values from 82 to 96% of chlorogenic acid, cynarin, and apigenin-7-O-glucoside, in

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nanofiltration, using wastewater from artichoke bleaching process.

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Even with a different retention, at the end of the concentration processes, for both extracts,

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the chlorogenic acid content increased around 30 % in the concentrate fraction (22.24 ± 0.75 mg/g

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dry matter for 75% EtOH and 13.80 ± 0.89 mg/g dry matter for 50% EtOH) in relation to feed

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(17.14 ± 0.87 mg /g dry matter for 75% EtOH and 11.06 ± 0.10 mg/g dry matter for 50% EtOH). 3.2.2. Permeate flux evaluation

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Flux decline can be observed in Figure 4(A) and 4(B), for the extracts obtained with 50%

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and 75% EtOH, respectively. When comparing filtrations performed with 50% and 75% EtOH, the

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smallest permeate flux and, consequently, the highest concentration time were observed for the

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extract obtained with the biggest EtOH percentage. This behaviour can be explained by the

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hydrophilic nature of the membranes, where the permeation of EtOH/water systems is hindered by

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restricted hydrogen bonding formation of EtOH compared to aqueous system. Thus, the bigger the

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solvent polarity, the higher the flux in hydrophilic membranes and the reverse situation is observed

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for hydrophobic membranes (YANG et al., 2001; BHANUSHALI et al., 2001).

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Fluxes showed lower values than those reported for aqueous systems using the same

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membranes. Cissé et al. (2011) using the NF270, DK and DL for the aqueous extracts

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concentration of Hibiscus sabdariffa reported flows of 38, 36 and 39 L/m²h, respectively. The

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permeate fluxes shown in this work, that ranged from 8.42 to 25.27 L/m2h (Table 3) are similar

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to those reported by Tsibranska and Tylkowski (2013) and Tsui and Cheryan (2007), which

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obtained fluxes from 8.08 to 15.58 L/m²h (ethanolic extract to concentrate phenolic compounds

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from Sideritis ssp. using polyamide membranes at 20 bar and 25 °C), and 10,2 L/m²h (extract with

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85% EtOH to concentrate xanthophylls from corn, using DK membranes at 50 °C and 27 bar),

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respectively. For the fluxes obtained with NF270, during the nanofiltration of 50% EtOH extract, the

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reducing volume factor was reached around three hours of process (Figure 4), whereas for the

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concentration process with 75% EtOH extract, the time required to reach the same factor was more

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than twice. This extract has more clusters in suspension that the extract with 50% EtOH (Section

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3.2.3.1), and this may have influenced on permeate flux. DK and DL membranes showed the same

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behaviour regarding the two evaluated feeds, confirming that the pore sizes of NF270 (Table 1) are

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bigger and consequently have a greater available surface for particles deposition (HWANG et al.,

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2008).

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Comparing DK and DL membranes (Table 3), the average flux of DL was higher than that

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of DK. Figure 4 shows that the DK membrane has a good flux stability in both processes, despite

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its bigger initial flux decay. DL presented a continuously flux decay, indicating that this membrane

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was more susceptible to fouling along the process, comparing to the DK membrane.

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3.2.3. Fouling evaluation

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3.2.3.1. Fouling mechanisms

Hermia’s models were applied to identify the predominant fouling mechanisms during the

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processes. Based on the initial stage of the filtration, the flux decline occured due to the

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concentration polarization (MARSHALL and DAUFIN, 1996). Thus, the modeling was made after

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a 4.5 minute processing time. This point was established because it represents the transition to the

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filtration stage where the fouling began.

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Table 4 shows the estimated constants (ɛc, ɛs, ɛi and ɛCF) and the determination coefficients

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(R2). The parameters ɛc and ɛi are linked to the resistance caused by the fouling; ɛs, is related to the

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resistance from the solute particles absorption within the pore, and ɛCF is associated with the

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resistance due to the cake formation (VELA et al., 2008).

