Abstract
Gravimetric vapor sorption experiments were performed on beech wood samples to determine the directional permeability, diffusion and sorption coefficients in the three orthotropic wood directions. Dynamic Vapor Sorption (DVS) experiments allowed for the direct evaluation of the diffusion coefficient from the analysis of the kinetic sorption profile using a double stretched exponential model with values ranging from 0.10 × 10−10 to 1.52 × 10−10 m2/s and depending on the wood direction of the sample and the RH-values. Moisture sorption isotherms (MSIs) were constructed and fitted to a modified Guggenheim-Anderson-de Boer and a Sorption Site Occupancy model, which allowed for the calculation of the sorption coefficient which was found to be between 2.4 and 3.0 mol/(m3 Pa). Dynamic Vapor Transport (DVT) experiments were performed to calculate the permeability coefficient from the vapor flow rate and it ranges between 0.56 × 10−10 and 4.38 × 10−10 mol/(m s Pa) as a function of the flow direction and RH conditions. These results indicate that such an experimental approach is suitable for determining wood–moisture interactions.
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Introduction
Water transfer is one of the most important phenomena in wood processing, usage and storage. Wood moisture permeability and diffusivity are properties that determine how water molecules pass through and move within, respectively, bulk solids or porous network structures like wood due to differences in external or internal water concentration (Babbitt 1950; Siau 1984; Avramidis and Siau 1987; Skaar 1988). The amount of moisture that permeates through a barrier is related both to the sorption and diffusion coefficient (P = D S). The higher the diffusivity of the water molecules through the barrier, the higher will be the permeability. However, if moisture is highly sorbed in the barrier, then the barrier will be more permeable to water. Such properties have a direct effect on several timber technical processes, e.g., drying, steaming, soaking, solvent-exchange drying, boiling, surface treatment, chemical modification and impregnation (Lehringer et al. 2009; Panigrahi et al. 2018), as well as in the final quality of the wood products (Skaar 1988; Ross 2010). Moisture permeability/diffusivity has been explored by many authors and reviewed by Hansmann et al. (2002), where factors like wood structure, anatomical directions, extractives content, and the influence of early/latewood, sap/heartwood and juvenile/mature wood have been studied in order to understand better the effect on the moisture–wood interactions that are directly connected to wood treatability (Choong and Fogg 1972). A recent review by Thybring et al. (2019) pointed out the need for new models for describing sorption processes that are affected by boundary conditions, cell wall diffusion, swelling/shrinkage and moisture-induced phase transitions in wood.
Several experimental approaches have been used for the determination of moisture permeability, e.g., hygrometric and vapor pressure manometric methods (Choong et al. 1974; Jinman et al. 1991; Glass 2007; Simo-Tagne et al. 2016). So far, no gravimetric technique—except those using the tedious and longish permeability cup experiments (Geving et al. 2000; Palanti et al. 2001)—has been used for such a purpose. Contrary to that, the gravimetric vapor sorption technique has a fully automated precise control of both the relative humidity and the temperature, and it monitors the mass sorption of the samples obtaining results in 1 to 5 days with a high accuracy level (Burnett 2006; Yu 2008).
From the gravimetric vapor sorption experiments, meaningful information can be obtained, e.g., vapor sorption kinetics, moisture sorption isotherms and water vapor transmission rates (Crank 1975; Piringer and Baner 2000). Sorption kinetics have been studied and evaluated (Siepmann and Peppas 2011; Negrini et al. 2014; Amini-Fazl and Mobedi 2020) following different models, e.g., Ritger and Peppas (1987), Weibull (Weibull 1951) and Peleg (Peleg 1988), but so far no full explanation of the experimental data has been achieved for wood samples. Moreover, moisture sorption isotherms have been modeled using several physical and empirical approaches (Kollmann 1963; Nelson 1983; Basu et al. 2006), and the most widely used models for explaining the wood behavior are the original (GAB) (Anderson 1946) and the modified Guggenheim, Anderson, de Boer models (GAB*) (Viollaz and Rovedo 1999). One of the models that better explain the wood–water interactions during sorption processes is the Sorption Site Occupancy (SSO) model (Willems 2014, 2015). Finally, lagtime water vapor transmission experiments are an easy way to evaluate wood permeability and diffusivity (Al-Ismaily et al. 2012; Fuoco et al. 2020).
In this paper, we show how the moisture permeability (P) and diffusion (D) coefficients of wood in the three orthotropic directions can be calculated, as well as the sorption (S) coefficient, based on gravimetric vapor sorption experiments. On the one hand, the sorption kinetics was evaluated using Dynamic Vapor Sorption (DVS) experiments by fitting the experimental data to a Double Stretched Exponential (DSE) model. From these results, the Moisture Sorption Isotherm (MSI) was constructed and fitted to the modified GAB model for interpolation purposes, and the amount of bound and non-bound water molecules in the cell wall during the sorption processes was estimated by using a version of the SSO model. On the other hand, the lagtime experiments using Dynamic Vapor Transport (DVT) experiments were evaluated by fitting the experimental data to an exponential-linear fitting approach. Thereby, information on the diffusion and sorption coefficients and on the diffusion and permeability coefficients were directly obtained from the DVS and the DVT experiments, respectively, resulting in a corresponding entire picture of the wood–moisture interactions.
