A Study on Structural Health Monitoring of a Large Space Antenna via Distributed Sensors and Deep Learning
Abstract
:1. Introduction
2. Dynamics of a Flexible Spacecraft
- The definition of kinematic parameters for flexible structures;
- The definition of the functionals: kinetic, elastic, and gravitational;
- The definition of the Lagrangian;
- The writing of the equilibrium equations through the Hamilton’s principle.
3. Spacecraft Model and Dataset Generation
3.1. Large Mesh Reflector Structural Model
3.2. Training Set Generation and Processing
- The set structural models extrapolated from the finite element suite (MSC Nastran), as previously described, are imported in Matlab to perform further analysis. At this point, the non-linear simulator of the flexible spacecraft (built on the basis of the equations reported in Section 2) is used to carry out attitude manoeuvres and produce the measurements from the sensors network. A quaternion-based PD controller [49,50] is implemented to produce the desired control torque :
- s quantities of interest (i.e., because 12 tri-axial accelerometers are mounted on the structure) are then collected by the sensors network with a sampling frequency of 10 Hz. At this stage, the raw data, extrapolated from the simulator, consists of a multidimensional array with and q the number of time samples. Moreover, a Gaussian noise equal to the 2% of measured values is considered when acquiring the data from the accelerometers to simulate a realistic condition.
- The raw multidimensional array is not directly fed to the network for the training, but it passes through two intermediate steps of pre-processing. Indeed, data-driven classification algorithms need a relevant amount of training data, which require to be properly processed to avoid introducing biases and ill-conditioning in the results, while being used in a computationally and time-expensive process (in particular for recurrent neural networks). In this paper, firstly, each time sequence is truncated () in order to preserve only parts of the signals where relevant dynamical content is detected. In the current study, the sequences are truncated to for a total of 251 samples. Such a reduction is supported by the fact that responses below a certain threshold do not improve classification accuracy during network training or operation. Conversely, it was also observed in [9] that feeding the full-time sequence to the network rather jeopardises the performance of the training process (and subsequently also the performance of damage identification in real-time condition). The second step consists of normalising the measurements so as to ensure proper dynamic range of the variables in the learning space of the NN model. Therefore, in this study, each time sequence is normalised according to their mean and standard deviation as reported here:
4. Bidirectional Long-Short Term Memory Network
5. Results
- First, six binary classification problems were considered, one for each structural element reported in Table 3. Two classes only are selected among the observations: 231 time series having the class label “0” (undamaged system) and 462 times series having a unique class label associated with that element, either broken or damaged (i.e., a unique class named “1-2” for “Elm 4115”, a unique class named “3-4” for “Elm 4110”, and so on). This meets the normal logic of damage detection to firstly determine whether damage has occurred or not and then to determine the degree of the damage.
- Successively, twelve binary classification problems were considered, two of them for each structural element reported in Table 3. Two classes only are selected among the observations: 231 time series having the class label “0” (undamaged system) and 231 times series having one class label (between “1” and “12”), which is associated with a specific failure of the considered structural element. Here, the rationale is to find whether, by analysing the data coming from all the sensors, is it possible to recognise one specific failure at a time, either a broken or damaged element, with respect to an undamaged condition.
- The third analysis pertains to six three-class classification problems, one for each structural element reported in Table 3. Three classes are considered in this case: 231 time series having the class label “0” (undamaged system); 231 times series having an odd class label (between “1” and “11”), which is associated with the broken failure of the considered structural element; and 231 times series having the even class label (between “2” and “12”) associated with the damaged failure of the same element, which is the previous odd class label increased by one. In this situation, we want to study the capability of the proposed multivariate deep learning approach to identify both a broken and a same damaged element with respect to the undamaged condition.
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
ANN | Artificial Neural Network |
DL | Deep Learning |
DNN | Deep Neural Network |
ELM | Element |
FEM | Finite Element Method |
LMRM | Large Mesh Reflector Model |
LSS | Large Space Structure |
LSTM | Long Short-Term Memory |
ML | Machine Learning |
NN | Neural Network |
RNN | Recurrent Neural Network |
SHM | Structural Health Monitoring |
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Mass | Inertia Wrt CoM | CoM Wrt | |||||||
---|---|---|---|---|---|---|---|---|---|
() | |||||||||
1200 | 903.6 | 985.2 | 885.6 | 2 | 4 | 0 | 0 |
Property | LMRM |
---|---|
Mass | Truss: |
Mesh: | |
Total: | |
1st Mode | Truss: |
Truss + Mesh: |
Damaged Element ID | Damage Configuration | Associated Label |
---|---|---|
- | Undamaged system | 0 |
Elm 4115 | Failure 1—Broken element | 1 |
Failure 2—Damaged element | 2 | |
Elm 4110 | Failure 3—Broken element | 3 |
Failure 4—Damaged element | 4 | |
Elm 3872 | Failure 5—Broken element | 5 |
Failure 6—Damaged element | 6 | |
Elm 3920 | Failure 7—Broken element | 7 |
Failure 8—Damaged element | 8 | |
Elm 3823 | Failure 9—Broken element | 9 |
Failure 10—Damaged element | 10 | |
