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Article

Uncertainty Evaluation Method of Marine Soil Wave Velocity Prediction Model Based on Point Estimation Method and Bayesian Principle

1
Institute of Geotechnical Engineering, Nanjing Tech University, Nanjing 211816, China
2
Department of Geotechnical Engineering, Tongji University, Shanghai 200092, China
*
Author to whom correspondence should be addressed.
J. Mar. Sci. Eng. 2025, 13(10), 1939; https://doi.org/10.3390/jmse13101939
Submission received: 4 September 2025 / Revised: 30 September 2025 / Accepted: 7 October 2025 / Published: 10 October 2025
(This article belongs to the Section Coastal Engineering)

Abstract

The spatial variability of soil shear wave velocity (Vs) significantly influences the results of site seismic response analysis. Based on the collected measured Vs values of silty clay in a certain sea area in China, this study divides the Vs data into one set of on-site sample data and six sets of historical data. A power function is used to establish the regression equation between Vs and depth h, and the joint prior distribution of the mean and variance for parameters a and b in the power function is derived using historical data. The joint posterior distribution of parameters a and b is obtained by applying the Bayesian formula to the on-site sample data. Using the maximum a posteriori mean values of a and b combined with the point estimation method, the mean and standard deviation of the predicted Vs values as functions of depth h are derived. The accuracy of the point estimation results is verified using Monte Carlo simulation. Compared to the Vs values predicted using only the mean values of a and b derived from on-site sample data, the Vs values predicted based on the maximum a posteriori mean values of a and b are closer to the measured Vs values. Accordingly, the results of the site seismic response analysis also align more closely with those calculated using the true Vs values.

1. Introduction

The shear wave velocity of soil is a critical parameter reflecting the dynamic properties of soil, and it is essential for site classification, liquefaction potential evaluation of sandy soils, and seismic response analysis of engineering sites. Influenced by depositional environments and human engineering activities, the physical and mechanical parameters of soil exhibit spatial variability [1,2,3,4,5]. The variability of soil shear wave velocity significantly impacts the results of liquefaction potential evaluation and site seismic response analysis [6,7,8,9,10,11]. In existing research, methods for studying the spatial variability of soil shear wave velocity can be broadly categorized into two types. The first category involves statistically analyzing measured values of soil shear wave velocity to quantify the variability of Vs values; this approach requires sufficient measured borehole data. The second category establishes predictive models between Vs values and soil burial depth (h), and then compares the model-predicted values with the measured Vs values to derive the uncertainty characteristics of the Vs values predicted by the model [12,13,14,15,16]. These two categories of methods are currently primarily used to evaluate the uncertainty of shear wave velocity in onshore soils.
Seabed sites are typically soft soil sites, and China’s maritime areas are historically prone to strong earthquakes. Under strong seismic loading, the results of seismic response analysis for soft soil sites are highly sensitive to the variability of Vs. Even relatively small variability in Vs can trigger significant differences in the seismic response analysis results for soft soil sites [17]. Therefore, research on the spatial variability of marine soil Vs values will contribute to further revealing the impact of marine soil Vs uncertainty on the variability of seabed site seismic response analysis results. This is of great significance for ensuring the seismic safety of marine engineering.
Offshore operations face significant challenges and high costs, making it difficult to evaluate the spatial variability of marine soil Vs through extensive in situ measurements. The Vs value of soil exhibits a strong correlation with burial depth (h) [14]. When sample data are scarce, a regression equation between marine soil Vs and h can be established to predict Vs values at various depths [13,18].
The mean and standard deviation of geotechnical parameters are crucial metrics for quantifying their uncertainty. With abundant measured data, statistical analysis of soil Vs values at different depths can be performed to determine the mean and standard deviation of Vs at each depth. However, when measured data are limited, the evaluation of Vs prediction model accuracy typically relies on the goodness-of-fit of the regression equation (Vs vs. h) and the residuals between predicted Vs values (from the regression) and measured Vs values. This approach fails to provide the standard deviation of Vs values predicted by the regression equation at different depths [12,13,19,20]. Extensive field data indicate that for soil parameters significantly influenced by overburden pressure, both the mean and standard deviation vary with depth (h) [6,7,8,9,10,11,21,22]. Consequently, existing methods that use regression goodness-of-fit and residual magnitude as uncertainty evaluation metrics cannot accurately characterize model uncertainty.
Bayesian statistics is a theoretical framework for statistical analysis under limited sample sizes. It utilizes accumulated experimental data of a specific geotechnical parameter as prior information to make an initial estimation of the parameter’s distribution. Subsequently, based on the limited sample data from a specific project, it derives posterior information to reassess the uncertainty of the geotechnical parameter [23,24,25,26,27,28]. This approach effectively mitigates estimation errors arising from insufficient field test data and has gained widespread application [23,24,25,26,27].
The point estimation method is a simple and accurate approach for studying error propagation [29,30,31,32]. This study utilizes collected measured soil shear wave velocity data from boreholes in a certain sea area in China. The shear wave velocity data are divided into one set of on-site sample data and six sets of historical data serving as prior information samples. A power function is employed to fit the relationship between measured Vs values and depth (h). The mean and variance of the fitting parameters in the power function model are statistically derived from the six sets of historical data, thereby obtaining the prior distributions of the mean and variance of the fitting parameters. The posterior distribution of the parameters is then derived by combining the prior distribution with the on-site data. Finally, using the posterior estimates of the model parameters, the point estimation method is applied to analyze the variation in uncertainty in Vs predictions that are obtained from the power function model with depth. This aims to provide guidance for evaluating the uncertainty of marine soil Vs predictions when on-site sample sizes are limited.

