Aqueous Adsorptive Removal of Bisphenol A Using Tripartite Magnetic Montmorillonite Composites

: The adsorption of bisphenol A into untreated montmorillonite clay, doped titanium composite and cationic polymer modiﬁed tripartite magnetic montmorillonite composite was investigated under different conditions. The magnetic property of the modiﬁed adsorbent was ascertained by action of external magnetic ﬁeld on the materials when dispersed in aqueous media. The XRD results for the unmodiﬁed and modiﬁed adsorbents showed that interlayer spacing of the clay material increases due to intercalation of the precursor molecules. The textural properties of the adsorbents from BET analysis showed that pore size and speciﬁc surface area of the tripartite magnetic composite was calculated to be 288.08 m 2 /g while that of the unmodiﬁed clay was 90.39 m 2 /g. The TGA results showed the tripartite magnetic composite was more stable with the lowest percentage mass loss compared to the unmodiﬁed montmorillonite. The tripartite magnetic composite showed higher adsorption capacity. Adsorption was best described by the Freundlich isotherm model, which conﬁrmed that the adsorption process was multilayer coverage unto the uneven surface of the adsorbents. Kinetic treatment of the adsorption data conﬁrmed the the process followed a pseudo-second-order kinetic model and predominantly chemisorption process. The standard Gibb’s free energy computed for the adsorbents showed that the adsorption processes were favourably spontaneous with highly negative energy values of − 336.70, − 533.76 and − 1438.38 KJ/mol, respectively, for the unmodiﬁed montmorillonite, doped titanium composite and the tripartite magnetic composite. It was observed that the addition of cationic aromatic moiety to the clay material increased pollutant-adsorbent interactions and improved adsorption capacity for micro-pollutants in a simulated industrial efﬂuent.


Introduction
Decontamination of industrial effluents before disposal is a necessary step in the industrial process for removal of toxic pollutants for the preservation of the environment and ecosystems [1,2]. Emerging organic contaminants (EOCs) in industrial effluents mostly in developing countries are receiving little or no attention with respect to the method and technology for their remediation and removal [3]. Most of these emerging contaminants are known carcinogens and endocrine disruptive chemicals (EDCs) with toxic consequences on living components of the ecosystem [4]. Bisphenol A (BPA) is an endocrine disruptive compound used as plasticizers in manufacturing of many plastic materials such as polycarbonates, polyurathanes and some phenol resins [5]. Hence, BPA exists in water bottles, food cans, thermal receipts, electronic equipment, medical devices, toys, etc. Their presence in effluents can result in health complications even at very low concentration if not remediated [6]. As a lipophilic and low biodegradable chemical, BPA accumulates in the body fat of aquatic and terrestrial animals. BPA is associated with bio-accumulative persistence and toxicity. The phenolic estrogenic BPA is among the most frequently detected emerging organic pollutants in various aqueous matrices in Africa and many other regions of the world [7][8][9][10][11]. Concerns about BPA contamination are mainly based on its endocrine disrupting activities and reproductive toxicity on living systems, including humans [6]. The discharge of such effluent into water bodies and the environment results in accumulation in the biota and hence its health and ecological consequences [12]. Due to a lack of regulations in developing countries for these emerging contaminants in the environment, their presence in the environment is sometimes ignored, hence the need to develop local and cost-effective technology for remediating these wastes for environmental sustainability. Again, in the industries, water is an important material input and accounts for over 10% of the cost of production in some companies [13]. Water reusability leading to reduced cost of water consumption can be enhanced through efficient effluent treatment technology. Some approaches developed for remediation of BPA in water include: laccasecatalysed degradation [14], advanced oxidation process using zero-valent iron activated persulphate system [15][16][17][18], degradation using TiO 2 photocatalysis with ozone [19][20][21][22][23], enzymatic remediation using biosurfactants [24], removal using electro-Fenton process [25], adsorption [26], oxidation using UV-C/peroxymonosulphate system and mineralization using integrated ultrasound-UV-Fe(II) treatment [27,28]. Also, some microorganisms such as fungi and bacteria have been shown to have a degradation effect on some pollutants [29]. Specifically, some experiments on degradation of BPA by microorganisms by some strains of fungi and bacteria have been reported [30,31]. Many of these methods are expensive and cannot be applied in developing countries. Others, such as conventional coagulation methods and chemical precipitation, cause secondary contaminants, requiring an additional treatment and increasing the treatment cost [32]. Interestingly, adsorption is the most attractive process in developing countries due to its lower cost and high efficiency in removing different types of contaminants. Many reports on modified clay for removal of BPA were focused on metal nanoparticles; however, some research on use of cationic surfactants and polymers has also been reported in literature [5,13,[33][34][35]. These include the use of multi amine-containing Gemini surfactant as organic modifiers for montmorillonite clay [13] and the use of cetyl trimethyl ammonium bromide (CTAB) for modification of magnetic bentonite [33]; also, clays modified using octadecyltrimethylammonium bromide (ODTMA, organic modifier) and hydroxy aluminium (Al 13 , inorganic modifier) [36]; use of dodecyltrimethylammonium, tetradecyltrimethylammonium, hexadecyltrimethylammonium, and didodecyldimethylammonium, at different concentrations into two natural clays from Burkina Faso [37]; use of hexadecyltrimethylammonium bromide (HS) and alkyldimethylbenzylammonium chloride [38]; use of Titanium (IV) tetra-iso-propoxide and cetyltrimethylammonium (CTA) [39]; use of dodecyldimethyl 3-sulphonate, dodecyldimethyl N-carboxylate and dodecyldimethyl N-phosphate [40] have been reported in literature. However, most of these organic modifiers are non-biodegradable and may persist in the environment, thus resulting in secondary pollution [41]. Also, metal composites without supportive components display serious shortcomings during application such as agglomeration, limited reusability, and non-biodegradability, resulting in further contamination of the environment [42,43]. Additionally, surfactants lack mechanical and thermal stability, as well as low adsorptive efficiency. In order to overcome these limitations, researchers have developed clay-polymer nanocomposites (CPNs) combining the advantageous characteristics of both clay minerals (cheapness, availability, eco-friendly, large surface area and stability) and polymers (mainly the high adsorption efficiency, high surface area and better regeneration) [44,45]. Interestingly, CPNs showed advanced properties (mechanical strength, low gas permeability and heat resistance) allowing cost reduction and enhancing their efficiencies in removing various contaminants from water. In addition, many of these CPNs can be synthesized from green materials, which are considered sustainable [46]. Some polymeric modifiers loaded on clay have been reported including cationic polyacrylamide [5], sulfonated polystyrene [3] and resorcinol-formaldehyde polymer blend [47]. However, these polymer-clay nanocomposites (PCNs) were synthesized and applied for wastewater treatment containing mostly of dyes, phenols and other organic pollutants such as pesticides. Another setback of engineered clays for adsorption has to do with their recovery from effluent stream. The introduction of magnetic particles into the composite matrix can enhance its recovery using an external magnetic field as demonstrated in this work. Hence, the use of a polymeric biodegradable cationic organic moiety with positive N-group to facilitate adsorption of BPA from a simulated industrial effluent through increased electrostatic interaction and hydrophobic attraction is reported in this paper.
The main objective of this work was to examine the adsorption capacity of a tripartite magnetic montmorillonite composite modified by doped titanium oxide and polymeric cyclodextrin-toluenediisocyanide alt-polymer with positive N-head group as biodegradable organic moiety to improve the efficiency of the clay material for adsorption of BPA from simulated industrial effluents.

