Photocatalytic degradation of alachlor by TiO2 nanoparticles from aqueous solutions under UV radiation

Abstract This study aimed to synthesise TiO2 nanoparticles (NPs) in pure rutile structure at moderate temperature without calcination and use them as the catalyst for alachlor removal under UV-C radiation. The crystal structure, composition, and particle size of the synthesised TiO2 NPs were analysed using an X-ray diffractometer (XRD) and a scanning electron microscope (SEM). The XRD spectra revealed the production of pure rutile TiO2. The individual and interactive effects of initial alachlor concentration (15–75 mg/L), TiO2 concentration (25–125 mg/L), pH (3–11), temperature (20–40 °C) and reaction time (15–75 min) on alachlor removal were investigated using the central composite design model based on the response surface methodology for experimental design, modelling and process optimization. The analysis of variance and multiple linear regression showed a good fit of the experimental data to the second-order polynomial model, with a coefficient of determination (R2) value of 0.8176 and a model F-value of 19.55975, implying that the model was significant. The results showed that decrease in pH and the initial alachlor concentration and increase in TiO2 concentration resulted in an increase in alachlor removal rate. The maximum rate of alachlor removal (98.44%) at optimum conditions occurred at pH = 5, alachlor = 30 mg/L, TiO2=100 mg, temperature = 35 °C and reaction time = 60 min.


Introduction
Alachlor (2-Chloro-N-(2,6-diethylphenyl)-N-(methoxymethyl)acetamide), which has been commercially used to inhibit the growth of annual grasses and many broadleaf weeds in maize, peanut and soybean fields since 1969, is a member of the chloroacetanilide family of herbicides [1,2]. It is a selective, systemic pesticide that interrupts both protein production and synthesis of long-chain fatty acids in targeted plants [3][4][5]. Due to its high water solubility (242 mg/L) and relatively low soil adsorption coefficient, alachlor can be detected in surface, ground and drinking water in many countries [5][6][7]. Its existence in water resources is particularly concerning due to its possible effects on human health and its toxic effects on aquatic fauna and ecosystems [8].
The maximum concentration of alachlor allowed in drinking water was set at 0.002 mg/L by the United Stated Environmental Protection Agency, while the European Union (EU) allowed a maximum contamination of 0.0001 mg/L [9][10][11]. The World Health Organization's recommended guideline for alachlor in drinking water is 20 lg/L based on a lifetime cancer risk in excess of 1:100,000 [12]. The maximum concentration of alachlor established by the Institute of Standards and Industrial Research of Iran is 0.02 mg/L [13]. Alachlor was banned in the EU in 2006 [14].
Short-term exposure to alachlor causes minor eye and skin irritation, but such exposure may cause organ failure and cancer in the long run [8]. This compound is lipophilic and is metabolised to a little extent in living organisms. Hence, environmental exposure to this compound results in its accumulation and persistence in fatty tissues [15].
Photodegradation with TiO 2 as a photocatalyst has recently attracted much attention as a promising method of water purification, because TiO 2 is relatively inexpensive, photochemically stable and non-toxic and can be easily recycled on an industrial scale [18][19][20]. The anatase phase of TiO 2 has been accepted as the most photoactive TiO 2 . Studies have generally focused on the calcination temperature for the formation of the anatase phase on a support [21]. Nevertheless, increasing attention has been paid to rutile TiO 2 synthesis in the recent years due to superior properties, including thermodynamic stability and possession of chemical inertness even in acidic and basic conditions [18,20]. In general, the adsorption ability of rutile TiO 2 hardly depends on temperature (the adsorption ability of rutile TiO 2 becomes low at high temperatures). Indeed, the degradation effect of rutile TiO 2 mainly originates from its self-catalytic ability [22]. The photodegradation rate of organic compounds with rutile TiO 2 is limited by the rate of electron transfer to oxygen. Therefore, rutile TiO 2 alone has a low photoactivity.
UV-based oxidation has a significant potential due to its high treatment efficiency and low cost. Some organic pollutants can be absorbed and destroyed by UV radiation [23]. Photocatalytic degradation using UV/TiO 2 effectively degraded and mineralised chlorinated pesticides [19]. Moreover, the reaction of the produced photoindused electrons (e -) and positives holes (h) with the environment produced hydroxyl radicals ( OH), which served as the main oxidizing agents responsible for photo oxidation of organic compounds [24]. A study by de Luna et al. [25] found 99.74% alachlor removal under UV radiation. The total organic carbon analysis confirmed the mineralization of alachlor with UV photocatalysis at 92.44% removal [25]. Furthermore, Dehghani et al. [26] demonstrated that decrease in pH and increase in the amount of the catalyst and contact time resulted in an increase in the antibiotic removal rate (90%) [25]. Alvarez-Corena et al. [27] also pointed to the significant degradation of various contaminates (77% for 1,4 dioxane, 92% for n-nitrosodimethylamine, 45% for tris-2-chloroethyl phosphate, 95% for gemfibrozil and 93% for 17 b estradiol) after five minutes of UV/TiO 2 reaction [27]. In the same vein, Kim et al. [18] found that the constant rate (Ka) increased by decreasing the pH value. Accordingly, the constant rate was 0.030, 0.050 and 0.060 h -1 at pH levels of 9, 7 and 5, respectively [18].
Alachlor is a selective, systemic pesticide and despite being banned, it is still used extensively in agricultural fields due to its low cost and high effectiveness. On the other hand, the effect of alachlor on human health is a concern. To address its dangerous effects, its residual concentration in water resources must be identified. Therefore, the main objective of this study is to determine alachlor removal rate from aqueous solutions using TiO 2 Nanoparticles (NPs) under UV radiation. It should be noted that the current work is the first study on the synthesis of TiO 2 in the pure rutile structural format at moderate temperature without calcination and its usage as the catalyst for alachlor removal under UV-C radiation.