2. Uncertainty Analysis Based on the Point Estimation Method

2.1. Fundamental Principles of the Point Estimation Method

As shown in Figure 1, the principle of the point estimation method is to approximate the range of the independent variable x in the function y = f(x) between x+ and x, where x+ = x ̅ + σ[x]; x = x ̅ σ[x]. Here, x ̅ and σ[x] represent the average value and variability measure of the random variable x, respectively. By using these two estimates of x (x and x+) with the corresponding algorithm, two estimates of the random variable y (y and y+) can be generated.
Figure 1 illustrates the information transfer schematic for a univariate function. In practical problems, the number of independent variables is often more than one. Taking the bivariate function y = f(x1, x2) as an example, the variability of each random variable xi(i = 1, 2)can be characterized using the following approach [29,30]:
x i + = x i ¯ + σ [ x i ] x i = x i ¯ σ [ x i ] ,
In the equation: x i ¯ represents the mean of the i-th random variable xi; σ [ x i ] represents the standard deviation of the random variable xi;
xi+ and xi denote the upper and lower bounds of the range of the random variable xi, respectively. When considering the variability of both x1 and x2, the values of the bivariate function y (denoted as y±±) are given by:
y ± ± = f ( x ̅ 1 ± σ [ x 1 ] , x ̅ 2 ± σ [ x 2 ] ) ,
The first moment of the function y, i.e., its mean value E[y], is given by:
E [ y ] = p + + y + + + p + y + + p + y + + p y ,
The second moment of the function y is E[y2]:
E [ y 2 ] = p + + y + + 2 + p + y + 2 + p + y + 2 + p y 2 ,
where p++, p−−, p+− and p−+ are weight coefficients:
p + + = p = 1 + ρ x 1 , x 2 4 p + = p + = 1 ρ x 1 , x 2 4 ,
In the equation, ρ x 1 ,   x 2 represents the correlation coefficient between x1 and x2.
ρ x 1 , x 2 = C o v   ( x 1 , x 2 ) V [ x 1 ]     V [ x 2 ] ,
In the equation, COV(x1, x2) denotes the covariance between x1 and x2; V[x1] and V[x2] represent the variances of x1 and x2, respectively. The standard deviation of the function y, denoted as σ[y], is:
σ [ y ] = E [ y 2 ] E [ y ] 2 ,

2.2. Uncertainty Propagation in the Power Function Prediction Model

Evaluating the variability of soil Vs values using extensive measured data are a straightforward and effective method. As shown in Figure 2, however, this approach has several limitations when assessing the variability of soil Vs values. While measured data can directly provide the variation in the standard deviation of Vs with depth, this method relies on extensive in situ measurements, which are difficult to achieve for marine engineering projects. Secondly, measured Vs values often lack continuity along the depth direction (h). When Vs test values are missing within a specific depth range, the variability of Vs values within that range cannot be determined. Additionally, when evaluating Vs variability using measured data, only the variability of Vs values above the maximum measured depth can be assessed; it cannot characterize the variability of Vs values below the maximum measured depth.
When measured data are insufficient, it is common practice to establish a regression equation between soil Vs values and depth (h) using a limited set of measured data based on the least squares method. This equation is then used to predict soil Vs values at various depths (h). By further comparing the residuals between predicted Vs values and measured Vs values, the accuracy of the regression equation can be evaluated [19,20].
The standard deviation is a critical indicator for assessing the variability of soil parameters. However, the least squares method cannot directly provide the distribution of the standard deviation of predicted Vs values. As shown in Figure 3, extensive field data demonstrate that the standard deviation of soil Vs values exhibits nonlinear variation with depth (h) [6,7,8,9,10,11,21]. The residual comparison approach fails to reflect this characteristic.
The shear wave velocity (Vs) of the specimen was measured using a pair of piezoelectric ceramic bender elements installed in the top and bottom platens of the HX-100 cyclic triaxial apparatus. Undisturbed marine soil samples were prepared into solid cylinders with a diameter of 3.91 cm and a height of 8.0 cm using the rotary cutting method. The prepared specimen was enveloped with a rubber membrane and mounted in the triaxial cell. After completion of the consolidation process, the Vs value of the soil specimen was tested. Multi-frequency sinusoidal wave signals within the range of 1 to 40 kHz (rather than single-frequency signals) were employed as the excitation source. The shear wave travel time was determined more accurately by comprehensively analyzing the received signals corresponding to each excitation frequency. This study adopted the first arrival method in the time domain to determine the propagation velocity of shear waves through the specimen.
When the soil depth is zero, the shear wave velocity must necessarily be zero. Using a power function to describe the relationship between Vs and h ensures that the shear wave velocity is zero at zero depth, whereas other forms such as linear or quadratic functions fail to guarantee this condition. The relationship between soil Vs values and depth (h) is typically nonlinear [14]. Therefore, a nonlinear function is required to describe their relationship. Taking the power function as an example, the relationship between soil shear wave velocity Vs(h) and depth (h) at any given depth is expressed as:
V s ( h ) = a h b ,
In the equation, a and b are fitting parameters.
For the same soil type, Equation (8) is used to fit the relationship between Vs and h for each borehole, yielding the mean values ( a ¯ ,   b ¯ ) and standard deviations (σ[a], σ[b]) of parameters a and b for that soil type. According to Equation (3), the mean value of soil Vs at any depth h, denoted as E[Vs(h)], is:
E [ V s ( h ) ] = p + +   V s + + + p +   V s + + p +   V s + + p   V s ,
In the equation, the weight functions are defined as: p++ = p−− = (1 + ρ a , b ) /4, p+− = p−+ = (1 − ρ a , b ) /4; ρ a , b denotes the correlation coefficient between parameters a and b:
ρ a , b = C O V ( a , b ) V [ a ] V [ b ] ,
In the equation, COV(a,b) denotes the covariance between a and b; V[a] and V[b] represent the variances of a and b, respectively; Vs±± is expressed as:
V s   ±   ± = ( a ¯ ± σ [ a ] ) h ( b ¯ ± σ [ b ] ) ,
The standard deviation of soil Vs at different depths, denoted as σ[Vs(h)], is given by:
σ [ V s ( h ) ] = E [ V s 2 ] E [ V s ( h ) ] 2 ,
In the equation, E [ V s 2 ] represents the second moment of Vs:
E [ V s 2 ] = p + + V s + + 2 + p + V s + 2 + p + V s + 2 + p V s 2 ,
Through Equations (8)–(13), the mean and standard deviation of soil Vs at any depth h can be obtained.

3. Bayesian Inference for Power Function Fitting Parameters a and b

The method in Section 2.2 transforms the direct estimation of the standard deviation of Vs into the estimation of fitting parameters a and b. Therefore, accurately characterizing the variability of parameters a and b is fundamental to ensuring a reasonable evaluation of Vs uncertainty. When the number of on-site boreholes is insufficient, the estimation of the variability of parameters a and b may be inaccurate. Bayesian statistics integrate prior information, historical data, and on-site sample data to predict parameter variability [33]. This approach mitigates inaccuracies in estimating parameter variability caused by insufficient on-site sample data.