Materials and Methods
Montmorrilonite clay was obtained from deposits in Itu, Nigeria, which has been previously identified as montmorilonite type clay at Soil Science Department, University of Uyo, Uyo, Nigeria [48].

Characterization of Composite
Surface morphologies of the parent and composite materials were deduced using Scanning Electron Microscope (SEM) at University of Cape Town, South Africa. Surface area and pore parameters, crystallinity and functional group were deduced using BET surface analyzer (Micromeritics), X-ray Diffraction spectroscopy and Fourier-Transformed Infrared (FTIR) spectroscopy, Energy dispersion spectroscopy, Scanning electron microscopy and thermogravimetry.

Nitrogen Adsorption-Desorption Measurements
Nitrogen adsorption-desorption measurements (BET method) was measured using exactly 1 g each of MM, DT-Fe@MM and nCDp/DT-Fe@MM samples at liquid nitrogen temperature (−196 • C) and relative pressure Po/P between 0.01-1.00 with an autosorb BET apparatus, Micromeritics ASAP 2020, surface area and porosity analyzer. The analysis procedure is automated and operates with static volumetric technique. Before each measurement, the samples were first degassed by heating at 200 • C for 2 h according to the method of Liu et al. [49].

X-ray Diffraction (XRD)
The bulk structure of both parent clay and the modified clay composites were confirmed by X-ray Diffraction (XRD). X-ray diffraction data of the obtained materials were obtained by a Bruker D8 Advance powder X-ray diffractometer (Bruker, Munich, Germany) of Cu Ka radiation with a step size of 0.028 at a rate of 17.7 s step −1 from 2 • to 60 • according to the method of Liu et al. [49].

Fourier Transformed Infrared (FTIR)
The determination of the surface functional groups was carried out using FTIR spectrophotometer (Fisher Thermoscientific, Waltham, MA, USA) following standard procedures. The spectra were recorded using KBr wafers in the range 4000 cm −1 to 400 cm −1 according to the method of Men et al. [5]. The Scanning Electron Microscope (SEM: JSM-5310LV Microanalyzer, JEOL Co., Tokyo, Japan) was employed to determine the surface morphology of catalysts according to the method of Men et al. [5].

Thermogravimetric Analysis
The Thermogravimetric data were recorded on a TGA-50 (ASCII-Microanalyzer, JEOL Co., Tokyo, Japan) at a temperature range of 19.7 • C to 999.91 • C and sample mass of 10.285 mg over acquisition time of about 10 h and nitrogen flow rate of 50 mL/min on a platinum macro pan according to the method Liu et al. [50].

Preparation of Magnetic Montmorillonite
Montmorillonite was converted to its magnetic form following the modified method of Cao et al. [33]. Briefly, about 10.0 g MM in 100 mL deionized water and left to stabilize for 5 h at 50 • C. FeCl 2 ·6H 2 O (8.6 g) and FeCl 3 ·7H 2 O (12.8 g) were then added and stirred vigorously for 1 h at 70 • C followed by addition of 28% NH 4 OH in drops and the pH was adjusted to 10 using dilute NaOH. Mixture was filtered; the solid particles were washed with deionized water and Ethanol and dried then at 80 • C for 12 h. The resulting product was named Fe@MM.

Preparation of Doped Titanium Magnetic Montmorillonite
The doped titanium component was prepared using the modified method of Cao et al. [33]. Briefly, about 2 g TiO 2 and STS in a 16 v/v acetone solution and ethylenediamine was added at 70 • C and stirred in an autoclave for 2 h to form a sol-gel. This was added to a 5 g solution of Fe@MM in acetone and stirred magnetically for another 30min with addition of 0.22 M NaBH4 in drops. The mixture was centrifuged for 30min, and the obtained solid was dried at 80 • C for 12 h and labelled as DT-Fe@MM.

