Assessing the passage of small pesticides through reverse osmosis membranes

Assessing the passage of small pesticides through reverse osmosis membranes

Journal Pre-proof Assessing the passage of small pesticides through reverse osmosis membranes Takahiro Fujioka, Hitoshi Kodamatani, Wang Yujue, Koh Da...

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Journal Pre-proof Assessing the passage of small pesticides through reverse osmosis membranes Takahiro Fujioka, Hitoshi Kodamatani, Wang Yujue, Koh Dan Yu, Elvy Riani Wanjaya, Han Yuan, Mingliang Fang, Shane Allen Snyder PII:

S0376-7388(19)32185-4

DOI:

https://doi.org/10.1016/j.memsci.2019.117577

Reference:

MEMSCI 117577

To appear in:

Journal of Membrane Science

Received Date: 22 July 2019 Revised Date:

9 October 2019

Accepted Date: 16 October 2019

Please cite this article as: T. Fujioka, H. Kodamatani, W. Yujue, K.D. Yu, E.R. Wanjaya, H. Yuan, M. Fang, S.A. Snyder, Assessing the passage of small pesticides through reverse osmosis membranes, Journal of Membrane Science (2019), doi: https://doi.org/10.1016/j.memsci.2019.117577. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. 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. © 2019 Published by Elsevier B.V.

Rejection [%]

100 80 60 40 Diuron

20 0

20

25

30

35

Minimum projection area [Å2]

(Hydrogen bonding)

1

Assessing the passage of small pesticides through reverse osmosis

2

membranes

3

Takahiro Fujioka 1,*, Hitoshi Kodamatani 2, Wang Yujue 3, Koh Dan Yu 3,

4

Elvy Riani Wanjaya 3, Han Yuan 3, Mingliang Fang 3,4, Shane Allen Snyder 3,4

5

1

Graduate School of Engineering, Nagasaki University, 1-14 Bunkyo-machi, Nagasaki 852-8521,

6 7

Japan 2

Division of Earth and Environmental Science, Graduate School of Science and Engineering,

8 9 10 11 12

Kagoshima University, 1-21-35 Korimoto, Kagoshima 890-0065, Japan 3

Analytics Cluster, Nanyang Environment & Water Research Institute (NEWRI), Nanyang

Technological University, 1 Cleantech Loop, CleanTech One, Singapore 637141, Singapore 4

School of Civil and Environmental Engineering, Nanyang Technological University, 50 Nanyang Avenue, Singapore 639798, Singapore

13

_______________________

14

* Corresponding author: Takahiro Fujioka, Email: [email protected], Ph +81 95 819 2695

15

Abstract

16

Attenuation of trace organic chemicals (TOrCs), including pesticides, by reverse osmosis (RO)

17

membrane treatment is critical for ensuring public health protection in potable water reuse. This

18

study aimed to elucidate the mechanisms underlying the poor rejection of small pesticides by

19

polyamide-based RO membranes. Rejection of the selected TOrCs (four N-nitrosamines and 158

20

pesticides) was primarily governed by size exclusion, charge interactions, and dipolar

21

interactions when evaluated at high water temperatures. Further investigation indicated that small

22

and uncharged secondary amide pesticides showed low and highly variable rejections, compared

23

to similarly sized counterparts with no amide functional groups. Remarkably, three secondary

24

amide pesticides that have no other atoms holding a high partial negative charge showed very

25

low rejections (34–65%), likely due to the cooperativity of hydrogen bonding which occurs

26

between amide functional groups of the pesticides and RO membranes. In contrast, secondary

27

amide pesticides that have an atom holding a high partial negative charge showed higher

28

rejections (72–98%) which is due to the inducted electrostatic repulsion. This study proposed

29

that secondary amide pesticides that have no other atoms holding a high partial negative charge

30

can be poorly rejected. The findings are useful to predict the rejection level of unregulated

31

TOrCs.

32

Keywords: secondary amides; trace organic chemicals; NDMA; hydrogen bonding; potable

33

water reuse.

34

1

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1

INTRODUCTION

36

Potable water reuse has been increasingly adopted in many regions of the world that have been

37

plagued by droughts [1]. It is typically carried out by converting municipal wastewater to highly

38

pure water through advanced wastewater treatment. The majority of recent advanced wastewater

39

treatment systems for potable water reuse include microfiltration (MF) or ultrafiltration (UF),

40

reverse osmosis (RO), and ultraviolet (UV) or UV-based advanced oxidation processes [2].

41

Advanced wastewater treatment using RO plays a role in attenuating salts, pathogens, and trace

42

organic chemicals (TOrCs), which include pesticides, disinfection by-products (DBPs),

43

endocrine disrupting compounds, and pharmaceuticals and personal care products (PPCPs) [3, 4].

