A Kriging Surrogate Model for Uncertainty Analysis of Graphene Based on a Finite Element Method

Due to the inevitable presence of random defects, unpredictable grain boundaries in macroscopic samples, stress concentration at clamping points, and unknown load distribution in the investigation of graphene sheets, uncertainties are crucial and challenging issues that require more exploration. The application of the Kriging surrogate model in vibration analysis of graphene sheets is proposed in this study. The Latin hypercube sampling method effectively propagates the uncertainties in geometrical and material properties of the finite element model. The accuracy and convergence of the Kriging surrogate model are confirmed by a comparison with the reported references. The uncertainty analysis for both Zigzag and Armchair graphene sheets are compared and discussed.


Introduction
With a two-dimensional (2D) honeycomb lattice, graphene can be wrapped up into zero-dimensional (0D) fullerenes, rolled into one-dimensional (1D) nanotubes, or stacked into three dimesnional (3D) graphite [1]. Graphene has extrodinary properties in potential applications. The electrical conduction of graphene is proved possible and is discovered in the mechanical exfoliation samples [2][3][4]. The measurements of thermal properties of graphene [5][6][7] also confirm the distinguished thermal conductivity of graphene, and, therefore, ignite strong interests of researchers. The unexpected mechanical properties of graphene are experimentally verified through nano-indentation by the atomic force microscope (AFM) [8].
It is recognized in academia that graphene has the astonishing strength and stiffness when compared with the traditional materials. However, the precise values of the parameters corresponding to the material properties of graphene are difficult to determine. On the aspects of experimental measurements, the in-plane Young's modulus of bulk graphite [9] is in the range of 1.02 ± 0.03 TPa. In the tensile test [10], a broad range of stiffness values (0.27 TPa to 1.47 TPa) were obtained, with breaking strengths ranging from 3.6 to 63 GPa. In addition, the defects in the graphene contribute to the deviation in the bending rigidity in the test results of suspended monolayer graphene membranes [11]. Furthermore, even the same test method is used in the measurements. The results obtained by researchers are different. For example, the Young's modulus is extracted as 0.5 TPa [12] in the measurement of the bending stiffness of graphene sheets by AFM nano-indentation. In another study, the Young's modulus equals 1.0 ± 0.1 TPa and the corresponding intrinsic stress is 130 ± 10 GPa at a strain of 0.25 [8]. Table 1. Geometrical and material parameters for graphene sheets *.

Definition
Interval Units

B z
The length of bonds in the Zigzag type 0.15-0.4 nm Ba The length of bonds in the Armchair type 0.15-0.4 nm Dz The diameter of bonds' section in the Zigzag type 0.02-0.05 nm Da The diameter of bonds' section in the Armchair type 0.02-0.05 nm Wz The number of hexagons in width in the Zigzag type 6-20 / Wa The number of hexagons in width in the Armchair type 6-20 / Hz The number of hexagons in height in the Zigzag type 20-60 / Ha The number of hexagons in height in the Armchair type 20-60 / Ez Young's modulus of graphene sheets in the Zigzag type 0.2-2 TPa Ea Young's modulus of graphene sheets in the Armchair type 0.2-2 TPa Rz Poisson ratio of graphene sheets in the Zigzag type 0.1-0.5 / Ra Poisson ratio of graphene sheets in the Armchair type 0.1-0.5 / Tz Physical density of graphene sheets in the Zigzag type 1500-4000 kg/m 3 Ta Physical density of graphene sheets in the Armchair type 1500-4000 kg/m 3 * The way of probability distribution for each variable are uniform.
In the finite element model of graphene sheets, the length of the C-C bond corresponds to the length of the beam in the planar-frame structure, while the wall thickness is related to the diameter of the cross section in the beam elements. Figure 1 illustrates a schematic diagram of mono-layer graphene in two dimensions. The Zigzag and Armchair types are both included. The beam elements applied in graphene sheets are based on the Timoshenko beam theory, as shown in the previous work [47]. the exact values of the material and geometrical parameters are represented by the corresponding interval ranges as shown in Table 1, according to the related references [38][39][40][41][42][43][44][45][46]. In the finite element model of graphene sheets, the length of the C-C bond corresponds to the length of the beam in the planar-frame structure, while the wall thickness is related to the diameter of the cross section in the beam elements. Figure 1 illustrates a schematic diagram of mono-layer graphene in two dimensions. The Zigzag and Armchair types are both included. The beam elements applied in graphene sheets are based on the Timoshenko beam theory, as shown in the previous work [47]. However, the KSM prosposed in this study for uncertainty analysis of graphene based on the finite element method is different with the Monte Carlo based finite element method in the previous work. First, the motivation of KSM is for the uncertainty analysis of pristine graphene. While the Monte Carlo-based finite element method (MC-FEM) is to propagate the vacancy defects in the pristine graphene. Second, the research objects are different. The MC-FEM is more concentrated in the geometrical uncertainties such as vacancy defects. The study in this paper is more comprehensive to explore the uncertainties in the material and geometrical parameters. Third, compared with MC-FEM, the KSM in this paper has the following advantages: compatibility to the experimental data, convenience to the reliable prediction, and good performance in vibration analysis and uncertainty However, the KSM prosposed in this study for uncertainty analysis of graphene based on the finite element method is different with the Monte Carlo based finite element method in the previous work. First, the motivation of KSM is for the uncertainty analysis of pristine graphene. While the Monte Carlo-based finite element method (MC-FEM) is to propagate the vacancy defects in the pristine graphene. Second, the research objects are different. The MC-FEM is more concentrated in the geometrical uncertainties such as vacancy defects. The study in this paper is more comprehensive to explore the uncertainties in the material and geometrical parameters. Third, compared with MC-FEM, the KSM in this paper has the following advantages: compatibility to the experimental data, convenience to the reliable prediction, and good performance in vibration analysis and uncertainty analysis for graphene. The MC-FEM is an effective numerical simulation to take the randomly distributed vacancy defects into consideration. However, the MC-FEM is not compatible to the experimental data or act as a surrogate model to represent the relationships between the input materials and geometrical parameters with the output resonant frequencies as well as their variance and fluctuations. Lastly, besides the vacancy defects in the graphene, the uncertainties and fluctuations in the material and geometrical parameters are also important issues to deal. The work in this study is a crucial supplement for the mechanical research of graphene.

