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Article

Damage Detection in Flat Panels by Guided Waves Based Artificial Neural Network Trained through Finite Element Method

Department of Engineering, University of Campania “L. Vanvitelli”, Via Roma 29, 81031 Aversa, Italy
*
Author to whom correspondence should be addressed.
Materials 2021, 14(24), 7602; https://doi.org/10.3390/ma14247602
Submission received: 19 November 2021 / Revised: 2 December 2021 / Accepted: 7 December 2021 / Published: 10 December 2021
(This article belongs to the Special Issue Advances in Smart Materials and Structures)

Abstract

:
Artificial Neural Networks (ANNs) have rapidly emerged as a promising tool to solve damage identification and localization problem, according to a Structural Health Monitoring approach. Finite Element (FE) Analysis can be extremely helpful, especially for reducing the laborious experimental campaign costs for the ANN development and training phases. The aim of the present work is to propose a guided wave-based ANN, developed through the use of the Finite Element Method, to determine the position of damages. The paper first addresses the development and assessment of the modeling technique. The FE model accuracy was proven through the comparison of the predicted results with experimental and analytical data. Then, the ANN was developed and trained on an aluminum plate and subsequently verified in a composite plate, as well as under different damage configurations. According to the results herein proposed, the ANN allowed to detect and localize damages with a high level of accuracy in all cases of study.

1. Introduction

Structural monitoring of primary and secondary structural elements is generally a complex, costly and time-consuming process. All structural components are inspected at regular intervals, using different non-destructive techniques (NDTs) that increase more and more the total duration of the downtime.
Such inspections for health-condition assessment are of the utmost importance for the safe and efficient operation of structures. A damage that cannot be reliably detected could not be repaired on time, leading to eventually catastrophic failures.
To overcome these problems, in view to ensure the safety of the structure, Structural Health Monitoring (SHM) systems able to monitor the actual structural integrity become necessary [1,2,3]. The use of a SHM system brings with it numerous benefits in terms of maintenance and repairing operations, including reduction in uncertainty in operators’ decision-making process, quasi-real time control of deficiencies and, thus, greater safety through continuous monitoring. Moreover, SHM will provide a dataset useful for maintenance phases, improving in the meantime the engineering capabilities and the future design of primary components with relative reduction in both medium- and long-term costs.
In the execution of SHM strategies, the most commonly used approach is that based on guided (or Lamb) waves (GW) [4,5,6] because of their powerful capability of long-distance propagation with high speed and little loss of energy. Several useful pieces of information can be derived from implementing a Lamb-wave-based identification associated with a damage detection method, such as qualitative indication of the occurrence of damage, quantitative assessment of the position of damage, quantitative estimation of the severity of damage and prediction of structural safety like the residual service life [7,8].
Successful damage identification by using a GW-based SHM system can be performed with transducers in a sparse configuration and using well-calibrated signal-interpretation techniques. Some essential steps are the following: (i) activating the desired diagnostic Lamb wave signal, using an appropriate transmitter and capturing the damage-scattered wave signals using a sensor or a sensors network in accordance with either the pitch-catch or the pulse-echo configuration; (ii) extracting and evaluating the characteristics of the captured wave signals with appropriate signal post-processing tools; (iii) establishing quantitative and/or qualitative connections between the extracted signal characteristics and the damage parameters (presence, location, geometric identity, severity, etc.); and (iv) figuring out the damage parameters of interest in terms of captured signals, based on the quantitative connections established in Step (iii) [8].
However, the main challenge of guided waves is that they propagate with multiple modes and exhibit a strongly dispersive behavior when the excitation frequency increases [9]. Thus, the attention is mainly paid on the zero-order symmetric and antisymmetric modes, S 0 and A 0 , respectively. Both the S 0 and A 0 modes are sensitive to structural damage, and both can be used for identifying damage, though the S 0 mode exhibits higher sensitivity to damage in the structural thickness, fatigue damage and delamination. Meanwhile, the interpretation of the signals can be very challenging, limiting the extraction of useful information on damages. Thus, a large number of experiments is required to properly identify GW characteristics. To reduce time and costs, chirp broadband signals can be used, together with the Finite Element Method (FEM), semi-analytical tools, etc.
With the latest advances in neurosciences and high-capability computing devices, machine learning (ML) algorithms based on Artificial Neural Networks (ANNs) have rapidly emerged as a promising tool to solve damage/defects identification and localization problem [8,10]. Various techniques, including mode shapes, natural frequencies, strain history and many others [11,12,13,14,15], have been used for damage identification during the years for different application fields. This was achieved by utilizing different supervised or unsupervised machine learning techniques for damage recognition [16,17,18].
Recent research has focused on damage quantitative estimation by using Lamb wave signals features in combination with ANN and FEM in order to ensure the accuracy of ANN (strictly related to the data used to train the network) [10,16]. A Lamb-wave-based damage evaluation method assisted by an ANN model was presented by Qian et al. [19], using Damage Indexes related to changes in amplitude and phase of recorded signals. They found a good agreement between experimental and predicted results in a carbon fiber-reinforced polymer composite plate. Sharif-Khodaei et al. [20,21] developed an Artificial Neural Network (ANN) that is able to locate impact of different energies in a complex structure, such as a composite-stiffened panel. Such an ANN was trained by means of a large number of impact simulations, based on FEM, covering a wide range of impact energies and locations. De Fenza et al. [10] used GW propagation and ANN to determine the location and the degree of damage in a metallic plate: it was divided into sectors, and for each one, the probability of occurrence of the damage was assessed.
Obviously, the performance of an ANN strictly depends on the size and complexity of the obtained dataset. A very large or high-dimensional dataset could affect the accuracy of the classification or clustering and make the model computationally expensive. Employing data-preprocessing methods when dealing with high-dimensional sensory data is also of great importance and impacts the ANN performance [18].
In this paper, a machine learning approach based on ANN is proposed in order to demonstrate and discuss the usability of artificial intelligence for the purpose of detecting and localizing a damage and its coordinates. A physical experiment and numerical simulations on an aluminum plate were carried out. The aluminum plate was equipped with four piezoelectric transducers to activate and receive the wave response in baseline (no damage) and actual (damaged) configurations of the structure.
As the first step, the development and assessment of the Finite Element modeling technique was addressed. The FE model accuracy was proven through the comparison of the predicted results with experimental and analytical data in terms of S 0 and A 0 group velocities’ curves.
Once established with respect to GW propagation, the numerical data were used for the training and validation process of the ANN. In particular, starting from the S 0 wave packet extracted from the numerical dataset through a post-processing technique, Damage Indexes (DIs), under different damaged configurations (in terms of both position and dimension), were calculated. High value of DI means a damage very close to the corresponding actuator–receiver path [22]. This was possible through the development of an in-house Matlab® (The MathWorks Inc., Natick, MA, USA) code that automatically extracts the S 0 mode from the baseline and actual states of the structure and calculates the DIs. The DIs dataset was used as input for the ANN, while the targets are represented by the coordinates of the centers of the modeled damages. Achieved results prove that the ANN can predict the damage location precisely.
Then, the developed ANN was verified on a CFRP (carbon fiber-reinforced polymer) plate. According to the results herein proposed, the ANN allowed to detect and localize damages with a high level of accuracy in all cases of study.
The trained algorithm could be directly applied to experimental measurements without the need of retraining.
The layout of the paper is as follows. Details of the case study are outlined in Section 2. Section 3 deals with the numerical methodology, based on FE, for a proper modeling of the wave propagation mechanisms; dispersion curves (experimental, numerical and semi-analytical) of the zero-order modes are shown and compared. The description of the ANN-based damage detection procedure, using Damage Indexes, is detailed in Section 4. Finally, the performance of the ANN and achieved results are discussed in Section 5 for an aluminum and a composite panel under several damaged configurations. Section 6 concludes the paper.