Experimental section
Materials
Beech wood (Fagus sylvatica L.) was used for this study. Three veneer disk samples of ca. 1 mm thickness and 12 mm diameter were cut perpendicular to the three wood orthotropic directions, i.e., disk1-L (longitudinal), disk2-R (radial) and disk3-T (tangential), for conducting both moisture sorption and transmission experiments (Fig. SI-1). Ultrapure water (Milli-Q water) and anhydrous CaCl2 were used to create the inner 100% and 0% RH-values in the permeability setup, respectively, during moisture transmission experiments.
Dynamic vapor sorption (DVS) experiments
Moisture sorption or Dynamic Vapor Sorption (DVS) experiments were conducted using a gravimetric vapor sorption device (DVS Advantage ET, Surface Measurement Systems). The device is equipped with a microbalance and a chamber that is purged with a nitrogen flow of 200 cm3/min (12 L/h) at a selected relative humidity (RH) value obtained by mixing different flows of dry and water-saturated nitrogen. Two aluminum-perforated pans were used for conducting these experiments placing the sample in one of them while using the other as a reference to eliminate sorption effects from the holders. After conditioning the sample at 23 °C and at 0% RH until complete dryness, the measurement starts by increasing the RH of the nitrogen flow in steps of 10% until 100% RH is reached (actually, ca. 96% RH). After reaching this final adsorption step, the RH-value is reduced in steps of 10% until 0% RH is reached, completing the cycle. The criterion for increasing/decreasing the set RH-value is a threshold in the variation in mass per unit time with respect to the initial dry mass to a value of d(m/mdry)/dt < 0.001%/min over 10 min, where at this point, the sample is measured for one extra hour prior to changing the RH for the next measuring step. With this stopping criteria, the measuring time is considerably reduced even though the obtained extrapolated equilibrium moisture content has an error of ca. 1%, and the kinetics appear to be ca. 20% faster compared to those from the d(m/mdry)/dt = 0.0003%/min stopping criteria (Glass 2007). During the measurement, the mass of the sample and the RH-value are recorded as a function of time.
Fitting the dynamic vapor sorption (DVS) experimental data
Each dynamic moisture sorption step was analyzed using a double stretched exponential (DSE) model—or double Weibull (W) model—and the Ritger-Peppas (RP) model for comparison. Single exponential (SE), double exponential (DE) and single stretched exponential (SSE) models were also used and discarded based on the analysis of the residues after fitting the data (Appendix 1). The DSE model has the following expression:
where m/mdry is the mass ratio with respect to the dry mass of the sample, (m/mdry)eq is the mass ratio at the infinite time, A1 and A2, τ1 and τ2, and β1 and β2 are the amplitude, the lifetime and the stretched exponential factor of each single stretched exponential function, respectively.
From the fitting of each sorption step, an equivalent lifetime value τ and stretched exponential factor β can be obtained by applying a minimization process (Appendix 1) and converting these values into those of an equivalent SSE model. Therefore, the corresponding kinetic constant k = 1/τ and the diffusivity or diffusion coefficient D can be calculated (Neogi 1996) following the expression:
where V is the volume of the sample and A the total area exposed to sorption processes. In this way, the three anisotropic diffusion coefficients, i.e., DL, DR and DT, can be obtained from the corresponding three beech disks—disk1-L, disk2-R, and disk3-T. It should be noted that this equation (Eq. 2) leads toward the calculation of apparent diffusion coefficient values since the mass transport resistance is considered negligible and the temperature is assumed to be locally constant.
Dynamic vapor transport (DVT) experiments
Moisture transmission or Dynamic Vapor Transport (DVT) experiments were conducted using the same DVS Advantage ET (Surface Measurement Systems) device as the one used for moisture sorption experiments. Two moisture transmission cups were used for conducting these experiments, each of which consisted of three 3D-printed components (Fig. SI-2). Both cups have a middle part with two male screws that close and seal the upper and bottom components. The upper component consists of an open cup of 7.8 mm diameter with an O-ring seal of 10.5 mm diameter for ensuring a good sealing of the system when mounting the sample. The bottom component consists of a cylindrical reservoir where water or a drying agent can be placed to generate a 100% or 0% RH condition, respectively, inside the moisture transmission cup. In the reference cup, a thin aluminum disk was placed, while in the measuring cup, a wood beech disk was inserted. Before running the experiments, the sample has to be equilibrated to the starting conditions in the DVS chamber by using only the upper and middle parts of the moisture transmission cups—equilibrated to the outer RH-value and to 0% RH for the experiments using water and desiccant in the bottom part of the cup, respectively. Once the sample was equilibrated, the same amount of water—or drying agent—was placed in both bottom components of the moisture transmission cups, which were closed and placed in the DVS chamber allowing the moisture transmission experiment to start—for experiments using desiccant in the cup, the outer RH-value was raised to the set value. After some hours, when the mass profile shows a constant slope, the experiment was considered to be completed. During the measurement, the mass of the sample and the RH-value are recorded as a function of time.
Fitting the dynamic vapor transport (DVT) experimental data
The experimental data shows a mass profile with a starting plateau region that turns down towards a constant linear behavior when the RH-value inside the permeability cup is higher than that of the DVS chamber. When the inner RH-value is lower than the one from outside of the permeability cup, then a continuous mass increase is observed until reaching a constant rate. In order to evaluate both the initial (diffusivity) and final (permeability) process, the following fitting function was used:
where m/m0 is the mass ratio with respect to the initial mass of the sample, MW, τ and β are the amplitude or moisture capacity, the lifetime and the stretched exponential parameter of the diffusivity process, and \(\dot{m}\) is the slope—mass rate or flow rate—of the permeability process. Note that m refers to the initial mass of the sample plus the absolute value of the transferred water mass Δm (m = m0 + Δm). Therefore, in order to normalize all experiments, m/m0 = 1 at t = 0.
