Patents by Inventor Loryne Bissuel Beauvais

Loryne Bissuel Beauvais 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).

  • Publication number: 20230272792
    Abstract: Systems/methods for real-time monitoring and control of a well site provide an event monitor and detector for progressing cavity pump (PCP) operations at the well site. The event monitor and detector uses machine learning (ML) based anomaly detection to detect operations that fall outside normal PCP operating space. The event monitor and detector then computes novelty scores for the anomalies and checks whether the novelty scores exceed a threshold novelty score. If the number of novelties detected within a given detection window exceeds a minimum threshold count, then the event monitor and detector flags an “event” and automatically responds accordingly. The event monitor and detector also provides an explanation with the alerts that quantifies the extent to which various PCP parameters contributed to the event. The event monitor and detector further performs drift detection to determine whether an event may be due to operator-initiated adjustments to PCP parameters.
    Type: Application
    Filed: December 28, 2021
    Publication date: August 31, 2023
    Inventors: Bartosz BOGUSLAWSKI, Loryne BISSUEL-BEAUVAIS, Matthieu BOUJONNIER
  • Publication number: 20220316314
    Abstract: Systems and methods for real-time monitoring and control of well operations at a well site use machine learning (ML) based analytics at the well site. The systems and methods perform ML-based analytics on data from the well site via an edge device directly at the well site to detect operations that fall outside expected norms and automatically respond to such abnormal operations. The edge device can issue alerts regarding the abnormal operations and take predefined steps to reduce potential damage resulting from such abnormal operations. The edge device can also anticipate failures and a time to failure by performing ML-based analytics on operations data from the well site using normal operations data. This can help decrease downtime and minimize lost productivity and cost as well as reduce health and safety risks for field personnel.
    Type: Application
    Filed: September 11, 2020
    Publication date: October 6, 2022
    Inventors: Fahd SAGHIR, Xavier Pasbeau, Bartosz BOGUSLAWSKI, Matthieu BOUJONNIER, Loryne BISSUEL-BEAUVAIS
  • Publication number: 20220090485
    Abstract: Systems and methods for real-time monitoring and control of well site operations employ well site edge analytics to detect abnormal operations. The systems and methods use machine learning (ML) based analytics on an edge device directly at the well site to detect possible occurrence of abnormal events and automatically respond to such events. The event detection may be based on trends identified in the data acquired from the well site operations in real time. The trends may be identified by correlation and by fitting line segments to the data and analyzing the slopes of the line segments. Upon detecting unusual event, the edge device can issue alerts regarding the event and take predefined steps to reduce potential damage resulting from such event. This can help decrease downtime and minimize lost productivity and cost as well as reduce health and safety risks for field personnel.
    Type: Application
    Filed: April 5, 2020
    Publication date: March 24, 2022
    Inventors: Bartosz BOGUSLAWSKI, Reynaldo Espana REY, Giorgio COLANGELO, Matthieu BOUJONNIER, Loryne BISSUEL-BEAUVAIS, Fahd SAGHIR, Jacky HOAREAU
  • Publication number: 20210081823
    Abstract: Systems and methods for real-time monitoring and control of well operations at a well site use machine learning (ML) based analytics at the well site. The systems and methods perform ML-based analytics on data from the well site via an edge device directly at the well site to detect operations that fall outside expected norms and automatically respond to such abnormal operations. The edge device can issue alerts regarding the abnormal operations and take predefined steps to reduce potential damage resulting from such abnormal operations. The edge device can also anticipate failures and a time to failure by performing ML-based analytics on operations data from the well site using normal operations data. This can help decrease downtime and minimize lost productivity and cost as well as reduce health and safety risks for field personnel.
    Type: Application
    Filed: September 11, 2020
    Publication date: March 18, 2021
    Inventors: Bartosz Boguslawski, Matthieu Boujonnier, Loryne Bissuel Beauvais, Fahd Saghir, Helenio Gilabert