2. Case Study

GW propagation mechanisms were investigated in a simple flat isotropic panel. For isotropic materials, Lamb waves travel with the same velocity omni-directionally, and the wavefronts form a circle. This case study, although simple, represents a starting point for the development of an ANN useful for damage detection.
The plate under investigation has a square shape with dimension L = 287   mm , and a thickness of t a = 2   mm (Figure 1). The mechanical properties are listed in Table 1. A four Circular DuraAct (PI Ceramics) PIC255 piezoelectric transducers network was used for both the actuation and sensing of Lamb waves. The thickness and the radius of the PZT wafers are t PZT = 0.5   mm   and d PZT = 10   mm , respectively. The PZTs, whose mechanical properties are listed in Table 1, were surface-mounted onto the specimen. In particular, they are located at a distance h = 55   mm from the edges (Figure 1). The adhesive EA 9466 from Loctite (Henkel AG & Co. KGaA, Düsseldorf, Germany) was used to bond the transducers.
In order to reduce the number of experiments to carry out, a chirp signal was used. The chirp signal is given as follows:
V chirp ( t ) = V in [ H ( t ) H ( t t chirp ) ] sin ( 2 π ( f 0 t + f 1 f 0 t chirp t 2 ) ) ,
where t chirp = 0.25   ms is the duration of the chirp signal, f 0   = 50 kHz is the start frequency, f 1   = 500 kHz is the end frequency, V in is the input amplitude and H is the Heaviside function. The chirp signal allows users to achieve in a single test all dispersion curves in the selected frequency band. The tone-burst response, preferred due to the dispersive nature of Lamb waves [23], was then extracted by using the reconstruction procedure described in Reference [24] to allow for the comparison for each frequency.
A 16   V peak-to-peak input amplitude was applied to the actuator PZT, using a TiePie waveform generator, and the TiePie Digital Oscilloscope was used to record the signals acquired at the sensor PZTs with a sampling frequency of 2   MHz . The total recording duration of the experimental signals is tot = 2 × 10 4   s , and each measurement is recorded 32 times and averaged to improve the signal to noise ratio. The acquired signals from all four channels have a resolution of 12 bit. Each measurement was 0.200   ms long.

3. Numerical Approach for Wave Propagation Modeling

In this section, at first, FE modeling techniques are compared in order to prove the efficiency of 2D-Shell elements [25,26] in simulating GW propagation in the isotropic plate under different frequencies against 3D ones. In fact, especially for complex structures, the modeling via 3D-Solid Finite Elements can be prohibitive in terms of computational costs. Thus, there is a need to adopt, as far as possible, shell elements.
Once established against experiment or analytical data, the FE model can be used to predict wave-propagation mechanisms in a damaged configuration of the plate, and to get a useful dataset for the training of the ANN.
In this work, numerical data were compared to the experimental ones, using sensor 1 as actuator and the others as receivers. Such a comparison, although simple and well-studied, offers the opportunity to validate the numerical models and evaluate their convergence by using an isotropic material.
The geometry of the panel under investigation, described in Section 2, was modeled in Abaqus® CAE environment (Dassault Systems Simulia Corp., Providence, RI, USA). Three different element types from the Abaqus® Finite Elements library were considered: (i) 2D-Shell (conventional shell), S4R element with 6 degrees of freedom per node; (ii) 3D-Shell (continuum shell), SC8R element with 3 degrees of freedom per node; and (iii) 3D-Solid (brick element), C3D8R element with 3 degrees of freedom per node.
In order to reduce the number of simulations, a chirp excitation signal was modeled in the frequency range ( 50 ÷ 500   kHz ) , as described in the previous section. Moreover, it is well-known from the literature that, to correctly characterize the scattering phenomena of Lamb waves across a modeled damaged area, a minimum number of 8–10 nodes per wavelength (NPW) should be set [8]. Thus, for the plate and sensor average element size evaluation ( l e plate and l e pzt , respectively), two different values of NPW under 500   kHz carrier frequency (it is the actual end frequency of the chirp signal) were considered: 10 NPW, corresponding to l e plate = 0.60   mm , l e pzt = 0.37   mm   and step size t inc ( 10   NPW ) = 1 × 10 7   s ; and 20 NPW, corresponding to l e plate = 0.30   mm , l e pzt = 0.18   mm and step size t inc ( 20   NPW ) = 5 × 10 8   s .
This led to the development of different FE models: two 2D-Shell based, providing 10 and 20 NPW respectively; two 3D-Shell based, providing 10 and 20 NPW respectively; and only one 3D-Solid based, providing 10 NPW (to reduce the computational costs). In all the numerical analyses, the chirp actuation signal was imposed. This means that, for example, taking into account l e plate = 0.60   mm , the FE analysis discretises 100 NPW under 50   kHz reconstruction frequency. For the sake of simplicity, the FE models are just named 10 and 20 NPW, respectively.
The wave propagation is a dynamic phenomenon, so the explicit environment was chosen to simulate the actuation, propagation and sensing of GW. For this reason, to ensure the accuracy of the numerical solution, the time step must be less than the ratio of the minimum distance of any two adjacent nodes to the maximum wave velocity (often the group velocity of the   S 0 mode), as follows:
t inc = l e min   C g ,
where l e min is the size of the smallest element, and C g is the group velocity [27].
The FE model is reported in Figure 2. For the actuation and receiving signal, the sensors network was numerically modeled as in the experiment in terms of location and material/geometry configurations. Each sensor was modeled by means of reduced integration solid elements (C3D8R), while 3 elements were modeled through the thickness. To ensure the contact between sensors and plate, a node-to-surface contact formulation was employed at the “tied” interfaces to simulate the adhesive layer between sensors and plate (not here modeled) [25].
Finally, the translational degrees of freedom of the 4 corners of the plate were constrained as in the experiment, while, relative to the GW propagation, radial displacements equivalent to the input voltage of Equation (1) were calculated through Equation (3):
d r = Q V   V ,
where Q V is a conversion constant for the actuation, depending on the plate and sensor geometry and material properties, as widely described in Reference [8].
This effective displacement was applied on the upper actuator edge (see also Figure 2b) after having defined a proper polar coordinate system at the center of the actuator, as effectively reported in Reference [8].
The implicit scheme could be used to handle either the wave propagation or mechanical–piezoelectric problems. In fact, there is the option of using electric coupling PZT Finite Elements. That means that the voltage can be directly applied to the terminals of the transducers, and the corresponding strain response in the sensors is acquired through the electro-mechanical coupling of the elements (Equation (3)). Such elements, however, are not available for the explicit procedure used herein to perform the analyses. A comprehensive overview about the modeling of PZT can be found in References [8,23,28,29,30,31].

