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A transient method for determining indoor chemical concentrations based on SPME: model development and calibration Jianping Cao, Jianyin Xiong, Lixin Wang, Ying Xu, and Yinping Zhang Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.6b01328 • Publication Date (Web): 01 Aug 2016 Downloaded from http://pubs.acs.org on August 1, 2016
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Environmental Science & Technology
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A transient method for determining indoor chemical concentrations
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based on SPME: model development and calibration
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Jianping Cao1, 2, Jianyin Xiong3, *, Lixin Wang4, Ying Xu5, Yinping Zhang1, 2
5 6
1
Department of Building Science, Tsinghua University, Beijing 100084, China
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2
Beijing Key Laboratory of Indoor Air Quality Evaluation and Control, Beijing
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100084, China
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3
School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081,
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China
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4
12
Engineering and Architecture, Beijing 100044, China
13
5
14
of Texas at Austin, Texas 78712-1094, United States
School of Environment and Energy Engineering, Beijing University of Civil
Department of Civil, Architectural and Environmental Engineering, The University
15 16
Abstract
17
Solid-phase micro-extraction (SPME) is regarded as a non-exhaustive sampling
18
technique with a smaller extraction volume and a shorter extraction time than
19
traditional sampling techniques, and is hence widely used. The SPME sampling
20
process is affected by the convection or diffusion effect along the coating surface, but
21
this factor has seldom been studied. This paper derives an analytical model to
22
characterize SPME sampling for semi-volatile organic compounds (SVOCs) as well
23
as for volatile organic compounds (VOCs) by considering the surface mass transfer
24
process. Using this model, the chemical concentrations in a sample matrix can be
25
conveniently calculated. In addition, the model can be used to determine the
26
characteristic parameters (partition coefficient and diffusion coefficient) for typical
27
SPME-chemical samplings (SPME calibration). Experiments using SPME samplings 1
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of two typical SVOCs, dibutyl phthalate (DBP) in sealed chamber and di
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(2-ethylhexyl) phthalate (DEHP) in ventilated chamber, were performed to measure
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the two characteristic parameters. The experimental results demonstrated the
31
effectiveness of the model and calibration method. Experimental data from the
32
literature (VOCs sampled by SPME) were used to further validate the model. This
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study should prove useful for relatively rapid quantification of concentrations of
34
different chemicals in various circumstances with SPME.
35 36
Introduction
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Emissions of volatile organic compounds (VOCs) and semi-volatile organic
38
compounds (SVOCs) from building materials and consumer products contribute to
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poor indoor air quality, adversely affecting people’s comfort, health and
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productivity.1-3 Exposure to certain VOCs and SVOCs can result in serious health
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problems (e.g., external malformations, reproductive disorders), sick building
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syndrome (SBS), and elevated risks of asthma, allergies and cancer.4-7 For these
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reasons, a method to rapidly quantify these chemical pollutants in the indoor
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environment is required, so that exposure levels and associated health risks can be
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evaluated. Knowledge of techniques to monitor levels of chemical pollutants in
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various environments is currently an important area of interest.8
47
The development of highly specific and sensitive instruments, e.g., gas
48
chromatography/mass
spectrometry
(GC/MS)
and
high
49
chromatography (HPLC), has greatly improved the reliability and accuracy of
50
chemical quantifications. These days the main obstacles faced by analytical chemists
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include the operational complexity of sample preparation and the inconvenience of
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introducing extracted components to analytical instruments.9 Typical techniques of
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sample preparation include the Tenax-TA sorbent technique, the polyurethane foam
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(PUF) sorption technique, the 2,4-dinitrophenylhydrazine (DNPH) technique, and the
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solid-phase micro-extraction (SPME) technique.10-14 Only the SPME method is 2
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defined as a non-exhaustive sampling technique where a very small sample volume is
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used in the extraction phase relative to the sample volume. This feature allows for
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convenient monitoring of the investigated system since sampling causes minimal
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perturbation to the sample.15 The extraction time of the SPME technique is much less
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than that of Tenax-TA sorbent, PUF or DNPH techniques due to the small extraction
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volume, and this merit becomes significant for sampling SVOCs. In addition, SPME
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is quite applicable for sealed chamber tests (it can simplify the experimental system
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and improve the rapidity of measuring the characteristic parameter of SVOC
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emissions16-18) because of the features of SPME mentioned above.16 The SPME
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sampling technique has therefore gained in popularity since its invention.12, 19
66 Figure 1. Schematic of SPME for chemical sampling. (a) SPME sampling in liquid or gas phase; (b) flow across a flat plate (simplified SPME sampling). 67 68
The structure of an SPME system is optimized to facilitate speed, convenience of
69
use, and sensitivity. The system comprises a thin stainless steel (SS) needle and a
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sampling fiber attached to the SS.20 The sampling fiber consists of a cylindrical fused
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silica fiber with a coating surrounding it. The schematic of the SPME sampling fiber
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for chemical (or analyte) sampling is shown in Figure 1 (a).20 During the sampling