From the analysis of the data, the permeability coefficient P, the diffusion coefficient D, the transmission rate TR and the sorption coefficient S following Henry’s law can be calculated (Crank 1975; Piringer and Baner 2000).
where \(l\) and A are the thickness and area of the sample at 0% RH, respectively, and Δp is the difference in water partial pressure.
A commonly used approach for the diffusion coefficient D determination in moisture transmission experiments is the one using the following expressions (Al-Ismaily et al. 2012; Fuoco et al. 2020):
where θ is the lagtime calculated from the crossing of the extrapolated linear permeability region at m/m0 = 1 (linear approach) or θ = Mw/\(\dot{m}\) (exponential-linear approach).
Note that Eq. 4 allows for a simple calculation of the permeability coefficient when both the vapor diffusion resistance of the still air inside the DVT cup and the boundary layer resistance on the exterior of the DVT cup are considered negligible. Actually, the evaluation of the intrinsic permeability parameter (ISO 12572) shows deviations between 2 and 9%, 5% and 13%, and 28% and 32% for the tangential, radial and longitudinal directions, respectively. The mass transfer Biot number (Bim) along all RH-values is below the limit of 50, where the effect of the boundary layer resistance on the exterior cannot be neglected (Thorell and Wadsö 2018). Therefore, those two factors—the intrinsic permeability parameter and the mass transfer Biot number—should be considered when the calculation of more accurate permeability is required. Nonetheless, Eq. 4 is a good approximation to reality within the errors.
Results and discussion
Dynamic vapor sorption (DVS) experiments—diffusion coefficient (D) determination
Moisture sorption experiments were performed on the three beech disks in order to determine the moisture sorption isotherms and the water diffusivity along the three wood orthotropic directions, i.e., longitudinal (L)—disk1-L -, radial (R)—disk2-R—and tangential (T)—disk3-T.
From the mass ratio profile, the three beech disks (disk1-L, disk2-R and disk3-T) showed that the sorption process had a clear dependency on the wood direction perpendicular to the disk plane. Times for reaching the final RH-value in the adsorption (ca. 96% RH) and desorption (0% RH) process of tmax = 52 h, 63 h and 60 h, and of tfinal = 112 h, 132 h and 130 h, respectively (Fig. SI-3, SI-4 and SI-5). Thus, an evident difference is observed between the longitudinal direction—disk1-L—and the radial and tangential direction—disk2-L and disk-T—indicating a higher water diffusivity along the fiber direction; disk2-R and disk3-T require 18% and 16% more time than disk1-L, respectively.
Each step of the moisture sorption experiment was analyzed by fitting the experimental data with a double stretched exponential (DSE) model (Fig. SI-3, SI-4 and SI-5, and Table SI-1, SI-2 and SI-3) and with the Ritger-Peppas (RP) model (Fig. SI-6, SI-7 and SI-8, and Table SI-4, SI-5 and SI-6). It has to be noted that the power-law RP model is an approximation to the DSE model and is only valid at the beginning of the sorption process. Details about these models can be found in Appendix 1, where the fitting functions and the corresponding evaluations are described. The DSE model is the best model for explaining all experimental moisture sorption data compared to the use of a double exponential (DE) function—the two parallel exponential kinetics (PEK) model (Thybring et al. 2019; Zelinka et al. 2021)—or the single stretched exponential function—the Weibull model (Zeng and Xu 2017). Moreover, the DSE model allows for the extrapolation of the mass ratio at the infinite time (m/mdry)eq in a more accurate way, using this value for the precise construction of the moisture sorption isotherm (MSI). From the resulting fitting parameters, the sorption kinetic constant k and the corresponding diffusion coefficient D were evaluated using the DSE model (Fig. SI-3, SI-4 and SI-5, and Table SI-1, SI-2 and SI-3).
Figure 1 shows the diffusion coefficient obtained from the kinetic constant profiles when using the DSE model (Fig. SI-9) for the three beech disks in the adsorption and desorption process. The directional diffusion coefficient is between 1.52 × 10−10 and 0.11 × 10−10 m2/s, between 0.47 × 10−10 and 0.10 × 10−10 m2/s, and between 0.56 × 10−10 and 0.13 × 10−10 m2/s for the longitudinal, radial and tangential direction, respectively. The diffusivity tends to decrease upon increasing the RH in the adsorption process and, vice versa in the desorption process. This behavior has previously been reported with values for the diffusion coefficient that decrease from 0.88 × 10−10 to 0.06 × 10−10 m2/s when increasing the RH from 5 to 80% RH (Majka et al. 2022), and similar to other published results obtained from different methods (Olek et al. 2005; Simo-Tagne et al. 2016; Gezici-Koç et al. 2017).
Comparing the adsorption to the desorption profile, hysteresis in the diffusivity is observable at low RH-values. This could be explained by the change in the conformation of the water-binding polymers (Vrentas and Vrentas 1996), i.e., hemicelluloses and amorphous cellulose, in the wood structure during the desorption process, which might hinder the diffusion of the water molecules through the solid matrix.