Dispersion Curves

The wave propagation was simulated in the Abaqus® explicit environment. The test case consists of a multi-frequency analysis with a chirp actuation signal, activated by ‘PZT 1’, due to isotropy of the plate, according to Equation (1). To avoid mode superimposition, low-frequency Lamb waves should usually be chosen for damage detection. In this study, the excited signal is a chirp one limited to the frequency range 50 ÷ 500   kHz . Then, in order to concentrate the majority of the wave energy on a specific central frequency, recorded data were reconstructed by means of a n-cycles sinusoidal tone-burst Hanning windowed signal with a step of 25   kHz   ( 50 : 25 : 500   kHz ) , allowing reducing spectrum leakage.
Numerical results in the selected frequency range were compared to the experimental ones and also to those obtained by means of the Dispersion Calculator (Center of Lightweight Production Technology, German Aerospace Center (DLR), Augsburg, Germany) [32]. It is a Matlab®-based general-purpose tool that interactively allows users to create dispersion curves that simply define the material model and properties. It computes the phase and group velocity dispersion, as well as internal stress and displacement fields (mode shape) of Lamb and shear horizontal waves in isotropic and multilayered composites.
Displacements field contour plots in Figure 3 show the wave propagation under 300   kHz carrier test for the three investigated FE models. As expected for an isotropic material, the propagation speed is equal along all material directions and the guided waves propagate in a circular pattern. Differences between 2D-Shell, 3D-Shell and 3D-Solid can be attributed to the different representation of the panel boundaries, as also noted in References [33,34].
Predicted signals, recorded at sensor locations, were calculated as the average of the in-plane strains,   ε ¯   , reads by all nodes defining each sensor. Similar to Equation (3), accordingly to piezoelectric relations, the voltage in PZTs can be calculated through the strain measurements as follows:
V = Q s   ε ¯ ,
where Q s is a conversion constant for the sensing (further mathematical details can be found in Reference [8]). Then, converted signals were processed by means of the developed code and compared in terms of ToF and amplitudes.
To validate the Finite Element models, the responses of the transducers were compared for the numerical and experimental results. In particular, for the sake of brevity, in Figure 4, only signals reconstructed under the 300   kHz carrier were compared to the respective experimental ones. The same level of accuracy was achieved for all frequencies. Due to the material symmetry, signals recorded at PZT 2 and PZT 4 are the same. In all three cases, the numerical predictions are able to approximate the arrival of the first wave packet with adequate accuracy for both 10 (Figure 4a) and 20 (Figure 4b) NPW. According to Figure 4, each signal was normalized with respect to the maximum amplitude of its own S 0 wave packet. This allows highlighting the differences between predicted and experimental data.
It is noted that attenuation phenomena were not considered in this study. Additionally, the adhesive layer between the PZT wafer and the panel was modeled as a rigid link. These effects can influence the amplitude of the received waves and justify the slight mismatch existing between measured and predicted data [33,34].
Once the distances between actuator/receivers and the ToF on all paths are known, it is possible to calculate the velocity of Lamb waves packet (𝑐𝑔) [35]. Considering that for an isotropic material, 𝑐𝑔 does not depend on propagation’s direction, to compute the group velocity, only the path actuator 1-receiver 2 was considered. As highlighted in Table 2, all three element types can make group velocity estimations with small relative error compared to the experimental measurement. As expected, the 3D-Solid modeling procedure permit to achieve more accurate results, but the error associated with the 2D-Shell elements is relatively small and can be considered widely acceptable.
To assess the proposed numerical procedure, the extracted dispersion curves were validated against the experimental one and those provided by Dispersion Calculator Software. Effectively, curves extracted from Dispersion Calculator were defined through a semi-analytical method.
Guided wave dispersion curves for the S 0 and A 0 modes are reported in Figure 5, in which dots represent the extracted values. As visible from Figure 5—10 NPW—the conventional shell FE model (red dots) is not capable of accurately predicting the group velocity of the A 0 mode. Moving to 20 NPW, a good agreement between experimental, semi-analytical and numerical data was found for all of the developed FE models, demonstrating the good modeling of the wave-propagation phenomenon.
Because of the good level of agreement, in order to reduce the computational costs with respect to the 3D modeling technique, the 20 NPW 2D-Shell FE model can be adopted to easily and accurately extract the dispersion curves for both the S 0 and the A 0 modes in an isotropic panel, as is visible from Figure 5.
Focusing on the 20 NPW 2D-Shell FE model and its comparison to the experimental and semi-analytical data, it can be observed that, by interpolating these points with an 2nd-order polynomial curve, the trend of the dispersion curve can be obtained. As it can be seen from Figure 6, the numerical analyses provide very accurate results: the trend of the polynomial curves (solid lines) interpolating numerical data (dots of Figure 5) matches very well the 2nd-order polynomial related to experiments and semi-analytical values, and this is true for both S 0 and A 0 modes. Even if the A 0 mode is slower than S 0 , due to reflections being more difficult to detect, the numerical trend is very similar to the actual one, confirming the capability of the algorithm.
Lastly, considering the 2nd-order polynomial interpolations, the percentage differences with respect to the experimental and semi-analytical values were computed (Table 3 and Table 4, respectively). For the S 0 mode, the absolute percentage difference does not exceed the 3%, while, for the A 0   mode, it is limited to 12%, demonstrating, again, the efficiency of the numerical modeling and the post-processing procedure.

