Development of a Displacement Prediction System for Deep Excavation Using AI Technology

: This manuscript delineates an innovative artificial intelligence-based methodology for forecasting the displacement of retaining walls due to extensive deep excavation processes. In our selection of 17 training cases, we strategically chose a wall configuration that was not influenced by the corner effects. This careful selection was conducted with the intention of ensuring that each deep excavation instance included in our study was supported symmetrically, thereby streamlining the analysis in the ensuing phases. Our proposed multilayer functional-link network demonstrates superior performance over the traditional backpropagation neural network (BPNN), excel-ling in the precise prediction of displacements at predetermined observation points, peak wall displacements, and their respective locations. Notably, the predictive accuracy of our advanced model surpassed that of the conventional BPNN and RIDO assessment tools by a substantial 5%. The network process model formulated through this research offers a valuable reference for future implementations in diverse geographical settings. Furthermore, by utilizing local datasets for the training, testing, and validation phases, our system ensures the effective and accurate execution of displacement predictions.


Background
The complexity and data uncertainty associated with deep excavations often lead to collapse failures, which can result in damage to surrounding buildings and infrastructure.Controlling the deformation of retaining walls and preserving the stability of support systems are, thus, of paramount importance in the field of civil engineering.Numerical analysis has been widely used for predicting geotechnical engineering problems.Programs such as RIDO, TORSA, FLAC, PLAXIS, BEOO, GEO5 Sheeting check, GGU Retain, ZSOIL, GEO5 FEM, Midas GTS, and ExcWall can be used to forecast wall displacements, stress on retaining walls, preloading of support systems, and surface settlements around excavations.Deep excavation involves complex soil-structure interactions, which can be simplified using one-dimensional elastic beam theory or two-and even three-dimensional finite-element analysis.The finite-element method is widely used in geotechnical engineering, structural analysis, and materials science, with numerous research papers and engineering case studies validating the efficacy of these methods.
Geotechnical engineering involves highly complex interactions among soil parameters and environmental factors.Regardless of the analysis program, the selection of parameters is crucial to the precision and accuracy of wall displacement predictions.This has prompted research into the use of artificial intelligence to deal with the engineering issues related to excavation wall displacements.Artificial intelligence utilizes mathematical models to conduct analysis based on accumulated experience or data, allowing it to learn and extract knowledge automatically via learning algorithms.The objective of this study was to utilize a neural network to develop an improved model for the prediction of wall displacements prior to excavation.

