Probabilistic model-error assessment of deep learning proxies: an application to real-time inversion of borehole electromagnetic measurements
Muzammil Hussain Rammay, Sergey Alyaev, Ahmed H Elsheikh

TL;DR
This paper evaluates the impact of deep neural network model errors on real-time electromagnetic inversion for geosteering, proposing methods to mitigate bias and improve subsurface property estimates.
Contribution
It introduces a framework for assessing and reducing model error effects in DNN-based inversion, enhancing real-time geosteering decision accuracy.
Findings
DNN model errors can bias inversion results.
Iterative ensemble smoother reduces model bias.
Proposed procedures identify and address multimodality.
Abstract
The advent of fast sensing technologies allows for real-time model updates in many applications where the model parameters are uncertain. Bayesian algorithms, such as ensemble smoothers, offer a real-time probabilistic inversion accounting for uncertainties. However, they rely on the repeated evaluation of the computational models, and deep neural network (DNN) based proxies can be useful to address this computational bottleneck. This paper studies the effects of the approximate nature of the deep learned models and associated model errors during the inversion of extra-deep borehole electromagnetic (EM) measurements, which are critical for geosteering. Using a deep neural network (DNN) as a forward model allows us to perform thousands of model evaluations within seconds, which is very useful for quantifying uncertainties and non-uniqueness in real-time. While significant efforts are…
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