Data-driven forward and inverse analysis of two-dimensional soil consolidation using physics-informed neural network

IF 5.6 1区 工程技术 Q1 ENGINEERING, GEOLOGICAL
Yu Wang, Chao Shi, Jiangwei Shi, Hu Lu
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引用次数: 0

Abstract

Employing machine learning algorithms to forecast the behavior of nonlinear spatiotemporal systems, such as soil consolidation induced by land reclamation, has been popular in recent years. Although pure data-driven models demonstrate strong performance within their training domain, i.e., in-sample prediction, they lack interpretability and might have poor generalization outside the training domain, i.e., out-of-sample prediction, particularly when the observed geodata is limited. Moreover, these models often disregard valuable geotechnical domain knowledge. To address these limitations, a novel physics-informed neural network (PINN) is developed for both forward and inverse analyses of two-dimensional soil consolidations when only limited measurements are available. Different random seeds are used to test the robustness of the PINN developed and quantify the associated model uncertainty. Plane strain and axisymmetric consolidation partial differential equations serve as valuable prior domain knowledge to regulate the model training and optimization process in PINN. The performance of PINN is illustrated using both simulated and real consolidation examples. Results indicate that PINN can accurately approximate spatiotemporal pore pressure response and exhibits excellent generalization performance. More importantly, PINN renders an efficient identification of unknown governing parameters from limited measurements with quantified statistical uncertainty, which diminishes as measurement data increase. Furthermore, a real example shows that PINN is capable of discovering the nonlinear decay of horizontal permeability around a prefabricated vertical drain (PVD) based on limited data, tackling the challenge of specifying a smear zone and its permeability distribution in PVD design.

Abstract Image

Abstract Image

利用物理信息神经网络对二维土壤固结进行数据驱动的正向和反向分析
近年来,利用机器学习算法来预测非线性时空系统的行为,如土地开垦引起的土壤固结,已经很流行。尽管纯数据驱动模型在其训练领域(即样本内预测)中表现出强大的性能,但它们缺乏可解释性,并且可能在训练领域之外(即样本外预测)具有较差的泛化性,特别是当观察到的地理数据有限时。此外,这些模型往往忽略了有价值的岩土领域知识。为了解决这些限制,开发了一种新的物理信息神经网络(PINN),用于在只有有限测量的情况下对二维土壤固结进行正向和反向分析。使用不同的随机种子来测试所开发的PINN的鲁棒性,并量化相关的模型不确定性。平面应变和轴对称固结性偏微分方程作为有价值的先验领域知识,调节了PINN模型的训练和优化过程。用模拟和实际固结实例说明了PINN的性能。结果表明,PINN能准确地逼近孔隙压力的时空响应,具有良好的泛化性能。更重要的是,PINN可以有效地识别有限测量中未知的控制参数,具有量化的统计不确定性,随测量数据的增加而减少。此外,一个实例表明,PINN能够基于有限的数据发现预制垂直排水管(PVD)周围水平渗透率的非线性衰减,解决了PVD设计中确定涂抹区及其渗透率分布的挑战。
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来源期刊
Acta Geotechnica
Acta Geotechnica ENGINEERING, GEOLOGICAL-
CiteScore
9.90
自引率
17.50%
发文量
297
审稿时长
4 months
期刊介绍: Acta Geotechnica is an international journal devoted to the publication and dissemination of basic and applied research in geoengineering – an interdisciplinary field dealing with geomaterials such as soils and rocks. Coverage emphasizes the interplay between geomechanical models and their engineering applications. The journal presents original research papers on fundamental concepts in geomechanics and their novel applications in geoengineering based on experimental, analytical and/or numerical approaches. The main purpose of the journal is to foster understanding of the fundamental mechanisms behind the phenomena and processes in geomaterials, from kilometer-scale problems as they occur in geoscience, and down to the nano-scale, with their potential impact on geoengineering. The journal strives to report and archive progress in the field in a timely manner, presenting research papers, review articles, short notes and letters to the editors.
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