Comparing the results from those using the RP model, a discrepancy is observed that can be attributed to the fact that only the data covering the 40% of the total sorption are evaluated with this model (Appendix 1)—only the very first mass change in the adsorption/desorption process can be evaluated. To visualize these trends better, the adsorption/desorption diffusion coefficient obtained from the DSE model, the RP model, and the equivalent to the SSE exponential function from the RP model for the three beech disks at different relative humidity values are shown in Fig. SI-10. The tendencies look the same between models with DSE/RP ratio values of 1.47 ± 0.15 (average ± standard deviation) and 0.97 ± 0.07 and with DSE/SSE ratio values of 0.97 ± 0.07 and 0.88 ± 0.10 in the adsorption and desorption diffusivity values, respectively. This indicates that both the DSE and the SSE approaches are comparable, the first one being more accurate because it is taking into account all sorption experimental points.
The relative directional kinetic constant (krel) and diffusion coefficient (Drel) between the three wood orthotropic directions were also evaluated as shown in Fig. SI-11. From this evaluation, the L-direction is the one showing the highest diffusion coefficient, followed by the T-direction and, finally, by the R-direction (L > T ≥ R) with ratio values ranging from 3.5 to 1.0 (L/R), from 2.7 to 1.0 (L/T) and from 0.72 to 1.0 (T/R) at low and high RH-values, respectively. This corresponds to average L/R ratio values of 2.0 ± 0.9 and 1.5 ± 0.6, average L/T ratio values of 1.6 ± 0.6 and 1.4 ± 0.5 and average R/T ratio values of 0.9 ± 0.1 and 1.0 ± 0.1 in the adsorption and desorption absolute orthotropic diffusion values, respectively; similar ratios were obtained for the kinetic constants. Finally, the average directional diffusion coefficient for the three beech disks was calculated and the values were \({\overline{\mathrm{D}}}_{\mathrm{L}}\) = 7.6 ± 4.8 × 10−11 and 5.2 ± 2.7 × 10−11 m2/s, \({\overline{\mathrm{D}}}_{\mathrm{R}}\) = 3.6 ± 1.2 × 10−11 and 3.4 ± 0.9 10−11 m2/s, and \({\overline{\mathrm{D}}}_{\mathrm{T}}\) = 4.2 ± 1.5 × 10−11 and 3.6 ± 1.1 × 10−11 m2/s during the adsorption and desorption processes, respectively. All single diffusion coefficient values for the three beech disks can be found in Table SI-1, SI-2 and SI-3.
Moisture Sorption Isotherms (MSI)—Sorption coefficient (S) determination
The sorption behavior of the beech samples was studied upon constructing the corresponding Moisture Sorption Isotherms (MSIs), and the results were compared between them. MSI curves were constructed by taking the extrapolated mass ratio at the infinite time (m/mdry)eq from the fitting of each sorption step using the DSE model (Table SI-1, SI-2 and SI-3). Then, each MSI curve was fitted using the modified Guggenheim-Anderson-de Boer (GAB*) model (Viollaz and Rovedo 1999; Sandoval et al. 2011). Moreover, the hysteresis factor η could be obtained by calculating the area ratio between the desorption and adsorption isotherms. The number of bounded and non-bounded water molecules was evaluated using a modified version of the Sorption Site Occupancy (SSO) model (Freundlich 1906; Willems 2014, 2015) after the deconvolution of the MSI. In this new approach, the bound water moisture capacity profile (MSSO) was obtained by using a power-law function and fitting the data up to the critical water activity value aw* (0 < aw < aw*). The non-bound water moisture capacity profile was obtained by subtracting the Msso profile from the MSI. Appendix 2 shows all details concerning the MSI fitting models and the parameters obtained from the experimental data.
Figure SI-12 shows the moisture sorption isotherm with the corresponding fitting curve following the GAB* model (0 ≤ aw ≤ 0.99) (Viollaz and Rovedo 1999; Sandoval et al. 2011), together with its deconvolution into the bound and non-bound water moisture capacity for the three beech disks. Moreover, all fitting parameters and derived properties are summarized in Table SI-7. The results from the SSO model analysis indicate a good agreement with previous works (Willems 2014, 2015), where the exponent obtained from the power-law function is \(\overline{\mathrm{n}}\) = 0.83 ± 0.01, the maximum bound water moisture capacity is \(\overline{\mathrm{M}}\) SSO0 = 0.134 ± 0.009 and the sorption sites' molar concentration \(\overline{\mathrm{SSO}}\) = 7.5 ± 0.3 mmol/g—close to the values obtained by other techniques (Gezici-Koç et al. 2017; Grönquist et al. 2019; Thybring et al. 2020, 2021). Finally, the hysteresis factor η was evaluated for the three beech samples with an average value of \(\overline{\upeta }\) = 1.26 ± 0.02.
