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Erschienen in: Wireless Personal Communications 3/2023

27.09.2022

Prediction of Failed Sensor Data Using Deep Learning Techniques for Space Applications

verfasst von: Renjith Das, A. Ferdinand Christopher

Erschienen in: Wireless Personal Communications | Ausgabe 3/2023

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Abstract

Recently, space applications have become complicated for post-flight analysis when a sensor fails. Various scholars have researched many types of research based on fault data prediction in aircraft applications, utilizing numerous deep learning techniques. Using these deep learning techniques, the sensor data is re-created with the help of other related sensor data and will help other post-flight analyses. Once the launch vehicle is lifted off, there is no possibility of solving a problem in sensors. Sometimes that particular sensor is very crucial for the onboard decisions. There have to adapt real-time sensor prediction techniques. So, this paper focused on designing an effective prediction technique for fault sensor data with the aid of its corresponding sensor data. The fault sensor data prediction process is performed in two stages such as real-time and offline. Here we apply three deep learning algorithms to predict the fault sensor data, and the three algorithms, LSTM, GRU and CNN, are applied for real-time and offline data prediction. Furthermore, the experimental setup helps for predicting accurate real-time fault sensor data. The results obtained through experimental and simulation analysis are closely matched for a failed sensor, which is very helpful for analyzing and validating the launch vehicle performance.

