Patents by Inventor Emilien Dupont

Emilien Dupont has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 12104484
    Abstract: A system can include a processor; memory operatively coupled to the processor; and processor-executable instructions stored in the memory to instruct the system to: receive a marker on a well log for a well in a geographic region; and iteratively propagate the marker automatically to a plurality of well logs for other wells in the geographic region.
    Type: Grant
    Filed: November 21, 2023
    Date of Patent: October 1, 2024
    Assignee: SCHLUMBERGER TECHNOLOGY CORPORATION
    Inventors: Emilien Dupont, Sergey Doronichev, Velizar Vesselinov, Valerian Guillot, Carlos Boneti, Jose Celaya Galvan
  • Patent number: 12056726
    Abstract: A method for rapid region wide production forecasting includes identifying base data of a well in a plurality of wells of a region; selecting, using the base data and from a set of a models comprising a rich machine learning model, a location based machine learning model, and a decline curve model, a well model; and generating, based on the selecting, a forecasted production of the well using the base data and the well model. The method further includes aggregating a plurality of forecasted productions of the plurality of wells, the plurality of forecasted productions including the forecasted production, to generate a region forecast using the rich machine learning model, the location based machine learning model, and the decline curve model; and presenting the region forecast.
    Type: Grant
    Filed: January 24, 2020
    Date of Patent: August 6, 2024
    Assignee: SCHLUMBERGER TECHNOLOGY CORPORATION
    Inventors: Erik Burton, Andrey Konchenko, Emilien Dupont
  • Patent number: 11967015
    Abstract: The subject technology provides a framework for learning neural scene representations directly from images, without three-dimensional (3D) supervision, by a machine-learning model. In the disclosed systems and methods, 3D structure can be imposed by ensuring that the learned representation transforms like a real 3D scene. For example, a loss function can be provided which enforces equivariance of the scene representation with respect to 3D rotations. Because naive tensor rotations may not be used to define models that are equivariant with respect to 3D rotations, a new operation called an invertible shear rotation is disclosed, which has the desired equivariance property. In some implementations, the model can be used to generate a 3D representation, such as mesh, of an object from an image of the object.
    Type: Grant
    Filed: January 8, 2021
    Date of Patent: April 23, 2024
    Assignee: Apple Inc.
    Inventors: Qi Shan, Joshua Susskind, Aditya Sankar, Robert Alex Colburn, Emilien Dupont, Miguel Angel Bautista Martin
  • Publication number: 20240102380
    Abstract: A system can include a processor; memory operatively coupled to the processor; and processor-executable instructions stored in the memory to instruct the system to: receive a marker on a well log for a well in a geographic region; and iteratively propagate the marker automatically to a plurality of well logs for other wells in the geographic region.
    Type: Application
    Filed: November 21, 2023
    Publication date: March 28, 2024
    Inventors: Emilien Dupont, Sergey Doronichev, Velizar Vesselinov, Valerian Guillot, Carlos Boneti, Jose Celaya Galvan
  • Patent number: 11828167
    Abstract: A system can include a processor; memory operatively coupled to the processor; and processor-executable instructions stored in the memory to instruct the system to: receive a marker on a well log for a well in a geographic region; and iteratively propagate the marker automatically to a plurality of well logs for other wells in the geographic region.
    Type: Grant
    Filed: April 18, 2019
    Date of Patent: November 28, 2023
    Assignee: SCHLUMBERGER TECHNOLOGY CORPORATION
    Inventors: Emilien Dupont, Sergey Doronichev, Velizar Vesselinov, Valerian Guillot, Carlos Boneti, Jose Celaya Galvan
  • Patent number: 11803678
    Abstract: A method, apparatus, and program product utilize a disentangled factor learning framework to analyze petro-technical image data such as seismic image data to infer properties of a subsurface volume and/or to generate image data for use in training machine learning algorithms for use in petro-technical applications.
    Type: Grant
    Filed: April 12, 2019
    Date of Patent: October 31, 2023
    Assignee: Schlumberger Technology Corporation
    Inventors: Emilien Dupont, Jose Celaya Galvan
  • Publication number: 20230082567
    Abstract: A method, apparatus, and program product utilize a super resolution machine learning model to reconstruct high resolution seismic data from low resolution seismic data in connection with generating seismic visualizations, e.g., to reduce storage and/or communication costs associated with generating seismic visualizations.