Preparation of β-Cyclodextrin Nano-Polymer and Composite Blending
To prepare the β-cyclodextrin-toluenediisocyanide alternating nanopolymer, about 10 g of β-CD was added to 15 v/v acetone in deionized water and stirred vigorously for 1 h. TDI was added in drops and the solution was stirred at 50 • C. It was then poured into a stream of acetone, and the precipitate was separated and washed with acetone and deionized water and dried in a vacuum desiccator for 12 h, labelled as nCDp. Blending of the different components to form the tripartite composite was as follows: about 5.5 g of DT-Fe@MM was dispersed in DMSO and stirred magnetically for 4 h, followed by addition of 1.8 g of nCDp and 2.2 g of SDS at 70 • C with continuous stirring for another 1 h. The mixture was then centrifuged at 3600 rpm for 30 min, and the obtained solid was dried at 110 • C with further calcination at 550 • C for 6 h. The product was labelled nCDp/DT-Fe@MM. The preparation of the tripartite magnetic montmorillonite composite can be represented by the schematic diagram in Figure 1.

Batch Adsorption Studies
Exactly 0.2 g of unmodified montmorillonite doped titanium composite and the prepared tripartite magnetic composite was added to about 20 mL of simulated effluent at varying concentrations of 10, 20, 40 and 50 mg/L in a conical flask and covered with aluminum foil. The conical flask was agitated on a platform shaker at 360 rpm for 90 min. The mixture was then filtered and stored in glass vials for analysis. The adsorption process was repeated by varying temperature range from 30-70 • C and varying the pH range between 3-12. The concentration of BPA was analysed by ultraviolet-visible spectrophotometry while metals concentration was analysed by atomic absorption spectrophotometry. The removal efficiency and adsorption capacity of the different adsorbents was calculated using Equations (1) and (2), respectively. The mechanism of adsorption was studied using four adsorption models, namely, Langmiur, Freundlich, Florry-Huggins and Dubinin-Radushkevich isotherms.
where C o and C e represent the initial and equilibrium concentration of micro-pollutants in solution (mg/L), q e is the equilibrium adsorption capacity of the adsorbents, V (L) is the volume of simulated effluent used and m is the mass (g) of adsorbent used.

Desorption Experiment
To measure the rate of desorption of the adsorbate in acetone and deionized water after adsorption, 2.0 g of the residue obtained from the adsorption experiment was dispersed in 40 mL of acetone and deionised water in two different conical flasks. The resultant solution was then agitated between 0-120 min at different time intervals, filtered and the percentage desorption was calculated using Equation (1).

Preparation of Simulated Effluents
Stock solution of BPA was prepared by dissolving 0.5 g of the compound in 500 mL deionised water to obtain 100 µg/mL. Lower concentrations was prepared from the stock solution using dilution principle. A total of 100 µg/mL each of solutions of cadmium, lead and arsenic salts were prepared by dissolving 0.05 g of CdCl 2 , Pb(NO 3 ) 2 and AsCl 3 in 1000 mL of deionised water, respectively. An equal proportion of each of the solutions of the micropollutants were mixed together to obtain the simulated industrial effluents; the resultant pH of the solution was 5.7 and the net ionic strength was about 0.01 M.

Magnetic Property of Modified Composite
The modified composite was dispersed in a solution and its magnetic property was examined using an external magnetic field. The composite was attracted by an external magnetic field and was separated from the solution using a magnet, as shown in Figure 2

Magnetic Property of Modified Composite
The modified composite was dispersed in a solution and its magnetic property was examined using an external magnetic field. The composite was attracted by an external magnetic field and was separated from the solution using a magnet, as shown in Figure  2.

UV-Visible Calibration Curve of Absorbance of BPA from Solution
The calibration curve for UV-visible absorbance to concentration plot for the BPA at 278 nm is presented in Figure S1 (Supplemetary Material). The calibration plot shows an almost perfect fitting with R 2 value of 0.995, showing the high sensitivity of the equipment for accurate determination of BPA concentration in the simulated and pretreated samples. Other instrumental quality parameters were adjusted according to united state pharmacopia specifications. The phtometric accuracy was adjusted in the operational wavelength region using potassium dichromate solution (60 mg/L, 80 mg/L and 160 mg/L) and solutions standard accordingly. Also, wavelength acuracy and precision in the region of 240 nm-650 nm was set using a holmiun oxide solution. Since the ionic strength of the simulated industrial effluent prepared using deionised water was relatively low, its matrix effect on the measurement of bisphenol concentration using uv-vis spectrophtometer could be accounted for using the standard calibration curve.

Functional Group Characterization of the Prepared Adsorbents
The FT-IR spectra of the raw montmorillonite (MM) and the functionalized composites are shown in Figure 3a

UV-Visible Calibration Curve of Absorbance of BPA from Solution
The calibration curve for UV-visible absorbance to concentration plot for the BPA at 278 nm is presented in Figure S1 (Supplementary Material). The calibration plot shows an almost perfect fitting with R 2 value of 0.995, showing the high sensitivity of the equipment for accurate determination of BPA concentration in the simulated and pretreated samples. Other instrumental quality parameters were adjusted according to united state pharmacopia specifications. The phtometric accuracy was adjusted in the operational wavelength region using potassium dichromate solution (60 mg/L, 80 mg/L and 160 mg/L) and solutions standard accordingly. Also, wavelength acuracy and precision in the region of 240-650 nm was set using a holmiun oxide solution. Since the ionic strength of the simulated industrial effluent prepared using deionised water was relatively low, its matrix effect on the measurement of bisphenol concentration using uv-vis spectrophtometer could be accounted for using the standard calibration curve.

Functional Group Characterization of the Prepared Adsorbents
The FT-IR spectra of the raw montmorillonite (MM) and the functionalized composites are shown in Figure 3a-c. The raw montmorillonite showed mostly -OH, Si-O and Al-O peaks at 3623, 998, and 749 cm −1 , respectively. The modified montmorillonite not only has the characteristic peak of MM but also shows new peaks, which proves that the chemical structure of the modified composites has changed. The sulphur doped titanium composite showed peaks for -NCS (isocyanate) at 1990 cm −1 and the organic modified composite showed peaks for open chain azo (-N=N-), cyanide (-OCN), and transition metal carbonyl (-M=CO-) at 1032, 1625 and 2050 cm −1 , respectively. This new peak showed functionalization of the composites occurred and that sulphur, titanium and the isocyanate-cyclodextrin biodegradable polymer were intercalated into the montmorillonite framework [3,5,51,52].