Factors affecting retaining wall deformation in deep excavation
The deformation of the retaining wall is influenced by the mechanical properties of soil and ground subsidence and other factors.Numerical analyses and case studies indicate that a large number of factors can affect wall deformation [1][2][3][4][5][6][7][8][9][10][11][12][13][14][15].The following studies have investigated the factors influencing excavation integrity: In 1972, Palmer and Kenney [1] used finite-element analysis to identify six parameters affecting support excavation behavior.These parameters were (1) soil elastic modulus, (2) soil shear strength, (3) in situ initial stress, (4) friction force between soil and retaining wall, (5) retaining wall stiffness, and (6) support stiffness; In 1981, Mana and Clough [2] used finite-element analysis and case studies to identify five factors affecting deep excavation behavior.These factors were (1) safety factor to prevent heaving (related to the penetration depth of the wall and soil strength), (2) soil strength, (3) safety stiffness of the support system (associated with the stiffness of the wall and support), (4) pre-stress applied to the support, and (5) geometry of the excavation face; In 1981, O'Rourke [3] reported that pre-construction operations and construction methods could affect ground deformation, claiming that lateral displacements in retaining walls could be attributed to differences in the excavation procedures used in forward and reverse construction methods; In 1987, Chen [4] listed six factors that could affect deep excavation ground deformation.These parameters were (1) size (area) and depth of the excavation scope, (2) type of soil, (3) type of retaining system, (4) excavation procedure, installation of retaining systems, and worker skill level, (5) duration for which the excavation face is left open, and (6) groundwater removal; In 1989, Wong and Broms [5] used finite-element analysis to identify five factors affecting deep excavation variables, such as the undrained shear strength, the width and depth of excavation, the wall stiffness, the penetration depth, and the depth of the hard stratum beneath the bottom of the excavation; In 1990, Clough and O'Rourke [6] used case studies to illustrate the movement of retaining walls due to excavation, resulting in the identification of eight influential factors.These factors were (1) soil conditions, (2) groundwater level conditions, (3) variations in groundwater level, (4) depth and shape of the excavation site, (5) stiffness, support, and types of retaining walls, (6) construction methods of retaining walls, (7) equipment and overloading conditions surrounding the excavation, and (8) exposure duration of retaining walls during excavation; In 1992, Hu [7] identified 17 factors affecting deep excavation deformation and classified them into three categories, as listed below: I.
Inherent conditions: soil layer characteristics; groundwater pressure distribution; environmental conditions of the excavation area; surrounding buildings and traffic conditions; II.Design conditions: geometry of the excavation area; excavation depth; retaining structures; support systems; support pre-stress; excavation procedures and methods at various stages; methods for constructing permanent structures; III.Construction conditions: construction sequence and dewatering control; water tightness of retaining walls; timing and control of excavation; timing of applying pre-stress; construction techniques of the support structure system timing of support removal; In 1993, Lin and Lee [8] identified seven factors affecting deep excavation deformation.These factors were (1) lateral deformation of retaining walls, (2) construction dewatering, (3) retaining wall construction, (4) leakage or sand egress at the seams of retaining walls during dewatering, (5) heaving, (6) removal of retaining walls or old foundations, and (7)  In 2000, Lee et al. [11] examined disasters related to deep excavation to find four influential factors.These factors were (1) retaining wall failure, (2) heave failure at the excavation face, (3) leakage pipe erosion failure in the retaining wall, and (4) sand boiling failure at the excavation face; In 2002, Ou [12] categorized eight factors affecting wall deformation.These factors were (1) safety factor for stability, (2) excavation face width, (3) excavation depth, (4) penetration depth of the retaining wall, (5) stiffness of the retaining wall, (6) support stiffness, (7) support spacing, and (8) support pre-stress; In 2017, Goh et al. [13] used the hardening soil model to investigate the influences of soil properties, wall stiffness, excavation length, excavation depth, and clay thickness at the base of the excavation and wall embedment depth on the maximum wall deflection induced by braced excavation; In 2020, Zhang et al. [14] conducted a finite-element analysis considering the anisotropy of undrained shear strength to examine the impact of total stress-based anisotropic model NGI-ADP parameters on the base stability of deep-braced excavations in clays; In 2021, Zhang et al. [15] conducted a case study involving a deep foundation pit project adjacent to the shield tunnel of Hangzhou Metro Line 2. They analyzed the changes in confining pressure distribution around the neighboring shield tunnel caused by the excavation of the foundation pit.Additionally, they developed a simplified finite-element model to calculate the internal forces acting on the segment ring structure.
The results of these studies are integrated in Table 1, where the factors affecting wall deformation can be broadly classified into five categories: environmental; planning and design; construction; time; and other.Among construction factors, some are not inherent to the activity but rather to quality control.In the current study, we focused exclusively on factors associated with construction methods.The other category includes heavy rainfall and a corresponding rapid increase in groundwater level, which can affect the mechanical properties of the soil and affect the equilibrium relationship.It also includes repeated loading from earthquakes, which can cause soil liquefaction and the loosening of support systems [16].Earthquake.