3.1. Prior Information

When applying Bayesian theory to infer parameter variability, it is first necessary to specify the type of prior distribution for the parameters. The Normal–Inverse Gamma distribution is a commonly used prior distribution that jointly models the mean and variance of a parameter [34,35,36]. Taking the fitting parameter a of the power function model as an example, assume the joint prior distribution of the mean and variance of a follows a Normal–Inverse Gamma distribution π(μ, σ2):
π μ , σ 2 = π μ | σ 2 π σ 2 ,
In the equation, π(σ2) denotes the prior probability density distribution function for the variance σ2 of parameter a; π(μ|σ2) represents the prior probability density distribution function for the mean μ of parameter a given its variance σ2.
The prior distribution of μ can be assumed to follow a normal distribution:
π ( μ | σ 2 ) = N μ 0 , σ 2 / κ 0 ,
In the equation, N(μ0,σ2/κ0) denotes that the mean μ of parameter a follows a normal distribution with mean μ0 and variance σ2/κ0. The prior distribution for the variance σ2 of parameter a can be expressed as:
π ( σ 2 ) = I G a ( υ 0 / 2 , υ 0 σ 0 2 / 2 ) ,
In the equation, I G a ( υ 0 / 2 , υ 0 σ 0 2 / 2 ) represents that the variance σ2 of parameter a follows an Inverse Gamma distribution with mean υ 0 / 2 and variance υ 0 σ 0 2 / 2 . The hyperparameters μ0, κ0, v0 and σ0 in Equations (15) and (16) need to be determined. If the prior samples are divided into m groups, the estimates for parameters μ0, σ2 and κ0 in Equation (15) can be determined from the prior sample information. The estimate for μ0, denoted as μ 0 , is given by [34,35,36]:
μ 0 = i = 1 m x i ¯ m ,
In the equation, x i ¯ represents the mean of the i-th group of prior samples. The estimate for σ2, denoted as σ 2 , is:
σ 2 = 1 m i = 1 m s 2 i ,
In the equation, s i 2 represents the variance of the i-th group of prior samples. The estimate for κ0, denoted as κ 0 , is:
κ 0 = σ 2 [ σ 2 / κ 0 ] = i = 1 m s i 2 i = 1 m x i ¯ i = 1 m x i ¯ / m 2 ,
The parameters υ 0 / 2 and υ 0 σ 0 2 / 2 in the inverse gamma distribution shown in Equation (16) can be estimated as follows [34,35,36]:
The mean of the variances of the prior sample data, denoted as μ σ 2 , is calculated using the method of moments:
μ σ 2 = σ 2 = 1 m i = 1 m s 2 i ,
The variance of the prior sample data, denoted as υ σ 2 , is calculated using the method of moments:
υ σ 2 = 1 m 1 i = 1 m s 2 i μ σ 2 2 ,
Subsequently, the estimates for υ 0 / 2 and υ 0 σ 0 2 / 2 are obtained as follows:
υ 0 2 = μ 2 σ 2 υ σ 2 + 2 υ 0 σ 0 2 2 = μ 2 σ 2 μ 2 σ 2 υ σ 2 + 1 ,

3.2. Posterior Information

After determining the parameters in the prior distribution of the geotechnical parameter, the posterior distribution of the geotechnical parameter is obtained by combining on-site sample information:
π μ , σ 2 | x = p x | μ , σ π μ | σ 2 π σ 2 m ( x ) ,
In the equation, p(x| μ, σ) is the probability density function of the random variable x with parameters μ and σ. p(x| μ, σ) can also be regarded as the likelihood function for μ and σ given the on-site sample x. m(x) denotes the marginal distribution of the random variable x:
m ( x ) = p x | μ , σ 2 π μ | σ 2 π σ 2 d ( μ ) d ( σ 2 ) ,
In Equation (23), m(x) is a proportionality factor independent of μ and σ2 and can be omitted. Therefore, Equation (23) can be simplified as:
π μ , σ 2 | x σ 2 ( υ n / 2 + 1.5 ) exp 1 2 σ 2 υ n σ n 2 + κ n μ μ n 2 ,
In the equation, μn, νn, κn and σn are parameters of the posterior distribution, which can be obtained by combining the parameters of the prior distribution with on-site sample information:
μ n = κ 0 κ 0 + n μ 0 + n κ 0 + n x ¯ κ n = κ 0 + n υ n = υ 0 + n υ n σ n 2 = υ 0 σ 0 2 + ( n 1 ) s 2 + κ 0 n κ 0 + n μ 0 x ¯ 2 ,
In the equation, n represents the number of on-site samples; x ̅ denotes the mean of the on-site samples; s2 denotes the variance of the on-site samples. According to Bayesian principles, the mean and variance of the posterior distribution remain random variables. Among these, the most probable mean and variance are termed the maximum a posteriori (MAP) mean μMD and MAP variance σ MD 2 :
μ MD = κ 0 κ 0 + n μ 0 + n κ 0 + n x ¯ σ MD 2 = 2 υ 0 σ 0 2 + ( n 1 ) s 2 + ( κ 0 n / κ 0 + n ) ( μ 0 x ¯ ) 2 υ 0 + n + 3 ,
Figure 4 illustrates the workflow of Bayesian inference for the power function fitting parameters a and b in this study.

4. Uncertainty Analysis of Predicted Vs Values for Soils in a Certain Bay in China

4.1. Site Overview

The certain sea area in China is located in northeastern China. Over recent decades, extensive marine engineering projects have been constructed in sea areas, accumulating a certain volume of test data for the physical and mechanical parameters of marine soils. However, due to the high costs and technical challenges of seabed drilling operations, the number of accumulated boreholes remains significantly limited compared to those in terrestrial sites. The characteristics of marine soil physical and mechanical parameters in the certain sea area are still fraught with uncertainty, urgently necessitating a scientifically robust method for evaluating this uncertainty. This study takes a site in a Chinese bay as an example and employs Bayesian theory combined with the point estimation method to evaluate the uncertainty of shear wave velocity (Vs) for marine soils in this region. Within a 25 km radius of this site, only seven boreholes exist. The soil types and measured Vs values for each borehole are shown in Figure 5. The relationship between Vs and depth h for each soil type within the boreholes was fitted using the power function shown in Equation (8), yielding the distributions of parameters a and b, as summarized in Table 1.