44

The attenuation of these TOrCs by an RO process can be ensured through periodical water

45

quality testing by approved analytical methods. However, for continuously ensuring regulatory

46

compliance, the infrequent and costly analysis remains a challenge. To date, no monitoring

47

technique has been fully established to continuously and conservatively ensure the attenuation of

48

TOrCs by the RO process or the integrity of RO membranes for TOrC removal [5].

49

As a surrogate indicator for TOrC removal by RO, the authors have recently suggested a low

50

molecular weight (MW) DBP, N-nitrosodimethylamine (NDMA; MW of 74 g/mol), which can

51

be monitored online using high-performance liquid chromatography followed by photochemical

52

reaction and chemiluminescence detection [6, 7]. The NDMA can be considered as a

53

conservative surrogate because it is not well rejected by RO membranes and is typically

54

identified at higher concentrations than the method detection limit (e.g., 1–2 ng/L) in both RO

55

feedwater and permeate [8]. Previous pilot-scale studies conducted by the authors demonstrated

56

that online monitored NDMA rejection was always lower than the rejection of PPCPs [7].

57

Nevertheless, the reliability of NDMA as a conservative surrogate for TOrC removal is still

2

58

questionable, since its conservativeness cannot be guaranteed with the current knowledge about

59

the rejection mechanisms.

60

Despite many studies addressing the rejection mechanisms of TOrCs over the past decade [9-15],

61

the cause of some poorly rejected TOrCs has not been adequately understood. The rejection of

62

TOrCs at high temperatures is of great interest, because wastewater temperature can vary

63

seasonally and TOrC rejection decreases according to an increase in temperature due to the

64

increasing diffusivity of the solutes [16, 17]. According to the previous studies, the transport of

65

TOrCs through nanofiltration (NF) and RO membranes is governed by three major interactions

66

(i.e., size, charge, and hydrophobicity) that occur between compounds and membranes. The

67

rejection of TOrCs by polyamide-based membranes is primarily governed by size interaction and

68

charge interaction, whereas highly hydrophobic TOrCs (e.g., LogD = ≥ 2) can show lower

69

rejection than hydrophilic TOrCs (e.g., LogD = < 2) [18, 19]. As a result, pesticides, most of

70

which are highly hydrophobic, are of great interest [20, 21]. One notable pesticide is diuron,

71

which is an aromatic pesticide with a relatively high molecular weight of 233 g/mol. For

72

example, Chen et al. [22] reported that the rejection of diuron by a polyamide NF membrane

73

element (50%) was the lowest among 11 selected pesticides with molecular weights of 198–286

74

g/mol (60–100%). Similar observations associated with the low rejection of diuron have been

75

reported elsewhere [23-27]. However, to the best of our knowledge, no basic theory for

76

clarifying the mechanisms of the poorly rejected pesticides has been established.

77

This study aimed to elucidate the mechanisms underlying the poor rejection of several pesticides

78

by polyamide-based RO membranes. The rejection mechanisms were comprehensively assessed

79

by analyzing the role of molecular interactions (i.e., size exclusion, and electrostatic,

3

80

hydrophobic, dipolar, and hydrogen bond interactions) using a diverse range of compounds (four

81

N-nitrosamines and 158 pesticides).

82

2

83

2.1 Chemicals

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Analytical grade solutions of four N-nitrosamines – NDMA, N-nitrosomethylethylamine

85

(NMEA), N-nitrosopyrrolidine (NPYR), and N-nitrosomorpholine (NMOR) – were purchased

86

from Ultra Scientific (Kingstown, RI, USA). A stock solution containing the N-nitrosamines was

87

prepared at 10 mg/L in pure methanol. In addition to N-nitrosamines, a total of 158 analytical

88

grade pesticides (Agilent Technologies, Singapore) covering a wide range of molecular weights

89

(MWs) and other molecular properties were used in this study (Table 1 and Table S1).

90

Commercial Marvin (version 18.30, ChemAxon, Budapest, Hungary) was used for drawing and

91

characterizing chemical structures, and calculating molecular properties (minimum projection

92

area, LogD, pKa, dipole moment, and counts of hydrogen bond acceptor or donor). The

93

minimum projection area (MPA) of a compound is a two-dimensional projected area of the

94

chemical calculated based on the van der Waals radius (Figure S1). LogD, which is the octanol-

95

water coefficient of the chemical, was calculated at a test solution pH of 8.0. The selected

96

chemicals were determined to be uncharged (≤50% ionized) or charged (>50% positively or

97

negatively charged, or zwitterion). The total dipole moment of a chemical was calculated as a

98

vector expressed in the principal axis frame. Counts of hydrogen bond acceptor or donor were

99

determined at pH 8. Analytical grade NaCl was purchased from Merck KGaA (Darmstadt,

100

Germany) and analytical grade NaHCO3 was purchased from VWR Singpapore Ltd (Singapore).