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Literatur
1.
Zurück zum Zitat Zhao, Y.-P., Wang, J.-J., Li, X.-Y., Peng, G. J., & Yang, Z. (2020). Extended least squares support vector machine with applications to fault diagnosis of aircraft engine. ISA Transactions, 97, 189–201.CrossRef Zhao, Y.-P., Wang, J.-J., Li, X.-Y., Peng, G. J., & Yang, Z. (2020). Extended least squares support vector machine with applications to fault diagnosis of aircraft engine. ISA Transactions, 97, 189–201.CrossRef
2.
Zurück zum Zitat Altay, A., Ozkan, O., & Kayakutlu, G. (2014). Prediction of aircraft failure times using artificial neural networks and genetic algorithms. Journal of Aircraft, 51(1), 47–53.CrossRef Altay, A., Ozkan, O., & Kayakutlu, G. (2014). Prediction of aircraft failure times using artificial neural networks and genetic algorithms. Journal of Aircraft, 51(1), 47–53.CrossRef
3.
Zurück zum Zitat Simon, Donald, L. and Rinehart, A.W. (2016) Sensor selection for aircraft engine performance estimation and gas path fault diagnostics. Journal of Engineering for Gas Turbines and Power, 138(7). Simon, Donald, L. and Rinehart, A.W. (2016) Sensor selection for aircraft engine performance estimation and gas path fault diagnostics. Journal of Engineering for Gas Turbines and Power, 138(7).
4.
Zurück zum Zitat Papakostas, N., Papachatzakis, P., Xanthakis, V., Mourtzis, D., & Chryssolouris, G. (2010). An approach to operational aircraft maintenance planning. Decision Support Systems, 48(4), 604–612.CrossRef Papakostas, N., Papachatzakis, P., Xanthakis, V., Mourtzis, D., & Chryssolouris, G. (2010). An approach to operational aircraft maintenance planning. Decision Support Systems, 48(4), 604–612.CrossRef
5.
Zurück zum Zitat Carbonneau, R., Kersten, G. E., & Vahidov, R. (2008). Predicting opponent’s moves in electronic negotiations using neural networks. Expert Systems with Applications, 34(2), 1266–1273.CrossRef Carbonneau, R., Kersten, G. E., & Vahidov, R. (2008). Predicting opponent’s moves in electronic negotiations using neural networks. Expert Systems with Applications, 34(2), 1266–1273.CrossRef
6.
Zurück zum Zitat Wekerle, T., Pessoa, J. B., Costa, L. E. V. L. D., & Trabasso, L. G. (2017). Status and trends of smallsats and their launch vehicles—An up-to-date review. Journal of Aerospace Technology and Management, 9, 269–286.CrossRef Wekerle, T., Pessoa, J. B., Costa, L. E. V. L. D., & Trabasso, L. G. (2017). Status and trends of smallsats and their launch vehicles—An up-to-date review. Journal of Aerospace Technology and Management, 9, 269–286.CrossRef
7.
Zurück zum Zitat Schmidt, D. K. (1997). Optimum mission performance and multivariable flight guidance for airbreathing launch vehicles. Journal of Guidance, Control, and Dynamics, 20(6), 1157–1164.CrossRefMATH Schmidt, D. K. (1997). Optimum mission performance and multivariable flight guidance for airbreathing launch vehicles. Journal of Guidance, Control, and Dynamics, 20(6), 1157–1164.CrossRefMATH
8.
Zurück zum Zitat Tian, B., Zong, Q., Wang, J., & Wang, F. (2013). Quasi-continuous high-order sliding mode controller design for reusable launch vehicles in reentry phase. Aerospace Science and Technology, 28(1), 198–207.CrossRef Tian, B., Zong, Q., Wang, J., & Wang, F. (2013). Quasi-continuous high-order sliding mode controller design for reusable launch vehicles in reentry phase. Aerospace Science and Technology, 28(1), 198–207.CrossRef
9.
Zurück zum Zitat Rising, J. M., & Leveson, N. G. (2018). Systems-theoretic process analysis of space launch vehicles. Journal of Space Safety Engineering, 5(3–4), 153–183.CrossRef Rising, J. M., & Leveson, N. G. (2018). Systems-theoretic process analysis of space launch vehicles. Journal of Space Safety Engineering, 5(3–4), 153–183.CrossRef
10.
Zurück zum Zitat Watson and Michael, D,. (2018). System exergy: System integrating physics of launch vehicles and spacecraft. Journal of Spacecraft and Rockets, 55(2), 451–461.CrossRef Watson and Michael, D,. (2018). System exergy: System integrating physics of launch vehicles and spacecraft. Journal of Spacecraft and Rockets, 55(2), 451–461.CrossRef
11.