4.2. Uncertainty Analysis of Predicted Vs Values for Soils in the Study Area Based on Bayesian Theory and Point Estimation Method

Subsequently, the method described in Section 2 was employed to estimate parameters a and b. This estimation integrates prior information with on-site sample data, as shown in Figure 5. Previous engineering projects across this sea area have provided 36 boreholes. The data from these boreholes, which reveal the soil layer distribution and Vs values in the relevant regions, serve as prior samples for soil stratification and Vs distribution. Meanwhile, the borehole data from the specific site illustrated in Figure 5 constitutes the on-site sample distribution for this study.
As illustrated in Figure 6, taking parameter a of the power function for silty clay as an example, the 36 boreholes are divided into six groups, each containing six boreholes. The boreholes in this study were grouped based on the distances between their respective locations, with those in close proximity to each other being assigned to the same group.
Using the power function in Equation (8), the relationship between Vs and depth (h) for silty clay in each borehole is fitted, yielding six values of a per group along with their mean and variance. Subsequently, these means and variances of a are treated as samples to estimate the prior distributions for the mean and variance of a. The same procedure is applied to estimate the prior distributions for the mean and variance of parameter b.
Figure 7 presents the distributions of parameters a and b derived from prior samples of silty clay. Figure 8 shows the prior distributions of the mean and variance for fitting parameters a and b of silty clay calculated using the method in Section 2 based on the data in Figure 7. Through the Kolmogorov–Smirnov test at a significance level of 0.05, the means of fitting parameters a and b for silty clay both conform to a normal distribution, while the variances of a and b both conform to an inverse gamma distribution. Using the method in Section 2 and combining the on-site sample information of a and b provided in Table 1, the posterior probability distributions of a and b are obtained. The maximum posterior distribution of a and b is derived using Equation (27).
Table 1 presents the mean and variance of fitting parameters a and b for five types of marine soils obtained solely from the on-site sample information shown in Figure 5, along with the maximum posterior mean and maximum posterior variance of parameters a and b derived using the method in Section 2. Figure 9 shows the probability density distribution curves of fitting parameter a and b for silty clay obtained from the maximum posterior mean and maximum posterior variance of a and b, compared with those derived solely from the on-site sample information. Relative to the probability density curves of a and b estimated using only on-site sample information, the curves obtained from the maximum posterior mean and maximum posterior variance become lower and wider. This indicates that using only scarce on-site borehole information will underestimate the variability of fitting parameters a and b for silty clay.
By substituting the maximum posterior mean and maximum posterior variance of silty clay fitting parameters a and b into the point estimation method procedure outlined in Equations (9)–(13), the standard deviation of Vs values for silty clay within the 0–120 m depth range is obtained, as shown in Figure 10. For comparison, Figure 10 also includes the standard deviation of silty clay calculated over the same 0–120 m depth range using the point estimation method based solely on the mean and variance of a and b derived from on-site sample information (Table 1). The former is significantly larger than the latter, demonstrating that relying exclusively on on-site sample information while neglecting prior information will underestimate the variability of silty clay Vs values along the depth direction.
The red dots in Figure 11 represent the differences between the predicted Vs values for each soil type (calculated using Equation (8) with the mean values of parameters a and b derived solely from on-site samples in Table 1) and the measured Vs values for each soil type (shown in Figure 5). The black dots represent the differences between the predicted Vs values (calculated using Equation (8) with the maximum posterior mean values of parameters a and b for each soil type from Table 1) and the measured Vs values. The predicted Vs values for each soil type obtained from the maximum posterior mean of a and b are closer to the measured Vs values, indicating that combining prior information with sample information enables more accurate prediction of soil Vs values in the study area.

4.3. Comparison with Monte Carlo Simulation Results

The accuracy of the point estimation method can be validated using Monte Carlo simulation. Random sampling of parameters a and b is performed based on the probability distribution curves derived from their maximum posterior mean and maximum posterior variance in Figure 9. Each sampled pair of a and b values is substituted into Equation (8) to calculate the Vs values at various depths. Statistical analysis of Vs values obtained from Monte Carlo simulations at any depth yields the mean and standard deviation of Vs at that depth. To fully capture the distribution of random Vs possibilities, the number of Monte Carlo simulations must reach sufficient value N. The standard deviation σ V s ( h α ) of Vs at any depth hα obtained from N random simulations is:
σ V s ( h α ) = l = 1 N V s l ( h α ) l = 1 N [ V s l ( h α ) ] N 2 ( N 1 ) ,
In the equation, V s l ( h α ) represents the simulated Vs value at any depth hα during the l-th random simulation (l = 1, 2, … N). After N simulations, the mean value of the standard deviation σ V s ( h α ) denoted as E, is:
E A σ = 1 n α = 1 n [ σ V s ( h α ) ] ,
In the equation, n = hh, where Δh is the depth interval used to statistically analyze the variability of soil Vs values at different depths. This study sets Δh = 1 m, meaning the variability of soil Vs values is calculated at 1 m intervals. Different values of N yield different E, from which the coefficient of variation COV[E] can be computed. When COV[EAE] ≤ 0.1% [37], the statistical characteristics of the fitted parameters for soil shear wave velocity in Table 1 are considered sufficient to indicate that N simulations can comprehensively capture the possible distribution of random Vs values [37]. Taking silty clay as an example, Figure 12 shows the variation in COV[E] for random Vs values of silty clay obtained from Monte Carlo simulations with increasing N. When N ≥ 8000, COV[E] falls below 0.1%. This study adopts N = 10,000 simulations.
Figure 13 compares the average value and standard deviation of Vs for silty clay at different depths calculated using the point estimation method (Equations (9)–(13)) based on the maximum posterior mean and standard deviation of a and b, with those obtained from Monte Carlo simulation. The differences between them are small, which demonstrates that the results calculated by the point estimation method are reasonable.

