[
Armengol, J., Bregón, A., Escobet, T., Gelso, E., Krysander, M., Nyberg, M., Olive, X., Pulido, B. and Travè-Massuyès, L. (2009). Minimal structurally overdetermined sets for residual generation: A comparison of alternative approaches, IFAC Proceedings Volumes 42(8): 1480–1485.
]Search in Google Scholar
[
Bartyś, M. (2013). Generalised reasoning about faults based on diagnostic matrix, International Journal of Applied Mathematics and Computer Science 23(2): 407–417.
]Search in Google Scholar
[
Bartyś, M. (2014). Selected Issues of Fault Isolation, Polish Scientific Publishers, Warsaw.
]Search in Google Scholar
[
Bartyś, M. (2021). Fault compensation effect in fault detection and isolation, Acta IMEKO 10(3): 45–53.
]Search in Google Scholar
[
Biswas, G., Kapadia, R. and Yu, X. (1997). Combined qualitative-quantitative steady-state diagnosis of continuous-valued systems, IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans 27(2): 167–185.
]Search in Google Scholar
[
Blanke, M., Kinnaert, M., Lunze, J. and Staroswiecki, M. (2015). Diagnosis and Fault-Tolerant Control, Springer, New York.
]Search in Google Scholar
[
Bregón, A., Alonso-González, C.J. and Pulido, B. (2014). Integration of simulation and state observers for online fault detection of nonlinear continuous systems, IEEE Transactions on Systems, Man, and Cybernetics: Systems 44(12): 1553–1568.
]Search in Google Scholar
[
Bregón, A., Biswas, G., Pulido, B., Alonso-Gonzalez, C. and Khorasgani, H. (2013). A common framework for compilation techniques applied to diagnosis of linear dynamic systems, IEEE Transactions on Systems, Man, and Cybernetics: Systems 44(7): 863–876.
]Search in Google Scholar
[
Chen, J. and Patton, R. (1999). Robust model Based Fault Diagnosis for Dynamic Systems, Kluwer Akademic Publishers, Boston.
]Search in Google Scholar
[
Cordier, M., Dague, P., Lévy, F., Montmain, J., Staroswiecki, M. and Travé-Massuyés, L. (2004). Conflicts versus analytical redundancy relations: A comparative analysis of the model based diagnosis approach from the artificial intelligence and automatic control perspectives, IEEE Transactions on Systems, Man, and Cybernetics B: Cybernetics 34(5): 2163–2177.
]Search in Google Scholar
[
Daigle, M., Koutsoukos, X. and Biswas, G. (2009). A qualitative event-based approach to continuous systems diagnosis, IEEE Transactions on Control Systems Technology 17(4): 780–793.
]Search in Google Scholar
[
de Kleer, J. and Kurien, J. (2003). Fundamentals of model-based diagnosis, IFAC Proceedings Volumes 36(5): 25–36.
]Search in Google Scholar
[
de Kleer, J., Mackworth, A.K. and Reiter, R. (1992). Characterizing diagnoses and systems, Artificial Intelligence 56(2): 197–222.
]Search in Google Scholar
[
de Kleer, J. andWilliams, B. (1987). Diagnosing multiple faults, Artificial Intelligence 32(1): 97–130.
]Search in Google Scholar
[
Düstegör, D., Frisk, E., Cocquempot, V., Krysander, M. and Staroswiecki, M. (2006). Structural analysis of fault isolability in the damadics benchmark, Control Engineering Practice 14(6): 597–608.
]Search in Google Scholar
[
Eskandari, A., Nedaei, A., Milimonfared, J. and Aghaei, M. (2024). A multilayer integrative approach for diagnosis, classification and severity detection of electrical faults in photovoltaic arrays, Expert Systems with Applications 252(Part A): 124111.
]Search in Google Scholar
[
Frank, P. M. (1990). Fault diagnosis in dynamic systems using analytical and knowledge-based redundancy, Automatica 26(3): 459–474.
]Search in Google Scholar
[
Gertler, J. (1991). Analitical redunduncy methods in fault detection and isolation, IFAC Symposium on Fault Detection, Supervision and Safety for Technical Processes SAFEPROCESS’91, Baden-Baden, pp. 9–21.
]Search in Google Scholar
[
Gertler, J. (1998). Fault Detection and Diagnosis in Engineering Systems, Marcel Dekker, New York.
]Search in Google Scholar
[
Jia, F., Cao, F., Lyu, G. and He, X. (2023). A novel framework of cooperative design: Bringing active fault diagnosis into fault-tolerant control, IEEE Transactions on Cybernetics 53(5): 3301–3310.
]Search in Google Scholar
[
Korbicz, J., Kóscielny, J.M., Kowalczuk, Z. and Cholewa, W. (Eds) (2004). Fault Diagnosis. Models, Artificial Intelligence, Applications, Springer, Berlin.
]Search in Google Scholar
[
Kóscielny, J.M. (1995). Fault isolation in industrial processes by dynamic table of states method, Automatica 31(5): 747–753.
]Search in Google Scholar
[
Kóscielny, J.M. (1999). Application of fuzzy logic fault isolation in a three-tank system, IFAC Proceedings Volumens 32(2): 7754–7759.
