Structural Health Monitoring of Solid Rocket Motors: From Destructive Testing to Perspectives of Photonic-Based Sensing
Abstract
:1. Introduction
2. SRM Architecture, Potential Failures, and Degradation
3. Traditional Maintenance Practices: Destructive Testing
4. Non Destructive Testing: Imaging Approaches
5. Sensing Approaches for the SHM of SRMs
5.1. Strain Gauges and DBST Sensors
5.2. Piezoelectric Sensors
6. Photonic Sensing Approaches: Towards CBM of SRMs
6.1. Interferometric Sensors
6.2. Intensity-Based Fiber-Optic Sensors
6.3. Fiber Bragg Gratings (FBGs)
6.4. Distributed Fiber Optic Sensors
7. Machine Learning as an Enabling Tool for the CBM of SRMs
8. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Technique | Description of the Method | Advantages | Limitations |
---|---|---|---|
Ultrasonic testing | High-frequency sound waves are transmitted into the material and the reflections are analyzed to identify any abnormalities such as voids or cracks. | Detection of both surface and internal defects with high accuracy and resolution. Assessment of the size and shape of the defect. No material damage is caused. | Direct contact with the material required. UT difficult to use in some areas. UT may be affected by the shape and orientation of the defect. Nondetectable defects that are too small or located in certain areas of the material. |
X-ray inspection and CT imaging | X-rays pass through the material, with a detector located on the other side of it. Areas of the material that are denser or thicker, such as those containing defects or anomalies, will absorb more X-rays and appear darker in the resulting image. CT imaging involves taking multiple X-ray images of the material from different angles and using computer software to reconstruct a 3D image of the internal structure. | 3D visualization of the defect. Detection of both surface and internal defects with high accuracy and resolution. Assessment of the size and shape of the defect. No material damage is caused. | Specialized equipment and expertise are required. Time-consuming and expensive method. Heightened safety concerns and stringent precautions associated with high-energy radiation. Nondetectable defects that are too small or located in certain areas of the material. Delaminations can be detected only if not perpendicular to the beam. |
Magnetic particle inspection | MPI involves magnetizing the SRM and then applying iron oxide magnetic particles to the surface. Any defects in the material will cause the magnetic particles to gather in that area, making it easier to identify the defect. | Detection of both surface and near-surface defects, including cracks, voids, and other discontinuities. Relatively simple and cost-effective testing method. It is performed quickly and easily in the field. | Internal defects or defects located deeper in the material are not detectable. The method can only detect defects that are located near the surface of the material. The particles used in MPI may not adhere well to certain types of materials or may obscure the defect in some cases. Cleanup procedures, complying with relevant decontamination, and safety protocols are necessary to mitigate potential health and environmental risks. |
Acoustic emission testing | AET involves the use of sensors that are attached to the surface of the material being tested. As the material undergoes stress or deformation, it will emit acoustic waves that are detected by the sensors. These waves can be analyzed to determine the location, size, and nature of any defects in the material. | Real-time monitoring is feasible. | Sensitive to ambient noise. Limited to surface monitoring. Skilled interpretation is necessary to differentiate between harmless noise and critical signals indicating potential damage. |
Acoustic thermography | This technique involves using a combination of acoustic and thermal imaging to detect defects in the SRM. The method uses high-frequency acoustic waves that induce thermal gradients within the material. Thermal changes are detected with an infrared camera and can be used to detect subsurface defects or anomalies. | Sensitive and expensive instrumentation. Highly skilled inspectors are required. Lack of clarity of too-deep defects. | |
Digital image correlation | DIC involves the use of high-resolution cameras to capture images of the surface of the material being tested. These images are then analyzed using software to track the movement of individual pixels on the surface of the material, providing information on the deformation and strain of the material. | Relatively simple and cost-effective method. It can be performed in real time during operation. It can provide high-resolution measurements of deformation and strain, and can detect defects that may not be visible to the naked eye. |
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Korompili, G.; Mußbach, G.; Riziotis, C. Structural Health Monitoring of Solid Rocket Motors: From Destructive Testing to Perspectives of Photonic-Based Sensing. Instruments 2024, 8, 16. https://doi.org/10.3390/instruments8010016
Korompili G, Mußbach G, Riziotis C. Structural Health Monitoring of Solid Rocket Motors: From Destructive Testing to Perspectives of Photonic-Based Sensing. Instruments. 2024; 8(1):16. https://doi.org/10.3390/instruments8010016
Chicago/Turabian StyleKorompili, Georgia, Günter Mußbach, and Christos Riziotis. 2024. "Structural Health Monitoring of Solid Rocket Motors: From Destructive Testing to Perspectives of Photonic-Based Sensing" Instruments 8, no. 1: 16. https://doi.org/10.3390/instruments8010016
APA StyleKorompili, G., Mußbach, G., & Riziotis, C. (2024). Structural Health Monitoring of Solid Rocket Motors: From Destructive Testing to Perspectives of Photonic-Based Sensing. Instruments, 8(1), 16. https://doi.org/10.3390/instruments8010016