Chemicals and analytical method
Alachlor (99.9%) was purchased from Sigma Aldrich Company (USA). Titanium tetrachloride (TiCl 4 , Sigma Aldrich) was used as a precursor to TiO 2 and hydrochloric acid (HCl, Sigma Aldrich) was used as a solvent at the synthesis stage. Acetonitrile and ultrapure water (High Performance Liquid Chromatography (HPLC) grade) were prepared form Sigma Aldrich Company and were used in chromatographic analysis. Other chemical products were purchased from Merck (Germany). A UV lamp, 125 w/m 2 , was used as the radiation source.
For alachlor detection in the aqueous phase, an HPLC system (KNAUER, AZURA, Germany) including C18 columns with precolumn (Eurosphere, 250 Â 4.6 mm) equipped with a UV-photo array detector and 20 lL injection loop was calibrated and tested prior to injection of the samples. The mobile phase included acetonitrile and water (80:20 V/V) with a flow rate of 1.0 mL/min. The absorbance of alachlor at a wavelength of 197 nm was followed. Before injection, the samples were passed through a CSM syringe filter cellulose acetate membrane with a pore size of 0.45 lm (Korea).

Synthesis of TiO 2
TiO 2 was synthesised via acid hydrolysis of TiCl 4 , following the procedure reported by Yener et al. [20]. Briefly, the aqueous solution of TiCl 4 (0.5 M) was prepared using HCl (3 M) to control the fast hydrolysis reaction of TiCl 4 in water. In a typical synthesis, 250 mL of acidic TiCl 4 solution was added in a homemade reactor system. The hydrolysis reaction was carried out at 95 C at a constant stirring rate of 500 rpm under reflux for 3 h. After aging at room temperature for 24 h, the white precipitate and the white supernatant were separated. The precipitate was repeatedly washed with water to reduce the acidity of the suspension by removing Cl ions until the pH of the rinsing water became neutral. The precipitate was then dried at 60 C for 24 h to obtain the final rutile form of TiO 2 NPs.