Kriging Surrogate Model
The mathematical description of the KSM is written as the following equation.
where y(x) is the prediction result at a general point x. The first component is a linear regression of the data, the function set f = [ f 1 , f 2 , · · · , f n ] T and the vector β = [β 1 , β 2 , · · · , β n ] T as the regression coefficients are included. The introduction of the second component z(x) makes the classical linear regression model become a stationary Gaussian random process model with zero mean and covariance [26].
where σ 2 is the process variance of the KSM and R(·, ·) is the correlation kernel. The valid correlation kernel R(x i , x j ) satisfies two conditions: first, the input domain is symmetrical and, second, the resulting correlation is a positive semi-definite matrix.
The correlation kernel is usually described by a function of the distance.
The weighted distance is often written as the following formula.
Then, if the correlation kernel R(·, ·) is the power-exponential function, the covariance is computed as the equation below.
The correlation kernel is important to the performance of the KSM model. The common spatial correlation kernels are the Linear, Exponential, Gaussian, and Power-exponential [26]. Among them, the Gaussian kernel has a smooth and infinitely differentiable function, thereby being used in this study.
For the Universal Kriging (UK), the mean value of the prediction result for the input point whereβ is to compute the least squares estimate of the regression coefficients β.
The variance of the predictorŷ(x * ) is shown below.
A special case of UK is the Ordinary Kriging (OK). The trend is an unknown constant β 0 .
where 1 m is an m-length column vector of ones. The mean and variance values of the prediction results for the input point x * for OK can be written as the following equations.
In the Simple Kriging (SK), the trend is a known constant value µ shown below.

Latin Hypercube Sampling Method
The LHS method is one kind of advanced Monte Carlo simulations (MCS). By dividing the range of each variable into disjointed intervals with equal probabilities, the samples are randomly selected from each interval in LHS. It improves the stability of MCS and keeps satisfied accuracy and good convergence [18,19]. Consider a statistic system described by the function below.
where X is the random vector, and represents the independent input random variables. F is the operator, which performs a computer simulation, such as the finite element computation. The LHS method divides the range of each vector component into disjointed subsets with equal probabilities. Samples of each vector component are captured from the respective subsets, according to Equation (17).
where i = 1, · · · , n; j = 1, · · · , m. n refers to the total number of vector components or dimensions of vector, and m is the number of subsets in a design. k is the subscript denoting a specific sample. P is the cumulative distribution function.

