Monitoring structural integrity in dynamic rotors using artificial intelligence with continuous learning

Authors

DOI:

https://doi.org/10.33448/rsd-v12i6.42017

Keywords:

Structural integrity monitoring; Dynamic rotors; Artificial immune systems; Negative selection algorithm; Clonal selection algorithm; Continuing learning.

Abstract

This paper aims to develop an artificial intelligence algorithm with continuous learning, inspired by the functioning of the biological immune system, to monitor structural integrity. This intelligent algorithm will be developed using techniques based on artificial immune systems (AIS), such as the negative selection algorithm (NSA) and the clonal selection algorithm (ASC). SIAs are promising techniques in the field of artificial intelligence, and their design is inspired by biological immune systems, with the aim of computationally reproducing their main characteristics, properties, functionalities and abilities. Artificial immune systems are powerful tools suitable for performing complex tasks, such as diagnoses, as a result of having the ability to identify behavioral changes as their main ability. Because it is a stable, reliable and adaptive architecture, it allows the inclusion of the continuous learning module, which allows the system to absorb new experiences and knowledge without the need to restart the memory cells (knowledge). In this way, this system will become more efficient as new information is processed and made available. In other words, it is an intelligent system that seeks improvement over time. This property is an advantage of SIAs, and it should be highlighted because, unlike what happens with other artificial intelligence techniques, such as, for example, artificial neural networks (ANN), SIAs allow the possibility of continuous learning.

References

Barros, A. C., Tonelli-Neto, M. S., Decanini, J. G. M. S & Minussi, C. R. (2014). Detecção e Classificação de Distúrbios de Tensão em Sistemas de Distribuição de Energia Elétrica Usando uma Rede Neural ARTMAP Euclidiana Modificada com Treinamento Continuado, Anais do SBAI - Simpósio Brasileiro de Automação Inteligente, 1-6.

Bradley, D.W. & Tyrrell, A.M. (2002). Immunotronics - Novel Finite-State-Machine Architectures with Built-In Self-Test Using Self-Nonself Differentiation. IEEE Trans. on Evolutionary Computation. 6 (3), 227-238.

Castro, L. N. & Von Zuben, F. J. The clonal selection algorithm with engineering applications. In: Proceedings of GECCO, Workshop on Artificial Immune Systems and Their Applications, Las Vegas, 36-39.

Castro, L. N. (2001). Immune engineering: development and application of computational tools inspired by artificial immune systems. PhD. Thesis. UNICAMP. Campinas, São Paulo, Brazil. (In Portuguese).

Castro, L. N. & Timmis, J. (2002). Artificial Immune Systems: A New Computational Intelligence Approach, Springer, 1st edition.

Dasgupta, D. (1998). Artificial Immune Systems and Their Applications, Springer, New York, USA.

Dasgupta, D. (2006). Advances in Artificial Immune Systems. IEEE Computational Intelligence Magazine, 40-49.

Deraemaeker, A. & Worden, K. (2010). New Trends in Vibration Based Structural Health Monitoring. New York, Springer Wien, 311p.

Farrar, C.R. & Worden, K. (2013). Structural Health Monitoring: A Machine Learning Perspective. Chichester, John Wiley, 643p.

Franco, V. R., Bueno, D. D., Brennan, M. J., Cavalini JR., A. A., Gonsalez, C. G. & Lopes Junior, V. (2009). Experimental damage location in smart structures using Lamb waves approaches. In: Brazilian Conference on Dynamics, Control and Their Applications, 1-4.

Forrest, S., Perelson, A., Allen, L. & Cherukuri, R. (1994). Self-Nonself Discrimination in a Computer, Proc. of IEEE Symposium on Research in Security and Privacy. 202-212.

Gonsalez, C. G. (2012). Metodologias para reconhecimento de padrões em sistemas de SHM utilizando a técnica da impedância eletromecânica (E/M). 2012. 117 f. Dissertação (Mestrado em Engenharia Mecânica) - Faculdade de Engenharia, Universidade Estadual Paulista - UNESP, Ilha Solteira.

Hall, S. R. (1999). The effective management and use of structural health data. In: International Workshop on Structural Health Monitoring, 2., 1999, New York. Proceedings… New York: VirginiaTech Publisher, 265-275.

Haykin, S. (2008). Neural networks and learning machines. (3a ed.), Prentice-Hall, 936p.

Jeffcott, H. H. (1919). The lateral vibration of loaded shafts in the neighborhood of a whirling speed — The effect of want of balance, The London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science. 37 (219), 304-314.

Kartalopoulos, S. V. (1996). Understanding Neural Networks and Fuzzy Logic: Basic Concepts and Applications, IEEE Press, Piscataway, NJ, USA.

Lima F. P. A. (2016). Diagnóstico de distúrbios de tensão em sistemas de distribuição baseado num sistema imunológico artificial com aprendizado continuado. 2016, 103 f. Tese (Doutorado Engenharia Elétrica) - Faculdade de Engenharia, Universidade Estadual Paulista - UNESP, Ilha Solteira.

Marchiori, S. C., Silveira, M. C. G., Lotufo, A. D. P., Minussi, C. R. & Lopes, M. L. M. (2011). Neural network based on adaptive resonance theory with continuous training for multi-configuration transient stability analysis of electric power systems, Applied Soft Computing, 11 (1), 706-715.

Pereira A. S. et al. (2018). Metodologia da pesquisa científica. FSM. https://www.ufsm.br/app/uploads/sites/358/2019/02/Metodologia-da-Pesquisa-Cientifica_final.pdf

Python 3.11 version, release data on oct. 2022.

Santos, A. A. A., Chavarette, F. R., & Souza, S. S. F. (2022). Artificial Immune Systems with Negative Selection Applied to Structural Integrity Monitoring in a Metallic Bridge. Research, Society and Development, 11 (1), 1-15.

Souza, S. S. F., Chavarette, F. R., & Lima, F. P. A. (2022a). Wavelet Artificial Immune System Algorithm Applied to the Faults Aeronautical Structural Monitoring. Brazilian Journal of Development, 8 (1), 27193-27210.

Souza, S. S. F., Chavarette, F. R., & Lima, F. P. A. (2022b). Artificial Immune Systems Applied to Clinical Diagnosis of Breast Cancer Samples. Research, Society and Development, 11 (1), p. 1-14.

Turra, A. E., Baptista, F. G., Lopes Junior, V. & Vieira, J. (2013). Detecção de dano em placas de alumínio utilizando impedância Eletromecânica. In: Simpósio Brasileiro de Automação Inteligente, 1-6.

Zadeh, L. A. (1995). Fuzzy sets, Information and Control, 8 (3), 338-353.

Zheng, S., Wang, X. & Liu, L. (2004). Damage detection in composite materials based upon the computational mechanics and neural networks. In: European Workshop on Structural Health Monitoring, 609–615.

Published

04/06/2023

How to Cite

FERREIRA, R. A. .; SOUZA, S. S. F. de .; LIMA, F. P. dos A. . Monitoring structural integrity in dynamic rotors using artificial intelligence with continuous learning. Research, Society and Development, [S. l.], v. 12, n. 6, p. e3712642017, 2023. DOI: 10.33448/rsd-v12i6.42017. Disponível em: https://rsdjournal.org/index.php/rsd/article/view/42017. Acesso em: 3 may. 2024.

Issue

Section

Engineerings