MATERIALS AND METHODS

4

101

Two stock solutions containing the pesticides were prepared at 5 mg/L in Milli-Q water with 10

102

mM NaCl and 1 mM NaHCO3.

5

103

Table 1: Properties of four N-nitrosamines and 158 pesticides. Compound

104

MW MPA Compound MW MPA Compound 2 2 [g/mol] [Å ] [g/mol] [Å ] Uncharged Dimethachlor 255.7 50.5 Ipconazole NDMA 74.1 19.4 Propyzamide 256.1 39.7 Zoxamide NMEA 88.1 22.3 Ethidimuron 264.3 33.5 Fenbuconazole NPYR 100.1 25.0 Diethofencarb 267.3 53.4 Bitertanol NMOR 116.1 26.9 Silthiofam 267.5 49.6 Tepraloxydim Propham 179.2 32.4 Methoprotryne 271.4 48.6 Propiconazole Acephate 183.2 32.3 Metazachlor 277.8 52.4 Boscalid Fuberidazole 184.2 24.2 Oxadixyl 278.3 47.7 Azinphos-ethyl Molinate 187.3 37.3 Metalaxyl 279.3 53.2 Triflumizole Tricyclazole 189.2 27.7 Propetamphos 281.3 49.7 Tebufenozide Aldicarb 190.3 35.1 Fosthiazate 283.4 42.5 Beflubutamid Butocarboxim 190.3 38.8 Metolachlor 283.8 56.1 Triflumuron Carbendazim 191.2 25.5 Penconazole 284.2 51.1 Chlorfenvinphos DEET 191.3 41.2 Vamidothion 287.3 42.3 Clethodim Trimethacarb 193.2 35.1 Myclobutanil 288.8 50.9 Flufenacet Cycluron 198.3 34.6 Isoprothiolane 290.4 47.4 Benzoximate Pyrimethanil 199.3 31.3 Thiamethoxam 291.7 38.8 Picoxystrobin Thiabendazol 201.3 25.0 Cyproconazole 291.8 49.2 Methoxyfenozide Metamitron 202.2 28.5 Uniconazole-P 291.8 48.0 Tetraconazole Fenobucarb 207.3 44.2 Triadimefon 293.8 47.7 Spirotetramat Promecarb 207.3 38.8 Paclobutrazol 293.8 49.3 Profenofos Quinoclamine 207.6 25.2 Triadimenol 295.8 47.9 Fluquinconazole Aminocarb 208.3 35.5 Imazalil 297.2 46.0 Prochloraz Propoxur 209.2 40.6 Quinalphos 298.3 45.6 Bromuconazole Ethirimol 209.3 34.8 Phoxim 298.3 52.6 Fluopicolide Chlorotoluron 212.7 29.9 Phosphamidon 299.7 45.3 Sulfentrazone Metribuzin 214.3 34.4 Flutriafol 301.3 49.3 Pyraclostrobin Cymiazole 215.4 29.2 Furalaxyl 301.3 54.6 Dimethomorph Pyracarbolid 217.3 32.9 Methidathion 302.3 34.7 Alanycarb Thiofanox 218.3 39.9 Fenamiphos 303.4 49.6 Azoxystrobin Carbofuran 221.3 40.8 Diazinon 304.4 50.7 Difenoconazole Chloridazon 221.6 29.9 Pirimiphos-methyl 305.3 47.9 Trifloxystrobin Mexacarbate 222.3 41.9 Buprofezin 305.4 56.1 Metrafenone Acetamiprid 222.7 30.8 Tebuconazole 307.8 54.1 Mandipropamide Monocrotophos 223.2 41.2 Diflubenzuron 310.7 27.9 Bispyribac Mepanipyrim 223.3 38.0 Fenamidone 311.4 53.1 Fipronil Mevinphos 224.2 40.2 Triazophos 313.3 46.3 Fluoxastrobin Cyprodinil 225.3 37.7 Kresoxim-methyl 313.4 51.2 Chlorantraniliprole Prometon 225.3 46.3 Hexaconazole 314.2 53.0 Flubendiamide Secbumeton 225.3 42.9 Flusilazole 315.4 54.4 Charged (negative) Tebuthiuron 228.3 37.7 Bupirimate 316.4 54.6 Thidiazuron Flonicamid 229.2 27.1 Azinphos-methyl 317.3 29.2 Quinmerac Dimethoate 229.3 35.8 Triticonazole 317.8 51.5 Chlorsulfuron Trietazine 229.7 40.5 Metconazole 319.8 54.2 Amidosulfuron Fluometuron 232.2 32.7 Phenthoate 320.4 55.8 Thifensulfuron-methyl Diuron 233.1 28.6 Iprovalicarb 320.4 52.2 Tribenuron-methyl Lenacil 234.3 36.3 Cyazofamid 324.8 49.2 Triasulfuron Carboxine 235.3 34.0 Flumetsulam 325.3 50.7 Oxasulfuron Pirimicarb 238.3 44.0 Benalaxyl 325.4 57.8 Flazasulfuron Clomazone 239.7 40.1 Diniconazole 326.2 52.2 Nicosulfuron Methacrifos 240.2 36.0 Dimoxystrobin 326.4 62.2 Charged (positive) Ethoprophos 242.3 50.3 Pencycuron 328.8 49.9 Fenpropidin Fludioxonil 248.2 40.3 Epoxiconazole 329.8 48.5 Zwritterion Linuron 249.1 28.0 Halofenozide 330.8 54.9 Imidacloprid Prosulfocarb 251.4 39.1 Fenarimol 331.2 55.4 Thiacloprid 252.7 36.9 Isoxaben 332.4 51.8 * MPA was calculated using Marvin software (ChemAxon, Budapest, Hungary).