Program Implementation
In order to demonstrate the KSM for graphene sheets, Figure 2 depicts the flowchart of KSM, which can be clearly concluded in blocks distinguished by different colors. In order to demonstrate the KSM for graphene sheets, Figure 2 depicts the flowchart of KSM, which can be clearly concluded in blocks distinguished by different colors. The blue boxes represent the procedure of the deterministic finite element model for vibration analysis of graphene sheets. First, the geometrical configuration of graphene sheets is defined. The corresponding parameters of bonds' length and sectional diameter, as well as the height and width of a hexagonal 2D lattice are settled. Next, material parameters, which include the Young's module, Poisson ratio, and physical density are provided. Then, perform the finite element model to compute the vibration modes and related natural frequencies.
After validation of the finite element model, the loop performs until sufficient times of sampling are completed, as presented in the red boxes. In the continuous loop, parameters corresponding to geometrical and material properties are the input variables of KSM, while the natural frequencies of the free vibration by finite element analysis are also captured and transferred to the procedure of KSM. These two groups of databases form sampling pairs in KSM.
In the pink boxes, the input variables of LHS and the output results of the finite element method (FEM) are sample pairs in KSM. In order to obtain satisfied prediction accuracy and good convergence, regression and correlation functions are required. The prediction results of KSM can be confirmed by comparison with the results in the reported references.
The numerical simulation model of graphene sheets was created by the ANSYS Parameter Design Language (Version 14.5, APDL, ANSYS, Cannonsburg, PA, USA). Carbon atoms in graphene are bonded together with covalent bonds, which form a hexagonal 2D lattice. The displacement of individual atoms under an external force is constrained by the bonds. For the modeling of the C-C bonds, the 3D elastic BEAM188 element was used. Each node has six degrees of freedom. The translations and rotations around the x, y, and z directions are included. In Table 1, the corresponding parameters, which are related to the geometrical and material properties, are listed. The interval ranges of material and geometrical parameters are settled, according to the relevant experimental and numerical data in the lierature [8,48,49]. The exact values of the parameters are replaced by the corresponding wide intervals. The blue boxes represent the procedure of the deterministic finite element model for vibration analysis of graphene sheets. First, the geometrical configuration of graphene sheets is defined. The corresponding parameters of bonds' length and sectional diameter, as well as the height and width of a hexagonal 2D lattice are settled. Next, material parameters, which include the Young's module, Poisson ratio, and physical density are provided. Then, perform the finite element model to compute the vibration modes and related natural frequencies.

Discussion and Results
After validation of the finite element model, the loop performs until sufficient times of sampling are completed, as presented in the red boxes. In the continuous loop, parameters corresponding to geometrical and material properties are the input variables of KSM, while the natural frequencies of the free vibration by finite element analysis are also captured and transferred to the procedure of KSM. These two groups of databases form sampling pairs in KSM.
In the pink boxes, the input variables of LHS and the output results of the finite element method (FEM) are sample pairs in KSM. In order to obtain satisfied prediction accuracy and good convergence, regression and correlation functions are required. The prediction results of KSM can be confirmed by comparison with the results in the reported references.
The numerical simulation model of graphene sheets was created by the ANSYS Parameter Design Language (Version 14.5, APDL, ANSYS, Cannonsburg, PA, USA). Carbon atoms in graphene are bonded together with covalent bonds, which form a hexagonal 2D lattice. The displacement of individual atoms under an external force is constrained by the bonds. For the modeling of the C-C bonds, the 3D elastic BEAM188 element was used. Each node has six degrees of freedom. The translations and rotations around the x, y, and z directions are included. In Table 1, the corresponding parameters, which are related to the geometrical and material properties, are listed. The interval ranges of material and geometrical parameters are settled, according to the relevant experimental and numerical data in the lierature [8,48,49]. The exact values of the parameters are replaced by the corresponding wide intervals.

Discussion and Results
In the deterministic beam finite element model (FEM), there are 6226 beams with 16,664 nodes. By LHS, the stochastic values for each parameter in the certain intervals are sampled for the finite element model of graphene sheets.

Statistical Results
As mentioned above, the uncertainties in the geometrical and material properties are propagated in the finite element model by LHS. Furthermore, 1000 samples for each input parameter and output result are obtained in the computational process. Based on the original database, the results are studied by the stochastic mathematics and probability theory, as shown in Table 2  In the deterministic beam finite element model (FEM), there are 6226 beams with 16,664 nodes. By LHS, the stochastic values for each parameter in the certain intervals are sampled for the finite element model of graphene sheets.