From the MSI curves, the sorption coefficient (S) can be calculated (Appendix 2) taking into account the moisture content (Δm/mdry), the partial vapor pressure (p) and the volume of the sample (V), which changes as a function of the RH. Figure SI-13 shows the sorption coefficient profile for the three beech samples in the adsorption and desorption process. These curves were used to estimate the average sorption coefficient value and, when combined with the permeability coefficient values, to determine the diffusion coefficient (D = P/S) indirectly. The average sorption coefficient for the three directions was \({\overline{\mathrm{S}}}_{L}\) = 2.3 ± 0.5 and 3.0 ± 0.4 mol/(m3 Pa), \({\overline{\mathrm{S}}}_{R}\) = 2.7 ± 0.6 and 3.4 ± 0.4 mol/(m3 Pa) and \({\overline{\mathrm{S}}}_{T}\) = 2.1 ± 0.5 and 2.7 ± 0.3 mol/(m3 Pa) in the adsorption and desorption processes, respectively, which do not differ that much from the initial sorption coefficient values calculated using the gas-polymer-matrix model (Raucher and Sefcik 1983)—\({\overline{\mathrm{S}}}_{L0}\) = 3.2 and 4.5 mol/(m3 Pa), \({\overline{\mathrm{S}}}_{R0}\) = 2.7 and 4.1 mol/(m3 Pa) and \({\overline{\mathrm{S}}}_{T0}\) = 2.5 and 3.4 mol/(m3 Pa). From the sorption coefficients out of the three beech disks, the corresponding adsorption and desorption average sorption coefficients were calculated \({\overline{\mathrm{S}}}_{\mathrm{ads}}\) = 2.4 ± 0.6 mol/(m3 Pa) and \({\overline{\mathrm{S}}}_{\mathrm{des}}\) = 3.0 ± 0.6 mol/(m3 Pa). All single sorption coefficient values for the three beech disks can be found in Table SI-8. The gas-polymer-matrix model assumes a non-linear Henry’s law behavior of the gas molecules because of interactions with the glassy polymers in the matrix, which modify the mobility of the polymer backbones.
With both the diffusion and the sorption coefficients at a certain RH-value, the permeability coefficient could be estimated as the product of these two coefficients—P(RH) = D(RH) S(RH)—and, therefore, the corresponding average value. Even though the experiment is not strictly a transmission process where water flows through the sample with a certain amount of water retained—but rather a diffusion process, where water either accumulates (adsorption) or leaves (desorption) the sample—a prediction for the permeability coefficient was obtained. The results show directional average permeability coefficient values of \({\overline{\mathrm{P}}}_{\mathrm{L}}\) = 1.7 ± 1.0 × 10−10 mol/(m s Pa), \({\overline{\mathrm{P}}}_{\mathrm{R}}\) = 8.9 ± 2.4 × 10−11 mol/(m s Pa), and \({\overline{\mathrm{P}}}_{\mathrm{T}}\) = 8.3 ± 2.5 × 10−11 mol/(m s Pa), which can be used as an estimation.
Dynamic vapor transport (DVT) experiments—permeability (P) and diffusion (D) coefficient determination
In order to determine the water permeability in the three orthotropic directions of wood, lagtime experiments—Dynamic Vapor Transport (DVT) experiments—were conducted using newly designed permeability cups (Fig. SI-2). In the upper part, the sample is attached between two O-ring seals and, in the bottom part, either pure water or a drying agent is placed to create 100% or 0% RH, respectively, inside the cup. Both parts are assembled by a double-male screw component, which seals the cup. In Fig. 2, permeability experiments on the three beech disks with the water transmission parallel to the longitudinal (L), radial (R), and tangential (T) directions at different relative humidity conditions are shown.
Two different experimental conditions were studied: (i) DVT experiments placing water in the bottom component of the cup—100% RH—were conducted against 0% and 65% RH of the outer gas flow; and (ii) DVT experiments placing drying agent in the bottom component of the cup—0% RH—were conducted against 65% and 100% RH of the outer gas flow. For the first set of experiments, water molecules are adsorbed on the surface of the wood sample exposed to the inner part of the cup with almost no change in the measured mass. For the second set of experiments, water molecules are adsorbed on the surface of the wood sample exposed to the outer gas flow part of the cup with an immediate increase in the mass. Then, water molecules start to diffuse through the sample—transient state or diffusive state—(i) without any loss of mass because water molecules are kept in the cup-sample system, or (ii) with a continuous gain of moisture because water molecules are incorporated in the cup-sample system. Once the water molecules reach the opposite surface of the wood sample, the desorption process takes place (i) with the corresponding loss of mass, or (ii) with the corresponding gain of mass. At this point, the system losses/gains mass and approaches a constant mass change rate (steady-state or permeation state) (Fig. SI-14). As a result, a convex shape (Fig. 2a and b) is obtained after conditioning the sample to the outer RH-value—0% or 65% RH—and a concave shape (Fig. 2c and d) after being conditioned to inner conditions—0% RH.
Using the exponential-linear fitting approach indicated in the Experimental Section, both the diffusion coefficient D and the permeability coefficient P can be calculated. Alternatively, the linear fitting approach was also implemented and similar values for those coming from the exponential-linear approach were obtained for both the mass rate \(\dot{\mathrm{m}}\) and the lagtime θ (Fig. SI-15) with a minor difference between both methods. The analysis of these curves allows for the determination of the mass rate \(\dot{\mathrm{m}}\), the lagtime θ and the lifetime τ, and from those the permeability coefficient P, the diffusion coefficient Dθ (Dθ = l2/6θ) and Dτ (Dτ = πl2/4τ), respectively, together with the sorption coefficient Sθ (Sθ = P/Dθ) and Sτ (Sτ = P/Dτ), and the transmission rate (TR) (Table SI-9, SI-10 and SI-11).