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process, the sampling fiber is exposed to the sample matrix and the chemical (or
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analyte) is sorbed (or extracted) by the coating surrounding the fiber. The fused silica
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is generally assumed to be impenetrable to chemicals.21 The SPME needs to be
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calibrated to facilitate its application. The calibration method involves two procedures:
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the first is to establish a model for characterizing the SPME samplings; the second is
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to determine the parameters involved in the model. Equilibrium and kinetic
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calibration methods are the two most commonly used methods for SPME
80
calibration.22 In the equilibrium calibration method, measurements are made after
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partition equilibrium has been reached between the coating and the target chemical. 3
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This method establishes a linear relationship between the amount of chemical in the
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SPME coating and the constant chemical concentration in the sample matrix, with an
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equilibrium partition coefficient that needs to be determined.22, 23 In some situations it
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may not be feasible to reach extraction equilibrium, and this has led to the
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development of the kinetic calibration method. This method considers the
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diffusion-controlled process inside the coating, and a kinetic model relating the
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amount of chemical extracted to the extraction time is derived, with two model
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parameters (the coating/sample partition coefficient, K; and the diffusion coefficient
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of the chemical inside the coating, Dm) that need to be measured.22, 24, 25 It should be
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pointed out that the existing kinetic calibration method seldom considers the
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convection effect on the SPME coating surface when there is relative movement
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between SPME and the sample matrix. In some cases, a convective boundary layer
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thickness is introduced, but a linear concentration distribution inside the layer is
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assumed.24 This assumption results in significant deviations since the real
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concentration distributions are ignored. Prior studies have shown that for chemical
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emissions from building materials and consumer products, the convective mass
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transfer process played a significant role on the emission characteristics, especially for
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SVOCs.26-28 Given that SPME sampling (i.e., sorption process) is the inverse process
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of chemical emissions, the convective mass transfer process will also significantly
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affect the SPME sampling. For some scenarios, SPME is used to measure the
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concentration of target analyte in static mode (both the sample matrix and SPME are
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static). Under these conditions, the concentration gradient of target analyte between
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the sample matrix and SPME coating surface also needs to be considered. Therefore,
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ignoring the effect of mass transfer between the sample matrix and SPME coating
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surfaceduring sampling may lead to model prediction error and error in the
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measurement of parameters in the kinetic model. Moreover, in SVOC sampling, the
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SPME mainly focuses on quantification of liquid samples, and it has seldom been
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reported to quantify gaseous samples due to the difficulties associated with low gas 4
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phase SVOC concentrations, as well as the ubiquitous SVOC contamination in
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laboratories.
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Taking the above observations into consideration, the objectives of this paper are
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to: (1) establish an analytical model to characterize the SPME sampling by taking into
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account the mass transfer process between the sample matrix and SPME coating
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surface; (2) determine the characteristic parameters (partition and diffusion
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coefficients) for typical SPME-chemical samplings, particularly for gas phase
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SVOCs.
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Analytical model and calibration method
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If in the SPME, the thickness of the coating (e.g., 7 µm, designated as L) is much
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smaller than the radius of the fused silica (e.g., 55 µm, designated as R), the
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cylindrical coating can be unfolded into a flat plate, as shown in Figure 1(b).29
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Detailed discussion about the error introduced by unfolding the cylindrical coating
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into a flat plate is presented in Section S1 of the supporting information (SI), showing
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that this error is less than 5% when L is less than 7 µm (for R = 55 µm). It is assumed
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that the coating is uniform, and that the chemical diffusion process inside the coating
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is one-dimensional. According to the mass transfer mechanism, the controlling
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equation can be written as:
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∂C m ∂ 2Cm = Dm ∂t ∂x 2
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where Cm is the concentration of chemicals in the coating, µg/m3; Dm is the diffusion
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coefficient of the chemicals in the coating, m2/s; t is the time, s; and x is the distance
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to the coating/silica interface, m.