6

MW [g/mol] 333.9 336.6 336.8 337.4 341.8 342.2 343.2 345.4 345.8 352.5 355.3 358.7 359.6 359.9 363.3 363.8 367.3 368.5 372.2 373.4 373.6 376.2 376.7 377.1 383.6 387.2 387.8 387.9 399.5 403.4 406.3 408.4 409.3 411.9 430.4 437.2 458.8 483.2 682.4

MPA 2 [Å ] 60.0 46.3 53.8 49.5 42.3 55.4 49.3 46.3 53.2 67.6 54.7 54.8 53.4 50.1 42.2 47.5 54.3 49.1 54.1 57.4 50.1 47.8 58.3 48.7 42.4 45.6 52.3 66.3 73.8 63.5 60.9 58.0 60.8 58.0 54.7 44.1 63.7 68.0 84.2

220.3 221.6 357.8 369.4 387.4 395.4 401.8 406.4 407.3 536.8

25.0 27.7 49.6 50.7 51.1 48.1 55.3 63.7 46.8 57.2

273.5

46.1

255.7

36.9

105

2.2 Membranes and RO treatment

106

This study used a low pressure RO membrane – namely ESPA2, which is widely used in many

107

water recycling projects [8]. The RO membrane was supplied as flat sheet coupons by

108

Hydranautics/Nitto (Osaka, Japan). RO treatment was conducted using a bench-scale system

109

comprised of a stainless steel membrane cell (Iwai Pharma Tech, Tokyo, Japan), high-pressure

110

constant flow pump (KP-12, FLOM, Tokyo, Japan), pressure regulating valve (Swagelok, Solon,

111

OH, USA), and digital flow meter (F7M, Azbil Co., Tokyo, Japan) (Figure S2). The cross-flow

112

membrane cell has an integrated magnetic stirrer for mixing feed solution at the membrane

113

surface to minimize concentration polarization. The membrane cell held a circular flat-sheet

114

membrane coupon with effective surface area of 36.3 cm2. The RO concentrate and permeate

115

were recirculated into the reservoir.

116

Prior to each rejection test, each RO membrane coupon underwent a stabilization phase by

117

treating Milli-Q water at 1000 kPa. Thereafter, the Milli-Q water was replaced with a 200 mL

118

solution containing 10 mM NaCl and 1 mM NaHCO3. RO treatment was conducted at a constant

119

permeate flux of 20 L/m2h, a constant feed flow rate of 30 mL/min, and a constant feed

120

temperature of 35°C. The high temperature was determined to simulate the summer during a

121

long-term operation, which leads to the lowest performance for TOrC removal due to its high

122

temperature. In addition, a stock solution of N-nitrosamines or pesticides was added to the RO

123

feed to achieve 1.0 µg/L or 5.0 µg/L, respectively. It is noted that the rejection tests for four N-

124

nitrosamines and 158 pesticides were separately conducted to avoid interferences with their

125

analysis. The system was then continuously operated for approximately 70 h before collecting

126

samples from the RO feed and permeate. The RO feed and permeate samples were collected in

127

1.5 mL amber vials for the analysis of N-nitrosamines and pesticides. The extended treatment

7

128

period was determined to reach the steady state condition for adsorption, because most pesticides

129

used in this study are hydrophobic (LogD = > 2), and adsorption onto the membrane can cause

130

overestimation of their rejections [28].