While all coefficients should be pressure-dependent, the sorption coefficient is assumed to be a constant that is related to the water–wood interactions—and independent of the sample direction—and, therefore, connected to the water adsorption/desorption capacity of the material. Thus, a comparison was made between the different ways of calculating the sorption coefficient: (i) Sθ and Sτ were obtained from the exponential-linear fitting approach and combining both the permeability and diffusion coefficients (Sθ = P/Dθ; Sτ = P/Dτ); and (ii) SMSI by calculating the sorption coefficient from the MSI profile (SMSI, Eq. B3). The values obtained for the Sθ and Sτ are depending on the sample’s direction and on the relative humidity conditions indicating that this approach is not the optimum one for the evaluation of the sorption coefficient. An almost constant value for the sorption coefficient based on the MSI curves was calculated with values of SMSI ≈ 2.1–2.7 mol/(m3 Pa) (Fig. SI-16) quite similar to those values averaged from the sorption profiles (Fig. SI-13). Therefore, we assume that this last approach for calculating the sorption coefficient is the closest to reality.
In Fig. 3, a comparison between the three beech disks at different relative humidity conditions in the permeability experiments is shown. In there, it can be identified that the permeability coefficient, the transmission rate and the diffusion coefficient (PL = 3.66–4.38 × 10−10 mol/(m s Pa), Dθ,L = 0.78–1.54 × 10−10 m2/s, TRL = 3.69–11.0 × 10−4 mol/(m2 s)) are always higher in the direction parallel to the longitudinal direction than those from the other two directions (PR = 0.86–2.08 × 10−10 mol/(m s Pa), Dθ,R = 0.12–0.36 × 10−10 m2/s, TRR = 1.59–3.80 × 10−4 mol/(m2 s); PT = 0.56–1.89 × 10−10 mol/(m s Pa), Dθ,T = 0.14–0.29 × 10−10 m2/s, TRT = 0.99–2.63 × 10−4 mol/(m2 s)) and with similar values than those published in previous works (Choong et al. 1974; Jinman et al. 1991; Geving et al. 2000; Palanti et al. 2001; Glass 2007; Simo-Tagne et al. 2016). The observed variability within a cutting direction in Fig. 3a is mainly ruled by a gradient in thickness through the sample exposed to different RH-values on both sides of the disk, resulting in one side being more swollen than the other. The diffusion, permeability and sorption coefficients, as well as the transmission rate and fitting parameters of the three beech disks at different relative humidity conditions during the water vapor transmission experiments, are plotted in Fig. SI-16.
In the L-direction, water molecules find the path to move along the sample in a faster way due to the orientation of the xylem structure. The resistance is lowest along the direction of the hollow members of vessels, which in beech wood are relatively evenly distributed, and adjacent axial parenchyma and vasicentric tracheids—contrary to the perpendicular direction, where only smaller and less prevalent structures like radial parenchyma cells and pits facilitate moisture transport through the wood tissue. Moreover, Fig. 3c and d show the similarity between the values for the diffusion coefficient when calculated from the lagtime θ—Dθ = l2/6θ, or by combining both the permeability coefficient and the sorption coefficient (Fig. SI-13)—DMSI = P/SMSI.
The relative directional permeability coefficient and diffusion coefficient between the three wood orthotropic directions were also evaluated, as shown in Fig. SI-17. From this evaluation, the L-direction is the one showing the highest permeability coefficient with ratio values ranging from 5.0 to 1.9 (L/R), from 7.9 to 2.0 (L/T), and from 1.5 to 1.1 (T/R). This corresponds to an average L/R ratio value of 3.2 ± 1.4, an average L/T ratio value of 4.4 ± 2.5, and an average R/T ratio value of 1.3 ± 0.2 in the relative permeability (Prel) values. Similarly, the average relative diffusion (Drel) values were found to be 5.9 ± 2.7 and 3.6 ± 1.5 (L/R), 6.1 ± 2.2 and 3.9 ± 2.1 (L/T), and 1.1 ± 0.2 and 1.0 ± 0.1 (R/T) from the lagtime values (Dθ), and the MSI experiments (DMSI), respectively.
While it has been found that both the permeability and sorption coefficient could be well-determined and calculated from the DVT experiments, as well as the DVS experiments, some discrepancies appeared in the evaluation of the diffusion coefficient. Figure 4 shows a comparison between the diffusion coefficient values obtained (i) from the DVT experiments—lagtime θ and lifetime τ values -, (ii) from the MSI curves—sorption coefficient SMSI -, and (iii) from the DVS experiments—kinetic constant k. There are similarities between the diffusion coefficients Dθ and DMSI—also with the average \(\overline{\mathrm{D}}\) ads and \(\overline{\mathrm{D}}\) des values from the kinetic evaluations—which are in the same order of magnitude, making both DVS and DVT experiments suitable conditions for the evaluation of the diffusion coefficient.
The transmission rate values were plotted as a function of the vapor pressure difference for the three beech disks (Fig. SI-18). The disk with the water transmission parallel to the longitudinal direction (L) showed an almost linear behavior, while a non-linear behavior was observed for the other two directions (R and T)—which could be related to the hysteresis that wood samples show between sorption and desorption processes as already observed somewhere else (Gezici-Koç et al. 2019). Further investigation has to be done in order to confirm such behavior for IUPAC Type IV mesoporous materials like wood (Thommes et al. 2015).