Scanning Electron Microscopy
The scanning electron microscopy (SEM) showing the surface morphologies of the raw clay, titanium doped clay and the tripartite magnetic nanocomposites are presented in Figure 4a-c, respectively. The surface of the raw clay showed a typical flat and flaky morphology compared to the doped titanium composited whose morphology became a thin layer structure with fluffy appearance after the modification. The tripartite composite showed further smaller flakes and a more loosed structure showing also the appearance of submicron sized globules of the polymeric organic modifier on the montmorillonite surface [53].

Scanning Electron Microscopy
The scanning electron microscopy (SEM) showing the surface morphologies of the raw clay, titanium doped clay and the tripartite magnetic nanocomposites are presented in Figure 4a-c, respectively. The surface of the raw clay showed a typical flat and flaky morphology compared to the doped titanium composited whose morphology became a thin layer structure with fluffy appearance after the modification. The tripartite composite showed further smaller flakes and a more loosed structure showing also the appearance of submicron sized globules of the polymeric organic modifier on the montmorillonite surface [53].

X-ray Diffraction Patterns of Studied Materials
The X-ray patterns of the unmodified montmorillonite (RC), doped titanium composite (DTC) and the tripartite magnetic montmorillonite composite are depicted in Figure 5a- However, most of the peaks disappeared or were weakened on loading of the doped titanium particles and the polymeric organic moiety leaving mostly peaks for the quartz and montmorillonite at 2θ = 26.7, 36.6, 54,7 and 62.3. The raw clay also showed its first reflection (d001) peaks at 2θ = 5.26 with a d-spacing of 1.67 nm, which is typical of Ca-montmorillonite [54]. However, this peak was deflected in the doped titanium to 2θ = 5.21, corresponding to a d-spacing of 1.71 nm and confirms that the doped titanium particles were successfully intercalated into the montmorillonite layer. Unsurprisingly, in the tripartite composite, the peak was further shifted to 2θ = 20.4 and corresponds to d-spacing of 0.44 nm. This suggests that the polymeric organic moiety was rather adsorbed on the surface of the clay mineral without intercalation. The reduction in interlayer spacing in the tripartite composite could be a result of the loading of structurally bulky groups onto the clay surface or a gradual delamination of the clay framework due to high temperature calcination [33,55].

X-ray Diffraction Patterns of Studied Materials
The X-ray patterns of the unmodified montmorillonite (RC), doped titanium composite (DTC) and the tripartite magnetic montmorillonite composite are depicted in Figure  5a-c. The unmodified montmorillonite showed typical peaks for clay material in the following mineral phases; Quartz at 2θ = 20.9, 26.7, 36.6 and 39.6 according to JCPDS No. 79-1906; Montmorillonite at 2θ = 54.7 and 62.3 according to JCPDS No. 03-0009; Moganite at 2θ = 19.95 according to JCPDS No. 79-2403. However, most of the peaks disappeared or were weakened on loading of the doped titanium particles and the polymeric organic moiety leaving mostly peaks for the quartz and montmorillonite at 2θ = 26.7, 36.6, 54,7 and 62.3. The raw clay also showed its first reflection (d001) peaks at 2θ = 5.26 with a dspacing of 1.67 nm, which is typical of Ca-montmorillonite [54]. However, this peak was deflected in the doped titanium to 2θ = 5.21, corresponding to a d-spacing of 1.71 nm and confirms that the doped titanium particles were successfully intercalated into the montmorillonite layer. Unsurprisingly, in the tripartite composite, the peak was further shifted to 2θ = 20.4 and corresponds to d-spacing of 0.44 nm. This suggests that the polymeric organic moiety was rather adsorbed on the surface of the clay mineral without intercalation. The reduction in interlayer spacing in the tripartite composite could be a result of the loading of structurally bulky groups onto the clay surface or a gradual delamination of the clay framework due to high temperature calcination [33,55].

BET Analysis
The N 2 adsorption-desorption studies of the unmodified montmorillonite, doped titanium composite and the tripartite magnetic composite are represented in Figure 6. The raw clay according to IUPAC classification is exhibited as a type III curve and H3 hysteresis loop which indicates the presence of mesoporous materials [33]. The two modified composites exhibited a type II curve showing lower surface area for monolayer coverage in agreement with basic isotherm model predictions for the modified composites. The BET surface area for the tripartite magnetic composite was calculated to be 288.08 m 2 /g, while that of the unmodified clay was 90.39 m 2 /g. The increase in specific surface area with modification was due to increased sorption sites on the surface of the modified material. However, although the specific surface area of the modified composite was larger, its pore volume was smaller compared to the unmodified clay due to interlayer modification by the intercalating species. This increase in S BET should be reflected in the enhancement of the adsorption capacity. A summary of textural properties of the adsorbents is presented in Table 1.
resis loop which indicates the presence of mesoporous materials [33]. The two modified composites exhibited a type II curve showing lower surface area for monolayer coverage in agreement with basic isotherm model predictions for the modified composites. The BET surface area for the tripartite magnetic composite was calculated to be 288.08 m 2 /g, while that of the unmodified clay was 90.39 m 2 /g. The increase in specific surface area with modification was due to increased sorption sites on the surface of the modified material. However, although the specific surface area of the modified composite was larger, its pore volume was smaller compared to the unmodified clay due to interlayer modification by the intercalating species. This increase in SBET should be reflected in the enhancement of the adsorption capacity. A summary of textural properties of the adsorbents is presented in Table 1.

