岩石分类系统的开发:以人工智能技术为重点的全面回顾

Eng Pub Date : 2024-01-25 DOI:10.3390/eng5010012
Gang Niu, Xuzhen He, Haoding Xu, Shaoheng Dai
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引用次数: 0

摘要

在隧道设计的初始阶段,有关岩石特性的信息往往很有限。在这种情况下,建议将岩石的工程分类作为岩土工程条件的主要评估方法。本文回顾了隧道行业中不同的岩体分类方法。首先,讨论了岩石分类的一些重要考虑因素,如岩石质量指标 (RQD)、单轴抗压强度 (UCS) 和地下水条件。然后评估了传统的岩石分类方法,包括岩石结构等级(RSR)、岩石质量等级(RMR)、岩石质量指数(RMI)、地质强度指数(GSI)和隧道质量指数(Q 系统)。由于 RMR 和 Q 系统是两种常用的方法,我们对它们之间的关系进行了总结和探讨。随后,我们详细介绍了人工智能(AI)方法在岩石分类中的应用。指出了传统方法和人工智能(AI)方法的优势和局限性,并明确了它们的应用范围。最后,我们对岩石分类方法的选择提出了建议,并展望了未来可能的研究趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Rock Classification Systems: A Comprehensive Review with Emphasis on Artificial Intelligence Techniques
At the initial phases of tunnel design, information on rock properties is often limited. In such instances, the engineering classification of the rock is recommended as a primary assessment of its geotechnical condition. This paper reviews different rock mass classification methods in the tunnel industry. First, some important considerations for the classification of rock are discussed, such as rock quality designation (RQD), uniaxial compressive strength (UCS) and groundwater condition. Traditional rock classification methods are then assessed, including the rock structure rating (RSR), rock mass rating (RMR), rock mass index (RMI), geological strength index (GSI) and tunnelling quality index (Q system). As RMR and the Q system are two commonly used methods, the relationships between them are summarized and explored. Subsequently, we introduce the detailed application of artificial intelligence (AI) method on rock classification. The advantages and limitations of traditional methods and artificial intelligence (AI) methods are indicated, and their application scopes are clarified. Finally, we provide suggestions for the selection of rock classification methods and prospect the possible future research trends.
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Eng
Eng
CiteScore
2.10
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