Multi-Damage Detection in Composite Space Structures via Deep Learning
Abstract
:1. Introduction
1.1. Highlights of the Paper’s Contributions
- The methodology is applied to a new challenging study case in terms of the impact of space debris on the global spacecraft dynamics (and, in detail, on solar panels instead of antenna truss structures). This implies that not only different dynamics, but also different structural elements are considered in this study.
- The performance of the DL architecture is assessed by comparing the signals generated by two sensing networks: one based on accelerometer sensors and the other one on distributed piezoelectric patches.
- A procedure is presented to identify a subset of high-risk candidate failures to be detected by the SHM system based on modal strain energy (MSE) to build the dataset for the training.
- A more complex application in terms of higher dimensionality of the multi-class identification problem (i.e., classification of more than two damages at the same time) is investigated, obtaining information not only about the presence, but also the location of the damage.
- The structure and damage entity are implemented considering the equivalent properties and effects on a traditional composite aerospace structure, in particular, an aluminium honeycomb, by using information available in literature concerning the experimental debris impact on such structures.
2. Spacecraft Dynamics
2.1. Composite Equivalent Material
2.2. Governing Equations
2.2.1. Piezoelectric Formulation
3. Damage Scenario
3.1. Damages on Solar Panels
3.2. Sensing Networks
4. Deep Learning Network
4.1. Network Architecture
- Input gate (indicated with the letter i in Figure 11) defines how much of the current input is let through for computing the new state as
- Forget gate (marked with the letter f in Figure 11) establishes how much of the previous state pass through as
- Cell candidate (indicated with the letter g in Figure 11) selects the memory of the past as
- Output gate (mentioned with the letter o in Figure 11) regulates how much of the internal state will be exposed to the external network (higher layers and successive time steps) as
Network Complexity
- Bi-LSTM Input weights: , with number of hidden units and number of input features.
- Bi-LSTM Recurrent weights: .
- Bi-LSTM Biases: .
- Fully connected layer weights: , with and number of outputs and inputs, respectively.
- Fully connected layer biases: .
4.2. Training Set Generation
- Relevant structural information, such as frequencies, modes, and modal participation factors, are extracted from structural models, each corresponding to one of the scenarios listed in Table 3. Such data are used to set up the nonlinear flexible satellite simulator to carry out a pre-defined set of different attitude manoeuvres. For each motion, the sensing networks record and produce measurements as time histories of accelerations (if accelerometers) or voltages (if piezoelectric devices). A quaternion-based proportional–derivative control law is applied to exert the target control torque to the spacecraft:
- The -measured quantities vary according to the type of sensor: acceleration time histories (i.e., five three-axis accelerometers are installed on the solar array), or voltages time histories (i.e., six piezoelectric patches are mounted on the panel, each of them producing one potential difference). In both cases, the collected data are arranged in a multidimensional array , with and number of time samples. Furthermore, a Gaussian noise equal to 2% of the measured values is applied to the time histories to simulate a realistic acquisition process and to improve the variability of data and, consequently, the robustness of the training. Specifically, since the process of identifying damage is approached as a classification problem, the output consists of individual entries that contain specific labels corresponding to attitude manoeuvres and damage configurations (refer to Table 3).
- Time sequence truncation: This phase is necessary to avoid including in the dataset those time samples that could reduce the performance the training process. Indeed, it was noticed that only the initial part of the measured signals contains a relevant dynamic content: they correspond to the excitation of the structural panels caused by the rigid attitude manoeuvre via the modal participation factors, when the torque control action and the induced elastic vibrations are the highest. On the other hand, including responses under a certain threshold (either acceleration or voltage) would have flattened the dataset, improving neither the training nor the classification accuracy.
- Data normalisation: This step is crucial to ensure the data are in the proper range of the dynamic variability in the learning space of the DL network. It was proven [25] that, for this type of application, normalisation with respect to the mean and standard deviation of samples offers better results than minimum–maximum processing.
5. Experiments
5.1. Damage Isolation Results
5.2. Multi-Damage Identification Results
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Mass | Inertia | Size | ||||
---|---|---|---|---|---|---|
(kg) | (kg m²) | (m) | ||||
300 | 125 | 125 | 50 | 1 | 1 | 2 |
Property | Symbol | Value |
---|---|---|
Face layer thickness | 1 mm | |
Honeycomb height | 8 mm | |
Young’s modulus | 70.3 GPa | |
Shear modulus | 25.9 GPa | |
Poisson ratio | υ | 0.33 |
Density | 2680 kg/m³ |
Description | Damaged Element | Classification Label | |
---|---|---|---|
- | Undamaged | - | 0 |
1 | Damage 1—red area (high MSE) | Elm 602 | 1 |
2 | Damage 2—red area (high MSE) | Elm 437 | 2 |
3 | Damage 3—orange area (medium MSE) | Elm 601 | 3 |
4 | Damage 4—orange area (medium MSE) | Elm 436 | 4 |
5 | Damage 5—green area (low MSE) | Elm 435 | 5 |
6 | Damage 6—green area (low MSE) | Elm 600 | 6 |
Layer | Accelerometers | Piezoelectrics | |
---|---|---|---|
Input Layer | - | - | |
Bi-LSTM 1 | Input weights | ||
