Sample size determination in geotechnical site investigation considering spatial variation and correlation

Site investigation is a fundamental element in geotechnical engineering practice, but only a small portion of geomaterials is sampled and tested during site investigation. This leads to a question of sample size determination: how many samples are needed to achieve a target level of accuracy for the...

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Bibliographic Details
Published in:Canadian geotechnical journal Vol. 56; no. 7; pp. 992 - 1002
Main Authors: Wang, Yu, Guan, Zheng, Zhao, Tengyuan
Format: Journal Article
Language:English
Published: Ottawa NRC Research Press 01-07-2019
Canadian Science Publishing NRC Research Press
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Summary:Site investigation is a fundamental element in geotechnical engineering practice, but only a small portion of geomaterials is sampled and tested during site investigation. This leads to a question of sample size determination: how many samples are needed to achieve a target level of accuracy for the results inferred from the samples? Sample size determination is a well-known topic in statistics and has many applications in a wide variety of areas. However, conventional statistical methods, which mainly deal with independent data, only have limited applications in geotechnical site investigation because geotechnical data are not independent, but spatially varying and correlated. Existing design codes around the world (e.g., Eurocode 7) only provide conceptual principles on sample size determination. No scientific or quantitative method is available for sample size determination in site investigation considering spatial variation and correlation of geotechnical properties. This study performs an extensive parametric study and develops a statistical chart for sample size determination with consideration of spatial variation and correlation using Bayesian compressive sensing or sampling. Real cone penetration test data and real laboratory test data are used to illustrate application of the proposed statistical chart, and the method is shown to perform well.
ISSN:0008-3674
1208-6010
DOI:10.1139/cgj-2018-0474