An integrated inversion framework for heterogeneous aquifer structure identification with single-sample generative adversarial network
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http://hdl.handle.net/2183/35245
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An integrated inversion framework for heterogeneous aquifer structure identification with single-sample generative adversarial networkAutor(es)
Fecha
2022Cita bibliográfica
Zhan, C., Dai, Z., Samper, J., Yin, S., Ershadnia, R., Zhang, X., ... & Soltanian, M. R. (2022). An integrated inversion framework for heterogeneous aquifer structure identification with single-sample generative adversarial network. Journal of Hydrology, 610, 127844. https://doi.org/10.1016/j.jhydrol.2022.127844
Resumen
[Abstract:] Generating reasonable heterogeneous aquifer structures is essential for understanding the physicochemical processes controlling groundwater flow and solute transport better. The inversion process of aquifer structure identification is usually time-consuming. This study develops an integrated inversion framework, which combines the geological single-sample generative adversarial network (GeoSinGAN), the deep octave convolution dense residual network (DOCRN), and the iterative local updating ensemble smoother (ILUES), named GeoSinGAN-DOCRN-ILUES, for more efficiently generating heterogeneous aquifer structures. The performance of the integrated framework is illustrated by two synthetic contaminant experiments. We show that GeoSinGAN can generate heterogeneous aquifer structures with geostatistical characteristics similar to those of the training sample, while its training time is at least 10 times faster than that of typical approaches (e.g., multi-sample-based GAN). The octave convolution layer and multi-residual connection enable the DOCRN to map the heterogeneity structures to the state variable fields (e.g., hydraulic head, concentration distributions) while reducing the computational cost. The results show that the integrated inversion framework of GeoSinGAN and DOCRN can effectively and reasonably generate the heterogeneous aquifer structures.
Palabras clave
Heterogeneous aquifer structure
Inversion
Generative adversarial network
Residual network
Deep learning
Inversion
Generative adversarial network
Residual network
Deep learning
Descripción
Versión aceptada de https://doi.org/10.1016/j.jhydrol.2022.127844
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Atribución-NoComercial-SinDerivadas 3.0 España