4. ANN-Based Damage Detection Procedure

4.1. Damage Indexes

Once we established the capability of the shell elements in simulating GW propagation behavior, square-shaped damages were introduced by degrading the elastic material properties of the corresponding Finite Elements (softening technique) [36] of about 70% (Figure 7). This technique allowed achieving a good agreement with reference to the experiments, as well as reducing the modeling efforts with reference to the deleting technique [36].
A wide numerical campaign was set up in order to get a useful dataset for the training of the ANN. In particular, the dataset consists of the signals reconstructed under a central frequency 300   kHz . The chosen frequency enables the localization of damage with a diameter greater than 7   mm more accurately (in recognition of the fact that the half wavelength of a selected wave mode must be shorter than or equal to the damage size to allow the wave to interact with the damage) [37,38]. On the other hand, as the frequency decreases, the wavelength increases, making the minimum size of localized damage higher and higher.
Thus, square-shaped damages with a size of 5 and 10   mm were modeled at different points of the plate, as better specified in Table 5. The coordinates are expressed by considering the bottom left-hand corner of the plate as the origin of the Cartesian coordinates system, Figure 7. Figure 8 shows the positions of the damages (Table 5) on the plate (those common to both damage dimensions). As visible, some damages external to the area covered by the sensors network were also considered for the definition of the training set in order to improve ANN efficiency.
The signals were collected in a round-robin manner, where one transducer acts as actuator and the others act as sensors until the signals from all the receivers are collected. The presence of a damage alters the wave propagation, causing clear changes in the damaged wave packets with respect to the healthy ones. In particular, the change in amplitude and time of flight can be used to quantitatively indicate the most affected path [22].
Thus, the first step in the damage-detection phase is to extract the S 0 mode in the pristine configuration and then in the “faulty” configuration. This was achieved by implementing an in-house code that allowed us to extract the S 0 mode automatically without the need for visual graphical support. For the sake of brevity, an example is reported in Figure 9. The blue lines represent the recorded signals, the red one is the envelope and the yellow-colored part of the signal is the extracted S 0 mode.
Figure 10 shows a comparison between the S 0 mode extracted from the two configurations, pristine and damaged, in which it is possible to notice how the amplitude of the signal recorded in the actual configuration changes. Such a comparison is quantified through the evaluation of a Damage Index, DI. Specifically, in this work, the DI given by Equation (5) was used [22]:
DI = i ( C p 2 C d 2 ) C p 2 ,
where C p and C d are respectively the amplitude of the signal, at same time, in the configuration “pristine” and “damaged”. The high value of the Damage Index means that the damage is placed along or close to the corresponding actuator–sensor path. Conversely, low Damage Index means that the damage is far from the actuator–sensor path.
The developed code also allows automatically calculating the Damage Index for each actuator–sensor path. The Damage Indexes obtained for each damage condition were normalized with respect to the maximum value among all paths for the different actuators. An example is reported in Figure 11 for the damage in position d 8 . As visible from the figure, the DI enables the identification of the most affected paths. Moreover, by knowing the damage position, the DIs suggest that the damage is localized closer to the PZT 4, since, when this sensor is used as an actuator, the values of DI are much higher.

4.2. ANN Modeling

An Artificial Neural Network requires datasets for building up the input-output relation. In particular, as previously described, through an in-house code, it was possible to extract signal features for the input vector x j . The ANN approach used in this work is based on the Damage Index of Equation (5) [22] that was described in the previous section. Therefore, the N-dimensional input vector consists of the DIs related to each sensing (actuator–receiver) path. The output vector instead includes the ( x ,   y ) coordinates of the localized damage. After generating the input and output vectors, the architecture of the ANN can be defined. It is clearly stated that the efficiency of the ANN increases when the dimension of the dataset increases. However, at the same time, this leads to an increase of the computational cost.
As shown in Figure 12, the feed-forward neural network herein developed contains one input layer of 12 features (4 sensors and 3 paths, for a total of 12 inputs for each damaged configuration) and one output layer of two features, namely the damage center coordinates ( x ,   y ) . Two hidden layers with multiple (10) neurons were defined to connect the input and output data, resulting in a fully connected neural network, according to the literature [39]. Each k-th neuron of the hidden layer is connected with all neurons of the previous layer, and its output z k can be described as follows:
z k = φ ( j = 0 N W kj x j + b k ) ,
where x j is the value of the input vector at the discrete position, with j   = 1 , 2 , N ; W kj is the weight connected to each neuron k at the discrete position, with j   = 1 , 2 , N ; φ is the transfer (activation) function; and b k is the bias value.

