Identifying governing equations from data and solving them to acquire spatio-temporal responses is desirable, yet highly challenging, for many practical problems. Data-driven modelling has shown significant potential to influence knowledge discovery in complex geotechnical processes. To demonstrate feasibility, in this study a physics-informed data-driven approach is developed to automatically recover Terzaghi's consolidation theory from measured data and obtain the corresponding solutions. This process incorporates several algorithms including sparse regression and prior information-based neural network (PiNet), transformed weak-form partial differential equations (PDEs) (to reduce sensitivity to noisy measurement) and Monte Carlo dropout to achieve a measure of prediction uncertainty. The results indicate that consolidation PDEs can be accurately extracted using the proposed approach, which is also shown to be robust to noisy measurements. PDEs solved by PiNet are also shown to provide excellent agreement with actual results, thus highlighting its potential for inverse analysis. The proposed approach is generic and provides an auxiliary method to verify heuristic interpretations of data or to directly identify patterns and obtain solutions without the need for expert intervention.
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June 2024
Research Article|
January 17 2023
A physics-informed data-driven approach for consolidation analysis Available to Purchase
Pin Zhang
;
Pin Zhang
*Department of Civil and Environmental Engineering, The Hong Kong Polytechnic University, Hong Kong, P. R. China; also Department of Engineering Science, University of Oxford, Oxford, UK
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Zhen-Yu Yin
;
Zhen-Yu Yin
†Department of Civil and Environmental Engineering, The Hong Kong Polytechnic University, Hong Kong, P. R. China
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Brian Sheil
Brian Sheil
‡Royal Academy of Engineering Research Fellow, Department of Engineering Science, University of Oxford, Oxford, UK.
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Publisher: Emerald Publishing
Received:
February 06 2022
Accepted:
November 08 2022
Online ISSN: 1751-7656
Print ISSN: 0016-8505
© 2023 Emerald Publishing Limited
2023
Geotechnique (2024) 74 (7): 620–631.
Article history
Received:
February 06 2022
Accepted:
November 08 2022
Citation
Zhang P, Yin Z, Sheil B (2024), "A physics-informed data-driven approach for consolidation analysis". Geotechnique, Vol. 74 No. 7 pp. 620–631, doi: https://doi.org/10.1680/jgeot.22.00046
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