Thermogravimetric Analysis
The thermogravimetric analysis plot for the unmodified montmorillonite, doped titanium nanocomposite and the tripartite magnetic montmorillonite is presented in Figure 7a-c. The unmodified clay showed two stages of weight loss at a temperature between 30-150 • C and 450-600 • C, corresponding to a release of physisorped water and removal of the dehydroxylation layer inside the clay material, respectively [49]. The doped titanium nanocomposite exhibited mass loss at 30-150 • C, 450-550 • C and above 800 • C, which were attributed to a slight removal of absorbed water, removal of the layer of dehydroxylation, and the burning of carbon residue, respectively [49,50]. For the tripartite nanocomposite, there was only negligible mass loss until a temperature of 230-400 • C was reached, which was attributed to the removal of N-groups from modifier groups [56]. Also, from the plots, the modified nanocomposites presented lower percentage mass losses (22.4 and 3.4) compared to the unmodified clay (28.1).

Thermogravimetric Analysis
The thermogravimetric analysis plot for the unmodified montmorillonite, doped titanium nanocomposite and the tripartite magnetic montmorillonite is presented in Figure  7a-c. The unmodified clay showed two stages of weight loss at a temperature between 30-150 °C and 450-600 °C, corresponding to a release of physisorped water and removal of the dehydroxylation layer inside the clay material, respectively [49]. The doped titanium nanocomposite exhibited mass loss at 30-150 °C, 450-550 °C and above 800 °C, which were attributed to a slight removal of absorbed water, removal of the layer of dehydroxylation, and the burning of carbon residue, respectively [49,50]. For the tripartite nanocomposite, there was only negligible mass loss until a temperature of 230-400 °C was reached, which was attributed to the removal of N-groups from modifier groups [56]. Also, from the plots, the modified nanocomposites presented lower percentage mass losses (22.4 and 3.4) compared to the unmodified clay (28.1).

Zeta Potential of Unmodified and Modified Montmorillonite Adsorbents
Zeta potential of the adsorbents materials was also studied as a function of pH to ascertain the stability of the materials to coagulation in aqueous dispersion. The result of the zeta potential studies is presented in Figure 8. From the results, the zeta potentials of

Zeta Potential of Unmodified and Modified Montmorillonite Adsorbents
Zeta potential of the adsorbents materials was also studied as a function of pH to ascertain the stability of the materials to coagulation in aqueous dispersion. The result of the zeta potential studies is presented in Figure 8. From the results, the zeta potentials of the materials were high, showing high stability to coagulation. Also, the isoelectric point of the materials (pzc) was defined for each adsorbent, showing that the materials were generally stable to agglomeration since their zeta potential falls outside the isoelectric point. The pzc for the adsorbents were MM (4.7), DT-Fe@MM (7.4) and nCDp/DT-Fe@MM (9.4), respectively. the materials were high, showing high stability to coagulation. Also, the isoelectric point of the materials (pzc) was defined for each adsorbent, showing that the materials were generally stable to agglomeration since their zeta potential falls outside the isoelectric point. The pzc for the adsorbents were MM (4.7), DT-Fe@MM (7.4) and nCDp/DT-Fe@MM (9.4), respectively.

Adsorption Efficiencies of Adsorbents for BPA in Simulated Industrial Effluents
The preliminary adsorption efficiency of the tripartite composite compared to that of doped titanium composite and the natural unmodified montmorillonite is depicted in Figure 9 for adsorption of BPA. With an equal adsorbent dosage of 0.02 g, it was found that the tripartite composite showed higher percentage adsorption than the other adsorbents under the same conditions.

Adsorption Efficiencies of Adsorbents for BPA in Simulated Industrial Effluents
The preliminary adsorption efficiency of the tripartite composite compared to that of doped titanium composite and the natural unmodified montmorillonite is depicted in Figure 9 for adsorption of BPA. With an equal adsorbent dosage of 0.02 g, it was found that the tripartite composite showed higher percentage adsorption than the other adsorbents under the same conditions. From the plots, it was also found that percentage adsorption increases with an increase in initial concentration of adsorbate for the composite in contrast with other adsorbent with relative decrease adsorption at higher concentration. This suggests that the com- From the plots, it was also found that percentage adsorption increases with an increase in initial concentration of adsorbate for the composite in contrast with other adsorbent with relative decrease adsorption at higher concentration. This suggests that the composite has a higher surface area. This functionalized surface enhances better pollutant-adsorbent interactions to adsorb at higher concentration compared to other adsorbents, which are suspected to undergo slight desorption at a higher concentration due to low surface area and poor pollutant-adsorbent interactions [57][58][59].

Effect of Dosage of nCDp/DT-Fe@MM
Result of effect of dosage on adsorption of BPA unto nCDp/DT-Fe@MM, DT-Fe@MM and MM is presented in Figure 10. Adsorption increased with dosage and reaches equilibrium at a dosage of 0.02 g/L. Further increase in adsorbent dosage was found to exert little or no effect on adsorption capacity of the process. Higher adsorption efficiency was recorded for the tripartite magnetic composite. This was due to better functional sites and interaction forces as a result of the modifications.

Effect of Time on Adsorption of BPA
The variation in rate of BPA adsorption unto the three adsorbents was studied and the result is presented in Figure 11. The adsorption of BPA increased with increasing time and reaches equilibrium at 30 min with a slight change up to 90 min followed by slight decrease beyond this equilibrium time. Adsorption capacity of nCDp/DT-Fe@MM for BPA was higher than that of DT-Fe@MM and MM. Increased adsorption by the tripartite magnetic montmorillonite was due to addition of hydrophobic cyclodextrin nanopolymer with positive N-group, which increases the π-π and OH-π interactions as well as increased electrostatic interaction between BPA and the functionalized composite [5,33,59,60].

Effect of Time on Adsorption of BPA
The variation in rate of BPA adsorption unto the three adsorbents was studied and the result is presented in Figure 11. The adsorption of BPA increased with increasing time and reaches equilibrium at 30 min with a slight change up to 90 min followed by slight decrease beyond this equilibrium time. Adsorption capacity of nCDp/DT-Fe@MM for BPA was higher than that of DT-Fe@MM and MM. Increased adsorption by the tripartite magnetic montmorillonite was due to addition of hydrophobic cyclodextrin nanopolymer with positive N-group, which increases the π-π and OH-π interactions as well as increased electrostatic interaction between BPA and the functionalized composite [5,33,59,60].