(1)
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Since the fused silica is generally assumed to be impenetrable to the chemicals21,
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there is no mass flux at the coating/silica interface. The boundary condition at the
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fused silica surface can then be written as:
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∂C m = 0, x = 0 ∂x 5
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At the coating surface exposed to the sample matrix (gas or liquid phase) of
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chemicals, there is a concentration gradient between the coating surface and the
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sample matrix. It should be noted that this concentration gradient (it will cause
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convective or diffusive mass transfer effect) is seldom considered in the traditional
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models, but it does in fact significantly affect the coating extraction characteristics. In
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the SPME sampling process, the amount extracted by the coating is generally very
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small, and will thus not influence the concentration of chemicals in the sample
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matrix.22, 30 If the measured media moves around SPME or SPME shakes during
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sampling (e.g., SPME sampling in ventilated chamber), the boundary condition at the
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coating surface can be expressed as:
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Dm
∂C m C = hm (Cin − m ), x = L ∂x K
(3)
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where Cin is the concentration of chemicals in the sample matrix (liquid or gas phase),
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µg/m3; K is the coating/sample partition coefficient (or distribution coefficient),
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dimensionless; L is the thickness of the coating, m; hm is the convective mass transfer
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coefficient across the coating surface, m/s, which can be calculated by the following
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empirical correlation (for cross flow over a cylinder) 29, 31:
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Sh = C ⋅ Ren Sc1/3
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where Sh (=hmd/Da) is the Sherwood number; Re (=ud/v) is the Reynolds number; Sc
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(=v/Da) is the Schmidt number; u is the velocity over the coating surface, m/s; v is the
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kinematic viscosity of the sample matrix, m2/s; d is the diameter of the coating, m (d
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= 2R+2L); Da is the diffusion coefficient of chemicals in the sample matrix, m2/s; C
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and n are parameters related to the Reynolds number, which are given the values of
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0.989 and 0.33, respectively. These values are appropriate for cross flow over a
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cylinder with Re in the range of 0.4-4 and Sc over 0.7.29, 31 Da can be estimated using
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empirical correlations 32 or obtained from measurement results in the literature 33.
(4)
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As mentioned previously, SPME is sometimes used to measure the concentration
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of target analyte in static mode (e.g., SPME sampling in sealed chamber). In these
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scenarios, equation (4) is no longer applicable since Re approaches zero, and the mass 6
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transfer of target analyte from the measured media to SPME is controlled by
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molecular diffusion. The boundary condition at x = L, i.e., equation (3), should be
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represented as: 29, 34
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Dm A
∂Cm C = Da S (Cin − m ) ∂x K
(5)
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where A is the exposed area of the coating, m2, A = 2π(R+L)·H; H is the length of
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SPME coating.
171 172
Comparing this equation with equation (3), it is easy to find that hm can be expressed as (here, hm is treated as an “equivalent” mass transfer coefficient):
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hm = Da S A
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where S is the shape factor (commonly used in the field of two dimensional mass or
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heat transfer) for a finite cylinder in an infinite medium with uniform concentration,
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m 29; A is the surface area of SPME coating, A = 2π(R+L)·H. In this way, equation (5)
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can be rewritten in the same form of equation (3). In the case of cylindrical SPME
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coating in a uniform SVOC concentration, S can be estimated by:29, 34 S = 4π L 1 − γ 2
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1 + 1 − γ 2 ln 1 − 1 − γ 2
(6)
with γ = d H
(7)
Initially there are no chemicals in the coating, or: Cm ( x, t ) = 0, t = 0, 0 ≤ x ≤ L
181 182
(8)
The amount of chemicals extracted onto the coating can be expressed as: t
M (t ) = ∫ Dm A
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0
∂Cm ∂x
dt
(9)
x= L
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where M(t) is the amount of chemicals extracted onto the coating in extraction time t,
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µg.
186 187
For equations (1)-(9), the amount of chemicals extracted onto the coating can be derived using a Laplace transform, or: ∞
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−2 2 sin qn e− Dm L qn t n =1 q sin qn + qn cos qn
M (t ) = M equ − 2M equ ∑
2 n
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where Mequ (=KCinVm) is the equilibrium amount of chemicals extracted onto the
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coating, µg; Vm is the volume of the coating, m3, Vm = A·L; qn are the positive roots of
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the following equations:
qn tan qn =
192 193
hm L Dm K
( n = 1, 2,...)
(11)
The terms in the infinite exponential series of equation (10) decay very fast as
194
time increases. Thus if the sampling time is sufficiently long, only the first term (n = 1)
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is significant. This means:
196 197
−2 2 sin q1 M (t ) = M equ 1 − 2 2 e− Dm L q1 t = M equ (1 − α e − β t ) q1 sin q1 + q1 cos q1
where α = 2 sin q1
(q
2 1
(12)
−2 2 sin q1 + q1 cos q1 ) ; β = Dm L q1 .
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Detailed calculation (See SI Section S2) indicates that when t ≥ 0.12L2/Dm, the
199
relative deviation is less than 5% when applying equation (12) as an substitute for
200
equation (10). Thus, the condition for simplifying equation (7) into equation (12) is t
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≥ 0.12L2/Dm (0.12L2/Dm is referred to as tmin).