4.4. Impact of Vs Uncertainty On-Site Seismic Response Results

To further compare the influence of soil Vs values predicted by different methods on-site seismic response analysis results, seismic response analysis was conducted for borehole ZK1 in Figure 5. The predicted Vs values for each soil type in borehole ZK1 were sequentially calculated using Equation (8) with (1) the mean values of parameters a and b derived solely from on-site sample data, and (2) the maximum posterior mean values of parameters a and b for each soil type. These predicted Vs values served as input soil shear wave velocities for seismic response analysis.
The stress–strain relationship of soil under dynamic loading is described using the DCZ model (the Davidenkov–Chen–Zhao model) modified with the irregular loading–unloading criteria proposed by Chen et al. [38]. The dynamic shear modulus and damping ratio curves of the soil adopt the recommended values given by Zhang et al. [21].
The information of the magnitude of the design earthquake, the focal depth, the epicentral distance refer to Lv et al. [39].
This paper employs the trigonometric series method to synthesize artificial seismic waves. First, based on the results of seismic safety evaluation, the target response spectrum for the study area is determined. The amplitudes of each frequency component are then determined according to this target response spectrum. Subsequently, a random phase angle is assigned to each frequency component. Following this, all these sine waves are superimposed to generate an initial acceleration time-history with random characteristics.
Since the response spectrum of the initial waveform usually differs from the target spectrum, iterative adjustments are required: Its response spectrum is calculated and compared with the target spectrum, and the amplitudes of each frequency component are repeatedly adjusted based on this comparison until the two satisfactorily match.
To simulate the non-stationary characteristics of real seismic ground motions, the generated stationary wave is finally multiplied by an intensity envelope function, imparting a time-varying characteristic of amplitude that gradually increases, peaks, and then decreases. This method can generate time-histories that both meet engineering spectral requirements and possess the randomness of real seismic ground motions.
This paper employs methods from structural dynamics to compute the response spectrum [40]:
  • Input Ground Motion: Select a real recorded or artificially synthesized ground motion acceleration time-history as input.
  • Model Establishment: Establish a set of single-degree-of-freedom (SDOF) system models with a fixed damping ratio and different natural vibration periods.
  • Dynamic Time-History Analysis: Apply the input ground motion to each SDOF model separately and compute the entire vibration process (displacement, velocity, acceleration) under seismic action through numerical integration.
  • Peak Value Extraction: From the full time-history response of each model, identify the absolute maximum value of its response (such as maximum absolute acceleration, maximum relative velocity, or maximum relative displacement).
  • Plotting the Spectrum: Use the natural vibration period of each SDOF model as the horizontal coordinate and the corresponding calculated maximum response value as the vertical coordinate. The curve formed by connecting all these points is the (acceleration, velocity, or displacement) response spectrum corresponding to that ground motion.
Figure 14a shows the acceleration time-history curve of the artificially synthesized bedrock seismic wave used for site seismic response analysis, with a peak acceleration of 0.20 g.
The response spectrum corresponding to the red line in Figure 14b is obtained through site seismic response analysis using the measured shear wave velocities of the soil at various depths in borehole ZK1. All the response spectra in Figure 14b are those at the surface of borehole ZK1.
Figure 14b presents the acceleration response spectrum (Sa) values at the surface of borehole ZK1 under this bedrock motion. Compared to the Sa values obtained using Vs predictions based solely on the mean of a and b from on-site samples, the Sa values derived from Vs predictions using the maximum posterior mean of a and b align more closely with the Sa values obtained from measured Vs data. This further demonstrates that combining prior information with on-site sample data enables more accurate prediction of soil Vs values in the study area, thereby enhancing the reliability of site seismic response analysis results.

5. Conclusions

This study utilized collected measured shear wave velocity (Vs) data of soils from a certain sea area in China, dividing the Vs data into one set of on-site samples and six sets of historical data. A power function was employed to establish the relationship between Vs values and depth (h). Bayesian statistical theory was applied to derive the prior and posterior distributions of the mean and variance for parameters a and b in the power function. Using the maximum posterior mean of a and b combined with the point estimation method, the variation in uncertainty in Vs predictions (obtained from the power function) with depth h was characterized. The main conclusions are as follows:
(1)
A power function regression equation was established to relate Vs and h. Prior distributions for the mean and variance of parameters a and b in the power function were derived from six sets of historical data. The prior means of a and b conform to a normal distribution, while their prior variances conform to an inverse gamma distribution.
(2)
The posterior distributions of the mean and variance for a and b were obtained by combining their prior distributions with on-site sample data. Using the maximum posterior mean of a and b with the point estimation method, the variation in the mean and standard deviation of predicted Vs values with h (when using the power function) was derived. The accuracy of the point estimation method results was validated via Monte Carlo simulation.
(3)
Compared to Vs predictions based solely on the mean of a and b from on-site samples, Vs predictions derived from the maximum posterior mean of a and b align more closely with measured Vs values. Consequently, the corresponding site seismic response analysis results also more closely match those calculated using true Vs values.

Author Contributions

G.X.: writing—original draft, methodology, formal analysis, validation; Z.Z.: writing—original draft, software, data curation, validation; R.C.: writing—review and editing, investigation, resources; F.P.: writing—review and editing, formal analysis, supervision; Y.Z.: writing—review and editing, conceptualization, supervision, validation. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The data presented in this study are available upon request from the corresponding author.

Conflicts of Interest

The authors declare no conflicts of interest.