Statistical Results
As mentioned above, the uncertainties in the geometrical and material properties are propagated in the finite element model by LHS. Furthermore, 1000 samples for each input parameter and output result are obtained in the computational process. Based on the original database, the results are studied by the stochastic mathematics and probability theory, as shown in Table 2        In Table 2 and Figure 3, the differences between the Zigzag and Armchair graphene sheets are observed. In general, the mean values of the first four order natural frequencies are approximated in the Zigzag and Armchair graphene sheets. However, Armchair graphene sheets have larger values in the variance with maximum and minimum values from the respective database. Especially in the mimimum extreme condition, the results of Armchair graphene sheets are evidently larger than that of the Zigzag type. On one hand, the difference in the geometrical stuctures of the Armchair and Zigzag graphene sheets causes divergence in the statistical results. On the other hand, the stochastic sampling process can also lead to the deviation in the database of natural frequencies of Armchair and Zigzag graphene sheets. Furthermore, the differences between the zigzag and armchair edges in natural frequencies are also caused by the boundary conditions. Even though the micro structures of the zigzag and armchair graphene have only 90 degree rotation discrepancy, the boundary condition differences in the zigzag and armchair edges cannot be ignored. The six degrees of freedom (displacement in x, y, and z axes and rotation around to the x, y, and z axes) for atoms in the edges of graphene are supposed to be zero. The differences in zigzag and armchair edges lead to the inequality in natural frequencies.
The cumulative probability of the first four order natural frequencies is compared in Figure 4. For each order free vibration, the cumulative probability of the Zigzag and Armchair is close to each other. However, for all the first four order natural frequencies both in Zigzag and Armchair graphene sheets, the drag section in the large probability approching to one is very long and not negligible. This phenomenon is also presented in the results of the probability density distribution in Figure 5.
Even though all the input variables (parameters corresponding to the geometrical and material properties) of LHS are uniformly distributed in the sample space, the output results (natural frequencies of graphene sheets) do not obey the uniform or strict normal distribution, as shown in Figure 5. The drag section is an unevitable component in all ranges of natural frequencies. By taking comprehensive uncertainties in graphene sheets into consideration, the shape of probability distribution of natural frequencies is the peak shape with a long drag, while the natural frequencies In Table 2 and Figure 3, the differences between the Zigzag and Armchair graphene sheets are observed. In general, the mean values of the first four order natural frequencies are approximated in the Zigzag and Armchair graphene sheets. However, Armchair graphene sheets have larger values in the variance with maximum and minimum values from the respective database. Especially in the mimimum extreme condition, the results of Armchair graphene sheets are evidently larger than that of the Zigzag type. On one hand, the difference in the geometrical stuctures of the Armchair and Zigzag graphene sheets causes divergence in the statistical results. On the other hand, the stochastic sampling process can also lead to the deviation in the database of natural frequencies of Armchair and Zigzag graphene sheets. Furthermore, the differences between the zigzag and armchair edges in natural frequencies are also caused by the boundary conditions. Even though the micro structures of the zigzag and armchair graphene have only 90 degree rotation discrepancy, the boundary condition differences in the zigzag and armchair edges cannot be ignored. The six degrees of freedom (displacement in x, y, and z axes and rotation around to the x, y, and z axes) for atoms in the edges of graphene are supposed to be zero. The differences in zigzag and armchair edges lead to the inequality in natural frequencies.
The cumulative probability of the first four order natural frequencies is compared in Figure 4. For each order free vibration, the cumulative probability of the Zigzag and Armchair is close to each other. However, for all the first four order natural frequencies both in Zigzag and Armchair graphene sheets, the drag section in the large probability approching to one is very long and not negligible. This phenomenon is also presented in the results of the probability density distribution in Figure 5.
Even though all the input variables (parameters corresponding to the geometrical and material properties) of LHS are uniformly distributed in the sample space, the output results (natural frequencies of graphene sheets) do not obey the uniform or strict normal distribution, as shown in Figure 5. The drag section is an unevitable component in all ranges of natural frequencies. By taking comprehensive uncertainties in graphene sheets into consideration, the shape of probability distribution of natural frequencies is the peak shape with a long drag, while the natural frequencies are the ratio of stiffness matrices and mass matrices. It is reasonable to explain that the test equivalent results are concentrated in the narrow intervals with the possibility of large extreme values.