• Research Materials
Ou [12] has classified deformation characteristics due to excavation into 11 categories.Clough and O'Rourke [6] identified three types of deformation (shapes) pertaining to retaining walls, including cantilever displacement, deep-seated inward displacement, and the combination of the cantilever and deep-seated inward displacements.Note that deep excavation initially induces cantilever displacement followed by deep-seated inward displacement.Thus, most of the deformations observed following the completion of an excavation fall into the category of combined displacement [17].
Based on field observation data from numerous deep excavation projects in the Taipei Basin, Ou et al. [18] reported that the maximum lateral displacement of the retaining wall generally occurred near the final excavation level.The one exception is the occurrence of maximum displacement at the top due to cantilever displacement in the initial stage of excavation.Based on monitoring data from Taipei Metro projects, Wu et al. [19] categorized the deformation curves of diaphragm walls into four types: standard; rotational; multiple fold; and cantilever;

•
Effects of contemporary wall design

Relationship between penetration depth and excavation depth
Penetration depth refers to the depth at which a diaphragm wall penetrates the soil layer, which is calculated by subtracting the final excavation depth from the total length of the wall.Insufficient penetration depth can result in heaving and squeezing.Our analysis of previous work on penetration depth and excavation depth revealed that the D/Hf values obtained from the Taipei Basin were higher than those from the Kaohsiung area [20][21][22][23].This can be explained by the distribution of weak clay layers, which is wider in the Taipei Basin than in the Kaohsiung area.In the design of retaining structures in weak clay layers, it is often advantageous to increase the penetration depth of a wall to minimize the risk of heaving and squeezing; 2. Relationship between maximum wall displacement and excavation depth Some research revealed that when using bottom-up construction, the maximum wall deformation ranges from 0.05% to 0.64% of the excavation depth, with an average of 0.35% [18,[20][21][22][23][24].Under top-down construction, the maximum wall deformation ranges from 0.12% to 0.62% of the excavation depth, with an average of 0.37%.The average wall deformation is 0.36%;

•
Predicting wall displacement of the deep excavation Methods used in the analysis of deep excavation can be divided into six categories: (1) assumed fixed-point; (2) elastic; (3) elastic-plastic; (4) plastic; (5) stress superposition; and (6) finite-element [25].Most of these methods were initially performed on paper; however, manual calculations have gradually been replaced by software solutions.The computational methods most commonly used for deep excavation analysis are the finite-element and elastic-plastic methods.In Taiwan, the one-dimensional RIDO and TORSA 2.0 version programs are popular software tools for excavation prediction analysis; • RIDO The software program RIDO 3.07 version was developed by the French company Robert Fages Logiciels in 1983.Based on the Winkler model and the theory of elasticplastic equilibrium, RIDO simulates the bending moment, shears, deformations, and support loads experienced by retaining walls during various stages of excavation.That model considers soil properties, wall stiffness, groundwater level changes, construction procedures, support systems during the construction process, and preloading [26]; It is widely used in Taiwan for the simulation of deep excavation projects, and has been shown to generate reasonable soil parameter values [27][28][29][30][31].

Artificial neural network
Researchers have been developing neural networks since 1957.At present, there are 11 network models of four types.The most common approach to the prediction of excavation-related wall displacements involves supervised learning models.Backpropagation neural networks (BPNN) have proven highly effective in these prediction scenarios, as evidenced by a success rate from 77% to 83% [32,33].Huang [26] studied ten cases of inverse construction using a relatively complete database of the Taipei Basin.The relative errors between the predicted maximum displacement and the actual maximum displacement location accounted for over 85%, representing good prediction capability.Lin [16] achieved good results in predicting wall displacements using evolutionary fuzzy neural networks.Li [34] achieved similar results using an evolutionary support vector machine inference system.By using the multilayer functional-link network (MFLN) prediction model, Wu and Chen [35] achieved an average prediction error for the maximum wall displacement in each excavation stage of 9.2%, far exceeding the results obtained using a backpropagation neural network (13.1%) or the RIDO program (22.7%).

Methodology
The behavior of retaining wall deformation and its impact on the surrounding ground surface in the context of deep excavation have been studied extensively.Note that when using the finite-element method, accuracy in assessing wall deformation and surface settlement relies on soil parameter values obtained from laboratory tests.Unfortunately, the values obtained via laboratory testing seldom match the conditions at the construction site.Numerous researchers have used feedback analysis for calibration in an effort to mitigate the effects of soil parameters and construction activity [36][37][38][39][40], and the combined use of the finite-element method with feedback analysis has proven somewhat effective in simulating deformations.However, feedback analysis is limited by the selected soil parameters and soil models [41].This has prompted the adoption of artificially intelligent methods to deal with engineering problems related to excavation-induced wall displacements [16,41,42].
In neural networks, there is no need to explicitly define the mathematical relationships among variables, as they can be learned from examples and feedback.In the current study, we used a modified multilayer functional-link network (MFLN) model to enhance accuracy in the prediction of retaining wall displacements under non-excavated conditions.The model was trained and evaluated using data from 17 case studies, which included 2475 examples for learning and 141 examples for testing.

