Reservoir History Matching of the Norne field with generative exotic priors and a coupled Mixture of Experts -- Physics Informed Neural Operator Forward Model
Clement Etienam, Yang Juntao, Oleg Ovcharenko, Issam Said

TL;DR
This paper introduces a novel reservoir history matching workflow combining physics-informed neural operators, a mixture of experts, and advanced priors, enabling rapid and uncertainty-aware reservoir property estimation.
Contribution
It develops a coupled PINO-CCR surrogate model integrated with aREKI inversion for fast, uncertainty-aware reservoir history matching, utilizing exotic priors and deep learning techniques.
Findings
PINO-CCR surrogate achieves similar accuracy to traditional simulators.
Workflow accelerates simulations by up to 6000 times.
Successfully recovers reservoir parameters in the Norne field case.
Abstract
We developed a novel reservoir characterization workflow that addresses reservoir history matching by coupling a physics-informed neural operator (PINO) forward model with a mixture of experts' approach, termed cluster classify regress (CCR). The inverse modelling is achieved via an adaptive Regularized Ensemble Kalman inversion (aREKI) method, ideal for rapid inverse uncertainty quantification during history matching. We parametrize unknown permeability and porosity fields for non-Gaussian posterior measures using a variational convolution autoencoder and a denoising diffusion implicit model (DDIM) exotic priors. The CCR works as a supervised model with the PINO surrogate to replicate nonlinear Peaceman well equations. The CCR's flexibility allows any independent machine-learning algorithm for each stage. The PINO reservoir surrogate's loss function is derived from supervised data loss…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Hydrocarbon exploration and reservoir analysis · Hydraulic Fracturing and Reservoir Analysis
MethodsDiffusion · Convolution
