LGOct 24, 2021

Deep Learning for Simultaneous Inference of Hydraulic and Transport Properties

arXiv:2110.12367v231 citations
Originality Incremental advance
AI Analysis

This work addresses subsurface remediation challenges for environmental engineers, offering an incremental improvement in computational efficiency for inverse modeling.

The paper tackled the problem of identifying heterogeneous conductivity fields and reconstructing contaminant release histories in subsurface remediation using limited, noisy measurements, achieving accurate results with significantly higher computational efficiency compared to traditional methods.

Identifying the heterogeneous conductivity field and reconstructing the contaminant release history are key aspects of subsurface remediation. Achieving these two goals with limited and noisy hydraulic head and concentration measurements is challenging. The obstacles include solving an inverse problem for high-dimensional parameters, and the high-computational cost needed for the repeated forward modeling. We use a convolutional adversarial autoencoder (CAAE) for the parameterization of the heterogeneous non-Gaussian conductivity field with a low-dimensional latent representation. Additionally, we trained a three-dimensional dense convolutional encoder-decoder (DenseED) network to serve as the forward surrogate for the flow and transport processes. Combining the CAAE and DenseED forward surrogate models, the ensemble smoother with multiple data assimilation (ESMDA) algorithm is used to sample from the Bayesian posterior distribution of the unknown parameters, forming a CAAE-DenseED-ESMDA inversion framework. We applied this CAAE-DenseED-ESMDA inversion framework in a three-dimensional contaminant source and conductivity field identification problem. A comparison of the inversion results from CAAE-ESMDA with physical flow and transport simulator and CAAE-DenseED-ESMDA is provided, showing that accurate reconstruction results were achieved with a much higher computational efficiency.

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