Characterizations
The crystallite structure of the NPs was investigated by analysing their X-ray diffraction (XRD; D8 advance, Bruker, wavelength: 1/54 Ka Cu). The morphologies and particle sizes were measured using Scanning Electron Microscopy (SEM; TESCAN-Vega 3, TESCAN). The samples were first prepared using ultrasonic dispersion of oxide powder in ethanol and were then dropped on a Cu grid. Subsequently, sputtering coating (Q150R-ES, Quorum Technologies) was added.

Reactor specifications
The photocatalytic degradation of alachlor was carried out in an aqueous medium in a homemade crystalline cylindrical reactor [20]. The reactor volume was 500 mL. The temperature of the reaction medium was adjusted to the desired temperatures by circulating cool water in the jacket of the reactor. Radiation was provided by a UV-C lamp (125 w/ m 2 ) placed at the center of the reactor in a quartz tube. Uniformity in the solution's temperature, pH, and concentration during the reaction period was achieved via magnetic stirring. The lamp was switched on to initiate photoreaction. At regular time intervals, the samples were placed in the test tubes and centrifuged to remove the catalyst NPs. The whole system was wrapped in aluminum foil to prevent reflection. A schematic representation of the utilised reactor has been shown in Figure 1.
Alachlor removal efficiency was calculated using the following formula: Where A and A represented alachlor concentration before and after the TiO 2 /UV process, respectively. Besides, E represented the efficiency.

Experimental design
Response Surface Methodology (RSM) is a combination of statistical and mathematical methods used to select the best experimental conditions to obtain robust results with the lowest possible number of experiments [28]. A Central Composite Design (CCD) with five independent variables was applied to analyse the parameters and their interaction effects. The studied parameters have been presented in Table 1. It is worthy to note that model construction was done using both the actual values of the factors and their coded values (-2, -1, 0, þ1, þ2) presented in Table 1. A total of 60 experiments were found to be sufficient to calculate the coefficients of the quadratic polynomial regression model for the five variables.

XRD analysis
The XRD patterns of the NPs have been shown in Figure 2. The XRD pattern of the synthesised TiO 2 NPs showed that all observed diffraction peaks could be the indicator of a well-crystallised rutile TiO 2 structure (JCPDS No 77-0441) [20]. Based on Figure 2, XRD peaks were at 2h ¼ 28.1 , 37.5 , 42.2 , 55.3 , 64.7 and 69.9 , which corresponded to the rutile form of TiO 2 . The diffraction peaks of other crystallite forms of TiO 2 (brookite and anatase) were not obtained. The average crystalline size obtained from the four sharpest peaks in XRD patterns based on Scherrer equation was 5.77 nm.

SEM studies
The morphology of TiO 2 NPs was studied by SEM. The corresponding SEM photographs have been presented in Figure 3(a). Accordingly, the crystallites of NPs had well-defined, spherical, grain-like crystals. Indeed, most NPs had total apparent dimensions ranging from 20 to 60 nm. However, based on XRD, the crystalline size of NPs was very low. Moreover, the elemental analysis (EDX) of the NPs detected Ti (Figure 2(b)), O, and a small amount of Cl, which could be attributed to utilization of HCl as the solvent in the process of photocatalyst synthesis. The EDX data have been presented in Table S1 (Supporting Information).

Photocatalytic reactions
The removal of alachlor using the synthesised TiO 2 NPs in each designed condition (See next section) was evaluated in the generated reactor and the remained alachlor concentration was checked using HPLC. A typical chromatogram of alachlor in two different concentrations has been depicted in Figure S1 (Supporting Information). Accordingly, the retention time for alachlor in photocatalytic reactions was around 5.7 min. It should be noted that the detection limit for alachlor was 0.001 mg/L.