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Evaluating the determination coefficients, the most predominant fouling mechanism is the

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cake formation followed by the intermediary, the standard and the complete blocking of the pores.

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are only slightly different, which is in agreement with the discussion in the last section with respect

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to particles deposition in the pores of the NF270. Still for NF270, in the extract with 50% EtOH,

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the difference among standard fouling, intermediary and cake formation of this membrane was in

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the third decimal place, also showing that solutes adsorption had occurred in membrane pores,

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which is consistent with the smaller clusters observed in this extract (Section 3.2.3.1).

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At last, for the ɛCF parameter, the NF270 and DL membranes showed the highest values,

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indicating that these membranes were more sensitive to fouling. Furthermore, these membranes

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showed the same continuously flux decay along the processes (Figure 4).

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3.2.3.1. Particles size distribution

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In the concentration processes, the mass transfer through the membrane was directly affected by the solute particles size (Figure 5).

For the extracts with 50% EtOH, the amount of particles in the range of 1 µm present in the

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concentrate reduced in relation to feed. Therefore, these particles may have permeated or fouled the

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membrane. This result is in accordance with the average particle size in permeate, that was less

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than 0.89 ± 0.01 nm in all evaluated conditions.

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The average particle size was bigger for the extract with 75% EtOH (≈ 300 µm) than for

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the 50% EtOH (≈ 100 µm). These particles may be formed by the complexation of phenolic

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compounds with carbohydrates and proteins present in the extract (EAGLES AND WAKEMAN,

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2002; MARROQUIN et al., 2014; ZATOR et al., 2009). Table 5 shows the proximal composition

335

of these extracts. It can be observed that the extract with 75% EtOH contained a higher amount of

336

carbohydrates and proteins than the one with 50% EtOH, which may explain the bigger particles in

337

the first extract.

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338

Increasing the percentage of ethanol may have favored particles agglomeration (clusters

339

formation), since in polar solvents, the macromolecules suspended in the extract are generally

340

electrostatically more stable and less susceptible to agglomeration or precipitation, suggesting that

341

the extract with 75% EtOH in water (v/v) is the most likely to promote the fouling.

13

ACCEPTED MANUSCRIPT 342 343

3.2.3.2. Membrane surfaces characterization a) Force atomic microscopy (AFM) From AFM analysis the mean square roughness (Figure 6) was determined. It is important

345

to highlight that this measurement is dependent on the scale property (BOUSSU et al., 2005;

346

WONG et al., 2009), i.e, the higher the scanned area, the higher the roughness values. Therefore, 1,

347

3, 5 and 10 µm² areas were analysed.

RI PT

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In Figure 6, we can see that for virgin membranes the roughness increased in this order

349

NF270-V < DL-V < DK-V. This result explained the flux decay in the beginning of DK membrane

350

processes. According to Vrijenhoek et al. (2001), in the initial stages of filtration, particles

351

accumulated in the “valleys” of rough membranes, resulting in “valley clogging” and hence in a

352

flux decline.

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The NF270 virgin membrane (NF270-V), has a less rough surface, compared to the other

354

membranes. According to Balcıoğlu and Gönder (2014), this was observed because this membrane

355

is a semi-aromatic polyamide based on piperazine, showing higher hydrophilic properties [due to

356

higher carboxylic acid content (-COOH)], and a smooth surface.

TE D

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After the concentration processes, a significant increase in surface roughness in relation to

358

virgin membranes was observed, due to feed solute deposition on membranes surface. This result

359

was another indicator of the cake formation during concentration. Furthermore, the roughness for

360

evaluated membranes (Figure 6) after concentration was positively correlated to the decay on

361

permeate flux (Table 3), and both parameters (roughness and flux drecrease) followed the same

362

order: NF270-50% < DL-50% < DK-50% < DL-75% < DK-75% < NF270-75%.

