岩土力学 ›› 2026, Vol. 47 ›› Issue (5): 1501-1512.doi: 10.16285/j.rsm.2025.0884CSTR: 32223.14.j.rsm.2025.0884

• 基础理论与实验研究 • 上一篇    下一篇

数据稀缺下海相黏土参数预测的物理增强模型

陈朝晖1, 2,吴泓滔1   

  1. 1. 重庆大学 土木工程学院,重庆 400045;2. 重庆大学 山地城镇建设与新技术教育部重点实验室,重庆 400045
  • 收稿日期:2025-08-17 接受日期:2025-11-27 出版日期:2026-05-11 发布日期:2026-05-08
  • 作者简介:陈朝晖,女,1968年生,博士,教授,博士生导师,主要从事工程可靠性与风险分析方面的研究工作。E-mail: zhaohuic@cqu.edu.cn
  • 基金资助:
    国家自然科学基金面上项目(No. 51978104)

Physics-informed model for parameter prediction of marine clay under data-scarcity constraints

CHEN Zhao-hui1, 2, WU Hong-tao1   

  1. 1. School of Civil Engineering, Chongqing University, Chongqing 400045, China; 2. Key Laboratory of Mountain Town Construction and New Technology of Ministry of Education, Chongqing University, Chongqing 400045, China
  • Received:2025-08-17 Accepted:2025-11-27 Online:2026-05-11 Published:2026-05-08
  • Supported by:
    This work was supported by the General Program of National Natural Science Foundation of China (51978104).

摘要: 针对海相黏土参数样本稀缺、分布稀疏及物理一致性缺失的问题,构建了一种融合领域物理知识的数据增强算法(physics-guided augmentation,简称PGA)与加权核函数策略的高斯过程回归(Gaussian process regression,简称GPR)模型PGA-GPR。该模型将有效应力原理、抗剪强度上限和超固结比约束等物理知识引入数据增强过程,结合多核加权机制提升非线性捕捉能力与物理一致性。采用TC304b数据库中挪威海相黏土实测数据验证了所建模型的参数预测能力。结果表明:稀疏样本条件下,PGA-GPR模型相较传统机器学习模型和海相黏土分层随机场模型,决定系数R2提升17%~53%,预测精度高、结果更趋稳定,且能有效表征沿深度方向海相黏土超固结状态的变化规律。不少于84%的土性参数真实值落入该模型95%置信区间内,显示了所建PGA-GPR模型可靠的预测区间,为应对岩土工程稀缺数据问题提供了新途径。

关键词: 海相黏土, 稀疏小样本, 物理约束, 数据增强, 高斯过程回归模型

Abstract: To address the challenges of data-scarce sample size, sparse spatial distribution, and inadequate physical consistency in predicting marine clay parameters, we developed a Gaussian process regression (GPR) model that integrates a physics-guided augmentation(PGA) algorithm with a weighted kernel strategy. In the proposed PGA-GPR model, physical knowledge, including the effective stress principle, the upper bound of shear strength, and the overconsolidation ratio, is incorporated together with a multi-kernel weighting mechanism. This design improves the model’s ability to capture nonlinear behavior and ensures physical consistency. Using data on Norwegian marine clays from the TC304b database, we validated the model’s ability to predict marine clay parameters as a function of depth. The results show that, under sparse-sample conditions, PGA-GPR increases determination coefficient R2 by 17%–53% relative to conventional machine learning models. It also provides higher prediction accuracy and more stable performance. Moreover, compared with the stratified random field model previously proposed by the authors, PGA-GPR more effectively captures depth-dependent variations in the overconsolidation state of marine clays, demonstrating both predictive effectiveness and physical consistency. Additionally, PGA-GPR provides reliable prediction intervals, with at least 84% of the measured values for each soil parameter falling within the 95% confidence interval. These results suggest that the model offers a promising methodology for geotechnical engineering modeling in data-scarce scenarios.

Key words: marine clay, data-scarce sample, physics constrain, data augmentation, Gaussian process regression model

中图分类号: TU 449
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[2] 陈朝晖, 牛萌萌, 罗 琳, 黄凯华, 唐 冲. 基于304dB的北欧海相黏土参数空间非均匀变异性研究[J]. 岩土力学, 2024, 45(2): 525-538.
[3] 邵光辉 ,刘松玉 . 海相结构软土的次固结研究[J]. , 2008, 29(8): 2057-2062.
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