Abbreviations

VsShear wave velocity of soil
hDepth of soil cover
x+Upper bound of the variation range for random variable x in a univariate function
xLower bound of the variation range for random variable x in a univariate function
y+Value of function y when random variable x approaches x from the right (xx+) in a univariate function
yValue of function y when random variable x approaches x from the left (xx) in a univariate function
x ¯ Mean of random variable x
σ[x]Standard deviation of random variable x
xi+Upper bound of the variation range for the i-th random variable x in a bivariate function
xiLower bound of the variation range for the i-th random variable x in a bivariate function
x ¯ i Mean of the i-th random variable x in a bivariate function
σ[xi]Standard deviation of the i-th random variable x in a bivariate function
y±±Variation range of function y caused by the change in random variable xi in a bivariate function
E[y]Mean of function y
E[y2]Second-order moment of function y
P±±Weight coefficient for the value of y±±
ρ x 1 , x 2 Correlation coefficient between random variables x1 and x2
Cov(x1, x2)Covariance of random variables x1 and x2
V[x1]Variance of random variable x1
V[x2]Variance of random variable x2
σ[y]Standard deviation of function y
Vs(h)Soil shear wave velocity at depth h
a ̅ Mean of power function fitting parameter a
b ̅ Mean of power function fitting parameter b
σ[a]Standard deviation of power function fitting parameter a
σ[b]Standard deviation of power function fitting parameter b
E[Vs(h)]Mean soil shear wave velocity at depth h
ρ a , b Correlation coefficient between power function fitting parameters a and b
COV(a, b)Covariance of power function fitting parameters a and b
V[a]Variance of power function fitting parameter a
V[b]Variance of power function fitting parameter b
Vs ± ±Variation bounds of soil shear wave velocity
σ[Vs (h)]Standard deviation of soil shear wave velocity at different depths h
E [ V s 2 ] Second-order moment of soil shear wave velocity at different depths
π (μ, σ2)Joint prior distribution of mean μ and variance σ2, which is the Normal–Inverse Gamma distribution
π (σ2)Prior probability density function of variance σ2
π (μ|σ2)Prior probability density function of the random variable’s mean μ, given its variance σ2
N (μ0, σ2/κ0)Prior normal distribution for the random variable’s mean μ, with mean μ0; and variance σ2/κ0
I G a ( υ 0 / 2 , υ 0 σ 0 2 / 2 ) Prior inverse gamma distribution for the random variable’s variance, with mean υ 0 / 2 and variance υ 0 σ 0 2 / 2
mNumber of groups obtained from grouping prior samples
μ0, κ0 ,   υ 0 and σ0Hyperparameters to be determined in the prior distribution
μ 0 Estimate of μ0
x i ¯ Mean of the i-th group of prior samples
σ 2 Estimated value of σ2
s i 2 Variance of the ith group of prior samples
κ 0 Estimated value of κ0
μ σ 2 Mean variance of the prior sample data
υ σ 2 Variance of the prior sample data
π μ , σ 2 | x Joint posterior distribution of the mean μ and variance σ2 of the random variable x
p(x| μ, σ)Probability density function of the random variable x with parameters μ and σ
m (x)Marginal distribution of the random variable x
μn, νn, κn and σnParameters in the posterior distribution
nNumber of field samples
x ¯ Mean of the field samples
s2Variance of the field samples
μMDMaximum a posteriori mean
σ MD 2 Maximum a posteriori variance
NNumber of Monte Carlo simulations
σ V s ( h α ) Standard deviation of Vs obtained from N Monte Carlo simulations at an arbitrary depth hα
V s l ( h α ) Simulated value of Vs at an arbitrary depth hα in the lth (l = 1, 2, …, N) Monte Carlo simulation
EMean after N simulations of σ V s ( h α )
COV[E]Coefficient of variation of E
gGravitational acceleration
SaResponse spectrum value