131

2.3 Analytical techniques

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Concentrations of pesticides were analyzed using Agilent 1290 infinity II Binary liquid

133

chromatography (LC) system coupled with Agilent 6460 triple quadrupole (QqQ) mass

134

spectrometer (Agilent Technologies, Santa Clara, CA, USA). The mass spectrometer was fitted

135

with electrospray ionization (ESI) interface in positive and negative mode with Agilent jet

136

stream technology. Identification and quantification of all target compounds were conducted via

137

tandem mass spectrometry. Further information of the pesticide analysis is provided in Text S1

138

and Table S2. Concentrations of four N-nitrosamines were analysed using high-performance

139

liquid

140

chemiluminescence detection (HPLC-AEM-PR-CL) technique [6, 29]. The analysis was

141

performed with an eluent of 1 mM phosphate buffer (pH6.8) and methanol (95:5 v/v) and the

142

sample injection volume of 200 µL.

143

3

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3.1 Size exclusion and electrostatic interaction

145

The importance of size exclusion on TOrC rejection by polyamide-based RO membranes was

146

evaluated using four N-nitrosamines and 158 pesticides. In general, the rejection of the tested

147

compounds increased with an increase in their molecular weight (Figure 1a). However, many of

148

the uncharged pesticides with molecular weights of 180–300 g/mol showed high variations in

149

rejection. Another two-dimensional parameter, referred to as the minimum projection area

chromatography-inline

anion

exchange

reaction-photochemical

reaction-

RESULTS AND DISCUSSION

8

150

(MPA), appeared to be more strongly correlated with the rejection of uncharged pesticides

151

(Figure 1b). The role of size exclusion can be explained by the phenomena that TOrCs with low

152

two-dimensional areas have more clearance with the free volume hole of the membrane structure,

153

resulting in lower rejection. In fact, when curve fitting with the monomolecular growth model

154

was used, MPA (R2adj = 0.6) showed a better fit than molecular weight (R2adj = 0.5). The results

155

indicate that MPA is a suitable parameter to describe the rejection level of uncharged compounds

156

such as pesticides and N-nitrosamines, which confirms the importance of size exclusion in the

157

rejection of uncharged TOrCs. However, large variations of rejection for uncharged pesticides at

158

an MPA of approximately 27–30 Å2 (e.g., diflubenzuron, diuron, chlorotoluron) (Figure 1b)

159

indicates that size exclusion is not the only mechanism governing TOrC rejection. Therefore, the

160

influence of other chemical properties on the rejection of uncharged TOrCs was further

161

evaluated in the following sections.

162

Evaluating the impact of electrostatic interactions on their rejection was difficult in this study,

163

because almost all of the charged pesticides were large in size and uncharged pesticides with

164

equivalent MPAs were also highly rejected. However, the rejection of negatively charged

165

pesticides was found to be higher than the fitted line of uncharged pesticides, with the exception

166

of the smallest charged pesticide (thidiazuron, 43%) (Figure 1b). In contrast, the rejections of a

167

positively charged pesticide (fenpropidin) and zwitterion (imidacloprid) were equivalent to those

168

of similarly sized uncharged pesticides. The rejection of negatively charged TOrCs by RO

169

membranes can be enhanced with electrostatic repulsion that occurs against the negatively

170

charged membrane surface. The skin layer of the polyamide RO membrane, which is formed by

171

a cross-linking of meta-phenylenediamine and trimesic acid trichloride monomers, has remaining

172

carboxyl functional groups (-COOH) that are dissociated (-COO-) and negatively charged at pH

9

173

8 [30, 31]. However, the cause of the poor rejection of thidiazuron remains unclear. Thus, other

174

molecular properties have been accounted for to explain thidiazuron rejection in Section 3.5.

100

(a) y = A×(1-exp(-k×(x-xc)))

Rejection [%]

80

R2adj = 0.50

60 40

Uncharged N-nitrosamines) Charged (-) Charged (+) Zwitterion

(

20 0 100

200

300

400

680

Molecular weight [g/mol] 100

(b) y = A×(1-exp(-k×(x-xc)))

Rejection [%]

80

R2adj = 0.60

Chlorotoluron

60

Diflubenzuron Thidiazuron

40

Diuron

20 0 20

175 176 177 178 179 180

30

40

50

60

70

80

Minimum projection area [Å2]

Figure 1 – Effect of (a) molecular weight and (b) minimum projection area (MPA) of four Nnitrosamines and 158 pesticides on their rejection by the ESPA2 reverse osmosis (RO) membrane (10 mM NaCl and 1 mM NaHCO3; feed temperature of 35 ºC, permeate flux of 20 L/m2h, and pH of 8.1; error bars show the range of duplicate RO treatment experiments). Rejection data is provided in Figure S3.