364

AC C

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b) Infrared Fourier transformed spectroscopy In the FTIR analysis, Figure 7 shows the spectrum of virgin and fouled membranes. Some

365

characteristic bands were identified in the virgin membranes indicating the presence of polysulfone

366

(1585, 1504, 1488, 1387, 1364, 1324, 1241, 1150 and 874 cm-1) (PURO et al., 2006; SARI and

367

CHELLAM, 2013; TANG et al., 2009), and polyamide (≈ 1637 cm-1) (TANG et al., 2009), that are

368

respectively, the support and the selective layer of the membranes.

14

ACCEPTED MANUSCRIPT Comparing the fouled membranes with the virgin ones, the absorption intensity of the

370

characteristic bands in virgin membranes was reduced due to the organic matter overlapping in the

371

membrane surface. In fouled membranes, bands with marked intensity in the region of 950-1110

372

cm-1 (mainly 1035 cm-1) were attributed to C-O-C and C-O-P vibrations, which corresponds to the

373

presence of polysaccharides (SARI and CHELLAM, 2013; THYGESEN et al., 2014). Thus, we

374

can infer that most of the fouling in these membranes is due to presence of carbohydrates, which

375

agrees with the proximal composition of the extracts (Table 5). c) Contact angle

SC

376

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The contact angle (θ) measurements allow the evaluation of the membrane surface

378

hydrophobicity. According to this, if 0° < θ < 90°, the membrane surface is more hydrophobic than

379

if 90° < θ < 180° (WANG et al., 2006). The contact angles of the membrane surfaces NF270, DK

380

and DL both conditioned and unconditioned are shown in Figure 8.

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377

For condictioned membranes, the hydrophobicity increased toward the membranes NF270

382

< DL < DK (the same order was observed for roughness of virgin membranes), and the molecular

383

affinity for nonpolar species of these membranes increased with the conditioning process, i.e,

384

higher contact angles were observed in conditioned membranes than in unconditioned ones. As

385

hydrophobicity depends on the presence of polar and nonpolar groups at membrane surface, it is

386

possible to conclude that exposing the membranes for several hours to the solvents, the adsorption

387

of alcoholic functional group (C-OH) at the membrane structure makes it more hydrophobic. This

388

result shows that conditioning facilitates mass transport of nonpolar species through the membrane.

389

Besides that, Jansen et al. (2013) and Van der Bruggen et al. (2002) showed that conditioning can

390

prevent pore collapse during permeation of nonpolar solvents, ensuring the structural integrity of

391

the membrane.

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392

In conditioned membranes, the contact angles were higher for conditioning processes in

393

solutions with 75% EtOH than 50%, suggesting a bigger flux for membranes conditioned with 50%

394

EtOH, as observed in this study (Figure 4). This behaviour has already been mentioned by other

395

authors in respect to hydrophilic membranes (BHANUSHALI et al., 2001; YANG et al., 2001),

15

ACCEPTED MANUSCRIPT and it is linked to the restricted hydrogen bonding ability of EtOH, which renders difficult an

397

effective membrane solvation. Furthermore, the contact angle is also related to the effective pore

398

size and impacts directly the retention of phenolic compounds, because hydrophilic membranes

399

were not satisfactorily solvated by organic solvent as they are by water (PINTO et al., 2014).

400

4. CONCLUSION

RI PT

396

The extracts with higher ethanol concentration (50 and 75% EtOH) showed the best

402

extraction yields . The use of ultrasound also favored the extraction of phenolic compounds, but

403

ultrasound power higher than 240 W had no influence on process efficiency. In addition, 10 min of

404

sonication were enough to obtain good extraction yields. Membranes NF270, DK and DL can be

405

used to concentrate hydroalcoholic extracts from artichoke waste due to almost total retention of

406

phenolic compounds. The susceptibility to fouling in the membranes follows the order NF270 >

407

DL > DK, and the predominant compound found on membranes surface was carbohydrates. As a

408

retention of more than 95% of chlorogenic acid was observed for extracts with 50% of ethanol and

409

the DK membrane showed less susceptible to fouling, with a more stable flux and a short

410

concentration time, the combination of the most suitable process to obtain the highest chlorogenic

411

acid should be ultrasound extraction (20 kHz and 240 W), with 50% EtOH, and concentration by

412

nanofiltration at 20 bar in a tangential filtration using DK membrane.

