期刊
OCEAN ENGINEERING
卷 268, 期 -, 页码 -出版社
PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.oceaneng.2022.113408
关键词
Granular thermodynamics; Hydrate dissociation; Bonding stress; Dilation; Loading path
A multiphase constitutive model of hydrate-bearing sediment is established within a granular thermodynamic framework, considering the energy dissipation caused by hydrate dissociation and granular rearrangement at the micro level. This model captures the complex behavior of the sediment by incorporating the nonlinear expression of bonding stress, considering the relative velocities of the gas and liquid phases, and introducing the coupling effect of heat conduction.
Considering the energy dissipation caused by hydrate dissociation and granular rearrangement at the micro level, a multiphase constitutive model of hydrate-bearing sediment is established within a granular thermodynamic framework. This model incorporates the nonlinear expression of bonding stress into the elastic energy density function, considers the relative velocities of the gas and liquid phases in terms of the solid phase in the dissipative force system, and introduces the coupling effect of heat conduction into the migration coefficient matrix to capture the complex behavior of the sediment. Defining the migration coefficient matrix and elastic energy function, the effective stress is obtained and is suitable for constant hydrate saturation and hydrate dissociation conditions. Dilatancy equations are improved by considering the effect of compactness, bonding stress, and hydrate saturation. Meanwhile, the calculation method of bonding stress is suitable for both strong and weak cementation conditions. The deduced model is validated against the test results conducted on natural and synthetic samples under different hydrate saturations, sediment porosities, and hydrate habits and can effectively capture the strain hardening and softening as well as the dilatancy properties of the sediments and the loading path effect.
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