4.7 Article

Parametric sensitivity analysis of coupled mechanical consolidation and contaminant transport through clay barriers

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COMPUTERS AND GEOTECHNICS
卷 36, 期 1-2, 页码 31-40

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ELSEVIER SCI LTD
DOI: 10.1016/j.compgeo.2008.04.003

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Geoenvironmental modeling; Contaminant transport; Consolidation; Large deformation models; Clay barriers

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In this paper, an extensive parametric sensitivity analysis of coupled consolidation and solute transport in composite landfill liner systems has been undertaken. The analysis incorporates results of more than 3000 simulations for various combinations of barrier thickness, waste loading rate, initial void ratio, compression index, hydraulic conductivity and dispersion coefficient. However, it is noted that to limit the extent of the Study a constant coefficient of consolidation is assumed in the analysis presented here, though this assumption is easily relaxed. Results of the parametric sensitivity analysis are succinctly presented using dimensionless plots, which allow the comparison of results for a large number of parameter values, and so the clear identification of the most important determinants on contaminant transport through the liner system. The dimensionless plots demonstrate a pessimum (for which the 'breakthrough time' is minimised). Numerical results reveal that in cases of extreme liner compressibility an order of magnitude reduction in contaminant transit time may arise due to coupling between solute transport and consolidation. while for barriers of low compressibility and porosity (such as well-engineered composite compacted clay landfill liners), it is found that the contaminant transit time may still be reduced by more than 30%. The numerical results suggest that the use of coupled consolidation-contaminant transport models are sometimes required for informed and conservative landfill liner design. (C) 2008 Elsevier Ltd. All rights reserved.

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