Elm 3972 | Failure 11—Broken element | 11 |
Failure 12—Damaged element | 12 |
Failure | Class Labels | Accuracy (%) | Bi-LSTM Units 1 | Bi-LSTM Units 2 |
---|---|---|---|---|
Elm 4115 broken–damaged | -2 | |||
Elm 4115 broken | ||||
Elm 4115 damaged | ||||
Elm 4110 broken–damaged | -4 | |||
Elm 4110 broken | ||||
Elm 4110 damaged | ||||
Elm 3872 broken–damaged | -6 | |||
Elm 3872 broken | ||||
Elm 3872 damaged | ||||
Elm 3920 broken–damaged | -8 | |||
Elm 3920 broken | ||||
Elm 3920 damaged | ||||
Elm 3823 broken–damaged | -10 | |||
Elm 3823 broken | ||||
Elm 3823 damaged | ||||
Elm 3972 broken–damaged | -12 | |||
Elm 3972 broken | ||||
Elm 3972 damaged |
Failure | Class Labels | Accuracy (%) | Bi-LSTM Units 1 | Bi-LSTM Units 2 |
---|---|---|---|---|
Elm 4115 broken, damaged | ||||
Elm 4110 broken, damaged | ||||
Elm 3872 broken, damaged | ||||
Elm 3920 broken, damaged | ||||
Elm 3823 broken, damaged | ||||
Elm 3972 broken, damaged |
Structural Element | Discussion |
---|---|
Elm 4110 | The DNN architecture proved to well detect and identify the failure, both in the break and the partial damage cases. The reason for this outcome can be interpreted as three-fold. On one hand, Elm 4110 and Elm 4115, located at the antenna attachment point with the satellite, are the ones affecting the overall system behaviour the most—yet still limitedly, even from a structural point of view—when compared to the other considered elements. Indeed, as proved by the previous research discussed in [9], failures near a substructure attachment area to a satellite can be straightforwardly identified by using LSTM-based machine learning approaches. This is true in terms of structural stiffness modifications and consequently of natural frequencies changes and different antenna nodal elastic displacements. On the other hand, local partial damage—which could be more difficult to classify due to its minor impact on the satellite attitude dynamics—can be identified with high precision mainly due to its vicinity to Sensor “1”, which is able to better “see” the local effects of the failure. Finally, the location of Elm 4110—as well as 4115—is peculiar with respect to the other elements: it is positioned in a way to not be impacted by the symmetry effects of the overall system structure and also in terms of the registered acceleration profiles (please refer to further discussions in this table for more details). |
Elm 4115 | The DNN architecture demonstrated to be able to well detect and classify the total break of Elm 4115. Similarly to Elm 4110, this behaviour can be assumed as due to the more relevant impact on the system dynamics than other structural elements and on its position. In detail, while a good classification performance can be observed for the three-class problem in Table 5, the partial damage cannot be identified with the same accuracy when identified with respect to the undamaged condition. This result is interpreted as related to the absence of any local sensors near the damaged element. |
Elm 3972 Elm 3920 Elm 3872 Elm 3823 | The DNN architecture showed not to be able to properly detect and classify both the total break and partial damage cases with respect to the undamaged condition nor in the three-class problem. This behaviour gives relevant information on the ability of detecting failures on distributed elements in relation to their position on the structure. It can be noticed, indeed, that the same classification performance can be observed for all the damaged elements, except Elm 4115 and Elm 4110. This can be explained by the fact that the structural parts are symmetrically positioned with respect to the plane, including the Z-axis, perpendicular to the Y-axis, which is indeed a symmetry plane of the satellite (please refer to Figure 1): Elm 3972 is symmetric to Elm 3823, and Elm 3920 to 3872. Likewise, Sensors “1” and “75” are the only sensors positioned in the symmetry plane, while the others are located symmetrically with respect to each other. Hence, they are inducing a comparable effect/change in the system dynamics which results in similar classification results. Indeed, according to the specific manoeuvre, they are producing either a response with the same magnitude and same sign, or the same response with opposite sign. In general, nevertheless, this proves that the local failures, both breaks and damages, have a limited impact on the system from a structural point of view. They are all indeed elements which are part of the antenna backbone supporting structure, as opposed to the attachment point. This, on the other hand, indicates that, even with local sensors near the damage/failure of the element, the damage on the supporting backbone loop does not change the properties of the system enough to be clearly identified by the DNN architecture. Because the DNN system relies purely on data, without knowledge of the physical system, which could help discriminate the area of the failure, the accuracy level is significantly worse than the one of both Elm 4115 and 4110. |
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Angeletti, F.; Iannelli, P.; Gasbarri, P.; Panella, M.; Rosato, A. A Study on Structural Health Monitoring of a Large Space Antenna via Distributed Sensors and Deep Learning. Sensors 2023, 23, 368. https://doi.org/10.3390/s23010368
Angeletti F, Iannelli P, Gasbarri P, Panella M, Rosato A. A Study on Structural Health Monitoring of a Large Space Antenna via Distributed Sensors and Deep Learning. Sensors. 2023; 23(1):368. https://doi.org/10.3390/s23010368
Chicago/Turabian StyleAngeletti, Federica, Paolo Iannelli, Paolo Gasbarri, Massimo Panella, and Antonello Rosato. 2023. "A Study on Structural Health Monitoring of a Large Space Antenna via Distributed Sensors and Deep Learning" Sensors 23, no. 1: 368. https://doi.org/10.3390/s23010368
APA StyleAngeletti, F., Iannelli, P., Gasbarri, P., Panella, M., & Rosato, A. (2023). A Study on Structural Health Monitoring of a Large Space Antenna via Distributed Sensors and Deep Learning. Sensors, 23(1), 368. https://doi.org/10.3390/s23010368