References

  1. Gong, W.; Juang, C.H.; Martin, J.R.; Tang, H.; Wang, Q.; Huang, H. Probabilistic analysis of tunnel longitudinal performance based upon conditional random field simulation of soil properties. Tunn. Undergr. Space Technol. 2018, 73, 1–14. [Google Scholar] [CrossRef]
  2. Cami, B.; Javankhoshdel, S.; Phoon, K.-K.; Ching, J. Scale of Fluctuation for Spatially Varying Soils: Estimation Methods and Values. ASCE-ASME J. Risk Uncertain. Eng. Syst. A Civ. Eng. 2020, 6, 03120002. [Google Scholar] [CrossRef]
  3. Jiang, S.-H.; Huang, J.; Griffiths, D.V.; Deng, Z.-P. Advances in reliability and risk analyses of slopes in spatially variable soils: A state-of-the-art review. Comput. Geotech. 2022, 141, 104498. [Google Scholar] [CrossRef]
  4. Phoon, K.-K.; Cao, Z.-J.; Ji, J.; Leung, Y.F.; Najjar, S.; Shuku, T.; Tang, C.; Yin, Z.-Y.; Ikumasa, Y.; Ching, J. Geotechnical uncertainty, modeling, and decision making. Soils Found. 2022, 62, 101189. [Google Scholar] [CrossRef]
  5. Zhang, Z.; Xu, G.; Pan, F.; Zhang, Y.; Huang, J.; Zhou, Z. Simulation Method and Application of Non-Stationary Random Fields for Deeply Dependent Seabed Soil Parameters. J. Mar. Sci. Eng. 2024, 12, 2183. [Google Scholar] [CrossRef]
  6. Zefa, L.; Zhenyu, W.; Xiang, L.; Liang, P.; Zhe, Y. Influence of Spatial Variability of Tensile Strength on Seismic Cracking of Gravity Dam. Adv. Eng. Sci. 2019, 51, 116–124. [Google Scholar] [CrossRef]
  7. Garini, E.; Anastasopoulos, I.; Gazetas, G.; O’Riordan, N.; Kumar, P.; Ellison, K.; Ciruela-Ochoa, F. Soil, basin and soil–building–soil interaction effects on motions of Mexico City during seven earthquakes. Géotechnique 2022, 72, 556–564. [Google Scholar] [CrossRef]
  8. Sun, Q.; Guo, X.; Dias, D. Evaluation of the seismic site response in randomized velocity profiles using a statistical model with Monte Carlo simulations. Comput. Geotech. 2020, 120, 103442. [Google Scholar] [CrossRef]
  9. Tran, T.-T.; Salman, K.; Han, S.-R.; Kim, D. Probabilistic Models for Uncertainty Quantification of Soil Properties on Site Response Analysis. ASCE-ASME J. Risk Uncertain. Eng. Syst. A Civ. Eng. 2020, 6, 04020030. [Google Scholar] [CrossRef]
  10. Huang, D.; Wang, G.; Du, C.; Jin, F. Seismic Amplification of Soil Ground with Spatially Varying Shear Wave Velocity Using 2D Spectral Element Method. J. Earthq. Eng. 2021, 25, 2834–2849. [Google Scholar] [CrossRef]
  11. Liu, W.; Juang, C.H.; Chen, Q.; Chen, G. Dynamic site response analysis in the face of uncertainty–an approach based on response surface method. Int. J. Numer. Anal. Methods Geomech. 2021, 45, 1854–1867. [Google Scholar] [CrossRef]
  12. Kim, G.Y.; Yoon, H.J.; Kim, J.W.; Kim, D.C.; Khim, B.K.; Kim, S.Y. The Effects of Microstructure on Shear Properties of Shallow Marine Sediments. Mar. Georesources Geotechnol. 2007, 25, 37–51. [Google Scholar] [CrossRef]
  13. Kulkarni, M.P.; Patel, A.; Singh, D.N. Application of shear wave velocity for characterizing clays from coastal regions. KSCE J. Civ. Eng. 2010, 14, 307–321. [Google Scholar] [CrossRef]
  14. Wang, S.-Y.; Wang, H.-Y. Site-dependent shear-wave velocity equations versus depth in California and Japan. Soil Dyn. Earthq. Eng. 2016, 88, 8–14. [Google Scholar] [CrossRef]
  15. L’Heureux, J.-S.; Long, M. Relationship between Shear-Wave Velocity and Geotechnical Parameters for Norwegian Clays. J. Geotech. Geoenviron. Eng. 2017, 143, 04017013. [Google Scholar] [CrossRef]
  16. Miah, M.I. Improved prediction of shear wave velocity for clastic sedimentary rocks using hybrid model with core data. J. Rock Mech. Geotech. Eng. 2021, 13, 1466–1477. [Google Scholar] [CrossRef]
  17. Hu, Q.; Li, H.; Yang, G.; Cai, Y. Effects of Uncertainty of Dynamic Shear Modulus Ratio on Design Ground Motion. Soil Mech. Found. Eng. 2019, 56, 82–90. [Google Scholar] [CrossRef]
  18. Hamilton, E.L. Shear-Wave Velocity Versus Depth In Marine Sediments: A Review. Geophysics 1976, 41, 985–996. [Google Scholar] [CrossRef]
  19. Moon, S.-W.; Ku, T. Development of global correlation models between in situ stress-normalized shear wave velocity and soil unit weight for plastic soils. Can. Geotech. J. 2016, 53, 1600–1611. [Google Scholar] [CrossRef]
  20. Moon, S.-W.; Ng, Y.C.H.; Ku, T. Global semi-empirical relationships for correlating soil unit weight with shear wave velocity by void-ratio function. Can. Geotech. J. 2018, 55, 1193–1199. [Google Scholar] [CrossRef]
  21. Yan, Z.; Kai, Z.; Yanjv, P.; Guoxing, C. Dynamic shear modulus and damping ratio characteristics of undisturbed marine soils in the Bohai Sea, China. Earthq. Eng. Eng. Vib. 2022, 21, 297–312. [Google Scholar] [CrossRef]
  22. Wu, Q.; Wang, Z.; Qin, Y.; Yang, W. Intelligent Model for Dynamic Shear Modulus and Damping Ratio of Undisturbed Marine Clay Based on Back-Propagation Neural Network. J. Mar. Sci. Eng. 2023, 11, 249. [Google Scholar] [CrossRef]
  23. Wang, Y.; Au, S.-K.; Cao, Z. Bayesian approach for probabilistic characterization of sand friction angles. Eng. Geol. 2010, 114, 354–363. [Google Scholar] [CrossRef]
  24. Cao, Z.; Wang, Y. Bayesian model comparison and selection of spatial correlation functions for soil parameters. Struct. Saf. 2014, 49, 10–17. [Google Scholar] [CrossRef]
  25. Ching, J.; Wu, S.-S.; Phoon, K.-K. Statistical characterization of random field parameters using frequentist and Bayesian approaches. Can. Geotech. J. 2016, 53, 285–298. [Google Scholar] [CrossRef]
  26. Goharzay, M.; Noorzad, A.; Ardakani, A.M.; Jalal, M. A worldwide SPT-based soil liquefaction triggering analysis utilizing gene expression programming and Bayesian probabilistic method. J. Rock Mech. Geotech. Eng. 2017, 9, 683–693. [Google Scholar] [CrossRef]
  27. Contreras, L.F.; Brown, E.T.; Ruest, M. Bayesian data analysis to quantify the uncertainty of intact rock strength. J. Rock Mech. Geotech. Eng. 2018, 10, 11–31. [Google Scholar] [CrossRef]
  28. Sun, Z.; Gao, P.; Gao, Y.; Bi, J.; Gao, Q. Probabilistic Prediction of Spudcan Bearing Capacity in Stiff-over-Soft Clay Based on Bayes’ Theorem. J. Mar. Sci. Eng. 2025, 13, 1344. [Google Scholar] [CrossRef]
  29. Rosenblueth, E. Two-point estimates in probabilities. Appl. Math. Model. 1981, 5, 329–335. [Google Scholar] [CrossRef]
  30. HARR, M.E. Reliability-Based Design in Civil Engineering; McGraw-Hill Book Company: New York, NY, USA, 1987. [Google Scholar]
  31. Zhang, J.; Andrus, R.D.; Juang, C.H. Model Uncertainty in Normalized Shear Modulus and Damping Relationships. J. Geotech. Geoenviron. Eng. 2008, 134, 24–36. [Google Scholar] [CrossRef]
  32. Park, D.; Kim, H.-M.; Ryu, D.-W.; Song, W.-K.; Sunwoo, C. Application of a point estimate method to the probabilistic limit-state design of underground structures. Int. J. Rock Mech. Min. Sci. 2012, 51, 97–104. [Google Scholar] [CrossRef]
  33. Zhang, Y.; Zhang, Z.; Xu, G.; Ren, Y.; Bai, X.; Qin, Y.; Zhao, K.; Chen, G.; Zhou, Z.; Jiang, J. Improved conditional random field simulation method based on bootstrap-Bayesian inference and its application in identification of seafloor liquefaction. Probabilistic Eng. Mech. 2025, 82, 103847. [Google Scholar] [CrossRef]
  34. Abid, S.H.; Al-Hassany, S.A. On the Inverted Gamma Distribution. Int. J. Syst. Sci. Appl. Math. 2016, 1, 1–8. [Google Scholar]
  35. Llera, A.; Beckmann, C.F. Estimating an Inverse Gamma distribution. arXiv 2016, arXiv:1605.01019. [Google Scholar] [CrossRef]
  36. Tronarp, F.; Särkkä, S.; Hennig, P. Bayesian ODE solvers: The maximum a posteriori estimate. Stat. Comput. 2021, 31, 23. [Google Scholar] [CrossRef]
  37. Gong, W.; Zhao, C.; Juang, C.H.; Zhang, Y.; Tang, H.; Lu, Y. Coupled characterization of stratigraphic and geo-properties uncertainties–A conditional random field approach. Eng. Geol. 2021, 294, 106348. [Google Scholar] [CrossRef]
  38. Chen, G.; Wang, Y.; Zhao, D.; Zhao, K.; Yang, J. A new effective stress method for nonlinear site response analyses. Earthq. Eng. Struct. Dyn. 2021, 50, 1595–1611. [Google Scholar] [CrossRef]
  39. Lv, Y.; Tang, R.; Peng, Y.; Xv, G. Engineering Earthquake Research in Bohai Oilfield; Seismological Press: Beijing, China, 2003. (In Chinese) [Google Scholar]
  40. Anil, K.; Chopra. Application of Structural Dynamics Theory in Earthquake Engineering; Higher Education Press: Beijing, China, 2016. (In Chinese) [Google Scholar]
Figure 1. Schematic diagram of information transmission for point estimation method.
Figure 1. Schematic diagram of information transmission for point estimation method.
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Figure 2. Disadvantages of evaluating the variability of soil Vs values through measured data.
Figure 2. Disadvantages of evaluating the variability of soil Vs values through measured data.
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Figure 3. Changes in the discreteness of soil shear wave velocity with depth.
Figure 3. Changes in the discreteness of soil shear wave velocity with depth.
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Figure 4. The process of inferring parameters a and b using Bayesian principle.
Figure 4. The process of inferring parameters a and b using Bayesian principle.
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Figure 5. Soil type and shear wave velocity structure revealed by boreholes in the study area.
Figure 5. Soil type and shear wave velocity structure revealed by boreholes in the study area.
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Figure 6. Schematic diagram of prior information for determining the mean of parameter a through grouping.
Figure 6. Schematic diagram of prior information for determining the mean of parameter a through grouping.
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Figure 7. Distribution of fit parameters a and b obtained from prior samples of silty clay.
Figure 7. Distribution of fit parameters a and b obtained from prior samples of silty clay.
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Figure 8. Distribution of prior means and prior variances of parameters a and b of silty clay.
Figure 8. Distribution of prior means and prior variances of parameters a and b of silty clay.
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Figure 9. Difference in probability density distribution curves of fitting parameters a and b of silty clay before and after Bayesian fusion.
Figure 9. Difference in probability density distribution curves of fitting parameters a and b of silty clay before and after Bayesian fusion.
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Figure 10. Difference in standard deviation of shear wave velocity of silty clay before and after Bayesian fusion.
Figure 10. Difference in standard deviation of shear wave velocity of silty clay before and after Bayesian fusion.
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Figure 11. Relationship between predicted and measured values of soil Vs in the study area before and after Bayesian fusion.
Figure 11. Relationship between predicted and measured values of soil Vs in the study area before and after Bayesian fusion.
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Figure 12. Determination of Monte Carlo simulation times.
Figure 12. Determination of Monte Carlo simulation times.
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Figure 13. Comparison of mean and standard deviation of shear wave velocity of silty clay obtained from point estimation method and Monte Carlo simulation at different depths.
Figure 13. Comparison of mean and standard deviation of shear wave velocity of silty clay obtained from point estimation method and Monte Carlo simulation at different depths.
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Figure 14. Surface acceleration response spectrum obtained from site seismic response analysis using different methods to obtain Vs values.
Figure 14. Surface acceleration response spectrum obtained from site seismic response analysis using different methods to obtain Vs values.
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Table 1. Statistical characteristics of S- wave velocity fitting parameters of soils.
Table 1. Statistical characteristics of S- wave velocity fitting parameters of soils.
CategorySoil TypeParameter aParameter b
MeanStandard DeviationMeanStandard Deviation
On-siteSilty Sand25.133.480.650.06
On-siteSilt23.024.240.580.05
On-siteSilty Clay33.144.000.560.03
On-siteSandy Silt73.357.780.400.04
On-siteFine Sand111.5912.470.330.02
Maximum PosteriorSilty Sand24.536.380.580.11
Maximum PosteriorSilt22.097.530.500.13
Maximum PosteriorSilty Clay32.296.480.520.09
Maximum PosteriorSandy Silt72.8811.870.360.08
Maximum PosteriorFine Sand110.0619.120.300.06
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MDPI and ACS Style

