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2024 | OriginalPaper | Buchkapitel

Uncertainty Quantification in Parameter Estimation Using Physics-Integrated Machine Learning

verfasst von : Zihan Liu, Amirhassan Abbasi, Prashant N. Kambali, C. Nataraj

Erschienen in: Advances in Nonlinear Dynamics, Volume III

Verlag: Springer Nature Switzerland

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Abstract

This paper proposes a hybrid physics-machine learning method for probabilistic parameter estimation of a nonlinear dynamic system. The ability of this method to quantify the uncertainty of estimations is utilized at different levels of the hybrid method. In this method, a set of physics-based features are introduced to amplify the information content of initial observations. With this objective, the perturbation method is applied to obtain the asymptotic solution and frequency response of the nonlinear system in physics-based modeling. Extracted mathematical relationships provide for the identification of root causes of changes in frequency response. Subsequently, topological changes are quantified to be used as the inputs of the machine learning model. A Gaussian process regression (GPR) model is developed as a probabilistic estimator which uses the above physics-based features. The method is demonstrated using the case study of a linearly coupled Duffing oscillator system. The effectiveness and robustness of the hybrid method are demonstrated by estimating the coupling coefficient under strong nonlinear and uncertain parameter situations.

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Literatur
1.
Zurück zum Zitat Chintha, H.P., Chatterjee, A.: Identification of nonpolynomial forms of damping nonlinearity in dynamic systems using harmonic probing and higher order frfs. In: Advances in Nonlinear Dynamics, pp. 357–368. Springer (2022) Chintha, H.P., Chatterjee, A.: Identification of nonpolynomial forms of damping nonlinearity in dynamic systems using harmonic probing and higher order frfs. In: Advances in Nonlinear Dynamics, pp. 357–368. Springer (2022)
2.
Zurück zum Zitat Li, Y., O’Neill, Z., Zhang, L., Chen, J., Im, P., DeGraw, J.: Grey-box modeling and application for building energy simulations-a critical review. Renew. Sustain. Energy Rev. 146, 111174 (2021)CrossRef Li, Y., O’Neill, Z., Zhang, L., Chen, J., Im, P., DeGraw, J.: Grey-box modeling and application for building energy simulations-a critical review. Renew. Sustain. Energy Rev. 146, 111174 (2021)CrossRef
3.
Zurück zum Zitat Kristensen, N.R., Madsen, H., Jørgensen, S.B.: Parameter estimation in stochastic grey-box models. Automatica 40(2), 225–237 (2004)MathSciNetCrossRef Kristensen, N.R., Madsen, H., Jørgensen, S.B.: Parameter estimation in stochastic grey-box models. Automatica 40(2), 225–237 (2004)MathSciNetCrossRef
4.
Zurück zum Zitat Pillonetto, G., Dinuzzo, F., Chen, T., De Nicolao, G., Ljung, L.: Kernel methods in system identification, machine learning and function estimation: A survey. Automatica 50(3), 657–682 (2014)MathSciNetCrossRef Pillonetto, G., Dinuzzo, F., Chen, T., De Nicolao, G., Ljung, L.: Kernel methods in system identification, machine learning and function estimation: A survey. Automatica 50(3), 657–682 (2014)MathSciNetCrossRef
5.
Zurück zum Zitat Nataraj, C., Kappaganthu, K.: Vibration-based diagnostics of rolling element bearings: state of the art and challenges. In: 13th World Congress in Mechanism and Machine Science, Guanajuato, Mexico, June 19–25 (2011) Nataraj, C., Kappaganthu, K.: Vibration-based diagnostics of rolling element bearings: state of the art and challenges. In: 13th World Congress in Mechanism and Machine Science, Guanajuato, Mexico, June 19–25 (2011)