Effect of Solution pH
The adsorption behavior of BPA under varying solution pH was studied and the result is presented in Figure 12. Solution pH has been observed to have an effect on adsorption capacity of adsorbents in such medium [5,13]. Adsorption of BPA increased with increased pH with maximum adsorption at pH 8 and thereafter began to decline at higher pH value. Similar results were observed by Cao et al. [33]. At a lower pH value, BPA, being a weak acid, exists in the protonated form and reaches first deprotonation at pH 8, thus increasing electrostatic attraction between the positive N-group of the modified adsorbent, leading to peak adsorption capacity. However, beyond a pH value of 8, the surface of the modified montmorillonite composite becomes negatively charged due to ionization of oxygen containing groups, and leading to increased electrostatic repulsion between the composite and BPA; hence, the reduction in adsorption capacity at higher pH values [13,33,61].

Effect of Solution pH
The adsorption behavior of BPA under varying solution pH was studied and the result is presented in Figure 12. Solution pH has been observed to have an effect on adsorption capacity of adsorbents in such medium [5,13]. Adsorption of BPA increased with increased pH with maximum adsorption at pH 8 and thereafter began to decline at higher pH value. Similar results were observed by Cao et al. [33]. At a lower pH value, BPA, being a weak acid, exists in the protonated form and reaches first deprotonation at pH 8, thus increasing electrostatic attraction between the positive N-group of the modified adsorbent, leading to peak adsorption capacity. However, beyond a pH value of 8, the surface of the modified montmorillonite composite becomes negatively charged due to ionization of oxygen containing groups, and leading to increased electrostatic repulsion between the composite and BPA; hence, the reduction in adsorption capacity at higher pH values [13,33,61].

Effect of Adsorbent Particle Size on BPA Adsorption
The effect of adsorbent particle size on the adsorption of BPA from an industrial effluent is presented in Figure 13. Adsorption increases with particle size, with maximum adsorption occurring at 0.02 nm and thereafter began to decrease with increase in particle size. It was found that lower adsorption capacity at 0.1 nm could be due to agglomeration followed by rapid desorption [62]. Larger particle size ranging from 0.2 nm to 1 nm can resist the agglomeration effect; hence, a higher adsorption capacity is maintained.

Effect of Adsorbent Particle Size on BPA Adsorption
The effect of adsorbent particle size on the adsorption of BPA from an industrial effluent is presented in Figure 13. Adsorption increases with particle size, with maximum adsorption occurring at 0.02 nm and thereafter began to decrease with increase in particle size. It was found that lower adsorption capacity at 0.1 nm could be due to agglomeration followed by rapid desorption [62]. Larger particle size ranging from 0.2 nm to 1 nm can resist the agglomeration effect; hence, a higher adsorption capacity is maintained.

Effect of Adsorbent Particle Size on BPA Adsorption
The effect of adsorbent particle size on the adsorption of BPA from an industrial effluent is presented in Figure 13. Adsorption increases with particle size, with maximum adsorption occurring at 0.02 nm and thereafter began to decrease with increase in particle size. It was found that lower adsorption capacity at 0.1 nm could be due to agglomeration followed by rapid desorption [62]. Larger particle size ranging from 0.2 nm to 1 nm can resist the agglomeration effect; hence, a higher adsorption capacity is maintained.

Effect of Temperature on Adsorption of BPA
The result effect of temperature on BPA adsorption is presented in Figure 14. There was high adsorption recorded at room temperature and it increased and reached a maximum value at 40 • C. Thereafter, there was a decrease in adsorption as the temperature increased. It was observed that a decrease in adsorption capacity at a higher temperature could be due to energetics of the adsorption process, showing that adsorption is an exothermic process and is favoured at lower temperature [5].

Effect of Temperature on Adsorption of BPA
The result effect of temperature on BPA adsorption is presented in Figure 14. There was high adsorption recorded at room temperature and it increased and reached a maximum value at 40 °C. Thereafter, there was a decrease in adsorption as the temperature increased. It was observed that a decrease in adsorption capacity at a higher temperature could be due to energetics of the adsorption process, showing that adsorption is an exothermic process and is favoured at lower temperature [5].

Desorption Studies of BPA from Used Adsorbent
The rate of desorption of adsorbate molecules from used adsorbent was studied and the result is presented in Figure 15a,b. The rate of desorption was higher for the tripartite magnetic composite than the conventional doped titanium composite and much lower for natural montmorillonite. Rate of desorption was comparably higher in acetone as eluent compared to the DI water. Also, high rate of desorption in the tripartite magnetic composite in both eluents suggests increased pore volume and high surface area and possible application as reusable adsorbent in waste water treatment plants [63]. Acetone was a better solvent for BPA and can be used for regeneration of used adsorbent and enhance reuse. [13,53].

Desorption Studies of BPA from Used Adsorbent
The rate of desorption of adsorbate molecules from used adsorbent was studied and the result is presented in Figure 15a,b. The rate of desorption was higher for the tripartite magnetic composite than the conventional doped titanium composite and much lower for natural montmorillonite. Rate of desorption was comparably higher in acetone as eluent compared to the DI water. Also, high rate of desorption in the tripartite magnetic composite in both eluents suggests increased pore volume and high surface area and possible application as reusable adsorbent in waste water treatment plants [63]. Acetone was a better solvent for BPA and can be used for regeneration of used adsorbent and enhance reuse. [13,53]. magnetic composite than the conventional doped titanium composite and much lower for natural montmorillonite. Rate of desorption was comparably higher in acetone as eluent compared to the DI water. Also, high rate of desorption in the tripartite magnetic composite in both eluents suggests increased pore volume and high surface area and possible application as reusable adsorbent in waste water treatment plants [63]. Acetone was a better solvent for BPA and can be used for regeneration of used adsorbent and enhance reuse. [13,53].