]Search in Google Scholar
[
Kóscielny, J.M. and Bartyś, M. (2023). A new method of diagnostic row reasoning based on trivalent residuals, Expert Systems with Applications 214: 119116.
]Search in Google Scholar
[
Kóscielny, J.M., Bartyś, M. and Grudziak, Z. (2021). Tri–valued evaluation of residuals as a method of addressing the problem of fault compensation effect, in J. Korbicz, K. Patan and M. Luzar (Eds), Advances in Diagnostics of Processes and Systems, Springer, Cham, pp. 31–44.
]Search in Google Scholar
[
Kóscielny, J.M., Bartyś, M. and Rostek, K. (2019). The comparison of fault distinguishability approaches – Case study, Bulletin of the Polish Academy of Sciences Technical Sciences 67(6): 1059–1068.
]Search in Google Scholar
[
Kóscielny, J. M., Bartyś, M., Rzepiejewski, P. and da Costa, J. S. (2006). Actuator fault distinguishability study of the damadics benchmark problem, Control Engineering Practice 14(6): 645–652.
]Search in Google Scholar
[
Kóscielny, J.M., Bartyś, M. and Syfert, M. (2012). Methods of multiple fault isolation in large scale systems, IEEE Transactions On Control Systems Technology 20(5): 1302–1310.
]Search in Google Scholar
[
Kóscielny, J.M., Syfert, M., Rostek, K. and Sztyber, A. (2016). Fault isolability with different forms of faults-symptoms relation, International Journal of AppliedMathematics and Computer Science 26(4): 815–826.
]Search in Google Scholar
[
Kóscielny, J.M., Syfert, M. and Wnuk, P. (2021). Diagnostic row reasoning method based on multiple-valued evaluation of residuals and elementary symptoms sequence, Energies 14(2476).
]Search in Google Scholar
[
Krysander, M., Aslund, J. and Nyberg, M. (2007). An efficient algorithm for finding minimal overconstrained subsystems for model-based diagnosis, IEEE Transactions on Systems, Man, and Cybernetics–Part A: Systems and Humans 38(1): 197–206.
]Search in Google Scholar
[
Kunpeng, Z., Bin, J., Fuyang, C. and Hui, Y. (2023). Directed-graph-learning-based diagnosis of multiple faults for high speed train with switched dynamics, IEEE Transactions on Cybernetics 53(3): 1712–1724.
]Search in Google Scholar
[
Liu, J., Wang, X., Wu, S., Wan, L. and Xie, F. (2023). Wind turbine fault detection based on deep residual networks, Expert Systems with Applications 213: 119102.
]Search in Google Scholar
[
Pawlak, Z. (1991). Rough Sets. Theoretical Aspects of Reasoning About Data, Kluwer Academic Publishers, Boston.
]Search in Google Scholar
[
Puig, V., Schmid, F., Quevedo, J. and Pulido, B. (2005). A new fault diagnosis algorithm that improves the integration of fault detection and isolation, 44th IEEE Conference on Decision and Control, Seville, Spain, pp. 3809–3814.
]Search in Google Scholar
[
Pulido, B. and González, C. (2004). Possible conflicts: a compilation technique for consistency-based diagnosis, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics) 34(5): 2192–2206.
]Search in Google Scholar
[
Reiter, R.A. (1987). Theory of diagnosis from first principles, Artificial Intelligence 32(1): 57–95.
]Search in Google Scholar
[
Song, Q. and Jiang, P. (2022). A multi-scale convolutional neural network based fault diagnosis model for complex chemical processes, Process Safety and Environmental Protection 159: 575–584.
]Search in Google Scholar
[
Struss, P. and Dressier, O. (1992). “Physical negation”: Integrating fault models into the general diagnostic system, Proceedings of the 11th International Joint Conference on Artificial Intelligence, Vol.2, pp. 1318–1323.
]Search in Google Scholar
[
Su, J. and Chen, W. (2019). Model-Based Fault Diagnosis System Verification Using Reachability Analysis, IEEE Transactions on Systems, Man, and Cybernetics: Systems 49(4): 742–751.
]Search in Google Scholar
[
Tatara, M.S. and Kowalczuk, Z. (2024). Approximate and analytic flow models for leak detection and identification, International Journal of Applied Mathematics and Computer Science 34(3): 391–407.
]Search in Google Scholar
[
Travè-Massuyès, L. (2014). Bridges between diagnosis theories from control and AI perspectives, in J. Korbicz and M. Kowal (Eds), Intelligent Systems in Technical and Medical Diagnostics, Berlin/Heidelberg, pp. 3–28.
]Search in Google Scholar
[
Xia, D. and Fu, X. (2024). Observer-based sliding-mode fault-tolerant consistent control for hybrid event-triggered multi-agent systems, International Journal of Applied Mathematics and Computer Science 34(3): 361–373.
]Search in Google Scholar
[
Zheng, S. and Zhao, J. (2022). High-fidelity positive-unlabeled deep learning for semi-supervised fault detection of chemical processes, Process Safety and Environmental Protection 165: 191–204.
]Search in Google Scholar