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The analytical model, equation (10) or (12), establishes the relationship between
203
the quantity of chemicals extracted onto the coating, and the extraction time when
204
using SPME for chemical sampling. When determining chemical concentrations in
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the sample matrix (i.e, Cin) based on SPME, we can measure the quantity of chemicals
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adsorbed by SPME fiber coatings (M), Cin can then be determined using equation (12),
207
if the characteristic parameters (Dm and K) are known. Therefore, in routine
208
application, we need to first determine Dm and K for the target chemical (calibration
209
of SPME). Equation (12) can also be applied to address the calibration problem
210
(determine Dm and K) if the time-dependent SPME adsorbed chemical amounts are
211
measured. The calibration method provides a basis for quantifying the concentration
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of chemicals in various circumstances with SPME. Therefore, this paper mainly
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focuses on the determination of the characteristic parameters (Dm and K ) for different
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SPME-chemical combinations, which is closely related to the adsorption/desorption
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properties of chemicals on the SPME fiber. 8
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Once the extraction amount (M) of a target chemical is measured at a series of
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intervals (> tmin), Mequ, α, and β can be obtained by fitting equation (12) to these
218
measured points. Then K and Dm can be determined by following these steps:
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(1) Solve the following equation (13) for q1 (positive root):
sin 2 q1 α = 2 q1 + q1 sin q1 cos q1 2
220
(13)
221
(2) Calculate Dm: Dm = β L2 q12 ;
222
(3) Calculate hm using equations (4) or (6), and then determine K according to
223
equation (11), or: K=
224
hm L Dm q1 tan q1
(14)
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(4) Calculate tmin (= 0.12L2/Dm) with the obtained Dm. If the shortest sampling
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time is less than tmin, eliminate the sampling data before tmin and then repeat
227
steps (1)-(4) with the remaining data; otherwise output Dm and K.
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Although the error introduced by unfolding the cylindrical coating into a flat
229
plate can be large when L is larger than 7 µm (as shown in SI Figure S2), the analysis
230
in SI Section S4 demonstrates that the model (i.e., equation (12)) is also effective
231
when the coating thickness is comparable to the radius of the fused silica (55 µm for
232
commonly used SPME35).
233 234
Experimental section
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Dibutyl phthalate (DBP) and di (2-ethylhexyl) phthalate (DEHP) are widely used
236
as plasticizers and are the main SVOCs emitted from polyvinylchloride (PVC)
237
products.36-38 In addition, the gas phase concentrations of DBP and DEHP have
238
seldom been sampled by SPME. For these reasons we chose DBP and DEHP as the
239
target pollutants for the SPME calibration experiments. The experiments for DBP and
240
DEHP were conducted in sealed and ventilated chambers, respectively. It should be
241
noted that a sealed chamber is not very common for SVOC emission tests in prior 9
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studies. The reason is that the traditional sampling methods (e.g., Tenax TA tube and
243
PUF sampling methods) are not suitable for a sealed chamber since they need to
244
extract significant amounts of pollutants from the chamber (especially for multiple
245
samplings) but the quantity of pollutants in sealed chamber is limited. However, the
246
SPME is a non-exhaustive sampling technique with a smaller extraction volume and a
247
shorter extraction time, and thus is quite applicable for sealed chamber as mentioned
248
in the “Introduction” section. Using two kinds of chambers aims to examining the
249
adaptation of SPME calibration in different test conditions, thereby extending the
250
application range of SPME in routine analysis.
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The schematic of the experimental system for SPME calibration is shown in
252
Figure 2. Figure 2 (a) is the experimental system designed for DBP. Pure DBP
253
(purchased from Sigma-Aldrich Co. LLC, purity 99%, product ID. 524980-500 mL)
254
in a petri dish (without cover) was put inside a 30 L chamber designed for VOC
255
emission tests
256
0.5 °C). During the experiment, the 30 L chamber was sealed. Once the concentration
257
of DBP in the chamber reached equilibrium (about two days according to our
258
observations), the gas phase DBP was sampled by SPME. Several SPMEs were
259
inserted into the chamber, and adsorbed the DBP for different lengths of time, so as to
260
get the time-dependent SPME extraction curve for calibration. After sampling, the
261
surfaces of the stainless steel rod of SPME, which would also adsorb DBP (and other
262
chemicals), were wiped using medical cotton wool soaked with dichloromethane
263
(CH2Cl2). The SPME was finally analyzed using gas chromatography-flame
264
ionization detection (GC-FID, Agilent Technologies 7890A GC system equipped with
265
a flame ionization detector) as follows: inserted SPME (the whole sampling fiber and
266
part of stainless steel rod) into the injection port (280 ºC) of the GC; allowed the
267
coating of sampling fiber to desorb for 15 min; cooled to room temperature.