Adsorption Isotherms Analysis
Adsorption isotherms can be applied to study the behaviour of adsorbate on adsorbent. Adsorption data can be subjected to various isotherm models which are useful in explaining the mechanism of the process [64]. Langmuir isotherm has been applied by Men et al. [5]. Israel et al. used Freundlich and Flory-Huggins model to study behaviour of modified coir extract on adsorption of zinc and copper from industrial effluents [62].
Langmuir model was applied to this study to access the surface coverage and adsorbent-adsorbate interaction in terms of layers of coverage. The isotherm fitting is presented in Figure S2 (Supplementary Material) and the isotherm parameters for the adsorption process are presented in Table 1. The linear form of the Langmuir equation and the Langmuir dimensionless constant equation are presented below.
where Co, Ce and qe are initial, equilibrium concentration and adsorption capacity of BPA on adsorbent, respectively, Qo is the theoretical maximum adsorption capacity, b is the constant of the Langmuir isotherm model and KL is the Langmuir dimensionless constant. From the Langmuir isotherm plot, it was found that the correlation coefficients were low for the adsorption process, showing that the process could not be described completely by the model. However, the model fits could be used to describe the process to some extent as a monolayer adsorption process. The process can further be described by the Langmuir dimensionless constant KL, which, according to Israel et al., could provide a hint on how favourable the adsorption process was [62]. From our study and the Langmuir fitting parameter presented in Table 2, it was found that 0 < KL < 1 was computed for the three

Adsorption Isotherms Analysis
Adsorption isotherms can be applied to study the behaviour of adsorbate on adsorbent. Adsorption data can be subjected to various isotherm models which are useful in explaining the mechanism of the process [64]. Langmuir isotherm has been applied by Men et al. [5]. Israel et al. used Freundlich and Flory-Huggins model to study behaviour of modified coir extract on adsorption of zinc and copper from industrial effluents [62].
Langmuir model was applied to this study to access the surface coverage and adsorbentadsorbate interaction in terms of layers of coverage. The isotherm fitting is presented in Figure S2 (Supplementary Material) and the isotherm parameters for the adsorption process are presented in Table 1. The linear form of the Langmuir equation and the Langmuir dimensionless constant equation are presented below.
where C o , C e and q e are initial, equilibrium concentration and adsorption capacity of BPA on adsorbent, respectively, Q o is the theoretical maximum adsorption capacity, b is the constant of the Langmuir isotherm model and K L is the Langmuir dimensionless constant. From the Langmuir isotherm plot, it was found that the correlation coefficients were low for the adsorption process, showing that the process could not be described completely by the model. However, the model fits could be used to describe the process to some extent as a monolayer adsorption process. The process can further be described by the Langmuir dimensionless constant K L , which, according to Israel et al., could provide a hint on how favourable the adsorption process was [62]. From our study and the Langmuir fitting parameter presented in Table 2, it was found that 0 < K L < 1 was computed for the three adsorbents; hence, the adsorption process was favourable for the unmodified montmorillonite and the functionalized composites. Freundlich isotherm model was applied to determine heterogeneity of adsorbent surface for multilayer coverage. The Freundlich isotherm fitting is presented in Figure S3 (Supplementary Material), and the isotherm parameters for the adsorption process are presented in Table 1. The linear form of the model equation is given by the formula below. logq e = 1 n LogC e + Log K F (5) where K F is the affinity coefficient of the Freundlich isotherm model and n is the constant of the Freundlich isotherm. C e and q e have the same meaning as in the Langmuir isotherm model. From the results, it was found that the adsorption data were best fitted into the Freundlich model with higher correlation coefficients R 2 , which were 0.954, 0.959 and 0.957 respectively for the unmodified clay, doped titanium composite and the tripartite magnetic composite, respectively. This implies that the adsorption process was multilayer with adsorbate molecules filling the uneven sites on the adsorbent surfaces [5,34,65]. The Flory-Huggins isotherm has been used to describe the sorption of adsorbate on adsorbents and the result is presented in Figure S4 (Supplementary Material) and the isotherm parameters for the adsorption process are presented in Table 1. This model, which helps to account for the degree of surface coverage characteristics of the adsorbate on the adsorbents, is expressed in a linear form as where θ is the surface converge of the adsorbents by the adsorbate θ = (1 − C o /C e ). K FH and α FH are equilibrium constants of the Flory-Huggins isotherm model. C o and C e are the initial and equilibrium concentration of BPA in the simulated effluent respectively. The equilibrium constant K FH from the Flory-Huggins model is related to the Gibb's free energy using Equation (7).
where R is the universal gas constant = 8.314 JK −1 mol −1 , T is the absolute temperature ( • K) and K FH is the Flory-Huggins's equilibrium constant. From the correlation coefficients in the model, it was found that the adsorption could be relative described by the model and that the adsorbent has high surface coverage. The standard Gibb's free energy computed for the adsorbents showed that the adsorption processes were favorably spontaneous with highly negative energy values of −336.70, −533.76 and −1438.38 KJ/mol, respectively, for the unmodified montmorillonite, doped titanium composite and the tripartite magnetic composite. It was also found that the tripartite magnetic composite has the least Gibb's free energy, and hence the most favourable and spontaneous process occurred with this adsorbent. This is due to the presence of some functional groups that facilitate the adsorp-tion process during its modification. Men et al. and Cao et al. reported similar results for organically modified clays of different origins [5,33]. The Dubinin-Radushkevich isotherm model, which describes the uneven adsorbent surface and pore adsorption, was also used to study the adsorption process of BPA on the functionalized montmorillonite. The isotherm fitting is presented in Figure S5 (Supplementary Material), and the isotherm parameters for the adsorption process are presented in Table 1. The linear form of the model equations is shown as follows: where ε is the adsorption potential energy of the Polanyi, C o , C e and q m have the same meaning as in Langmuir model and β (mol 2 /J 2 ) is the constant of the Dubinin-Radushkevish model and is related to the activation energy of the adsorption process by the following equation: From the results and the model fittings, it was found that the process produces linear fittings with low correlation coefficients, thus showing that the adsorption data were not best fitted into the Dubinin-Radushkevich model. Also, the activation energy was computed for each process, and it was found that the tripartite magnetic composite had the least activation energy (220.22) compared to raw montmorillonite (270.27) and titanium doped composite (222.22), thus showing the readiness and ease of adsorption by the tripartite magnetic composite [34,62]. The summary of BPA adsorption capacity of the adsorbents as compared to those in literature is presented in Table 3.