10

181

3.2 Hydrophobic interaction

182

Hydrophobicity of TOrCs can also be an important additional factor to vary rejection [20, 32, 33].

183

Rejection of TOrCs with strong hydrophobicity can be lower than that of hydrophilic TOrCs,

184

because the former can be concentrated at the RO membrane surface, leading to an increase in

185

their concentrations in the RO permeate. However, in this study, hydrophobicity alone did not

186

show any correlation with compound rejection (Figure S4), indicating that hydrophobicity

187

interactions are less preferential than size exclusion. Therefore, the impact of hydrophobic

188

interactions on pesticide rejection was evaluated by applying six classifications of

189

hydrophobicity and comparing their rejections at a given MPA (Figure 2). As a result, the

190

impact of hydrophobic interactions on pesticide rejection was not apparent for small and

191

uncharged pesticides (e.g., MPA = < 35 Å2). For example, several hydrophobic compounds

192

(LogD = ≥ 2.0) showed higher rejection than hydrophilic compounds (LogD = < 1.9) when

193

evaluated at equivalent MPAs. This indicates that the rejection of low MPA pesticides is also

194

influenced by factors other than size exclusion and hydrophobic interactions. Therefore, the roles

195

of other molecular interactions for the rejection of uncharged and low MPA compounds (MPA of

196

<35 Å2) were further evaluated in the following sections.

11

100

Rejection [%]

80 LogD 60

5.0–5.9 4.0–4.9 3.0–3.9 2.0–2.9 1.0–1.9 ≤0.9

40 20 0 20

30

40

50

60

70

80

2

Minimum projection area [Å ]

197 198 199 200

Figure 2 – Effect of hydrophobicity on the rejection of uncharged compounds by the ESPA2 reverse osmosis (RO) membrane. The results were obtained from Figure 1. Error bars show the range of duplicate RO treatment experiments.

201

3.3 Dipolar interaction

202

Dipole moment (DM), which is the level of charge separation in a compound, can also influence

203

the rejection of TOrCs [34-36]. Regarding the molecular interaction between dipole TOrCs and

204

the RO membrane surface, the positive end of the dipole TOrCs can be favorably attracted to the

205

negatively charged functional group of an RO membrane (i.e., COO–) (dipole-charge interaction),

206

which can cause an increase in the TOrC concentration at the RO membrane surface and

207

consequently lead to low rejection. The compounds tested in this study hold a diverse range of

208

DM; thus, its impact was comprehensively assessed. The results indicated that highly polar (DM

209

= ≥ 6) compounds, with the exception of diuron, showed a proportional increase in rejection as a

210

function of MPA (Figure 3). Compounds with lower polarity (DM = < 6) showed higher

211

rejections than their similarly sized counterparts, which is in line with the theory (i.e., dipole-

212

charge interaction). It is noted that DM was not the only parameter that determines rejection,

213

because the compounds with DM of 6–7 debye showed a considerable variation in rejection (14– 12

214

88%) (Figure S5). The results indicate that the rejection of uncharged TOrCs varies according to

215

their molecular size and DM. However, seven pesticides (chemicals circled with a dotted line in

216

Figure 3) showed substantially lower rejection than their similarly sized counterparts, indicating

217

that other parameters are involved in governing their rejection. Therefore, further evaluation was

218

conducted with a particular focus on these poorly rejected pesticides.

100 DM

80 Rejection [%]

Propham

≥ 6.0 3.5–5.9 1.0–3.4

60

Carboxine

NPYR

Chlorotoluron Diflubenzuron

40 20

Methi -dathion Pyra -carbolid

NMEA Diuron

NDMA

0 15

20

25

30

35

Minimum projection area [Å2]

219 220 221 222

Figure 3 – Effect of dipole moment (DM) on the rejection of small (MPA = < 35 Å2) and uncharged compounds by the ESPA2 reverse osmosis (RO) membrane. The results were obtained from Figure 1. Error bars show the range of duplicate RO treatment experiments.