Neural Networks
As shown in Figure 1, neural networks comprise artificial neurons, which process input signals and then output the results to other processing units.The relationship between the input and output values of a given processing unit (neuron) in a neural network can be represented by a weighted sum of the input values, followed by the application of an activation function [43].• Neural networks perform two main processes: 1 Learning: The network acquires knowledge via a learning algorithm, which iteratively refines the weights of its connections.Learning algorithms fall into three primary categories: supervised learning; unsupervised learning; and associative learning.Each algorithm is based on an energy function, which serves as a metric for evaluating the learning performance of the network.The learning process is essentially a process of minimizing the energy function; 2 Recall: The network employs a recall algorithm to process input data and generate an output.
(1) Backpropagation neural network The most common learning model is the backpropagation neural network (BPNN), which leverages the gradient descent method to iteratively minimize the error function with the aim of minimizing the disparity between the desired target output values and predicted output values generated by output units.The BPNN architecture comprises the following three levels shown in Figure 2, including the input layer, hidden layer, and output layer.where Xn: Input variable.
Yn: Output variable.Tn: Expected inference value.BPNNs enable high learning accuracy and fast recall speeds; however, they are affected by an inefficient learning design and the risk of converging to local minima; (2) Multilayer functional-link network (MFLN) The MFLN was adopted in this study, which is essentially a BPNN network with "logarithmic" and "exponential" input and output units in the input and output layers (as shown in Figure 3) [43].The network learning algorithm also uses the "Generalized Delta Rule" to enhance learning capabilities.The MFLN utilizes hidden units to transform independent variables received from the input units and transformed variables provided by the logarithmic and exponential input units into nonlinear functions, which are organized into a nonlinear function at the output units.This design overcomes many of the drawbacks of backpropagation networks, such as insufficient hidden units and an extended learning process for highly nonlinear problems.
The key difference between backpropagation networks and the MFLN is the fact that the former uses one regular neuron to represent a variable, while the latter uses three neurons (regular, logarithmic, and exponential neurons) to represent a variable.The sensitivity of the logarithmic neuron to the lower value range of the variable and the sensitivity of the exponential neuron to the higher value range enhance the accuracy of the MFLN.Note that the logarithmic and exponential neurons can be considered hidden processing units located in the input layer.

Case Analysis and Prediction Model Development
This study collected data from 17 deep excavation sites in the Taipei Basin (Wu and Chen [44]).We considered each excavation stage as an independent case, which resulted in a database of 82 stages.All of these cases involved continuous underground walls constructed using top-down excavation methods.Supplementary Table S1 lists the basic information of the cases, and Figure 4 presents a map showing the spatial distribution of the sites.From among these 17 cases, we selected one monitoring point (on a wall unaffected by corner effects; the purpose of this was to ensure that the chosen deep excavation cases all featured symmetrical supports and wall bodies, facilitating simplified half-type analysis in subsequent stages) for training the neural network.From among the cases with relatively complete data, we selected another monitoring point on a wall as a reference for subsequent simulations and predictions.Table S2 lists basic information on the monitoring points;

• Network Construction
The flowchart for the prediction model established in this study is as follows in Figure 5: Ji et al. [33] reported that wall deformation behavior following the initial excavation stage is of the cantilever type; however, the observed phenomena are greatly influenced by unknown factors, such as environmental and material stress properties.Note that displacements occurring during the second stage of excavation are influenced by deformations accumulated in the previous stage.Taken together, we concluded that displacement data from Stage 1 and Stage 2 were of limited value for training, testing, and validating the neural network.We, therefore, excluded 34 of the 82 stages, which left 48 stages for training and testing.Note that in training and testing the neural network, the displacement data at each observation point were treated as an individual data point, which resulted in 2475 records for training and 141 records for testing.
As mentioned in the previous section, the deformation of deep excavation walls can be affected by a wide range of factors.The inclusion of all possible factors would result in a prediction network that is too complex for practical applications.Thus, we selected a subset of key influential factors based on our literature review and the experience of the authors [16,26,33].The proposed network comprised a total of 12 input variables; the definitions are shown in Figure 6.