5. ANN Results and Discussion

5.1. Training of the ANN

In the current work, the Levenberg–Marquardt algorithm was used to train the ANN, as it appears to be the fastest method for training moderate-sized feedforward neural networks [40]. This algorithm is one of the variations of the back propagation algorithm, which is a gradient descent method in which the network weights are moved along the negative of the gradient of the performance function. In the current case, the chosen performance function is the mean squared error (MSE). The learning problem is considered to be solved when the combination of weights is able to minimize the error function.
The results of this neural network (Figure 13a) show that the gradient is close to zero, as expected, as well as the performance parameter. The µ (Mu) parameter is the algorithm damping factor: it decreases after each successful step (reduction in the performance function), while it increases when a tentative step would result in a performance function increment. In this case, it starts from 0.001 as initial default value, and it decreases with a factor of 0.1, ending with a value of 0.0001.
The neural network was trained with fifteen of the nineteen 10   mm damage conditions, while the remaining four were used for validation and testing purposes. Figure 13 shows, as well, the performance obtained during the training, considering that the training was carried out in several steps on different datasets (always 15 of 19) in order to avoid the overspecialization of the network.
The ANN validation step consisted of the evaluation of the regression plot, which simply shows the relationship between the outputs of the network and the defined targets [41]. In detail, if the training were perfect, the network outputs and the targets would be exactly equal, but the relationship is rarely perfect in practice, especially when a limited dataset is adopted. Three regression plots for training, validation and testing data, together with the one for the overall dataset, are reported in Figure 13b. The dashed line in each plot represents the perfect result, i.e., outputs = targets. The solid line represents the best fit linear regression line between outputs and targets. The R value is an indication of the relationship between the outputs and targets. R = 1 indicates that there is an exact linear relationship between outputs and targets, while if R is close to zero, then there is no linear relationship between outputs and targets. For the network herein proposed, the data indicate a good fit: the network is sufficiently accurate even though a limited dataset was used for the training phase.

5.2. ANN Validation and Tests

In this section, the results provided by ANN are shown. Specifically, the fully trained ANN was validated by means of the remaining four 10 mm damaged test cases. Figure 14 shows a good agreement between the predicted damage locations and the modeled ones. When the inputs do not belong to the training set or to a neighborhood of it, the networks provide results that are different from the expected ones but comparable to them (Figure 14). Thus, the 5   mm damage dataset, not adopted for the training procedure, was used to test the ANN. It is herein underlined that, under 300   kHz carrier frequency, the minimum detectable damage should be 7   mm . Thus, the capability of the ANN to identify and successfully localize damages smaller than the defined threshold must be verified. According to Figure 15, the ANN is also capable of predicting smaller damages; however, it does so with a reduced but acceptable accuracy.

5.3. ANN for a Damaged Composite Panel

The ANN developed, tested and used for damage detection for the aluminum panel was herein used also to predict the damage location in a CFRP (carbon fiber-reinforced polymer) composite panel.
The CFRP composite panel is made of eight layers with stacking sequence [0/90/+45/−45]s. The thickness of the plate is t = 1.5   mm , while the horizontal and vertical dimensions are the same of the aluminum panel of Figure 1. The 0° fiber direction is oriented along the 𝑥-axis. Each layer of the prepreg is assumed to behave as an orthotropic material, and the mechanical properties of the lamina are listed in Table 6.
In detail, the 20 NPW 2D-Shell FE modeling approach was chosen for the plate, while the 10   mm damage was modeled again by degrading the elastic material properties of the corresponding Finite Elements (softening technique) of about 70%. In this case, four damaged configurations, as shown in Figure 16, were investigated separately. The ANN was applied to all of these new cases without any further training step with respect to the ANN applied to the aluminum plate.
The main idea is to verify if the ANN developed and trained for an isotropic plate is capable of predicting damage also for a composite one. According to the results shown in Figure 16, the ANN produced accurate results. Moreover, the distances between the real damage coordinates and the predicted ones are reported in Table 7. As visible, the distance (error) is lower than 73 mm, and that can be considered to be acceptable, taking into account the previous considerations about the ANN development and the fact that the ANN was trained by using only the aluminum dataset. The error is expected to decrease with an improved training phase. It must also be noticed that the error equal to 73 mm represents a singularity. In fact, according to Table 7, the other errors range between 7.8 and 29.3 mm.

6. Conclusions

In this paper, a machine learning approach based on ANN for damage detection and localization was proposed. Specifically, this paper dealt with the development and the assessment of an ANN for the damage detection based on the guided wave propagation method. The ANN was developed and assessed through the Finite Element Method and then used to simulate guided wave propagation in an aluminum plate under different damage configurations. A first step of the research activities herein proposed was addressed to the development of a reliable FE model aimed to calculate the S 0 and A 0 dispersion curves. In particular, three FE modeling techniques were investigated: the former based on 2D-Shell elements, the second based on 3D-Shell elements and the latter based on 3D-Solid elements. The reliability of the modeling techniques was assessed against experimental data, as well as semi-analytic ones provided by Dispersion Calculator software. According to the numerical–experimental–analytical comparison of the results, 2D-Shell FE model was chosen for the development of the dataset useful for the ANN, allowing achieving the highest level of accuracy to the computational time ratio. The possibility to use an accurate and faster method to train an ANN is of relevant importance, enabling the training with respect to a wider dataset.
Concerning the development of the ANN, it was trained with respect to an aluminum plate under different damage configurations. Square-shaped damages with a size of 5 and 10   mm were modeled at different points of the plate. The Damage Index dataset was used as the input vector for the ANN, while the coordinates of the modeled damages were the targets. The procedure is based on an in-house code that automatically extracts the S 0 mode from the baseline and actual states of the structure and calculates the DIs.
The trained ANN showed a good performance in terms of regression (even if a small dataset was used for the training). The ANN was found to be able to detect all damages with an acceptable level of accuracy. Because of the proven ANN reliability, its detection capability was also assessed on a different plate made of CFRP laminate, modeled through FEM. It is important to highlight that data achieved by the simulations involving the CFRP plate were not used for the ANN training phase. Nevertheless, the ANN showed its reliability in damage detection yet again.