Finally, the moisture capacity Mw of the samples obtained from the exponential-linear fitting approach allows for the estimation of the amount of water adsorbed in the disks during the permeability experiments. This value should correlate to the area under the moisture sorption isotherm between the inner and outer RH-values imposed in the experiments, where Mw is the difference between the steady-state moisture content (the average of the MSI between the boundary conditions) and the initial moisture content. In Fig. 5, this scenario is depicted, where the equilibrium moisture content (EMC) along the thickness of the sample should follow the moisture content isotherm profile. The Mw values obtained for the three beech disks at different relative humidity conditions match well those calculated from the area under the moisture sorption isotherm (Table SI-9, SI-10 and SI-11), with experimental values of 8.2 ± 0.2%, 3.0 ± 0.1% and 5.3 ± 0.2% when the inner/outer RH-values were 100% vs 0%, 100% vs 65% and 0% vs 65%, respectively.
Conclusions
Dynamic Vapor Sorption (DVS) and Dynamic Vapor Transfer (DVT) experiments were performed on beech disks in the three wood orthotropic directions perpendicular to the disk plane in order to evaluate the wood–moisture interactions.
For the DVS experiments, a double stretched exponential (DSE) model was used for the evaluation of the vapor sorption kinetics, and the diffusion coefficient along the three directions was calculated as a function of the RH-value, showing a decrease upon increasing the RH-value. The results show that the directional diffusivity in the longitudinal direction is higher than the one for the tangential and radial direction, with values ranging between 1.52 × 10−10 and 0.11 × 10−10 m2/s, between 0.47 × 10−10 and 0.10 × 10−10 m2/s, and between 0.56 × 10−10 and 0.13 × 10−10 m2/s for the longitudinal, radial and tangential direction, respectively. Moreover, the adsorption diffusivity is higher than the desorption diffusivity due to a change in the conformation of the amorphous water-binding polymers in wood.
Moisture Sorption Isotherm (MSI) curves were constructed from the extrapolated mass ratio values obtained from the DSE fitting of the moisture sorption data. These MSI curves were fitted using the modified Guggenheim-Anderson-de Boer (GAB*) model and analyzed following a Sorption Site Occupancy (SSO) model. Finally, the sorption coefficient for beech wood was found to be between 2.4 and 3.0 mol/(m3 Pa) and calculated by combining the equilibrium data from the MSI curves, the partial vapor pressure and the volume of the sample as a function of the RH.
DVT experiments allowed for the direct determination of both the diffusion and permeability coefficients and the corresponding transmission rates by applying an exponential-linear model. Diffusivity values range between 1.54 × 10−10 and 0.78 × 10−10 m2/s, between 0.36 × 10−10 and 0.12 × 10−10 m2/s, and between 0.29 × 10−10 and 0.14 × 10−10 m2/s for the longitudinal, radial and tangential direction, respectively, matching quite well the results obtained from the DVS experiments. The calculated permeability coefficients are PL = 3.66–4.38 × 10−10 mol/(m s Pa)—TRL = 3.69–11.0 × 10−4 mol/(m2 s) -, PR = 0.86–2.08 × 10−10 mol/(m s Pa)—TRR = 1.59–3.80 × 10−4 mol/(m2 s) -, and PT = 0.56–1.89 × 10−10 mol/(m s Pa)—TRT = 0.99–2.63 × 10−4 mol/(m2 s)—with similar values than previously reported in the literature using other setups showing that such an experimental approach can definitely be used for evaluating wood–moisture interactions. Further investigations have to be performed using different wood species and chemical treatments.
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All authors contributed to the study's conception and design. Material preparation and data collection were performed by A.S.F. Data analysis was performed by A.S.F. and M.E. The 3D-printed setup for the lagtime experiments was designed and constructed by M.E. The first draft of the manuscript—including figures and tables—was written by A.S.F., and all authors commented on previous versions of the manuscript. All authors read and approved the final manuscript.
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Appendices
Appendix 1: Double stretched exponential function
In this appendix, the comparison between the four exponential models, i.e., the double stretched exponential (DSE), the double exponential (DE) (Zelinka et al. 2021), the single stretched exponential (SSE) (Zeng and Xu 2017) and the single exponential (SE) model are discussed, and the reasons for using the DSE model for fitting the sorption experimental data are given. The SSE model or Weibull (W) model—which is equivalent to a Prony series (Mauro and Mauro 2018) with a finite number of terms—is also compared with the Ritger-Peppas (RP) model for diffusion processes.
The general expression for the four models is the following:
where m/mdry is the mass ratio with respect to the initial mass of the sample, (m/mdry)eq is the mass ratio at the infinite time, A1 and A2, τ1 and τ2, and β1 and β2 are the amplitude or moisture step capacity, the lifetime and the stretched exponential factor of each stretched exponential function, respectively. In Table 1, the values corresponding to each model are indicated.
The following four figures (Figs.
6,
7,
8 and
9) show the fitting of some sorption data using the four different exponential models together with the residual analysis. The lifetime τ and the stretched exponential factor β values are also indicated. With these results, it is clear that the DSE model is the best model for explaining all experimental data (Thybring et al. 2019) and for the good extrapolation for the evaluation of the mass ratio at the infinite time (m/mdry)eq.
