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用于混凝土结构耐久性、损伤诊断和性能预测的数据智能驱动方法。

Data-intelligence driven methods for durability, damage diagnosis and performance prediction of concrete structures.

作者信息

Li Fan, Luo Daming, Niu Ditao

机构信息

State Key Laboratory of Green Building, Xi'an University of Architecture and Technology, Xi'an, China.

School of Civil Engineering, Xi'an University of Architecture and Technology, Xi'an, China.

出版信息

Commun Eng. 2025 Jun 3;4(1):100. doi: 10.1038/s44172-025-00431-4.

Abstract

A large number of in-service reinforced concrete structures are now entering the mid-to-late stages of their service life. Efficient detection of damage characteristics and accurate prediction of material performance degradation have become essential for ensuring the safety of these structures. Traditional damage detection methods, which primarily rely on manual inspections and sensor monitoring, are inefficient and lack accuracy. Similarly, performance prediction models for reinforced concrete materials, which are often based on limited experimental data and polynomial fitting, oversimplify the influencing factors. In contrast, partial differential equation models that account for degradation mechanisms are computationally intensive and difficult to solve. Recent advancements in deep learning and machine learning, as part of artificial intelligence, have introduced innovative approaches for both damage detection and material performance prediction in reinforced concrete structures. This paper provides a comprehensive overview of machine learning and deep learning theories and models, and reviews the current research on their application to the durability of reinforced concrete structures, focusing on two main areas: intelligent damage detection and predictive modeling of material durability. Finally, the article discusses future trends and offers insights into the intelligent innovation of concrete structure durability.

摘要

大量在用的钢筋混凝土结构目前正进入其使用寿命的中后期阶段。高效检测损伤特征并准确预测材料性能退化对于确保这些结构的安全至关重要。传统的损伤检测方法主要依靠人工检查和传感器监测,效率低下且缺乏准确性。同样,钢筋混凝土材料的性能预测模型通常基于有限的实验数据和多项式拟合,过度简化了影响因素。相比之下,考虑退化机制的偏微分方程模型计算量很大且难以求解。作为人工智能一部分的深度学习和机器学习的最新进展,为钢筋混凝土结构的损伤检测和材料性能预测引入了创新方法。本文全面概述了机器学习和深度学习理论及模型,并回顾了它们在钢筋混凝土结构耐久性方面应用的当前研究,重点关注两个主要领域:智能损伤检测和材料耐久性预测建模。最后,文章讨论了未来趋势,并对混凝土结构耐久性的智能创新提供了见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f69e/12134258/261bce80a7f6/44172_2025_431_Fig1_HTML.jpg

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