Author Contributions

Conceptualization, A.D.L. and D.P.; methodology, A.D.L., D.P. and M.P.; software D.P. and M.P.; validation, F.C. and G.L.; investigation, A.D.L. and D.P.; writing—original draft preparation, D.P.; writing—review and editing, A.D.L., F.C. and G.L.; supervision, F.C. and G.L.; project administration, A.D.L.; funding acquisition, A.D.L. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the University of Campania “Luigi Vanvitelli” in the framework of “SAFES—Smart pAtch For active Shm” funded research project, as part of V:ALERE 2020 program.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Diamanti, K.; Soutis, C. Structural Health Monitoring Techniques for Aircraft Composite Structures. Prog. Aerosp. Sci. 2010, 46, 342–352. [Google Scholar] [CrossRef]
  2. Doebling, S.W.; Farrar, C.R.; Prime, M.B.; Shevitz, D.W. Damage Identification and Health Monitoring of Structural and Mechanical Systems from Changes in Their Vibration Characteristics: A Literature Review; Los Alamos National Lab. (LANL): Los Alamos, NM, USA, 1996. [Google Scholar]
  3. Wang, B.; Zhong, S.; Lee, T.-L.; Fancey, K.S.; Mi, J. Non-Destructive Testing and Evaluation of Composite Materials/Structures: A State-of-the-Art Review. Adv. Mech. Eng. 2020, 12, 1687814020913761. [Google Scholar] [CrossRef] [Green Version]
  4. Raghavan, A.; Cesnik, C.E.S. Review of Guided-Wave Structural Health Monitoring. Shock. Vib. Dig. 2007, 39, 91–114. [Google Scholar] [CrossRef]
  5. Rocha, H.; Semprimoschnig, C.; Nunes, J.P. Sensors for Process and Structural Health Monitoring of Aerospace Composites: A Review. Eng. Struct. 2021, 237, 112231. [Google Scholar] [CrossRef]
  6. Gorgin, R.; Luo, Y.; Wu, Z. Environmental and Operational Conditions Effects on Lamb Wave Based Structural Health Monitoring Systems: A Review. Ultrasonics 2020, 105, 106114. [Google Scholar] [CrossRef]
  7. Rose, J.L. A Baseline and Vision of Ultrasonic Guided Wave Inspection Potential. J. Press. Vessel. Technol. 2002, 124, 273–282. [Google Scholar] [CrossRef]
  8. Su, Z.; Ye, L. Identification of Damage Using Lamb Waves: From Fundamentals to Applications; Pfeiffer, F., Wriggers, P., Eds.; Lecture Notes in Applied and Computational Mechanics; Springer: London, UK, 2009; Volume 48. [Google Scholar]
  9. Wilcox, P.D. A Rapid Signal Processing Technique to Remove the Effect of Dispersion from Guided Wave Signals. IEEE Trans. Ultrason. Ferroelectr. Freq. Control. 2003, 50, 419–427. [Google Scholar] [CrossRef]
  10. De Fenza, A.; Sorrentino, A.; Vitiello, P. Application of Artificial Neural Networks and Probability Ellipse Methods for Damage Detection Using Lamb Waves. Compos. Struct. 2015, 133, 390–403. [Google Scholar] [CrossRef]
  11. Califano, A.; Chandarana, N.; Grassia, L.; D’Amore, A.; Soutis, C. Damage Detection in Composites by Artificial Neural Networks Trained by Using in Situ Distributed Strains. Appl. Compos. Mater. 2020, 27, 657–671. [Google Scholar] [CrossRef]
  12. Fotouhi, S.; Pashmforoush, F.; Bodaghi, M.; Fotouhi, M. Autonomous Damage Recognition in Visual Inspection of Laminated Composite Structures Using Deep Learning. Compos. Struct. 2021, 268, 113960. [Google Scholar] [CrossRef]
  13. Movsessian, A.; García Cava, D.; Tcherniak, D. An Artificial Neural Network Methodology for Damage Detection: Demonstration on an Operating Wind Turbine Blade. Mech. Syst. Signal. Process. 2021, 159, 107766. [Google Scholar] [CrossRef]
  14. Padil, K.H.; Bakhary, N.; Abdulkareem, M.; Li, J.; Hao, H. Non-Probabilistic Method to Consider Uncertainties in Frequency Response Function for Vibration-Based Damage Detection Using Artificial Neural Network. J. Sound Vib. 2020, 467, 115069. [Google Scholar] [CrossRef]
  15. Mishra, M. Machine Learning Techniques for Structural Health Monitoring of Heritage Buildings: A State-of-the-Art Review and Case Studies. J. Cult. Herit. 2021, 47, 227–245. [Google Scholar] [CrossRef]
  16. Su, Z.; Ye, L. Lamb Wave-Based Quantitative Identification of Delamination in CF/EP Composite Structures Using Artificial Neural Algorithm. Compos. Struct. 2004, 66, 627–637. [Google Scholar] [CrossRef]
  17. De Oliveira, R.; Marques, A.T. Health Monitoring of FRP Using Acoustic Emission and Artificial Neural Networks. Comput. Struct. 2008, 86, 367–373. [Google Scholar] [CrossRef]
  18. Andrej, K.; Bešter, J.; Kos, A. Introduction to the Artificial Neural Networks. In Artificial Neural Networks: Methodological Advances and Biomedical Applications; Suzuki, K., Ed.; InTech: Shanghai, China, 2011; pp. 1–18. [Google Scholar]
  19. Qian, C.; Ran, Y.; He, J.; Ren, Y.; Sun, B.; Zhang, W.; Wang, R. Application of Artificial Neural Networks for Quantitative Damage Detection in Unidirectional Composite Structures Based on Lamb Waves. Adv. Mech. Eng. 2020, 12, 1687814020914732. [Google Scholar] [CrossRef]
  20. Ghajari, M.; Khodaei, Z.S.; Aliabadi, M.H. Impact Detection Using Artificial Neural Networks. Key Eng. Mater. 2012, 488–489, 767–770. [Google Scholar] [CrossRef]
  21. Sharif-Khodaei, Z.; Ghajari, M.; Aliabadi, M.H. Determination of Impact Location on Composite Stiffened Panels. Smart Mater. Struct. 2012, 21, 105026. [Google Scholar] [CrossRef]
  22. De Luca, A.; Perfetto, D.; De Fenza, A.; Petrone, G.; Caputo, F. Guided Wave SHM System for Damage Detection in Complex Composite Structure. Theor. Appl. Fract. Mech. 2020, 105, 102408. [Google Scholar] [CrossRef]
  23. Giurgiutiu, V. Structural Health Monitoring with Piezoelectric Wafer Active Sensors, 2nd ed.; Academic Press, Elsevier Inc.: Oxford, UK, 2014. [Google Scholar]
  24. Michaels, J.E.; Lee, S.J.; Croxford, A.J.; Wilcox, P.D. Chirp Excitation of Ultrasonic Guided Waves. Ultrasonics 2013, 53, 265–270. [Google Scholar] [CrossRef]