Adsorption Kinetics Model Analysis
Adsorption kinetics models reveal the effect of time on different adsorption processes. It provides theoretical insight into the mechanism of the adsorption process. In this study, the experimental data for the adsorption of BPA onto functionalized montmorillonite, raw montmorillonite and activated carbon were fitted into the pseudo-first-order kinetic model, pseudo-second-order kinetic model and intra-particle diffusion model [5,67].
The Pseudo-first-order kinetic model assumes single diffusion of adsorbate on an adsorbent surface and also assumes that adsorption is proportional to adsorbate initial concentration. Pseudo-first-order model adsorption processes are mainly characterized by physisorption. The model equation can be stated as follows: Log(q e − q t ) = logq e − K 1 t (11) where K 1 is the rate constant of the pseudo-first-order kinetic model, q e and q t represent adsorption capacity of BPA adsorbed at time t and at equilibrium, respectively. The model fitting is presented in Figure S6 (Supplementary Material), and the model parameters are presented in Table 4. The low correlation coefficient from the model fittings shows that the adsorption process could not be effectively described by the pseudo-first-order kinetic model and that the process was not a physisorption one [68]. The Pseudo-second-order kinetic model can be applied to describe the relationship between rate of adsorption and the square of the unoccupied sites on the adsorbent during the adsorption process. The model equation is expressed in Equation (12): where K 2 (min −1 ) is the rate constant of the pseudo-second-order, q e and q t have the same meaning as in pseudo-first-order model. The model fitting is presented in Figure S7 (Supplementary Material) and the model parameters are presented in Table 2. The model fittings showed that the adsorption process could be perfectly described by the pseudosecond-order model and that the process was chemisorption with the model correlation coefficients at 0.9999 for all adsorbents under study. Men et al. reported similar fittings for an organically modified bentonite [5].
The intra-particle diffusion model is used to describe the diffusion of adsorbates through the pore structure of the adsorbent. If the model fitting gives a straight-line graph from origin, then the process could be described by intra-particle diffusion. Conversely, it would imply that there were other processes responsible for the adsorption. The intraparticle model equation can be expressed as presented in Equation (13): where K id (mg/(g.min 0.5 )) is the rate constant of the intra-particle diffusion model, C (mg/g) represents constant related to the thickness of the boundary layer. The model fitting line is presented in Figure S8 (Supplementary Material), and the model parameters are presented in Table 2. The intra-particle diffusion model recorded low correlation coefficients for all adsorbent and indicated that the process could not be described as intra-particle diffusion as the only rate limiting mechanism but occurred by other mechanisms. Similar results have been reported for modified coir extract, modified montmorillonite and modified bentonite [3,5,62]. The Boyd model is used to predict the actual rate-determining step in the adsorption process. The Boyd model expression is represented by Equation (14). The plot of Bt against time ( Figure S9) indicates that the rate of adsorption for the adsorbents was governed by the film-diffusion step. q t q e = 1 + 6

Adsorption Thermodynamics Analysis
The temperature of adsorption process is related to its energetics and greatly influences the outcome of the process. The adsorption of BPA unto engineered montmorillonite was observed at 303, 313, 323 and 343 K. The standard enthalpy change (∆H • ) and standard entropy change (∆S • ) were obtained from the van't Hoff equation and then the standard Gibb's free energy change (∆G • ) were calculated. The equations can be expressed as: where K d (L/mg) is the thermodynamic equilibrium constant, T (K) is the absolute temperature, R, C e and q e have the same meaning with other models. The plot of lnK d against 1/T for the adsorption of BPA unto the functionalized montmorillonite is presented in Figure S10 (Supplementary Material) and the model parameters are presented in Table 5. From the thermodynamic fitting parameters, it was found that the process was exothermic and favoured at low temperature with negative change in standard enthalpy (∆H • ), the degree of randomness decreases with a decrease in the standard entropy value (∆S • ), as the adsorption proceeds and that the adsorption processes were spontaneous at all temperatures, but most favored at 313 K with the highest negative value for the standard Gibb's free energy (∆G • ). Similar results have been previously reported [5,67,68].

Conclusions
In conclusion, adsorptions were effective for unmodified and modified adsorbents. However, the functionalized adsorbents showed better efficiencies under all conditions, with more favourable energetics data and high stability as indicated by their zeta potentials. The textural properties of the materials reveal larger S BET for the modified composites and hence higher adsorption capacities. It could be concluded from our study that modifications were effective in adding appropriate functional group(s) to the montmorillonite to enhance the adsorption process and high BPA uptake. The magnetic property of the modified composites enhances the separation of the adsorbent form the treatment plant using an external magnetic field, thus preventing secondary pollution. Moreover, from the photodegradation studies, it was noted that the modified adsorbents exhibited high photodegradation, thus enhancing reuse of the adsorbent after already being used a few times prior. The adsorption capacity of the adsorbents increased in the order 12.34 < 15.55 < 25.44, which implies that the tripartite magnetic composite will have the highest pollutant uptake, followed by the titanium doped composite and the unmodified composite.