413

5. ACKNOWLEDGMENTS

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The authors thank FAPESP (2009/54137-1 and 2009/50593-2), CNPq (143885/2011-1,

415

130647/2013-6 and 304475/2013-0) and CAPES for the financial support. The authors are also

416

very grateful to Bonsucesso factory for the raw material donation and to LAMULT (IFGW-

417

UNICAMP) for AFM and FTIR analysis.

418

6. REFERENCES

419 420 421

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ACCEPTED MANUSCRIPT Table 1. Characteristics of the nanofiltration membranes Membrane

NF270

DK

DL

Producer

GE Osmonics

Molecular weight cut-off (g/mol)

Dow FilmTec Polyamide thin-film composite(1) 200-400(1)

200(1)

GE Osmonics Cross-linked aromatic polyamide(1) 150-300(1)

Pore size (nm)

0.84(2)

0.43(3)

0.46(4)

Maximum operating temperature (°C)

45

45

45

Maximum operating pressure (bar)

41

40

40

pH range

3-10

2-11

2-11

(1)

96(1)

4

>97

(1)

98

6(5)

7(5)

SC

17(5)

M AN U

Salt retention (%) Permeability to pure water (kg.h-1.m-2.bar-1) 1 Mohammad et al. (2015) 2 Nghiem and Hawkes (2007) 3 Almazán et al. (2015) 4 Retention of MgSO4, 2000 mg/L at 25 ⁰C 5 Cissé et al. (2011)

Polyamide(1)

RI PT

Composition on top layer

Table 2. Summary of characteristics of Hermia’s models Fouling mechanism Filtration cake formation

n 0

Equation of the fouling mechanism

Jv =

J0

(1+ ε CF .t )

12

Linearized Equation of the fouling mechanism

1

(J v )

2

=

1

(J o )

2

+ ε CF .t

Constant of the fouling mechanism

ε CF =

(2Rr ) K CF v0 J0

2

Intermediate pore blocking

1

Jv =

J0 (1+ εit )

1 1 = + εit J Jo

εi =

K c v0 J0

Standard pore blocking

1.5

Jv =

J0 (1+ ε st )2

1 1 = 1 2 + ε st 12 J Jo

εs =

Ks v0

TE D

Representation

12

J0

AC C

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Complete ε c = K c v0 Jv = Jo exp(−ε c .t) ln Jv = ln Jo − ε c .t 2 pore blocking Where Jv is the volumetric flux of the permeate (L/m²h), J0 is the initial permeate flux (L/m²h), t is the time (h), Rr is the ratio of resistance of the cake over the resistance of the clean membrane, KCF is the area of cake formed per unit of permeate volume (m-1), v0 the initial velocity per surface unit area of the membrane surface (m/h), Kc is the membrane blocked surface area by the total number of permeate thought the membrane unit (m-1), Ks is the reduction in the cross sectional area of the pores per total unit permeate flux (m-1).

Table 3. Measured flux during nanofiltration of 50% and 75% EtOH in water (v/v) extracts Process Initial flux (L/m2h) Average flux (L/m2h) Flux decrease (%)