39
, where the air temperature was controlled using a water bath (25 ±
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Since DEHP can be very easily adsorbed by the chamber surface (e.g., chamber
269
surface/air partition coefficient (Ks) = 1500 m for DEHP while Ks = 60 m for DBP 38) 10
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and the sorption area of the 30 L chamber surface is much larger than the emission
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area of the pure SVOC, the time required for the DEHP concentration in the 30 L
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chamber to reach equilibrium would be relatively long.17, 40 For example, the DEHP
273
concentration reached equilibrium after more than 150 days in a CLIMPAQ (with a
274
volume of 51 L).17,
275
system for DEHP, as shown in Figure 2 (b). The small chamber is made of stainless
276
steel, with a volume of 1.8 L and interior surface area of 0.13 m2. Pure liquid DEHP
277
(purchased from Sigma-Aldrich Co. LLC, purity ≥ 99%, product ID. D201154-500
278
mL) was put inside the small chamber. The temperature of the chamber was
279
controlled by a water bath, fixed at 25.0 ± 0.5 ºC. During the experiment, clean air
280
with controlled relative humidity (50 ± 5%) was introduced into the chamber. The air
281
flow was 90 mL/min, and the diameters of the inlet and outlet tubes were both 6.0 mm.
282
To reduce the effect of DEHP sorption on the chamber and tube, the surfaces of the
283
chamber and tube were wiped with pure DEHP at the beginning of the experiment.
284
After two days (the time required for DEHP concentration to reach equilibrium
285
according to our observations), gas phase DEHP was sampled by SPME at the
286
chamber outlet. The procedure for analyzing the SPME sample is the same as
287
described above for DBP.
40
To obviate this problem, we designed a new experimental
288
Figure 2. Experimental system for SPME calibration. (a) for DBP, (b) for DEHP. 289 290
A six-point calibration curve for DBP (similarly for DEHP) was obtained by
291
following these steps. Pure DBP (DEHP) was diluted to 1, 10, 60, 200, 500, and 1000
292
µg/mL (the solvent is CH2Cl2), and 1.0 µL of each dilution was injected into a GC. All
293
samples, SPME samples and dilutions, were analyzed by GC-FID. The
294
chromatographic column was an HP-5MS SemiVol (30 m × 0.25 mm × 0.50 µm). The
295
carrier gas was He, with a flow rate of 50 mL/min, split, 10:1. The column
296
temperature program was: 120 ºC for 2 min; increased to 300 ºC at a rate of 15 ºC/min; 11
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and held for 10 min (24 min in total). The temperature of the injection port and FID
298
were both 280 ºC. The calibration curve is demonstrated to be valid since R2 of the
299
curve is greater than 0.99.
300
SPMEs were purchased from Sigma-Aldrich Co. LLC. (Supelco Analytical, Cat.
301
NO. 57302). The coating was made of polydimethylsiloxane (PDMS, feasible for
302
sampling of nonpolar SVOCs) with a thickness of 7.0 µm and a length of 1.0 cm. The
303
diameter of the fused silica fiber was 110.0 µm. Before the experiment, each SPME
304
was conditioned by heating it in a GC injection port at 280 ºC for 5 min. The carrier
305
gas was He, with a flow rate of 10 mL/min. After conditioning, the remained mass of
306
DBP and DEHP in the coating should be below the limit of quantitation (LOQ, i.e., 1
307
ng) of the relevant GC-FID method.
308 309
Results and discussion
310
Sensitivity analysis
311
For SPME samplings, it is necessary to perform sensitivity analysis with the
312
derived analytical model, so as to know the impact of some model parameters (hm, K,
313
and Dm) especially hm on the extraction of chemicals from the sample into the coating.
314
The SPME introduced in the experimental section is used for this analysis. For
315
common material-SVOC combinations, K is in the range of 105-1011.13,
316
estimated to be in the range of 10-14-10-10 m2/h according to equation (S3) in Cao et
317
al.’s study.18 Based on these data and the analytical model, we can obtain the SPME
318
extraction amount for different model parameters. Figure S5 (a) of the SI shows the
319
results of sensitivity analysis of hm under a typical condition (the baseline parameters
320
are set as: K = 1×108, Dm = 1×10-11 m2/h, hm = 0.01 m/s, and Cin = 1 µg/m3). This
321
figure reveals that hm has a substantial impact on the extraction rate of SPME, and the
322
smaller the value of hm, the greater the impact. For SPME in these experiments, hm is
323
calculated to be 3.36 × 10-2 m/s for the DEHP experimental system (ventilated
324
chamber) by virtue of equation (4) (with Re = 0.414, Da = 3.37 mm2/s 12
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Dm is
and Sc =
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4.72). While for the DBP system (sealed chamber), since there is no bulk air
326
movement around the SPME during the whole experiment, hm (the “equivalent” mass
327
transfer coefficient) should be calculated with equations (5) and (6). In this way, hm is
328
calculated to be 1.33 × 10-2 m/s (with Da = 4.21 mm2/s 33) for the DBP system. These
329
values (3.36 × 10-2 m/s and 1.33 × 10-2 m/s) lie within the simulated range of hm
330
shown in Figure S5 (a), implying that it is very necessary to take hm into account in
331
the models for characterizing SPME samplings. Therefore, the analytical model
332
derived in this study can be regarded as a significant improvement on previous model
333
studies that generally ignore the impact of hm. Results of sensitivity analysis of Dm
334
and K are shown in SI Figures S5 (b) and (c), respectively. It indicates that K has a
335
significant impact on the extraction amount of SPME. With the increase of K, the
336
equilibrium extraction amount (Mequ) increases and the time required to reach
337
equilibrium increases as well. The influence of Dm on the extraction process is not as
338
significant as that of K. Dm mainly takes effects in the initial extraction period (the
339
extraction rate increases with the increase of Dm) and doesn’t influence the
340
equilibrium extraction amount of SPME.