Xu, G.; Zhang, Z.; Chen, R.; Pan, F.; Zhang, Y. Uncertainty Evaluation Method of Marine Soil Wave Velocity Prediction Model Based on Point Estimation Method and Bayesian Principle. J. Mar. Sci. Eng. 2025, 13, 1939. https://doi.org/10.3390/jmse13101939

AMA Style

Xu G, Zhang Z, Chen R, Pan F, Zhang Y. Uncertainty Evaluation Method of Marine Soil Wave Velocity Prediction Model Based on Point Estimation Method and Bayesian Principle. Journal of Marine Science and Engineering. 2025; 13(10):1939. https://doi.org/10.3390/jmse13101939

Chicago/Turabian Style

Xu, Guanlan, Zhengyang Zhang, Rundi Chen, Fengqian Pan, and Yan Zhang. 2025. "Uncertainty Evaluation Method of Marine Soil Wave Velocity Prediction Model Based on Point Estimation Method and Bayesian Principle" Journal of Marine Science and Engineering 13, no. 10: 1939. https://doi.org/10.3390/jmse13101939

APA Style

Xu, G., Zhang, Z., Chen, R., Pan, F., & Zhang, Y. (2025). Uncertainty Evaluation Method of Marine Soil Wave Velocity Prediction Model Based on Point Estimation Method and Bayesian Principle. Journal of Marine Science and Engineering, 13(10), 1939. https://doi.org/10.3390/jmse13101939

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