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Optimisation of geotechnical surveys using a BIM-based geostatistical analysis

Elham Mahmoudi (Department of Civil Engineering, Ruhr-Universität Bochum, Bochum, Germany)
Marcel Stepien (Department of Civil Engineering, Ruhr-Universität Bochum, Bochum, Germany)
Markus König (Department of Civil Engineering, Ruhr-Universität Bochum, Bochum, Germany)

Smart and Sustainable Built Environment

ISSN: 2046-6099

Article publication date: 2 August 2021

Issue publication date: 10 November 2021

222

Abstract

Purpose

A principle prerequisite for designing and constructing an underground structure is to estimate the subsurface's properties and obtain a realistic picture of stratigraphy. Obtaining direct measure of these values in any location of the built environment is not affordable. Therefore, any evaluation is afflicted with uncertainty, and we need to combine all available measurements, observations and previous knowledge to achieve an informed estimate and quantify the involved uncertainties. This study aims to enhance the geotechnical surveys based on a spatial estimation of subsoil to customised data structures and integrating the ground models into digital design environments.

Design/methodology/approach

The present study's objective is to enhance the geotechnical surveys based on a spatial estimation of subsoil to customised data structures and integrating the ground models into digital design environments. A ground model consisting of voxels is developed via Revit-Dynamo to represent spatial uncertainties employing the kriging interpolation method. The local arrangement of new surveys are evaluated to be optimised.

Findings

The visualisation model's computational performance is modified by using an octree structure. The results show that it adapts the structure to be modelled more efficiently. The proposed concept can identify the geological models' risky locations for further geological investigations and reveal an optimised experimental design. The modifications criteria are defined in global and local considerations.

Originality/value

It provides a transparent and repeatable approach to construct a spatial ground model for subsequent experimental or numerical analysis. In the first attempt, the ground model was discretised by a grid of voxels. In general, the required computing time primarily depends on the size of the voxels. This issue is addressed by implementing octree voxels to reduce the computational efforts. This applies especially to the cases that a higher resolution is required. The investigations using a synthetic soil model showed that the developed methodology fulfilled the kriging method's requirements. The effects of variogram parameters, such as the range and the covariance function, were investigated based on some parameter studies. Moreover, a synthetic model is used to demonstrate the optimal experimental design concept. Through the implementation, alternative locations for new boreholes are generated, and their uncertainties are quantified. The impact of the new borehole on the uncertainty measures are quantified based on local and global approaches. For further research to identify the geological models' risky spots, the development of this approach with additional criteria regarding the search neighbourhood and consideration of barriers and trends in real cases (by employing different interpolation methodologies) should be considered.

Keywords

Acknowledgements

This is a substantially extended and enhanced version of the paper presented at the 20th International Conference on Construction Applications of Virtual Reality (CONVR 2020). The authors would like to acknowledge the editorial contributions of Professor Nashwan Dawood and Dr Farzad Rahimian of Teesside University in the publication of this paper.

The authors would like to gratefully acknowledge the German Research Foundation (DFG) support through the Collaborative Research Centre (SFB 837) in subprojects C2 and D1.

Citation

Mahmoudi, E., Stepien, M. and König, M. (2021), "Optimisation of geotechnical surveys using a BIM-based geostatistical analysis", Smart and Sustainable Built Environment, Vol. 10 No. 3, pp. 420-437. https://doi.org/10.1108/SASBE-03-2021-0045

Publisher

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Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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