341 342
Determination of the characteristic parameters
343
The SPME experiment for DBP lasts for 26 h, while for DEHP experiment takes
344
141 h. Using the measured time-dependent extraction amount, the simplified
345
analytical model (equation (12)) is used to perform nonlinear curve fitting. The
346
characteristic parameters (Dm and K) can be obtained using the procedure described at
347
the end of the Section “Analytical model and calibration method”. OriginPro 8
348
(OriginLab Corporation) was employed for curve fitting. The fitted curves for the two
349
SVOCs as well as the R2 for regression are shown in Figure 3, and the determined
350
parameters are listed in Table 1. According to the ASTM Standard D5157-97
351
correlation coefficient (R) of 0.9 or greater can be regarded as generally indicative of
352
adequate model performance. In this case, all R2 are greater than 0.95, implying high 13
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regression precision.
354
Figure 3. Fitted curves and comparison of SPME extraction amount for the simulated results based on the determined characteristic parameters and the experimental data. (a) DBP; (b) DEHP. 355
Table 1. Determined characteristic parameters by virtue of the model, and comparison of the saturated gas phase concentrations of pure chemicals measured in this study with that measured in the literature. 356 357
The two characteristic parameters (Dm and K) determined by the simplified
358
model (equation (9)) can be substituted into the complete analytical model (equation
359
(10)) to calculate the extraction amount of the SPME. We can then compare the
360
simulated results with the experimental data, as shown in Figure 3. The comparison
361
can be regarded as a preliminary validation of the calibration method. Figure 3
362
indicates that the simulated results agree well with the measured data. In addition, the
363
simulated results from the complete analytical model (equation (10)) and from the
364
simplified model (equation (12)) are almost the same when the time is longer than the
365
application condition (tmin) of equation (12). The accord between the results from the
366
two models and the experimental data demonstrates that the measured characteristic
367
parameters are reliable. From the simulated results shown in Figure 3, we can see that
368
the extraction amount approaches equilibrium after 26 h for DBP, while for DEHP the
369
equilibrium is still not reached. These results imply that the calibration process can be
370
terminated before the sorption of SVOC on to the SPME coating reaches equilibrium.
371
This is a salient feature of the present method because it can save time, particularly
372
for the calibration of chemicals with large vaules of K (e.g., DEHP).
373
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Measured saturated gas phase SVOC concentration and comparison with
375
literature
376
In the calibration method, the equilibrium extraction amount of chemicals onto
377
the SPME coating (Mequ) can be obtained by virtue of nonlinear curve fitting,
378
following which the steady state concentration of SVOCs in the gas phase
379
(Cin=Mequ/KVm) can be determined. The determined gas phase concentrations for DBP
380
and DEHP are 488 µg/m3 and 5.58 µg/m3, respectively. In the experimental section,
381
pure SVOC liquids are used. So for the sealed chamber, the Cin determined from the
382
experiment should be the same as the saturated gas phase concentration (designated as
383
ysat) of pure chemicals, i.e., ysat = Cin. While for the ventilated chamber, ysat is a
384
function of Cin, i.e., ysat = Cin·(1+Q/(hm,eA)) (equation (5) of Liang et al.38), where Q is
385
the air flow rate of the chamber; hm,e is the convective mass transfer coefficient at the
386
source surface; A is the emission area of the SVOC source. In this study, for DBP, ysat
387
is equal to Cin because sealed chamber is used, i.e., ysat = 488 µg/m3; while for DEHP,
388
ysat = 1.09Cin (Q/(hm,eA) = 0.09 with Q = 90 mL/min, hm,e = 0.26 m/h 42, A = 0.13 m2),
389
i.e., ysat = 6.08 µg/m3, as listed in Table 1.