Recurrent weights | |||
Biases | |||
Dropout | - | - | |
Bi-LSTM 2 | Input weights | ||
Recurrent weights | |||
Biases | |||
Fully connected | Weights | ||
Biases | |||
Softmax | - | - | |
Classification | - | - | |
Total learnable parameters | 9945 | 8505 |
Class Labels | Sensors | Accuracy (%) | |
---|---|---|---|
1 | (0, 1) | A | 97.02% ± 0.32% |
P | 96.71% ± 0.60% | ||
2 | (0, 2) | A | 96.54% ± 0.34% |
P | 96.10% ± 0.91% | ||
3 | (0, 3) | A | 96.14% ± 0.18% |
P | 97.45% ± 0.98% | ||
4 | (0, 4) | A | 96.54% ± 0.45% |
P | 97.49% ± 0.79% | ||
5 | (0, 5) | A | 98.41% ± 0.38% |
P | 98.31% ± 0.36% | ||
6 | (0, 6) | A | 98.10% ± 0.64% |
P | 97.32% ± 0.58% |
Cases | Class Labels | Sensors | Accuracy (%) |
---|---|---|---|
A | (0) vs (1, 2, 3, 4) | A | 97.34% ± 0.33% |
P | 95.58%± 0.96% | ||
B | (0) vs (1, 2, 5, 6) | A | 95.78% ± 0.75% |
P | 95.45% ± 0.66% |
Cases | Class Labels | Sensors | Accuracy (%) |
---|---|---|---|
C | (0, 1, 2, 3, 4) | A | 93.57% ± 0.49% |
P | 88.62% ± 2.33% | ||
D | (0, 1, 2, 5, 6) | A | 90.02% ± 1.48% |
P | 84.37% ± 3.58% |
Cases | Accuracy (%) |
---|---|
Bi-classification (Undamaged vs. one case of damage) | Concerning the bi-classification problem results presented in Section 5.1 (see Table 5), a different trend in the accuracy behaviour can be noticed between the piezoelectric and accelerometer sensors, as illustrated in Figure 14. In detail, accelerometers generally exhibit a lower variation in both accuracy and standard deviation with the increase in the number of sensors. On the other hand, piezoelectrics show a noticeable dependency on the number of devices, both in terms of accuracy mean value and standard deviation, which decreases significantly with a few more installed patches. This behaviour seems to be explainable by considering the different nature of sensing measurements, the first based on nodal translational motion (which is mostly related to the points where the most relevant motion can be registered), and the other one on the local structural strain (as confirmed by most literature concerning piezoelectric sensors, generally disposed in a dense mesh on the inspected area [10,52], clearly also depending on the adopted SHM method). In general, both devices seem to have reached a “convergence” condition for the accuracy value; hence, the number of considered sensors was deemed optimised for the considered application. |
Bi-classification (Undamaged vs. all damage) | The second bi-classification problem addressed in Section 5.1 (see Table 6) analyses the undamaged condition with respect to all other damage configurations. The DNN architecture proved to be able to classify the labels with accuracy higher than 95% in all analysed cases, even if the training dataset is unbalanced between the two classes (i.e., “undamaged” vs. “damaged”). This shows how the proposed approach can discriminate between a “healthy” signal and a damaged one, thus providing the in-orbit system with a reliable damage isolation functionality. Both sensor configurations exhibit comparable performance, with piezoelectrics showing a very similar accuracy for the classification of both high-MSE (labels “1” and “2”) and low-MSE damage (labels “5” and “6”). In this bi-classification case, the accelerometers slightly outperform the piezoelectrics in the case of high-density MSE elements (97% vs. 95%), proving to be more robust to a potentially unbalanced dataset for practical applications. |
Multi-label classification | Regarding the multi-label classification problem (see Table 7), for both sensor categories, the class “0” is generally well classified, with piezoelectrics showing better performance for this specific task, with lower cases of false detection (first rows in the confusion matrices in Figure 15 and Figure 16) and limited false alarms (first columns in the confusion matrices in Figure 15 and Figure 16). Most false predictions happen when a single case of damage, i.e., its location, has to be assessed. It should be noticed, however, that failures are adjacent to each other (in an area of 5 × 10 cm2), which inherently complicates the classification problem in differentiating two very similar dynamic responses to damage. At the same time, failures induce a lower effect on the system dynamics and are, therefore, less detectable than the others. Moreover, a different classification pattern can be observed between the accelerometer and the piezoelectric approach. The former shows more evenly spread misclassifications among classes “1” to “6”, with slightly worse performance—as expected—when introducing the lower MSE damage , particularly when classifying classes “1” and “5”, and “2” and “6”, which are aligned pairwise along the longitudinal axis y of the panel (see Figure 1). Piezoelectrics, instead, are more challenged by the classification of labels “1” and “2”, and, likewise, “5” and “6”, which are symmetrically placed with respect to the y axis and will likely measure a similar change in rotations at the extremities of the patches (as described in Section 2.2.1). Nevertheless, it should be remarked that the trained networks show good classification performance overall. |
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Angeletti, F.; Gasbarri, P.; Panella, M.; Rosato, A. Multi-Damage Detection in Composite Space Structures via Deep Learning. Sensors 2023, 23, 7515. https://doi.org/10.3390/s23177515
Angeletti F, Gasbarri P, Panella M, Rosato A. Multi-Damage Detection in Composite Space Structures via Deep Learning. Sensors. 2023; 23(17):7515. https://doi.org/10.3390/s23177515
Chicago/Turabian StyleAngeletti, Federica, Paolo Gasbarri, Massimo Panella, and Antonello Rosato. 2023. "Multi-Damage Detection in Composite Space Structures via Deep Learning" Sensors 23, no. 17: 7515. https://doi.org/10.3390/s23177515
APA StyleAngeletti, F., Gasbarri, P., Panella, M., & Rosato, A. (2023). Multi-Damage Detection in Composite Space Structures via Deep Learning. Sensors, 23(17), 7515. https://doi.org/10.3390/s23177515