Depth of observation point (R).
Note that the 12 variables include three related to soil properties (NLi), which represent the equivalent SPT-N values of the soil in the following ranges: NL1 (from 0 to 1/3L); NL2 (from 1/3L to 2/3L); and NL3 (from 2/3L to L), where L indicates the depth of the wall.The 12 variables also include three related to accumulated wall displacement (∆i) at a given monitoring point in the three previous stages (i = 1~3).For example, in the prediction of Stage-5 displacements, input variable ∆1 corresponds to that point in Stage 4; ∆2 corresponds to that point in Stage 3, and ∆3 corresponds to that point in Stage 2. The output variable is the predicted horizontal displacement at a specific observation point.

Establishing an Optimal Model
The 12 input variables were assembled into six network model combinations for use in training and testing the BPNN and MFLN.The training and testing results were then used to elucidate the effects of each input variable on the network with the aim of identifying those that should be included in the final network (as shown in Table 2).To ensure comparability, we employed consistent learning parameters, including the number of hidden layers, the number of hidden layer nodes, the number of learning iterations, the learning rate, and the inertia.Table 3 summarizes the errors obtained using the various networks.Learning performance is indicated by the root mean square error (RMSE), where a smaller value indicates superior learning performance.Table 4 lists the sensitivity of each input variable to the output variable, where a positive higher value indicates a stronger positive correlation, whereas a higher negative value indicates a stronger negative correlation.Model B-1 outperformed the other models in terms of training and testing performance, as evidenced by the RMSE and sensitivity results.We, therefore, selected the input variables used in the B-1 network model as input variables for the network proposed in this study.
From the literature reviews, six network configuration parameters can significantly affect training and testing results; those six parameters are the number of units in the first hidden layer, the number of logarithmic processing units, the number of exponential processing units, the number of learning cycles, the learning rate, and the inertia factor.In this study, the optimal values for these six parameters were obtained via trial and error.The optimization network training process is shown in Figure 7 and Table A1, and the results are summarized in Appendix A (Table A2).The optimal parameter values were used to establish new network models for training and testing, after which the network output values were rescaled to obtain test values (predictions).The predicted values were compared with values obtained via on-site monitoring to create the prediction vs. monitoring displacement maps for each stage of the excavation process (shown in Appendices, Figures A1-A3).In comparing the performance of the two networks, the preliminary evaluation criterion was prediction accuracy for the maximum displacement and the depth of maximum displacement after each stage of the excavation.Note that these indicators are of particular interest to construction managers.The relative errors between actual and predicted maximum displacements were calculated for each stage, the results of which are summarized in Table 5.In terms of maximum displacement error, the MFLN outperformed the BPNN, except in the third-stage excavation, in which the error of MFLN (24.4%) significantly exceeded that of the BPNN (10.6%).In terms of maximum displacement location, the predictions of the MFLN and BPNN were close to the actual values in the first two stages; however, the predictions of the MFLN for the third-stage excavation had a significantly larger error (nine nodes compared to the five nodes of the BPNN, where each node represented a 0.5 m interval).

