Sensitive clay landslides are a geohazard often exhibiting flow-like retrogressive behaviour. Soils with high sensitivity experience significant strain softening − a key characteristic of these types of slope movements. In this paper, an experimental method using high early strength cement mixed with clay soil is investigated to cast repeatable samples of a bespoke shear strength and sensitivity while reducing specimen preparation time. The addition of cement bonds from hydration reactions was observed to encourage the development of a metastable soil structure with sufficiently high moisture content to exhibit both a high peak strength and a low remoulded strength. Various cement and water content mixtures were examined, with either kaolin clay or a naturally sensitive clay from Mud Creek, Ontario and Portland type 1 or type 3 cement. Undrained shear strength testing was measured with the Swedish fall cone and the miniature lab vane. Soil−cement mixtures developed shear strength of up to 60 kPa with sensitivities from 4 to 16 within a 7 d curing time. This paper reports lessons learned from the mixing, curing and testing of the sensitive material, as well as the results from a geotechnical centrifuge experiment examining retrogressive sensitive clay landslides.
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July 2020
Research Article|
April 06 2020
On casting clay specimens of bespoke shear strength and sensitivity for landslide modelling Available to Purchase
Ray Kennedy;
Ray Kennedy
Graduate Researcher, Department of Civil Engineering, GeoEngineering Centre at Queen's-RMC, Queen's University, Kingston, Ontario, Canada
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Greg Siemens;
Greg Siemens
Professor and Research Director, Department of Civil Engineering, GeoEngineering Centre at Queen's-RMC, Royal Military College of Canada, Kingston, Ontario, Canada (corresponding author: siemens@rmc.ca)
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W. Andy Take
W. Andy Take
Professor and Research Director, Department of Civil Engineering, GeoEngineering Centre at Queen's-RMC, Queen's University, Kingston, Ontario, Canada
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Publisher: Emerald Publishing
Received:
October 31 2018
Accepted:
February 14 2020
Online ISSN: 2042-6550
Print ISSN: 1346-213X
ICE Publishing: All rights reserved
2020
International Journal of Physical Modelling in Geotechnics (2020) 20 (4): 198–211.
Article history
Received:
October 31 2018
Accepted:
February 14 2020
Citation
Kennedy R, Siemens G, Take WA (2020), "On casting clay specimens of bespoke shear strength and sensitivity for landslide modelling". International Journal of Physical Modelling in Geotechnics, Vol. 20 No. 4 pp. 198–211, doi: https://doi.org/10.1680/jphmg.18.00082
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