Zurück zum Zitat Dresia, K., Jentzsch, S., Waxenegger-Wilfing, G., Santos Hahn, R. D., Deeken, J., Oschwald, M., & Mota, F. (2021). Multidisciplinary design optimization of reusable launch vehicles for different propellants and objectives. Journal of Spacecraft and Rockets., 58(4), 1017–1029.CrossRef Dresia, K., Jentzsch, S., Waxenegger-Wilfing, G., Santos Hahn, R. D., Deeken, J., Oschwald, M., & Mota, F. (2021). Multidisciplinary design optimization of reusable launch vehicles for different propellants and objectives. Journal of Spacecraft and Rockets., 58(4), 1017–1029.CrossRef
12.
Zurück zum Zitat Alley, J. R., Vernon, L., & Leadbetter, S. A. (1963). Prediction and measurement of natural vibrations of multistage launch vehicles. AIAA Journal, 1(2), 374–379.CrossRef Alley, J. R., Vernon, L., & Leadbetter, S. A. (1963). Prediction and measurement of natural vibrations of multistage launch vehicles. AIAA Journal, 1(2), 374–379.CrossRef
13.
Zurück zum Zitat Jamilnia, R., & Naghash, A. (2012). Simultaneous optimization of staging and trajectory of launch vehicles using two different approaches. Aerospace Science and Technology, 23(1), 85–92.CrossRef Jamilnia, R., & Naghash, A. (2012). Simultaneous optimization of staging and trajectory of launch vehicles using two different approaches. Aerospace Science and Technology, 23(1), 85–92.CrossRef
14.
Zurück zum Zitat Bhat, M. S., & Shrivastava, S. K. (1987). An optimal Q-guidance scheme for satellite launch vehicles. Journal of Guidance, Control, and Dynamics, 10(1), 53–60.CrossRefMATH Bhat, M. S., & Shrivastava, S. K. (1987). An optimal Q-guidance scheme for satellite launch vehicles. Journal of Guidance, Control, and Dynamics, 10(1), 53–60.CrossRefMATH
15.
Zurück zum Zitat Kim, J.-S., Jung, H., Kam, H.-D., Seo, H.-S., & Su, H. (2010). A development of the thrusters for space-vehicle maneuver/ACS and their application to launch vehicles. Journal of the Korean Society of Propulsion Engineers, 14(6), 103–120. Kim, J.-S., Jung, H., Kam, H.-D., Seo, H.-S., & Su, H. (2010). A development of the thrusters for space-vehicle maneuver/ACS and their application to launch vehicles. Journal of the Korean Society of Propulsion Engineers, 14(6), 103–120.
16.
Zurück zum Zitat Zheng, G., Li, X., Zhang, R. H., & Liu, B. (2020). Purely satellite data-driven deep learning forecast of complicated tropical instability waves. Science Advances, 6(29), eaba1482.CrossRef Zheng, G., Li, X., Zhang, R. H., & Liu, B. (2020). Purely satellite data-driven deep learning forecast of complicated tropical instability waves. Science Advances, 6(29), eaba1482.CrossRef
17.
Zurück zum Zitat Meyer, H., Reudenbach, C., Wöllauer, S., & Nauss, T. (2019). Importance of spatial predictor variable selection in machine learning applications—Moving from data reproduction to spatial prediction. Ecological Modelling, 411, 108815.CrossRef Meyer, H., Reudenbach, C., Wöllauer, S., & Nauss, T. (2019). Importance of spatial predictor variable selection in machine learning applications—Moving from data reproduction to spatial prediction. Ecological Modelling, 411, 108815.CrossRef
18.
Zurück zum Zitat Cai, Y., Guan, K., Lobell, D., Potgieter, A. B., Wang, S., Peng, J., & Peng, B. (2019). Integrating satellite and climate data to predict wheat yield in Australia using machine learning approaches. Agricultural and Forest Meteorology, 274, 144–159.CrossRef Cai, Y., Guan, K., Lobell, D., Potgieter, A. B., Wang, S., Peng, J., & Peng, B. (2019). Integrating satellite and climate data to predict wheat yield in Australia using machine learning approaches. Agricultural and Forest Meteorology, 274, 144–159.CrossRef
19.
Zurück zum Zitat Flora, J., & Auxillia, D. J. (2020). Sensor failure management in liquid rocket engine using artificial neural network. Flora, J., & Auxillia, D. J. (2020). Sensor failure management in liquid rocket engine using artificial neural network.
20.
Zurück zum Zitat Edwards, J., Randy, L., Beekman, M., Buchanan, D. B., Farner, S., Gershzohn, G. R., Khuzadi, M., Mikula, D. F., Nissen, G., Peck, J., & Taylor, S. (2007). Sensors and systems for space applications: A methodology for developing fault detection, diagnosis, and recovery. Sensors and Systems for Space Applications, International Society for Optics and Photonics, 6555, 65550R.CrossRef Edwards, J., Randy, L., Beekman, M., Buchanan, D. B., Farner, S., Gershzohn, G. R., Khuzadi, M., Mikula, D. F., Nissen, G., Peck, J., & Taylor, S. (2007). Sensors and systems for space applications: A methodology for developing fault detection, diagnosis, and recovery. Sensors and Systems for Space Applications, International Society for Optics and Photonics, 6555, 65550R.CrossRef