390
Recently, Liang et al.38 designed a special chamber to measure phthalate
391
emissions from building materials, in which the gas phase concentrations were
392
measured by Tenax TA tube sampling followed by thermal desorption (TD)-GC/MS.
393
In their study, ysat of DBP and DEHP were measured by coating the interior chamber
394
surfaces with pure DBP and DEHP liquids. According to Liang et al.’s results38, ysat
395
are 464 µg/m3 and 5.64 µg/m3 for DBP and DEHP, respectively. The ysat values in the
396
literature are very similar to the measured values in this study, with relative deviations
397
(RD) of no more than 7.8%, as indicated in Table 1. Although there is no direct
398
comparison with traditional analytics (e.g., Tenax TA tube sampling followed by
399
TD-GC/MS) in our experiments, the consistency between our results of ysat and that in
400
literature for the same compounds also provides convincing evidence that the
401
application of SPME for SVOC samplings is appropriate and effective. 15
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402 403
Impact of test time on the determined parameters
404
As mentioned above, a major benefit of this method is that the process can be
405
terminated before the sorption process of the SPME coating reaches equilibrium. It is
406
therefore necessary to investigate the impact of test time on the determined
407
characteristic parameters (Dm and K), so as to determine whether the test time can be
408
further reduced. To this end, the values of Dm and K are obtained again by fitting
409
equation (12) to the experimental data while excluding the longest test times (i.e., 26
410
h for DBP and 141 h for DEHP). For DBP, when the test time is shortened from 26 h
411
to 11.7 h, the obtained Dm decreases from 2.81 × 10-15 m2/s to 1.37 × 10-15 m2/s, and K
412
decreases from 3.20 × 107 to 2.93 × 107. For DEHP, when the test time is shortened
413
from 141 h to 97.5 h, the obtained Dm value decreases from 2.13 × 10-16 m2/s to 1.31
414
× 10-16 m2/s, while K increases from 6.49× 108 to 6.83 × 108. These results show that
415
the deviation of K is very small (relative deviation is less than 10%) as a result of
416
shortening the test time, while that of Dm is fairly large (the relative deviations are 38%
417
and 51% for DEHP and DBP, respectively). By substituting the values of Dm and K
418
obtained using the reduced sampling data into equation (9), the value of M at 26 h for
419
DBP and 141 h for DEHP can be estimated. The relative deviations between the
420
estimated M and measured M are quite small, i.e., 7.7% for DBP and 5.8% for DEHP.
421
Such small deviations indicate that the results for the characteristic parameters
422
obtained by shortening the test time are acceptable, despite the relative deviation of
423
Dm being as large as 51%. This analysis indicates that the SPME extraction amount is
424
not very sensitive to Dm especially for SVOC samples (consistent with the result of
425
sensitivity analysis of Dm), implying that the extraction process is externally
426
controlled for SVOCs. This result is consistent with a prior study28 where the
427
emission process of DEHP from vinyl flooring was found to be controlled by the
428
external convection process. In this study, we found that no meaningful results could
429
be obtained through nonlinear curve fitting by further shortening the test time. The 16
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primary reason for this is that there are not enough samplings. The relationship
431
between the shortest test time, the characteristic parameters, the number of samplings
432
and the time interval between contiguous measurements needs further investigation.
433
In addition, systematic studies focusing on the impact of shortening test time on the
434
accuracy of the determined parameters are also required.
435
The previous sections demonstrate the effectiveness of the calibration method for
436
DBP and DEHP (SVOCs) tests. There are many experimental data reported in the
437
literature for other SPME-chemical combinations. To further validate the applicability
438
of the calibration method for VOCs, we analyze data from two references43, 44 as
439
examples. Detailed analysis and results are described in SI Section S4 (Using the
440
calibration method to analyze data from the literature). The fitted curves of equation
441
(12) together with the model predictions all agree well with the experimental data,
442
implying that the proposed calibration method can be regarded as a general method
443
both for SVOCs and VOCs (for the compounds studied).
444 445
Limitations and further study
446
For the cases from the literature, the good results (SI Section S4) illustrate the
447
feasibility of unfolding the cylindrical coating into a flat surface, even when the
448
coating thickness and the silica radius are comparable. Such treatment reduces the
449
complexity in the model development while still maintaining high precision (see
450
detail in SI Section S3, the solution of the model of an unfolded cylindrical coating is
451
quite complicated). Nonetheless, the results of Dm should be interpreted with caution
452
when the coating thickness is not much smaller than the radius of the fused silica,
453
since under this condition the Dm obtained with the present method is an equivalent
454
value (i.e., the diffusion pathway is in fact along the cylindrical wall rather than along
455
the flat wall). The deviation between the determined Dm and the actual Dm may be
456
dependent on R (radius of the fused silica), L (thickness of the coating) and K.
