利用数据驱动和物理信息稀疏字典学习将多源监测数据与岩土数值模型结果进行实时融合

Hua-Ming Tian, Yu Wang, K. Phoon
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引用次数: 1

摘要

数字孪生模型的开发正在岩土工程领域迅速兴起,通常需要利用多种监测数据来源(如沉降和孔隙水压力数据)对数值模型(如有限元模型)进行实时更新。传统的模型更新或校准通常需要使用特定来源或有限空间位置的监测数据重复执行数值模型。这就提出了一个关键的研究需求,即利用多源监测数据不断改进的数值模型进行实时模型更新和预测。为满足这一需求,本研究提出了一种名为多源稀疏字典学习(MS-SDL)的物理信息机器学习方法。MS-SDL 起源于信号分解和压缩,它利用一系列数值模型的结果作为基础函数或字典原子,并利用多源监测数据选择有限数量的重要原子来预测多种时空变化的岩土响应。由于监测数据是按顺序收集的,因此无需对计算数值模型进行重复评估,并可实现自动和实时的模型校准,从而不断改进模型预测。本文介绍了香港的一个实际项目,以说明所建议的方法。此外,还研究了不同来源的监测数据的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time Fusion of Multi-Source Monitoring Data with Geotechnical Numerical Model Results using Data-driven and Physics-informed Sparse Dictionary Learning
Development of digital twins is emerging rapidly in geotechnical engineering, and it often requires real-time updating of numerical models (e.g., finite element model, FEM) using multiple sources of monitoring data (e.g., settlement and pore water pressure data). Conventional model updating, or calibration, often involves repeated executions of the numerical model, using monitoring data from a specific source or at limited spatial locations only. This leads to a critical research need of real-time model updating and predictions using a numerical model improved continuously by multi-source monitoring data. To address this need, a physics-informed machine learning method called multi-source sparse dictionary learning (MS-SDL) is proposed in this study. Originated from signal decomposition and compression, MS-SDL utilizes results from a suite of numerical models as basis functions, or dictionary atoms, and employs multi-source monitoring data to select a limited number of important atoms for predicting multiple, spatiotemporally varying geotechnical responses. As monitoring data are collected sequentially, no repeated evaluations of computational numerical models are needed, and an automatic and real-time model calibration is achieved for continuously improving model predictions. A real project in Hong Kong is presented to illustrate the proposed approach. Effect of monitoring data from different sources is also investigated.
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