In order to find out the equivalent τ and β values corresponding to a single stretched exponential (SSE) or Weibull (W) model, the two pairs of parameters coming from a double stretched exponential (DSE) model, i.e., τ1-β1 and τ2-β2, underwent a minimization of the weighted sum of squares (WSS).
where the term e−n corresponds to the reduction of the population when reaching the time equal to n-times the lifetime τ, e.g., for 1τ, 2τ, 3τ, 4τ and 5τ, the population is reduced to 36.79%, 13.53%, 4.98%, 1.83% and 0.67%, respectively, and f(tn) is a function which includes a normalized version of the DSE model.
As an example, the DSE fitting in Fig. 6 delivered the following values for the fitting parameters A1, A2, τ1, τ1, β1 and β2, and the five tn-values were obtained by applying the minimization process (Table
2).
Once the five tn-values are obtained, a power-law fitting \({t}_{n}=\tau {n}^{1/\beta}\) is applied, where the pre-factor from the fitting function corresponds to the equivalent lifetime τ and the inverse of the exponent to the stretched exponential factor β of a Weibull (W) model.
Finally, a comparison between the Weibull (W) model and the commonly accepted power-law Ritger-Peppas (RP) model, which is a degeneration of the Weibull model for small ((t-t0)/τ)β values (Mircioiu et al. 2019) and, therefore, can only be applied to the data covering the 40% of the total amplitude -, was established.
where m/mdry is the mass ratio with respect to the initial mass of the sample, (m/mdry)eq is the mass ratio at the infinite time, A, τ and n are the amplitude, the lifetime and the Ritger-Peppas (RP) exponent. Such an exponent is directly connected to the pseudo-Fickian (n < 0.5) (Liu and Neogi 1992), Fickian—or Case I transport—(n = 0.5) (Boltzmann 1894) and non-Fickian (0.5 < n < 1.0) diffusion (Haga 1982), as well as Case II (n = 1.0) (Alfrey 1965) and Super Case II (n > 1.0) (Jacques et al. 1974) transport (Fig.
10).
In order to find equivalence between both models, single stretched exponential (SSE) or Weibull (W) functions were simulated for different values of the stretched exponential factor β from 0.50 to 1.15 while keeping constant both the amplitude A and the lifetime τ. Figure
11 shows the simulated W functions and in the inset the RP fittings to the simulated W functions values up to the data covering the initial 40% of the total amplitude.
Plotting the RP exponent n vs. the W stretched exponential factor β (Fig.
12) allows for finding the relationship between both parameters. The results allow for classifying the diffusion behavior of the sample as a Fickian (β = 0.586) and non-Fickian (0.586 < β < 1.146) diffusion, and Case II (β = 1.146) and Super Case II (β > 1.146) transport.
Moreover, this correlation also allows for the calculation of the W kinetic constants kW or the corresponding lifetime τW from the corresponding RP parameters (Fig.
13).
Appendix 2: Fitting moisture sorption isotherms
In this appendix, the comparison between samples based on their moisture sorption isotherms is detailed using the modified Sorption Site Occupancy (SSO) model based on the statistical occupancy of accessible sorption sites in the sample (Freundlich 1906). This model assumes that proton-active moieties, i.e., hydroxyl groups in the lignocellulosic polymers, are responsible for binding water molecules during the sorption process that follows a power-law model (Willems 2014, 2015).
where MSSO is the moisture capacity corresponding to the bound water molecules to the sorption sites as a function of the water activity, MSSO0 is the maximum amount of bound water, n is the exponent, and aw is the water activity—aw = RH/100.
Firstly, and for purely interpolation purposes, the modified Guggenheim-Anderson-de Boer (GAB*) (Viollaz and Rovedo 1999; Sandoval et al. 2011) model was implemented. From the fitting of the sorption steps and using the DSE model, the mass ratio at the infinite time (m/mdry)eq was obtained. Then, the relative increment Δm/mdry—the moisture content—was calculated (Δm/mdry = (m/mdry)eq -1). The corresponding moisture sorption isotherms were constructed by plotting the Δm/mdry values as a function of the relative humidity RH or water activity aw.
The GAB* model has the following expression:
where M0, C, K and N are the fitting parameters and aw is the water activity.
Secondly, the SSO model was implemented by calculating the tangent to the local minimum (aw*) in the log–log representation of the moisture sorption isotherm from the GAB* model, allowing for the calculation of the moisture capacity related to the bound water molecules (MSSO).
Finally, the moisture capacity corresponding to the non-bound water molecules in the cell wall was evaluated by the difference between the fitted GAB* (Eq. B2) curve and the SSO curve (Eq. B1). This moisture content corresponds to the water molecules in charge of softening the cell wall and, therefore, swelling the wood structure (Vrentas and Vrentas 1991; Berthold et al. 1996).
The sorption coefficient S can be calculated from the moisture isotherm.
where mdry is the mass of the sample at 0% RH, p, ρ and V are the water partial pressure, the density and the volume of the sample at different relative humidity values, respectively, and mw is the molar mass of water (18.01528 g/mol). Note that C is the moisture concentration in the sample following Henry’s law, and p = 28.62 RH.
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Sánchez-Ferrer, A., Engelhardt, M. & Richter, K. Anisotropic wood–water interactions determined by gravimetric vapor sorption experiments. Cellulose 30, 3869–3885 (2023). https://doi.org/10.1007/s10570-023-05093-z
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DOI: https://doi.org/10.1007/s10570-023-05093-z