    Type: Application
    Filed: February 12, 2020
    Publication date: March 16, 2023
    Inventors: Suhas SURESHA, Emilien DUPONT, Joseph Matthew CHALUPSKY
  • Publication number: 20220092617
    Abstract: A method for rapid region wide production forecasting includes identifying base data of a well in a plurality of wells of a region; selecting, using the base data and from a set of a models comprising a rich machine learning model, a location based machine learning model, and a decline curve model, a well model; and generating, based on the selecting, a forecasted production of the well using the base data and the well model. The method further includes aggregating a plurality of forecasted productions of the plurality of wells, the plurality of forecasted productions including the forecasted production, to generate a region forecast using the rich machine learning model, the location based machine learning model, and the decline curve model; and presenting the region forecast.
    Type: Application
    Filed: January 24, 2020
    Publication date: March 24, 2022
    Inventors: Erik Burton, Andrey Konchenko, Emilien Dupont
  • Publication number: 20210248811
    Abstract: The subject technology provides a framework for learning neural scene representations directly from images, without three-dimensional (3D) supervision, by a machine-learning model. In the disclosed systems and methods, 3D structure can be imposed by ensuring that the learned representation transforms like a real 3D scene. For example, a loss function can be provided which enforces equivariance of the scene representation with respect to 3D rotations. Because naive tensor rotations may not be used to define models that are equivariant with respect to 3D rotations, a new operation called an invertible shear rotation is disclosed, which has the desired equivariance property. In some implementations, the model can be used to generate a 3D representation, such as mesh, of an object from an image of the object.
    Type: Application
    Filed: January 8, 2021
    Publication date: August 12, 2021
    Inventors: Qi SHAN, Joshua SUSSKIND, Aditya SANKAR, Robert Alex COLBURN, Emilien DUPONT, Miguel Angel BAUTISTA MARTIN
  • Publication number: 20210165939
    Abstract: A method, apparatus, and program product utilize a disentangled factor learning framework to analyze petro-technical image data such as seismic image data to infer properties of a subsurface volume and/or to generate image data for use in training machine learning algorithms for use in petro-technical applications.
    Type: Application
    Filed: April 12, 2019
    Publication date: June 3, 2021
    Inventors: Emilien Dupont, Jose Celaya Galvan
  • Publication number: 20210165937
    Abstract: A method, computer program product, and computing system are provided for defining one or more injector completions and one or more producer completions in one or more reservoir models. One or more edges between the one or more injector completions and the one or more producer completions in the one or more reservoir models may be defined. The one or more edges between the one or more injector completions and the one or more producer completions may define a graph network representative of the one or more reservoir models. The one or more reservoir models may be simulated along the one or more edges between the one or more injector completions and the one or more producer completions.
    Type: Application
    Filed: December 13, 2018
    Publication date: June 3, 2021
    Inventors: William J. Bailey, Emilien Dupont, Lin Liang, Peter G. Tilke, Tuanfeng Zhang, Lingchen Zhu
  • Publication number: 20210102457
    Abstract: A system can include a processor; memory operatively coupled to the processor; and processor-executable instructions stored in the memory to instruct the system to: receive a marker on a well log for a well in a geographic region; and iteratively propagate the marker automatically to a plurality of well logs for other wells in the geographic region.
    Type: Application
    Filed: April 18, 2019
    Publication date: April 8, 2021
    Inventors: Emilien DUPONT, Sergey DORONICHEV, Velizar VESSELINOV, Valerian GUILLOT, Carlos BONETI, Jose CELAYA GALVAN
  • Patent number: 10859725
    Abstract: A method includes receiving data where the data include data for a plurality of factors associated with a plurality of wells; training a regression model based at least in part on the data and the plurality of factors; outputting a trained regression model; and predicting production of a well via the trained regression model.
    Type: Grant
    Filed: September 11, 2017
    Date of Patent: December 8, 2020
    Assignee: Sensia LLC
    Inventors: Emilien Dupont, Velizar Vesselinov, Erik Burton, Jose Ramon Celaya Galvan, Andrey Konchenko
  • Publication number: 20180335538
    Abstract: A method includes receiving data where the data include data for a plurality of factors associated with a plurality of wells; training a regression model based at least in part on the data and the plurality of factors; outputting a trained regression model; and predicting production of a well via the trained regression model.
    Type: Application
    Filed: September 11, 2017
    Publication date: November 22, 2018
    Inventors: Emilien Dupont, Velizar Vesselinov, Erik Burton, Jose Ramon Celaya Galvan, Andrey Konchenko