  25. Abaqus 6.14. Abaqus 6.14 Analysis User’s Guide; Dassault Systems Simulia Corp.: Providence, RI, USA, 2014. [Google Scholar]
  26. Reddy, J.N. An Introduction to the Finite Element Method, 3rd ed.; McGraw-Hill: Bengaluru, India, 2006. [Google Scholar]
  27. Duczek, S.; Joulaian, M.; Düster, A.; Gabbert, U. Numerical Analysis of Lamb Waves Using the Finite and Spectral Cell Methods. Int. J. Numer. Methods Eng. 2014, 99, 26–53. [Google Scholar] [CrossRef]
  28. Yang, C.; Ye, L.; Su, Z.; Bannister, M. Some Aspects of Numerical Simulation for Lamb Wave Propagation in Composite Laminates. Compos. Struct. 2006, 75, 267–275. [Google Scholar] [CrossRef]
  29. Giurgiutiu, V. Structural Health Monitoring of Aerospace Composites; Academic Press, Elsevier Inc.: Oxford, UK, 2015. [Google Scholar]
  30. Paget, C.A. Active Health Monitoring of Aerospace Composite Structures by Embedded Piezoceramic Transducers. Ph.D. Thesis, Royal Institute of Technology, Stockholm, Sweden, 2001. [Google Scholar]
  31. Slatte, F.; Jovanov, K. Structural Health Monitoring for Aerospace Composite Structures—An Investigation of the Potential Using the Finite Element Method. Master’s Thesis, Chalmers University of Technology, Gothenburg, Sweden, 2012. [Google Scholar]
  32. German Aerospace Center (DLR)-Institute of Structures and Design-Center for Lightweight Technology the Dispersion Calculator. Available online: https://www.dlr.de/zlp/en/desktopdefault.aspx/tabid-14332/24874_read-61142/#/gallery/33485 (accessed on 5 April 2021).
  33. De Luca, A.; Perfetto, D.; De Fenza, A.; Petrone, G.; Caputo, F. Guided Waves in a Composite Winglet Structure: Numerical and Experimental Investigations. Compos. Struct. 2019, 210, 96–108. [Google Scholar] [CrossRef]
  34. Sharif-Khodaei, Z.; Aliabadi, M.H. Assessment of Delay-and-Sum Algorithms for Damage Detection in Aluminium and Composite Plates. Smart Mater. Struct. 2014, 23, 075007. [Google Scholar] [CrossRef]
  35. Perfetto, D.; De Luca, A.; Lamanna, G.; Caputo, F. On the Prediction of Guided Wave Dispersion Curves in Plates for Health Monitoring Applications. Macromol. Symp. 2021, 396, 2000333. [Google Scholar] [CrossRef]
  36. De Luca, A.; Perfetto, D.; De Fenza, A.; Petrone, G.; Caputo, F. A Sensitivity Analysis on the Damage Detection Capability of a Lamb Waves Based SHM System for a Composite Winglet. Procedia Struct. Integr. 2018, 12, 578–588. [Google Scholar] [CrossRef]
  37. Lee, B.C.; Staszewski, W.J. Modelling of Lamb Waves for Damage Detection in Metallic Structures: Part I. Wave Propagation. Smart Mater. Struct. 2003, 12, 804–814. [Google Scholar] [CrossRef]
  38. Lee, B.C.; Staszewski, W.J. Modelling of Lamb Waves for Damage Detection in Metallic Structures: Part II. Wave Interactions with Damage. Smart Mater. Struct. 2003, 12, 815–824. [Google Scholar] [CrossRef]
  39. Pham, D.T.; Pham, P.T.N. Artificial Intelligence in Engineering. Int. J. Mach. Tools Manuf. 1999, 39, 937–949. [Google Scholar] [CrossRef]
  40. Lourakis, M.I.A. A Brief Description of the Levenberg-Marquardt Algorithm Implemened by Levmar. Matrix 2005, 3, 2. [Google Scholar]
  41. MathWorks. Matlab User’s Guide (R2020a). Available online: https://it.mathworks.com/help/matlab/ (accessed on 30 November 2021).
Figure 1. Schematic of the geometry and map of PZTs network.
Figure 1. Schematic of the geometry and map of PZTs network.
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Figure 2. (a) FE model of the aluminum plate under study in Abaqus® CAE. (b) Focus on sensor mesh and GW input signal.
Figure 2. (a) FE model of the aluminum plate under study in Abaqus® CAE. (b) Focus on sensor mesh and GW input signal.
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Figure 3. Guided wave propagation at 3 time instants in the aluminum plate modeled by the three different element types— 300   kHz carrier.
Figure 3. Guided wave propagation at 3 time instants in the aluminum plate modeled by the three different element types— 300   kHz carrier.
Materials 14 07602 g003
Figure 4. Comparison of the received signals at each PZT location for the conventional shell, continuum shell and solid FE models with the experimental data adopting (a) 10 NPW and (b) 20 NPW— 300   kHz carrier.
Figure 4. Comparison of the received signals at each PZT location for the conventional shell, continuum shell and solid FE models with the experimental data adopting (a) 10 NPW and (b) 20 NPW— 300   kHz carrier.
Materials 14 07602 g004
Figure 5. S0 and A0 modes’ dispersion curves in the flat aluminum panel for 10 and 20 NPW.
Figure 5. S0 and A0 modes’ dispersion curves in the flat aluminum panel for 10 and 20 NPW.
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Figure 6. Dispersion curves for the S0 and A0 modes—2nd-order polynomial fitting curves—20 NPW.
Figure 6. Dispersion curves for the S0 and A0 modes—2nd-order polynomial fitting curves—20 NPW.
Materials 14 07602 g006
Figure 7. Example of FE damage modeling: degradation of the elastic properties (−70%) of the elements set highlighted in red.
Figure 7. Example of FE damage modeling: degradation of the elastic properties (−70%) of the elements set highlighted in red.
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Figure 8. Sensors (black circles) and damages (red stars) map.
Figure 8. Sensors (black circles) and damages (red stars) map.
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Figure 9. S0 mode extraction from baseline and actual configurations. Example for damage in position d8.
Figure 9. S0 mode extraction from baseline and actual configurations. Example for damage in position d8.
Materials 14 07602 g009aMaterials 14 07602 g009b
Figure 10. Comparison between the S0 modes for the baseline and the actual configurations. Example for damage in position d8.