Criteria Used in Evaluating Prediction Performance
This study adopted the evaluation criteria proposed by previous scholars to assess the accuracy of the proposed system in the prediction of wall displacements.Note that the standards were adjusted according to the objectives of this study.The evaluation criteria and standards are outlined below: 1. Displacement at each monitoring point: Performance in predicting wall displacement at each monitoring point was assessed in terms of relative error, as follows: (1) successful (relative error = 0-20%); (2) acceptable (relative error = 20-30%); (3) poor (relative error = 30-40%); and (4) failure (relative error ≥ 40%); 2. Maximum wall displacement in each stage of excavation: Performance in predicting maximum displacement in each stage of excavation was assessed in terms of relative error, as follows: (1) excellent (relative error = 0-10%); ( 2) poor (relative error = 10-20%); and (3) unacceptable (relative error ≥ 20%); 3. Location of maximum wall displacement: Performance in predicting the location of maximum wall displacement was assessed in terms of deviation from actual values, as follows: (1) successful (0-2 m); (2) acceptable (2-4 m); (3) poor (4-6 m); and ( 4) failure (>6 m).

Case Study Verification
The predictive capability of the optimal network was assessed using validation data from a monitoring pipe (Case No. 15, Monitoring Pipe SI-03) that were not included in the training or testing datasets.From the displacement data, we derived 168 validation data points.The predictive accuracy of the BPNN and MFLN were compared with that of RIDO.Note that when using RIDO, the selection of geological parameters is crucial.In the current study, we adopted the soil parameters recommended by Chen and Ji [45], as follows: clay (0.3; from 50 m −1 to 200 m −1 ); and sand (50 t/m 3 to 200 t/m 3 ).
Out of the 168 available observed displacements for validation, the predicted and monitored displacement maps were created for each excavation stage, as shown in Fig- ures A4-A6.Additionally, the level statistics for each observation point in each excavation stage were summarized in Tables A3-A5.It can be seen that the MFLN network achieved a success rate of approximately 67.9% in the third excavation stage, 51.8% in the fourth excavation stage, and 91.1% in the fifth excavation stage.Comparatively, the BPNN achieved a success rate of approximately 58.9% in the third excavation stage, 42.9% in the fourth excavation stage, and 82.1% in the fifth excavation stage.These results indicate that the MFLN network can improve the accuracy of wall displacement prediction.Furthermore, from the displacement maps, it can be observed that both the BPNN and MFLN networks outperformed the RIDO program in terms of predictive capability.
Table 6 lists the predicted maximum displacements and corresponding level classifications for each stage of the excavation.The performance of the MFLN in predicting wall displacements was assessed in terms of relative error; the results are as follows: the third-stage excavation and the fourth-stage excavation (10%; excellent); the fifth-stage excavation (14.6%; poor).The performance of the BPNN in predicting wall displacements was as follows: the third-stage excavation (7%; excellent).The performance of RIDO in predicting wall displacements was as follows: the third-stage excavation (unacceptable); the fourth-stage excavation (poor); and the fifth-stage excavation (excellent).
Table 7 lists the results for the predicted maximum displacement occurrence locations and corresponding level classifications in each stage of the excavation.All three methods achieved good prediction results for the location of maximum wall displacement, with errors of less than 2 m above or below the surface of the completed excavation.

Conclusions
From the above analysis results, the following conclusions can be drawn: 1. Twelve input variables were categorized into six network model combinations based on their attributes, characteristics, and interrelationships.In this study, model B-1 with 11 input variables was selected, and the prediction accuracy could be improved by including more input variables that corresponded to the output variable; 2. In the prediction of displacement for each observation point, the multilayer functional-link network (MFLN) prediction model achieved a success rate of 70%, while the backpropagation neural network (BPNN) prediction achieved only 61%.This demonstrates that utilizing the enhanced type of neural network for predicting wall displacement can yield superior outcomes; 3.In the prediction of the maximum wall displacement in each stage of the excavation, the MFLN prediction model outperformed the others, boosting an average prediction error of 9.2%.This was notably lower than the 13.1% error rate of the BPNN and significantly better than the 22.7% error rate of RIDO (a specific model or method, assuming an acronym based on your context).Overall, the application of MFLN resulted in at least a 5% enhancement in prediction accuracy.This underscores the efficacy of the MFLN network in augmenting the precision of predictions; 4. Based on the case study results, approximately 40.4% of the observation points were predicted to belong to the "successful" category, while around 26.3% were catego-rized as "acceptable".The combined percentage for these two categories amounts to nearly 66.7%.In contrast, the RIDO program's prediction for the combined percentage was only 40.4%.Therefore, the neural network-based wall displacement prediction system developed in this study demonstrates a high level of predictive accuracy when applied to the Taipei Basin area; 5.The retaining wall displacement prediction developed in this study is primarily applicable to the geological conditions of the Taipei Basin area, utilizing the top-down construction method with the diaphragm wall structures.Nevertheless, for regions with different geological conditions and construction methods, the proposed network can be adapted.It can be trained and tested using local case data, following the network establishment procedures outlined in this study.Upon verification, the adapted model can then be employed for predictive operations, extending the utility of our initial model beyond its original context and ensuring its adaptability and relevance in a variety of scenarios; 6.Through our research process, we discovered a correlation between the prediction accuracy of the network and the number of training cases used during the model establishment.The prediction error diminishes as the number of valid case studies increases.In practical applications, we anticipate enhanced completeness and applicability of the optimally constructed prediction network system by continuously incorporating additional engineering cases.Real-world monitoring data can serve as training examples, contributing to the iterative retraining of the prediction network.This ongoing refinement process, integrating new data and learning from them, is expected to fine-tune the system's performance, aligning it closely with the earlier assertion that prediction accuracy is correlated to the volume of training cases.