NF270-50%EtOH NF270-75%EtOH DK-50%EtOH DK-75%EtOH DL-50%EtOH DL-75%EtOH

81.00±5.54 76.16±0.93 78.71±3.06 61.58±3.58 88.85±5.54 77.17±1.97

25.27±1.35 8.42±0.22 19.26±2.44 11.77±0.15 24.95±7.14 18.14±2.44

68.80±0.04 88.90±0.01 75.53±0.02 80.88±0.01 71.92±0.10 76.49±0.03

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0.1787 0.1413 0.0648 0.2025

0.989 0.932 0.905 0.654

0.0152 0.0162 0.0068 0.0027

0.995 0.971 0.926 0.680

0.0054 0.0090 0.0029 0.0015

0.997 0.986 0.934 0.690

0.0004 0.0015 0.0003 0.0002

0.998 0.999 0.945 0.710

0.2161 0.1719

0.955 0.960

0.0169 0.0165

0.977 0.979

0.0058 0.0067

0.986 0.987

0.0004 0.0006

0.996 0.993

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Table 4. Values of the parameters adjusted by Hermia’s model and the respective coefficients of determination (R2) related to the fouling process in membranes NF270, DK and DL Complete blocking (n=2) Standard blocking (n=1.5) Intermediate blocking (n=1) Cake formation (n=0) Process εc(s-1) R2 εs(s-1/2m-1/2) R2 εi(m-1) R2 εCF(s.m-2) R2

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ACCEPTED MANUSCRIPT Table 5. Proximal composition and physico-chemical properties of artichoke extracts obtained with 50% and 75% of EtOH in water (v/v). 75% EtOH 99.40 ± 0.01 13.44 ± 0.97 22.19 ± 1.46 13.80 ± 1.99 27.49 ± 0.04 51.56 ± 1.66 0.86 ± 0.01 2.03 ± 0.01 6.40 ± 0.04

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Moisture (g/100 g, w.b.) Ash (g/100 g, d.b.) Protein (g/100 g, d.b.) Lipids (g/100 g, d.b.) Dietary fiber (g/100 g, d.b.) Carbohydrates (g/100 g, d.b.) Specific mass (g/mL) Apparent viscosity (mPa.s) pH

50% EtOH 99.51 ± 0.01 9.27 ± 0.97 16.59 ± 1.46 32.18 ± 1.99 7.66 ± 0.71 43.11 ± 2.05 0.92 ± 0.01 2.40 ± 0.01 6.35 ± 0.04

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Data presented corresponds to an average of five determinations, with standard deviations. w.b. = wet basis, d.w. = dry weight

ACCEPTED MANUSCRIPT Figure 1. TPC (A), DPPH (B), FRAP (C) and Chlorogenic acid content (D) in function of ultrasound power and solvent composition Figure 2. Extraction kinetics of TPC (A), DPPH (B), FRAP (C) and Chlorogenic acid

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content (D) from artichoke waste Figure 3. Retention coefficient of the responses TPC (A), DPPH (B), FRAP (C) and Chlorogenic acid content (D) - (Capital letters indicate a statistically significant

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difference (p≤0.05) for the same feed in different membranes. Lowercase letters indicate a statistically significant difference (p≤0.05) for the same membrane in

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Figure 4. Permeate flux decline for membranes NF270, DK and DL refers to the extracts with 50% (A) and 75% (B) of EtOH in water (v/v), with a volume reduction

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Figure 5. Particle size distribution for feed and concentrated, obtained from the extracts obtained with 50% (A) and 75% (B) of ethanol in water (v/v)

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Figure 6. Mean square roughness (nm), in function of the length scale L (side of the

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scanned area, µm) for membranes NF270, DK and DL before and after the filtration process

Figure 7. Fourier transform infrared spectra of virgin and fouled NF270, DK and DL membranes

Figure 8. Contact angle to the conditioned and unconditioned membranes (Capital letters indicate a statistically significant difference (p≤0.05) for the same membrane in

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ACCEPTED MANUSCRIPT Highlights Ultrasound of 20 kHz was used to extract phenolics from artichoke waste (bracts). Total phenols and chlorogenic acid were concentrated by nanofiltration. Permeate fluxes and fouling were influenced by alcoholic content of extract.

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Hermia's models and surface analyses identified the membrane more susceptible to fouling

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Membrane selection was done in terms of flux, fouling behavior and phenols retention.