Numerical modeling and neural networks to identify model parameters from piezocone tests: II. Multi-parameter identification from piezocone data
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This study presents a numerical approach designed for material parameter identification for the coupled hydro-mechanical boundary value problem (BVP) of the piezocone test (CPTU) in normally and lightly overconsolidated clayey soils. The study is presented ...
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