Recommendations
1.The results of input variable selection in the MFLN indicate a higher number of input variables corresponding to output variables, contributing to improved prediction accuracy.In the sensitivity analysis of test results, NL2 exhibited the highest sensitivity, with NL1 being the lowest.The marginal difference of approximately 0.63 between the high and low values demonstrates that all variable items impact the network's prediction accuracy.By incorporating additional input variable items, such as changes in support tonnage and groundwater level-which are easily obtainable monitoring data-the network's predictive accuracy should be enhanced; 2. This study revealed a correlation between network prediction accuracy and the volume of training cases used in model establishment.As the number of effective case volumes increases, the prediction error of the established forecasting system diminishes.Future applications can benefit from the continuous inclusion of engineering cases, utilizing actual monitoring data as training examples and feeding it back for network retraining.This iterative process is expected to enhance the comprehensiveness and applicability of the optimally constructed predictive network system.While the current MFLN displacement prediction is primarily targeted at the Taipei Basin area and adopts the top-down construction method, other regions can adapt local case data, follow the network establishment process outlined in this study for training and testing, and implement prediction tasks following a verification procedure.

Figure 3 .
Figure 3.A schematic diagram of a multilayer feedforward neural network architecture.

Figure 4 .
Figure 4.A schematic diagram illustrating the distribution of the cases in Taipei basin.

Figure 5 .
Figure 5. Flowchart of the Prediction Model Establishment.

Figure 6 .
Figure 6.A schematic diagram illustrating the definition of input variables.

FileFigure 7 .
Figure 7. Flowchart of the best network training process.

Figure A1 .
Figure A1.The prediction and monitoring displacements at the 3rd-stage excavation-case 10.

Figure A2 .
Figure A2.The prediction and monitoring displacements at the 4th-stage excavation-case 10.

Figure A5 .
Figure A5.The prediction and monitoring displacements at the 4th-stage excavation-case 15.

Figure A6 .
Figure A6.The prediction and monitoring displacements at the 5th-stage excavation-case 15.

Table 1 .
The literature review of the factors affecting retaining wall deformation.

Table 2 .
List of input variable combinations

Table 3 .
Training and testing results of the BPNN and MFLN.

Table 4 .
Sensitivity analysis summary table for the network.

Table 5 .
The comparison of the monitoring and predicted displacements.

Table 8 .
Statistics table of predicted excavation observation point levels.

Table 9
also lists the predicted maximum displacement locations and the corresponding level classifications for each stage of excavation.The performance of MFLN was as follows: the third-stage excavation (2-4 m; successful); the fourth-stage and fifth-stage excavations (<2 m; successful).These results are comparable to the inverse analysis results obtained using RIDO.Overall, the MFLN network demonstrated good predictive capabilities.

Table 9 .
Statistics table of relative error and level for maximum displacement and location.