In Figure 6, the prediction results of KSM are compared with that of Liu [38], Kudin [39], and Wei [40]. In the first order natural frequency, the prediction results of KSM is larger than the results of Liu [38], Kudin [39], and Wei [40]. The Armchair graphene sheets have the closer results to the reported reference [41][42][43][44][45][46]. In the second order, the predicted results are smaller than the reported results. The Zigzag graphene sheets have the more approximate results. The prediction results of Zigzag graphene sheets have a satisfied agreement with the reported results in the third order natural frequency. In the fourth order natural frequency, the Zigzag type graphen sheets have more consistent results. In addition, in the first four order natural frequencies, the prediction results of Zigzag graphene sheets are all larger than the Armchair graphene sheets. Furthermore, in order to fit the the relationship between the natural frequencies and parameters corresponding to the geometrical and material properties, the constant, linear, and quadratic functions in KSM are applied and compared in Figure 6. Besides the accuracy, the saitisfied convergence is reached in different orders of KSM.
In Figure 6, the prediction results of KSM are compared with that of Liu [38], Kudin [39], and Wei [40]. In the first order natural frequency, the prediction results of KSM is larger than the results of Liu [38], Kudin [39], and Wei [40]. The Armchair graphene sheets have the closer results to the reported reference [41][42][43][44][45][46]. In the second order, the predicted results are smaller than the reported results. The Zigzag graphene sheets have the more approximate results. The prediction results of Zigzag graphene sheets have a satisfied agreement with the reported results in the third order natural frequency. In the fourth order natural frequency, the Zigzag type graphen sheets have more consistent results. In addition, in the first four order natural frequencies, the prediction results of Zigzag graphene sheets are all larger than the Armchair graphene sheets. Furthermore, in order to fit the the relationship between the natural frequencies and parameters corresponding to the geometrical and material properties, the constant, linear, and quadratic functions in KSM are applied and compared in Figure 6. Besides the accuracy, the saitisfied convergence is reached in different orders of KSM.  The prediction results of KSM are all larger than that of Sadeghzadeh [43] in the first four order natural frequencies of graphene sheets, as shown in Figure 7. Moreover, the Zigzag graphene sheets have larger natural frequencies than Armchair graphene sheets. However, when the parameters corresponding to the geometrical and material properties take the same values of Gupta [41] and Lu [42], the difference between Zigzag and Armchair graphene sheets is not evident. In addition, the prediction results of KSM in the first order is larger than that of Gupta [41], but smaller in the other three order natural frequencies. The prediction results of KSM in the first order natural frequency is close to the results of Lu [42], especially in the Zigzag graphene sheets. However, the prediction results of KSM are smaller than that of Lu [42] in the other three order natural frequencies. In Figure 7, the convergence of KSM in distinct orders is also proven.
In Figure 8, for the first order natural frequency, the prediction results of KSM have appropriate accuracy with that of Reddy [45] and Zhou [46]. An evident deviation in the prediction results of KSM with that of Cadelano [44] is observed in the first four order natural frequencies. In addition, the prediction results are smaller than that of Reddy [45] and Zhou [46]. The difference of the Zigzag and Armchair is not negligible in the situation of Reddy [45] and Zhou [46]. Even though there is deviation between the prediction results of KSM and that of Reddy [45], Zhou [46], and Cadelano [44], the convergence in different orders of KSM demonstrates the robustness and reliability of KSM.     In addition, the results in this study are in good agreement with that of nonlocal plate model proposed by Ansari [50]. Different from the Timoshenko beam finite element model, the Mindlin plane equations are coupled with van der Waals interaction based on the nonlocal constitutive elastic equations. However, the out of plane behavior of graphene in the beam finite element model is larger than the results in the real situation due to the bond angle bending interaction. In addition, the geometrical parameters, such as the diameters, chiral angles, and length of carbon bonds, have the crucial influences on the axial and shear deformation copuling behaviors [51] and buckling critical stress [52]. More appropriate theoretical models for the mechanical properties' analysis of gaphene are necessary to explore [53].