223

3.4 Hydrogen bonding

224

The cause of the variation in rejection among the small and uncharged pesticides was evaluated

225

by focusing on their molecular structure and functional groups. Overall, the presence of a

226

secondary amide functional group, −C(O)NH−, in pesticides was found to play a key role in

227

determining their removal. For example, the secondary amide pesticides that have atoms holding

228

a high partial negative charge showed the lowest rejection (34–65%) with the exception of

229

cyluron (Figure 4, Table 2). In contrast, the pesticides holding no amide functional groups were

230

highly rejected (83–96%) with the exception of methidathion (72%). The rejection of secondary

13

231

amide pesticides can be higher when they have an atom holding a high partial negative charge:

232

an ether functional group (−O−) (72–80%) or other strong electronegative (EN) atoms holding a

233

high partial negative charge (93–98%) (Table S3). The impact of a secondary amide group on

234

the rejection of pesticides can be explained by the role of hydrogen bonding. Hydrogen bonding

235

occurs between the hydrogen bond acceptor (HB-A), which has a basic electron lone pair, and

236

the hydrogen bond donor (HB-D), which is a partially stripped proton [37]. The secondary amide

237

of the pesticides contains a HB-A (oxygen atom) and HB-D (hydrogen atom); thus, hydrogen

238

bonding can commonly occur with a HB-D (hydrogen atom) and HB-A (oxygen atom) of the

239

membrane’s polyamide, respectively. Secondary amide pesticides that are attracted to polyamide

240

RO membranes through hydrogen bonding increase in concentration at the RO membrane

241

surface, which ultimately leads to low rejection. (d) No amide (c) 2° amide & an atom holding high PNC (b) 2° amide & an ether functional group (a) 2° amide & no other atoms holding high PNC

100

Fuberidazole

Acephate

Ethidimuron Cycluron

Rejection [%]

Fluometuron

80

Propham

Linuron

Pyracarbolid

60

Carboxine Methidathion

Chlorotoluron Diflubenzuron

40 Diuron

28 242 243 244 245 246 247

30

32

34

Minimum projection area [Å2] Figure 4 – Rejection of small (MPA = 27–35 Å2) and uncharged pesticides by the ESPA2 reverse osmosis (RO) membrane. The pesticides were classified into four categories: secondary (2°) amide pesticides that have (a) no atoms holding a high partial negative charge (PNC), (b) an ether group (high PNC), and (c) atoms holding a high PNC, and (d) pesticides that have no amides. Error bars show the range of duplicate RO treatment experiments. 14

248 249 250 251

Table 2 – Molecular properties of low minimum projection area (MPA) (27–35 Å2) and uncharged secondary amide pesticides that have (a) no atoms holding a high partial negative charge, (b) an ether group. The parameters were calculated using Marvin software (ChemAxon, Budapest, Hungary). Name Structure

Diflubenz uron

Diuron

Chlorotol Cycluron uron

Linuron

Propham Pyracarb Carboxin olid e

a

Classification 2 MPA [Å ] DM [Debye] HB donor HB acceptor Rejection [%]

├──────────(a)──────────┤ 27.9 28.6 29.9 34.6 1.0 6.2 4.3 4.8 2 1 1 1 2 1 1 1 53 34 65 95

├──────────(b)──────────┤ 28.0 32.4 32.9 34.0 6.4 2.3 4.5 4.8 1 1 1 1 2 2 2 2 77 79 72 80

252 253 254

a



255

The strength of hydrogen bonds in amide compounds can be reinforced by cooperativity via

256

resonance of the hydrogen bonds (Figure 5a) in a similar way to amides in proteins [38, 39],

257

which may have made the major difference in rejection between secondary amide and no amide-

258

containing pesticides. The cooperativity of hydrogen bonding is likely to be the main cause of

259

the very low rejections of three secondary amide pesticides that have no atoms holding a high

260

partial negative charge (i.e., diflubenzuron, diuron, and chlorotoluron) (34–65%). The only

261

exception was cycluron (rejection = 95%), which holds a cyclooctane in its structure in contrast

262

to the other chemicals with a benzene (Table 2). Unlike benzene that has a planar structure,

263

cyclooctane is conformationally complex and can have because many of its conformers have

264

comparable energy [40]. The chair conformer is the most stable structure of cyclooctane, and the

265

MPA of cycluron (34.6 Å2 in Table 2) was determined based on its stable structure with a chair-

266

like confirmation of cyclooctane (Figure S6). In other words, the MPA of cycluron with other

Hydrogen bond (HB) acceptors and donors with a partial charge of below -0.15 and above 0.15 e at pH 8 are presented with their partial charge in red and blue, respectively. Other atoms with a partial charge of – below -0.15 or above 0.15 e are presented in green.