CCD study
The data matrix obtained from the 60 experiments was checked using different models and was analysed via ANOVA. The HPLC peaks of one out of the 60 runs before and after treatment have been shown in Figure S2 (Supporting Information), which indicated the effectiveness of the applied process in removal of alachlor. The results showed that the quadratic polynomial model was a good option to cover the variation in the data.  However, to avoid the possible over fitting in the model [29], variable reduction was applied based on the backward elimination strategy. The final model for both non-coded (actual) and coded variables has been presented in Equations (2) and (3), respectively.
Y ¼197:1732 À 7:32016A À 0:74694B À 0:00521C À 5:05025D These equations revealed how individual variables and double interactions (between variables or within the same variable) affected the removal of alachlor from the aqueous solution. The negative sign indicates that individual or double interaction factors negatively affected alachlor removal (i.e. pH); whereas a positive sign indicates that, the factors increased the removal of alachlor within the tested range.
The results of ANOVA concerning alachlor removal have been shown in Table 2. The F-value of the model or each term in the model is the ratio of the mean square for the model or individual term to the mean square for the residual. The p-value is the probability of the F-value and is used to test the null hypothesis. Therefore, the larger the F-value and the smaller the p-value, the more significant the corresponding coefficient will be. The parameters with F-statistic probability values <0.05 are considered to be significant [30]. The overall F-value of the model was 19.56, indicating that the model was significant.
In this work, C, E, A 2 , B 2 and D 2 were highly significant parameters (p < 0.0001). A, B, BC and C 2 were significant, as well (p < 0.05). p-Values > 0.05 implied that the model terms were insignificant at the 0.05 level of significance. According to Table 2, temperature and the interaction between pH and the initial concentration of alachlor (AB in the model) was insignificant with a higher p-value. Although temperature showed a high and insignificant p-value, it was retained in the model to prevent its hierarchy. The F-value of lack-of-fit was equal to 1.90, which implied that the lack of fit was not significant relative to the pure error. Therefore, it can be concluded that pH, initial concentration of alachlor, TiO 2 concentration and reaction time played important roles in alachlor removal.  The results of ANOVA for the regression model revealed an R 2 value of 0.818, indicating that the model could explain 81.8% of the variance in the data. For a model to be adequate, the R 2 value should not be <0.75 [31]. However, a large value of R 2 does not always imply that the regression model is a good one. Such inference can only be made based on a similarly highly adjusted R 2 value [32]. An acceptable value of the adjusted determination coefficient (R 2 Adj ¼ 0.776) was estimated in this study, indicating a good agreement between the experimental and predicted values of alachlor removal. According to Rai et al. [33], the values of adjusted R 2 and R 2 of prediction (R 2 pred ) should be within 20% of each other to be in good agreement. This requirement was satisfied in this study, with an R 2 pred value of 0.717 [33]. In addition, the signal-to-noise ratio was found to be 19.463, indicating that the model had an adequate signal. It should be noted that the goal of this work was using the suggested model for optimization of the experimental conditions rather than specific prediction [34]. To reach this goal, a model with acceptable prediction is required, which can be obtained by a liner model with R 2 adj of around 0.77 [35]. The actual and predicted removal percentages and internally studentised residuals can be obtained from diagnostic case statistics. The limit of the internally studentised residuals is 63r [36]. According to Figure 4(a), all conducted experiments showed studentised residuals in the permitted range. Besides, the residual plot was approximated along a straight line. The analysis of the diagnostic case statistics of the data showed that the model fitted well to optimise the independent variables for alachlor removal.
The plot of removal predicted by the developed model against the experimental values has been depicted in Figure 4(b). Accordingly, the model successfully captured the correlation between the process conditions and alachlor removal because the predicted values were in good agreement with the observed values.