Uncertainty Analysis
The competitive predicition competence in KSM is not only applied in deterministic models, but can be used in uncertainty analysis. Based on the satisfied accuracy and robust convergence, KSM is applied in the uncertainty analysis of geometrical and material properties in graphene sheets. Tables 3 and 4 list the results of uncertainty analysis of geometrical and material properties, respectively. When the corresponding parameters are sampled following an uniform distribution from the specific interval ranges, the probability density distributions of the first order natural frequency are demonstrated in Figures 9 and 10     In Figure 9a, when the length of bonds in graphene sheets is uncertain, the probability density distribution of Zigzag and Armchair graphene sheets is contiguous. The situation is analogous for the number of hexogons in height, as presented in Figure 10d. However, for the diameter of bonds' section and the number of hexagons in width, the difference of the probability density distribution between Zigzag and Armchair graphene sheets is apparent. In general, the uncertainties in the diameter of bonds' section and the number of hexagons in width leads to the lower and more gentle probability distribution in the Armchair than that in the Zigzag graphene sheets, as shown in Figure  9b,c. The Zigzag gaphene sheets have a more concentrated and peaky probability density distribution in the more narrow result interval. In Table 3, the values of variance including the maximum and minimum values also confirm this point. In a sense, Zigzag graphene sheets are more robust and less senstive to the uncertainties in the diameter of the bonds' section and the number of hexagons in In Figure 9a, when the length of bonds in graphene sheets is uncertain, the probability density distribution of Zigzag and Armchair graphene sheets is contiguous. The situation is analogous for the number of hexogons in height, as presented in Figure 10d. However, for the diameter of bonds' section and the number of hexagons in width, the difference of the probability density distribution between Zigzag and Armchair graphene sheets is apparent. In general, the uncertainties in the diameter of bonds' section and the number of hexagons in width leads to the lower and more gentle probability distribution in the Armchair than that in the Zigzag graphene sheets, as shown in Figure 9b,c. The Zigzag gaphene sheets have a more concentrated and peaky probability density distribution in the more narrow result interval. In Table 3, the values of variance including the maximum and minimum values also confirm this point. In a sense, Zigzag graphene sheets are more robust and less senstive to the uncertainties in the diameter of the bonds' section and the number of hexagons in width than Armchair graphene sheets.
In addition, for the uncertainties in material properties in Figure 10, the probability density distribution of Zigzag graphene sheets is in the right side of Armchair graphene sheets, especially when the Poisson ratio is random. In Table 4, the mean values of the first order natural frequency in Zigzag graphene sheets are all larger than that of Armchair graphene sheets when the Young's modulus, poisson ratio, or mass density is stochastic and uncertain. The variances of Zigzag graphene sheets are also larger than that of Armchair graphene sheets. In the free vibration, the uncertainties in material properties lead to more evident fluctuation in Zigzag graphene sheets.
Compared with the finite element method compuation, the advantage of time-saving in the KSM is presented in the uncertainty analysis process of graphene sheets. The time costs of natural frequencies and the vibration mode calcuation for each deterministic sample of graphene by finite element methods are nearly 5.6 s. However, based on the original database of LHS from the finite element model of graphene, the KSM can be applied to predict the natural frequencies with high efficiency. For the predicition of 1000 samples of graphene, it only takes approximated 12.3 s by KSM. When the parameters corresponding to geometrical and material properties are randomly distributed, performing the finite element model for sufficient times are computationally expensive and time consuming. Thus, the advantage of time-saving in the Kriging surrogate model compared with the traditional finite element model is evident.
In addition, even though the exact mathematical relationship or functional expression between the graphene size and natural frequencies are not explicit, the KSM is proposed to effectively describe the implicit relationship. Furthermore, the KSM is compatible for the database of the numerical simulation and experimental tests. It is possible to combine the results of numerical simulation and physical experiments and create a more inclusive and smart database. Therefore, developing the KSM in the study of graphene sheets and related nanomaterials are promising and crucial.

Conclusions
In summary, the Kriging surrogate model is not only a powerful method with satisfied accuracy and convergence in prediction, but also convenient and time-saving in uncertainty analysis of graphene sheets. The difficulties in uncertainty and vibration analysis of graphene sheets are well overcome by the Kriging surrogate model based on the LHS. With the comprehensive uncertainties in geometrical and material properties, the probabilty results of the LHS illustrate that the concentrated narrow interval with a long drag section is more appropriate than the strict normal probability density distribution. Furthermore, Zigzag graphene sheets are more robust and less senstive to the uncertainties of the geometrical property than Armchair graphene sheets in the free vibration. However, the uncertainties in materical properties cause larger fluctuation in Zigzag graphene sheets than in Armchair graphene sheets.

Conflicts of Interest:
The authors declare no conflict of interest.
Data Availability: The raw data required to reproduce these findings are available to download from [https: //drive.google.com/drive/folders/1r4o8h7m6eQ7EDhCuTip5BCGK_MG1U3zn?usp=sharing].