Figure 10. Comparison between the S0 modes for the baseline and the actual configurations. Example for damage in position d8.
Materials 14 07602 g010
Figure 11. DI evaluation (damage of 10 mm). Example for damage in position d8.
Figure 11. DI evaluation (damage of 10 mm). Example for damage in position d8.
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Figure 12. Architecture of the ANN includes one input layer, two hidden layers and one output layer; w, weights vector; b, bias vector (the image was produced by the MATLAB’s ANN toolbox).
Figure 12. Architecture of the ANN includes one input layer, two hidden layers and one output layer; w, weights vector; b, bias vector (the image was produced by the MATLAB’s ANN toolbox).
Materials 14 07602 g012
Figure 13. (a) ANN performance and (b) regression plot.
Figure 13. (a) ANN performance and (b) regression plot.
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Figure 14. Results of ANN (10 mm damage).
Figure 14. Results of ANN (10 mm damage).
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Figure 15. Results of ANN for the 5 mm damaged configurations.
Figure 15. Results of ANN for the 5 mm damaged configurations.
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Figure 16. Results of ANN for the composite 10 mm damaged configurations.
Figure 16. Results of ANN for the composite 10 mm damaged configurations.
Materials 14 07602 g016aMaterials 14 07602 g016b
Table 1. Material properties of Al 6061 plate and PIC255 sensors.
Table 1. Material properties of Al 6061 plate and PIC255 sensors.
Material PropertiesSymbolUnitsAl 6061PIC255
Mass density ρ [ kg   m 3 ] 2700 7850
Young’s modulus E [ GPa ] 69 76
Shear modulus G [ GPa ] 26 29
Poisson’s ratio ν 0.33 0.32
Dielectric constant K 3 1280  
Piezoelectric charge constant d 31 [ 10 9   mm   V 1 ] 180
Table 2. Comparison of the relative error for the estimation of the S0 mode group velocity for each element type with respect to the experiment—300 kHz carrier.
Table 2. Comparison of the relative error for the estimation of the S0 mode group velocity for each element type with respect to the experiment—300 kHz carrier.
Datacg (m/s)Error (%)
Experimental5201
Semi-Analytical5268−1.28
2D-Shell (20 NPW)49963.94
3D-Shell (20 NPW)5098.91.96
3D-Solid (10 NPW)5117.41.60
Table 3. Percentage deviation between 20 NPW 2D-Shell FE and experimental group velocity values extracted from the 2nd-order polynomial interpolation.
Table 3. Percentage deviation between 20 NPW 2D-Shell FE and experimental group velocity values extracted from the 2nd-order polynomial interpolation.
Frequency
(kHz)
c g [ m / s ] S 0 Mode c g [ m / s ] A 0 Mode
Experimental20 NPW 2D-ShellDifference (%)Experimental20 NPW 2D-ShellDifference (%)
5053155427−2.10166515616.25
10052965369−1.36218421272.61
15052775314−0.6925262550−0.95
20052565258−0.0227482888−5.08
250523152050.5128833141−8.94
300520151540.9229503310−12.2
350516451031.1929903110−4.01
400511850541.2629953118−4.11
450506150061.1129963054−1.94
500499349600.67295829202.60
Table 4. Percentage deviation between 20 NPW 2D-Shell FE and semi-analytical group velocity values extracted from the 2nd-order polynomial interpolation.
Table 4. Percentage deviation between 20 NPW 2D-Shell FE and semi-analytical group velocity values extracted from the 2nd-order polynomial interpolation.
Frequency
(kHz)
c g [ m / s ] S 0 Mode c g [ m / s ] A 0 Mode
Semi-Analytical20 NPW 2D-ShellDifference (%)Semi-Analytical20 NPW 2D-ShellDifference (%)
5053525427−1.401735156110.03
10053485369−0.39213321270.28
150533753140.4324652550−3.45
200532052581.1727322888−5.71
250529652051.7229323141−7.13
300526651542.1330683310−7.89
350522951032.41313831100.89
400518650542.55314231180.76
450513650062.53308130540.88
500508049602.36295529201.18
Table 5. Analyzed damaged configurations.
Table 5. Analyzed damaged configurations.
Configuration #Damage Size (mm)Center Coordinates (mm)
d 1 5/10[143.5, 259.5]
d 2 5/10[259.5, 204.5]
d 3 5/10[232, 143.5]
d 4 5/10[204.5, 55]
d 5 5/10[143.5, 82.5]
d 6 5/10[70.5, 70.5]
d 7 5/10[40, 143.5]
d 8 5/10[82.5, 204.5]
d 9 5/10[143.5, 143.5]
d 10 10[60, 120]
d 11 10[55, 165]
d 12 10[143, 212]
d 13 10[168, 222]
d 14 10[216, 216]
d 15 10[215, 100]
d 16 10[190, 180]
d 17 10[110, 110]
d 18 10[175, 115]
d 19 10[120, 168]
Table 6. Lamina mechanical properties of CFRP composite.
Table 6. Lamina mechanical properties of CFRP composite.
E11
(GPa)
E22
(GPa)
E33
(GPa)
G12
(GPa)
G13
(GPa)
G23
(GPa)
ν12ν13ν23ρ
(kg m−3)
1057.77.73.63.62.70.360.360.41540
Table 7. ANN accuracy for damage prediction in the composite panel.
Table 7. ANN accuracy for damage prediction in the composite panel.
Configuration #Real Damage Coordinates (mm)ANN Predicted Damage Coordinates (mm)Distance (Error) between Points (mm)
d 1 [143.5, 259.5][96.4, 203.5]73.1
d 5 [143.5, 82.5][141.9, 90.2]7.8
d 7 [40, 143.5][27.7, 135.3]14.8
d 16 [190, 180][219.2, 177.7]29.3
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Perfetto, D.; De Luca, A.; Perfetto, M.; Lamanna, G.; Caputo, F. Damage Detection in Flat Panels by Guided Waves Based Artificial Neural Network Trained through Finite Element Method. Materials 2021, 14, 7602. https://doi.org/10.3390/ma14247602

AMA Style

Perfetto D, De Luca A, Perfetto M, Lamanna G, Caputo F. Damage Detection in Flat Panels by Guided Waves Based Artificial Neural Network Trained through Finite Element Method. Materials. 2021; 14(24):7602. https://doi.org/10.3390/ma14247602

Chicago/Turabian Style

Perfetto, Donato, Alessandro De Luca, Marco Perfetto, Giuseppe Lamanna, and Francesco Caputo. 2021. "Damage Detection in Flat Panels by Guided Waves Based Artificial Neural Network Trained through Finite Element Method" Materials 14, no. 24: 7602. https://doi.org/10.3390/ma14247602

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