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将不同龄期浇筑的混凝土层之间的表面粗糙度作为粘结强度参数的非确定性评估

Non-Deterministic Assessment of Surface Roughness as Bond Strength Parameters between Concrete Layers Cast at Different Ages.

作者信息

Kozubal Janusz, Wróblewski Roman, Muszyński Zbigniew, Wyjadłowski Marek, Stróżyk Joanna

机构信息

Faculty of Civil Engineering, Wroclaw University of Science and Technology, 50-370 Wrocław, Poland.

Faculty of Geoengineering, Mining and Geology, Wroclaw University of Science and Technology, 50-370 Wrocław, Poland.

出版信息

Materials (Basel). 2020 Jun 3;13(11):2542. doi: 10.3390/ma13112542.

DOI:10.3390/ma13112542
PMID:32503189
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7321468/
Abstract

The importance of surface roughness and its non-destructive examination has often been emphasised in structural rehabilitation. The presented innovative procedure enables the estimation of concrete-to-concrete strength based on a combination of low-cost, area-limited tests and geostatistical methods. The new method removes the shortcomings of the existing one, i.e., it is neither qualitative nor subjective. The interface strength factors, cohesion and friction can be estimated accurately based on the collected data on a surface texture. The data acquisition needed to create digital models of the concrete surface can be performed by terrestrial close-range photogrammetry or other methods. In the presented procedure, limitations to the availability of concrete surfaces are overcome by the generation of subsequential Gaussian random fields (via height profiles) based on the semivariograms fitted to the digital surface models. In this way, the randomness of the surface texture is reproduced. The selected roughness parameters, such as mean valley depth and, most importantly, the geostatistical semivariogram parameter sill, were transformed into contact bond strength parameters based on the available strength tests. The proposed procedure estimates the interface bond strength based on the geostatistical methods applied to the numerical surface model and can be used in practical and theoretical applications.

摘要

表面粗糙度及其无损检测在结构修复中的重要性常被强调。所提出的创新方法能够基于低成本、局部区域测试与地质统计学方法的结合来估算混凝土与混凝土之间的强度。新方法克服了现有方法的缺点,即它既非定性的也非主观的。基于收集到的表面纹理数据,可以准确估算界面强度因素、黏聚力和摩擦力。创建混凝土表面数字模型所需的数据采集可通过地面近景摄影测量或其他方法进行。在所提出的方法中,通过基于拟合到数字表面模型的半变异函数生成后续高斯随机场(通过高度剖面),克服了混凝土表面可用性的限制。通过这种方式,再现了表面纹理的随机性。基于可用的强度测试,将选定的粗糙度参数,如平均谷深,以及最重要的地质统计学半变异函数参数基台值,转换为接触粘结强度参数。所提出的方法基于应用于数值表面模型的地质统计学方法估算界面粘结强度,可用于实际和理论应用。

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Sensors (Basel). 2018 Nov 21;18(11):4067. doi: 10.3390/s18114067.
应用激光扫描评估地下连续墙粗糙度以估算土压力
Sensors (Basel). 2021 Nov 1;21(21):7275. doi: 10.3390/s21217275.
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Testing of Materials and Elements in Civil Engineering.土木工程中的材料与构件测试
Materials (Basel). 2021 Jun 20;14(12):3412. doi: 10.3390/ma14123412.