6.
Zurück zum Zitat Liu, Z., Mohamad, T.H., Ilbeigi, S., Nataraj, C.: Early detection of cracks in a gear-train system using proper and smooth orthogonal decompositions. In: Advances in Nonlinear Dynamics, pp. 451–461. Springer (2022) Liu, Z., Mohamad, T.H., Ilbeigi, S., Nataraj, C.: Early detection of cracks in a gear-train system using proper and smooth orthogonal decompositions. In: Advances in Nonlinear Dynamics, pp. 451–461. Springer (2022)
7.
Zurück zum Zitat Laurain, V., Tóth, R., Piga, D., Zheng, W.X.: An instrumental least squares support vector machine for nonlinear system identification. Automatica 54, 340–347 (2015)MathSciNetCrossRef Laurain, V., Tóth, R., Piga, D., Zheng, W.X.: An instrumental least squares support vector machine for nonlinear system identification. Automatica 54, 340–347 (2015)MathSciNetCrossRef
8.
Zurück zum Zitat Mohamad, T.H., Abbasi, A., Kim, E., Nataraj, C.: Application of deep cnn-lstm network to gear fault diagnostics. In: 2021 IEEE International Conference on Prognostics and Health Management (ICPHM), pp. 1–6. IEEE (2021) Mohamad, T.H., Abbasi, A., Kim, E., Nataraj, C.: Application of deep cnn-lstm network to gear fault diagnostics. In: 2021 IEEE International Conference on Prognostics and Health Management (ICPHM), pp. 1–6. IEEE (2021)
9.
Zurück zum Zitat Raissi, M., Karniadakis, G.E.: Hidden physics models: Machine learning of nonlinear partial differential equations. J. Comput. Phys. 357, 125–141 (2018)MathSciNetCrossRef Raissi, M., Karniadakis, G.E.: Hidden physics models: Machine learning of nonlinear partial differential equations. J. Comput. Phys. 357, 125–141 (2018)MathSciNetCrossRef
10.
Zurück zum Zitat Samadani, M., Kwuimy, C.A., Nataraj, C.: Characterization of the nonlinear response of defective multi-dof oscillators using the method of phase space topology (pst). Nonlinear Dyn. 86(3), 2023–2034 (2016)CrossRef Samadani, M., Kwuimy, C.A., Nataraj, C.: Characterization of the nonlinear response of defective multi-dof oscillators using the method of phase space topology (pst). Nonlinear Dyn. 86(3), 2023–2034 (2016)CrossRef
11.
Zurück zum Zitat Samadani, M., Kuimy, C.A.K., Nataraj, C.: Characterization of phase space topology using density: application to fault diagnosticsc. In: Annual Conference of the Prognostics and Health Management Society (2015) Samadani, M., Kuimy, C.A.K., Nataraj, C.: Characterization of phase space topology using density: application to fault diagnosticsc. In: Annual Conference of the Prognostics and Health Management Society (2015)
12.
Zurück zum Zitat Mohamad, T.H., Nazari, F., Nataraj, C.: A review of phase space topology methods for vibration-based fault diagnostics in nonlinear systems. J. Vib. Eng. Technol. 8(3), 393–401 (2020)CrossRef Mohamad, T.H., Nazari, F., Nataraj, C.: A review of phase space topology methods for vibration-based fault diagnostics in nonlinear systems. J. Vib. Eng. Technol. 8(3), 393–401 (2020)CrossRef
13.
Zurück zum Zitat Levi, D., Gispan, L., Giladi, N., Fetaya, E.: Evaluating and calibrating uncertainty prediction in regression tasks. Sensors 22(15), 5540 (2022)CrossRef Levi, D., Gispan, L., Giladi, N., Fetaya, E.: Evaluating and calibrating uncertainty prediction in regression tasks. Sensors 22(15), 5540 (2022)CrossRef
14.