Analysis of response surface
Three-dimensional response surfaces were plotted to investigate the interaction among the variables and to determine the optimum condition of each variable for maximum alachlor removal from aqueous phases. The effect of the initial alachlor concentration and pH on alachlor removal at a constant reaction time of 45 min has been presented in Figure 5(a). Accordingly, as the initial concentration and pH decreased, alachlor removal increased. Maximum alachlor removal was obtained at the initial concentration of 30 mg/L and pH of 5. Indeed, a net positive interactive effect was found between pH and the initial alachlor concentration, strongly suggesting the dependency of alachlor removal on both variables.
Dehghani et al. [5] reported that a low alachlor concentration in the enrichment culture might result in higher alachlor degradation capability using a bacterial consortium. In addition, Dehghani et al. [39] showed that the samples with lower initial atrazine concentrations had a higher chance of removal compared to those with higher atrazine concentrations [37][38][39]. Tang and An [40] also found that the removal efficiencies were lower at higher dye concentrations, because fewer photons were able to reach the surface of TiO 2 NPs, reducing the hydroxyl radical flux on the catalyst surface [40]. This may apply to alachlor, as well. pH affects the production of hydroxyl radical as a powerful oxidizing agent [41]. In the research by de Luna et al. [25], Fe-TiO 2 was loaded on granular activated carbon to evaluate alachlor photocatalytic degradation. The results demonstrated that a low pH increased the removal efficiency [25]. In the same vein, Bagal and Gogate stated that low initial operating pH levels and acidic conditions were favourable for degradation [42]. Kim et al. also reported a decrease in alachlor concentration from 5, 4.6, 4.3, 4.1 and 3.9 to 3.7 mg/L in 1, 2, 3, 4 and 5 h at a pH of five and constant rate of 0.060 L/h [18].
The interactive effect of the initial alachlor and TiO 2 concentrations on alachlor removal has been presented in Figure 5(b). A negative significant interaction was found between the initial alachlor concentration and TiO 2 concentration. Therefore, the removal efficiency was reduced with an increase in the initial alachlor concentration and a decrease in TiO 2 concentration. In addition, an increased initial alachlor concentration might decrease the ability of UV radiation to reach the TiO 2 surface because the UV light is attenuated and/or scattered by solids [19,43]. Moreover, the photocatalytic degradation rates increased with TiO 2 dosages, but the reaction was retarded at higher TiO 2 dosages. The increase in the rates was probably due to an increase in the total surface area (or number of active sites) available for the photocatalytic reaction as the dosage of TiO 2 increased. However, when TiO 2 was overdosed, the UV light intensity was attenuated due to decreased light penetration and increased light scattering. Thus, as the dosage increased, the effect was increasingly positive, thereby declining the overall alachlor removal efficiency [19].

Optimised conditions
After model construction, statistical evaluations, and discussion about the effects of the factors and their interactions, the simplex strategy was used to find the maximum efficiency of alachlor removal. It was concluded that at pH ¼ 5, alachlor concentration ¼ 30 mg/L, TiO 2 ¼ 100 mg, temperature ¼ 35 C and reaction time of 60 min, a removal efficiency of about 98.44% was obtained. This predicted efficiency by the model in the optimised conditions was evaluated experimentally. Interestingly, this efficiency was obtained in the real process (98.5%).

Conclusion
TiO 2 can be synthesised into NPs through TiCl 4 acid hydrolysis. The crystallites of NPs had well-defined spherical grain-like crystals with particle sizes of $20-60 nm. The XRD pattern of TiO 2 suggested that all diffraction peaks could be assigned to a well crystallised rutile TiO 2 . The synthesized TiO 2 NPs had the ability to significantly reduce the concentration of alachlor in the aqueous phase. The CCD based on RSM was used to evaluate and optimise the effects of the initial alachlor concentration, pH, TiO 2 concentration, temperature and reaction time on alachlor removal. The results of ANOVA on the regression model revealed an R 2 value of 0.818, indicating that the model could explain 81.76% of the variance. Overall, the optimal conditions for alachlor removal (98.44%) were as follows: pH of 5, alachlor concentration of 30 mg/L, TiO 2 concentration of 100 mg, temperature of 35 C and reaction time of 60 min.

Author's contributions
The corresponding author was the leader of the research team (named as the authors of this article) for all parts of the work, including its design, experiments, data analysis and manuscript preparation. All the authors approved the final version of manuscript.