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An uncertainty approach for Electric Submersible Pump modeling through Deep Neural Network.

作者信息

Almeida Costa Erbet, de Menezes Rebello Carine, Viena Santana Vinicius, Reges Galdir, de Oliveira Silva Tiago, Santana Luiz de Abreu Odilon, Pellegrini Ribeiro Marcos, Pereira Foresti Bernardo, Fontana Marcio, Bessa Dos Reis Nogueira Idelfonso, Schnitman Leizer

机构信息

Programa de pós-graduação em Mecatrônica, Universidade Federal da Bahia, Rua Prof. Aristides Novis, n 2., Salvador, 40210-630, Brazil.

Chemical Engineering Department of the Norwegian University of Science and Technology, Gløshaugen, Trondheim, 7034, Norway.

出版信息

Heliyon. 2024 Jan 9;10(2):e24047. doi: 10.1016/j.heliyon.2024.e24047. eCollection 2024 Jan 30.

DOI:10.1016/j.heliyon.2024.e24047
PMID:38293372
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10827449/
Abstract

This work proposes a new methodology to identify and validate deep learning models for artificial oil lift systems that use submersible electric pumps. The proposed methodology allows for obtaining the models and evaluating the prediction's uncertainty jointly and systematically. The methodology employs a nonlinear model to generate training and validation data and the Markov Chain Monte Carlo algorithm to assess the neural network's epistemic uncertainty. The nonlinear model was used to overcome the limitations of the need for big datasets for training deep learning models. However, the developed models are validated against experimental data after training and validation with synthetic data. The validation is also performed through the models' uncertainty assessment and experimental data. From the implementation point of view, the method was coded in Python with Tensorflow and Keras libraries used to build the neural Networks and find the hyperparameters. The results show that the proposed methodology obtained models representing both the nonlinear model's dynamic behavior and the experimental data. It provides a most probable value close to the experimental data, and the uncertainty of the generated deep learning models has the same order of magnitude as that of the nonlinear model. This uncertainty assessment shows that the built models were adequately validated. The proposed deep learning models can be applied in several applications requiring a reliable and computationally lighter model. Hence, the obtained AI dynamic models can be employed for digital twin construction, control, and optimization.

摘要

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