Zurück zum Zitat Tran, J.S., Schiavazzi, D.E., Ramachandra, A.B., Kahn, A.M., Marsden, A.L.: Automated tuning for parameter identification and uncertainty quantification in multi-scale coronary simulations. Comput. Fluids 142, 128–138 (2017)MathSciNetCrossRef Tran, J.S., Schiavazzi, D.E., Ramachandra, A.B., Kahn, A.M., Marsden, A.L.: Automated tuning for parameter identification and uncertainty quantification in multi-scale coronary simulations. Comput. Fluids 142, 128–138 (2017)MathSciNetCrossRef
15.
Zurück zum Zitat Abbasi, A., Nataraj, C.: Physics-informed machine learning for uncertainty reduction in time response reconstruction of a dynamic system. IEEE Internet Comput. 26(4), 35–44 (2022)CrossRef Abbasi, A., Nataraj, C.: Physics-informed machine learning for uncertainty reduction in time response reconstruction of a dynamic system. IEEE Internet Comput. 26(4), 35–44 (2022)CrossRef
16.
Zurück zum Zitat Ghani, M., Banazadeh, A.: Accurate model identification of quadcopters with moments of inertia uncertainty and time delay. In: Advances in Nonlinear Dynamics, pp. 391–403. Springer (2022) Ghani, M., Banazadeh, A.: Accurate model identification of quadcopters with moments of inertia uncertainty and time delay. In: Advances in Nonlinear Dynamics, pp. 391–403. Springer (2022)
17.
Zurück zum Zitat Kitio Kwuimy, C.A., Nataraj, C.: Prediction of horseshoes chaos in active magnetic bearings with time-varying stiffness. In: Proceedings of ASME 2011 International Design Engineering Technical Conferences & Computers and Information in Engineering Conference IDETC/CIE 2011, vol. DETC2011-48317, Washington, DC, USA, August 29–31, 2011. ASME Kitio Kwuimy, C.A., Nataraj, C.: Prediction of horseshoes chaos in active magnetic bearings with time-varying stiffness. In: Proceedings of ASME 2011 International Design Engineering Technical Conferences & Computers and Information in Engineering Conference IDETC/CIE 2011, vol. DETC2011-48317, Washington, DC, USA, August 29–31, 2011. ASME
18.
Zurück zum Zitat Jothimurugan, R., Thamilmaran, K., Rajasekar, S., Sanjuán, M.A.F.: Multiple resonance and anti-resonance in coupled duffing oscillators. Nonlinear Dyn. 83(4), 1803–1814 (2016)MathSciNetCrossRef Jothimurugan, R., Thamilmaran, K., Rajasekar, S., Sanjuán, M.A.F.: Multiple resonance and anti-resonance in coupled duffing oscillators. Nonlinear Dyn. 83(4), 1803–1814 (2016)MathSciNetCrossRef
19.
Zurück zum Zitat Kambali, P.N., Pandey, A.K.: Nonlinear coupling of transverse modes of a fixed–fixed microbeam under direct and parametric excitation. Nonlinear Dyn. 87(2), 1271–1294 (2017)CrossRef Kambali, P.N., Pandey, A.K.: Nonlinear coupling of transverse modes of a fixed–fixed microbeam under direct and parametric excitation. Nonlinear Dyn. 87(2), 1271–1294 (2017)CrossRef
20.
Zurück zum Zitat Liu, H., Ong, Y.-S., Shen, X., Cai, J.: When gaussian process meets big data: A review of scalable gps. IEEE Trans. Neural Networks Learn. Syst. 31(11), 4405–4423 (2020)MathSciNetCrossRef Liu, H., Ong, Y.-S., Shen, X., Cai, J.: When gaussian process meets big data: A review of scalable gps. IEEE Trans. Neural Networks Learn. Syst. 31(11), 4405–4423 (2020)MathSciNetCrossRef
21.
Zurück zum Zitat Seeger, M.: Gaussian processes for machine learning. Int. J. Neural Syst. 14(02), 69–106 (2004)CrossRef Seeger, M.: Gaussian processes for machine learning. Int. J. Neural Syst. 14(02), 69–106 (2004)CrossRef
Metadaten
Titel
Uncertainty Quantification in Parameter Estimation Using Physics-Integrated Machine Learning
verfasst von
Zihan Liu
Amirhassan Abbasi
Prashant N. Kambali
C. Nataraj
Copyright-Jahr
2024
DOI
https://doi.org/10.1007/978-3-031-50635-2_46

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