15

267

conformations can be higher, which can result in a higher rejection of cycluron. However, these

268

speculated mechanisms cannot be further evaluated in this study, because cycluron was the only

269

small chemical that have a cyclooctane in its structure and an MPA of below 35 Å2. There could

270

be some other mechanisms underlying the high rejection of cycluron, thus, further investigation

271

is needed to decode its rejection mechanism.

272

It was also found that secondary amide pesticides can be highly rejected when another atom

273

holding a high partial negative charge is present in the secondary amide structure. The atoms

274

holding a high partial negative charge include an ether functional group (−O−) (e.g. propham)

275

(Table 2), a nitrile functional group (−C≡N) (e.g., flonicamid), trifluoromethyl functional group

276

(R−CF3) (e.g., flonicamid and fluometuron), and a sulfonyl functional group (R−S(=O)2−R’)

277

(e.g., ethidimuron) (Table S3). For example, linuron (C9H10Cl2N2O2, MPA = 28.6 Å2), which

278

has an ether functional group, is very similar to diuron (C9H10Cl2N2O, MPA = 28.0 Å2) in

279

structure and MPA (Table 2), whereas their rejection varied considerably (77% and 34% for

280

linuron and diuron, respectively). Although these functional groups are not dissociated, it can be

281

speculated that their high partial negative charge can cause electrostatic repulsion with HB-A

282

(oxygen atom) of the membrane’s amide that has a high partial negative charge (Figures 5b and

283

5c). The repulsion force may be greater than the attraction force induced by hydrogen bonding,

284

leading to high rejection.

16

285 286 287

Figure 5 – Cooperativity of hydrogen bonding and electrostatic repulsion between an amide functional group of an RO membrane and (a) diuron, (b) propham, or (c) flonicamid.

288

Similar to the uncharged secondary amide pesticides, cooperative hydrogen bonding may be

289

sufficiently strong to impact the rejection of charged secondary amide pesticides. Thidiazuron is

290

a secondary amide pesticide with a negatively charged nitrogen atom at pH 8.0 (Table S3);

291

however, its rejection (43%) was considerably lower than similarly sized counterparts as

292

reported in Figure 1. In contrast, another similarly sized pesticide with a negative charge

293

(quinmerac) holds no amide functional group and showed considerably high rejection (98%).

294

Despite the limited number of samples for small and negatively charged pesticides (i.e., two), the

295

results suggest that hydrogen bond interactions may play a role in the rejection of charged

296

pesticides. Overall, the results obtained in this study suggest that secondary amide pesticides can

297

be poorly rejected by RO membranes due to the electrostatic attraction through hydrogen

298

bonding, whereas their rejection can be sufficiently high depending on the presence of other

299

atoms holding a high partial negative charge.

17

300

4

Conclusions

301

The results of this study indicated that the rejection of small and uncharged pesticides is mainly

302

governed by size exclusion, dipolar interaction, and hydrogen bonding. The amide group of

303

secondary amide pesticides can have the cooperativity of hydrogen bonding with amide

304

functional groups of an RO membrane, which can considerably render their rejection. The

305

presence of an atom holding a high partial negative charge in the secondary amide pesticides

306

leads to higher rejection than pesticides that have no atoms holding a high partial negative charge.

307

This suggests that secondary amide pesticides may be poorly rejected depending on the

308

possession of atoms holding a high partial negative charge. The findings are useful to predict the

309

rejection of unregulated TOrCs, including pesticides, in potable water reuse. In addition, this

310

study confirmed that all 158 pesticides consistently showed higher rejection than NDMA due to

311

the size exclusion and hydrogen bonding, which suggests that NDMA can be a conservative

312

performance indicator for removal of pesticides by RO processes.

313

5

314

This work was supported by JSPS KAKENHI Grant Number JP16KK0132 and JP18H01572.

315

We thank Hydranautics/Nitto for providing RO membrane samples for this investigation. This

316

work is also funded by Singapore Ministry of Education Academic Research Fund Tier 1

317

(M4011732.030), Start Up Grant of Nanyang Technological University (M4081915), Singapore

318

National Environment Agency (M4061617) and Singapore Ministry of Health’s National

319

Medical Research Council under its Clinician-Scientist Individual Research Grant (CS-IRG)

320

(MOH-000141) and Open Fund - Individual Research Grant (OFIRG/0076/2018).

ACKNOWLEDGEMENTS

18

321

6

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RESEARCH HIGHLIGHTS: •

Mechanisms underlying the poor rejection of small pesticides by RO were examined



Size exclusion, and charge & dipolar interactions play a role in pesticide rejection



2° amides holding no high partial negative charge atoms were poorly rejected



The low rejections were attributed to the cooperativity of hydrogen bonding

Declaration of interests ☒ The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper. ☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: