Asraar Anjum, M. Hrairi, Abdul Aabid, N. Yatim, Maisarah Ali
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引用次数: 0
摘要
在过去的五年中,机器学习(ML)技术在土木工程领域的应用激增,尤其是在优化和预测各种挑战的解决方案方面。 通过将实验室或现场收集的测试数据与 ML 相结合,可以生成更强大的预测模型。这些模型可用于估算砌体或修补砂浆的抗压强度、建筑物的可能损坏情况、确定材料力学特性的混凝土模型、梁和柱,以及土木工程结构的损坏检测等。 本综合综述旨在阐明土木工程中采用的一系列基于 ML 的方法,特别关注这些方法在提高能源效率和成本效益方面的功效。结合 ML,综述探讨了相应的软计算方法,如模糊逻辑 (FL) 和实验设计 (DOE)。各种案例强调了这些方法的多功能性,特别是在与结构加固相关的应用中的多功能性。本综述探讨了与土木工程中的软计算集成相关的困难,并将其范围扩展到新兴研究方向。这本先进人工智能(AI)综述可作为指南,为新研究人员提供有关发展中领域的知识。这些方法可以为土木工程应用中出现的复杂问题提供创造性的答案,从而彻底改变目前的状况。
Civil Structural Health Monitoring and Machine Learning: A Comprehensive Review
In the past five years, the implementation of machine learning (ML) techniques has surged in civil engineering applications, particularly for optimizing and predicting solutions to various challenges. More robust prediction models may be produced by combining test data collected in the laboratory or field with ML. These models may be used to estimate the compressive strength of masonry or repair mortars, probable damage scenarios in buildings, concrete models, beams, and columns for determining the mechanical characteristics of materials, damage detection in civil structures, and so on. This comprehensive review aims to clarify the array of ML-based methods employed in civil engineering, specifically focusing on their efficacy in strengthening energy efficiency and cost-effectiveness. In combination with ML, the review explores corresponding soft computing methodologies such as fuzzy logic (FL) and design of experiments (DOE). A variety of case examples that highlight the versatility of these approaches, particularly in applications linked to structural reinforcement, enhance the story. The review navigates difficulties associated with the integration of soft computing in civil engineering and expands its scope to include emerging research directions. This synthesis of advanced artificial intelligence (AI) serves as a guide, providing new researchers with knowledge about a developing field. These methods could revolutionize the current situation by providing creative answers to complex problems that arise in civil structural applications.