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Stochastic nonlinear inversion of seismic data for the estimation of petroelastic properties using the ensemble smoother and data reparameterizationGEOPHYSICSLiu, M., Grana, D.2018; 83 (3): M25–M39
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Petrophysical characterization of deep saline aquifers for CO2 storage using ensemble smoother and deep convolutional autoencoderADVANCES IN WATER RESOURCESLiu, M., Grana, D.2020; 142
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Recycling of oceanic crust from a stagnant slab in the mantle transition zone: Evidence from Cenozoic continental basalts in Zhejiang Province, SE ChinaLITHOSLi, Y., Ma, C., Robinson, P. T., Zhou, Q., Liu, M.2015; 230: 146–65