457
Determination of the actual Dm of chemicals in the fiber coating requires a complete 17
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model, i.e., a model expressed in cylindrical coordinates (the structure of SPME is
459
cylindrical) rather than in rectangular coordinates. The complete model is described in
460
SI Section S1, and the analytical solution of this model is provided in SI Section S3
461
(equations (S9)-(S18)). Applying equation (S18), the actual Dm of chemicals in the
462
cylindrical coating can be obtained with a similar procedure provided at the end of the
463
Section “Analytical model and calibration method”. However, the solving process
464
may require multifarious mathematical methods due to the complexity of the
465
analytical solution, which is out of the scope of the present study. In some scenarios,
466
we need to optimize the structure of the SPME for target chemical sampling to
467
minimize the measurement error (e.g., optimize the thickness of SPME coating and
468
select the optimum coating material). Under this condition, the actual Dm is requisite.
469
Therefore, further study is necessary to solve the mathematical challenges for
470
determining the actual Dm with the complete model. In addition, the present method
471
requires to estimate the mass transfer coefficient (hm) with an empirical correlation,
472
which may introduce some uncertainties to the determined characteristic parameters.45,
473
46
474
influence the precision of SPME in real field samplings. Development of novel
475
methods that can eliminate the effect of hm on the determination of Dm and K warrants
476
further investigation. It should be noted that whether the analytical model is
477
applicable for the calibration of other extraction scenarios when using SPME for
478
sampling is still unknown, thus more experimental validation is needed.
Moreover, as discussed in “Sensitivity analysis”, uncertainty in hm may also
479 480
Associated content
481
Supporting Information
482
Additional detail on discussion about the error introduced by simplifying the
483
cylindrical coating into a flat plate (Section S1); determination of the applied
484
condition for equation (12) (Section S2); analytical solution of the model of an
485
unfolded cylindrical coating (Section S3); using the calibration method to analyze 18
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data from the literature (Section S4); determined characteristic parameters for
487
different SPME-chemical combinations in the literature (Table S1); maximum
488
deviation between M calculated by equation (S5) and that by equation (9) (Figure S1);
489
comparison of M between the results of equation (S5) and that of equation (9) for
490
different Fom (Figure S2); the determined Fom,c for Bim/K in the range of 10-3 to 105
491
(Figure S3); comparison of the model predictions with the experimental data from the
492
literature (Figure S4); and results of sensitivity analysis of hm, K and Dm (Figure S5).
493
This material is available free of charge via the Internet at http://pubs.acs.org.
494 495
Author information
496
Corresponding Author *
497
E-mail:
[email protected]; Phone: +86 10 68914304; Fax: +86 10 68412865;
498
Address: School of Mechanical Engineering, Beijing Institute of Technology, Beijing
499
100081, China
500
Note
501
The authors declare no competing financial interest.
502 503
Acknowledgements
504
This research was supported by the National Natural Science Foundation of
505
China (grant Nos. 51476013 and 51136002). We thank Dr. Cong Liu of Tsinghua
506
University for helpful discussions.
507 508
References
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43. Tuduri, L.; Desauziers, V.; Fanlo, J. L. Dynamic versus static sampling for the
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44. Bartelt, R. J.; Zilkowski, B. W. Nonequilbrium quantitation of volatiles in air
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45. Holman, J. P. Heat Transfer, 9th Edition; McGraw-Hill: New York, 2002.
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TOC Art
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Figures
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Figure 1. Schematic of SPME for chemical sampling. (a) SPME sampling in liquid or
630
gas phase, (b) flow across a flat plate (simplified SPME sampling).
631
632 633
(a)
634
635 636
(b)
637 638
25
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Figure 2. Experimental system for SPME calibration. (a) for DBP, (b) for DEHP.
640 641
(a)
642 643
(b)
644
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Figure 3. Fitted curves and comparison of SPME extraction amount for the simulated
646
results based on the determined characteristic parameters and the experimental data. (a)
647
DBP; (b) DEHP.
648 649
(a)
650 651
(b)
652 27
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653
Tables
654
Table 1. Determined characteristic parameters by virtue of the model, and comparison
655
of the saturated gas phase concentrations of pure chemicals measured in this study with
656
that measured in the literature. Chemicals
Dm (m2/s)
ysat_measured K (-)
3 a
ysat_literature 3 b
(µg/m )
(µg/m )
RD (%)c
DBP
2.81 × 10-15
3.20 × 107
488
464
5.2
DEHP
2.13 × 10-16
6.49 × 108
6.08
5.64
7.8
657
a
Measured in this study.
658
b
Measured results of Liang et al.38
659
c
RD is calculated by ǀysat,measured-ysat,literatureǀ/ysat,literature × 100%.
660
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