21.
Zurück zum Zitat Shangguan, D., Chen, L., & Ding, J. (2020). A digital twin-based approach for the fault diagnosis and health monitoring of a complex satellite system. Symmetry, 12(8), 1307.CrossRef Shangguan, D., Chen, L., & Ding, J. (2020). A digital twin-based approach for the fault diagnosis and health monitoring of a complex satellite system. Symmetry, 12(8), 1307.CrossRef
22.
Zurück zum Zitat Iverson, D. L., Martin, R., Schwabacher, M., Spirkovska, L., Taylor, W., Mackey, R., Castle, J. P., & Baskaran, V. (2012). General purpose data-driven monitoring for space operations. Journal of Aerospace Computing, Information, and Communication., 9(2), 26–44.CrossRef Iverson, D. L., Martin, R., Schwabacher, M., Spirkovska, L., Taylor, W., Mackey, R., Castle, J. P., & Baskaran, V. (2012). General purpose data-driven monitoring for space operations. Journal of Aerospace Computing, Information, and Communication., 9(2), 26–44.CrossRef
23.
Zurück zum Zitat Huang, H.-C., Cressie, N., & Gabrosek, J. (2002). Fast, resolution-consistent spatial prediction of global processes from satellite data. Journal of Computational and Graphical Statistics, 11(1), 63–88.CrossRef Huang, H.-C., Cressie, N., & Gabrosek, J. (2002). Fast, resolution-consistent spatial prediction of global processes from satellite data. Journal of Computational and Graphical Statistics, 11(1), 63–88.CrossRef
24.
Zurück zum Zitat Wang, F., Xuan, Z., Zhen, Z., Li, K., Wang, T., & Shi, M. (2020). A day-ahead PV power forecasting method based on LSTM-RNN model and time correlation modification under partial daily pattern prediction framework. Energy Conversion and Management, 212, 112766.CrossRef Wang, F., Xuan, Z., Zhen, Z., Li, K., Wang, T., & Shi, M. (2020). A day-ahead PV power forecasting method based on LSTM-RNN model and time correlation modification under partial daily pattern prediction framework. Energy Conversion and Management, 212, 112766.CrossRef
25.
Zurück zum Zitat Xia, M., Shao, H., Ma, X., & de Silva, C. W. (2021). A stacked GRU-RNN-based approach for predicting renewable energy and electricity load for smart grid operation. IEEE Transactions on Industrial Informatics., 17(10), 7050–7059.CrossRef Xia, M., Shao, H., Ma, X., & de Silva, C. W. (2021). A stacked GRU-RNN-based approach for predicting renewable energy and electricity load for smart grid operation. IEEE Transactions on Industrial Informatics., 17(10), 7050–7059.CrossRef
26.
Zurück zum Zitat Phan, H., Andreotti, F., Cooray, N., Chén, O. Y., & Vos, M. D. (2018). Joint classification and prediction CNN framework for automatic sleep stage classification. IEEE Transactions on Biomedical Engineering., 66(5), 1285–1296.CrossRef Phan, H., Andreotti, F., Cooray, N., Chén, O. Y., & Vos, M. D. (2018). Joint classification and prediction CNN framework for automatic sleep stage classification. IEEE Transactions on Biomedical Engineering., 66(5), 1285–1296.CrossRef
27.
Zurück zum Zitat Perotti, J. M., & Eckhoff, A. J. (2002). Latest development in advanced sensors at Kennedy Space Center (KSC). Sensors, 2, 1728–1733. Perotti, J. M., & Eckhoff, A. J. (2002). Latest development in advanced sensors at Kennedy Space Center (KSC). Sensors, 2, 1728–1733.
28.
Zurück zum Zitat Biju Prasad, B., Biju, N., Radhakrishna Panicker, M. R., Kumar, K., & Murugesan, V. (2020). Failure mode investigation and redundancy management of an electromechanical control actuator for launch vehicle application. Journal of Failure Analysis and Prevention., 20(5), 1644–1660.CrossRef Biju Prasad, B., Biju, N., Radhakrishna Panicker, M. R., Kumar, K., & Murugesan, V. (2020). Failure mode investigation and redundancy management of an electromechanical control actuator for launch vehicle application. Journal of Failure Analysis and Prevention., 20(5), 1644–1660.CrossRef
Metadaten
Titel
Prediction of Failed Sensor Data Using Deep Learning Techniques for Space Applications
verfasst von
Renjith Das
A. Ferdinand Christopher
Publikationsdatum
27.09.2022
Verlag
Springer US
Erschienen in
Wireless Personal Communications / Ausgabe 3/2023
Print ISSN: 0929-6212
Elektronische ISSN: 1572-834X
DOI
https://doi.org/10.1007/s11277-022-10027-2

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