Patents by Inventor Fabio M. Mielli

Fabio M. Mielli 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: 11906947
    Abstract: Techniques to facilitate synchronization of industrial assets in an industrial automation environment are disclosed herein. In at least one implementation, a computing system receives time-series industrial process data associated with a plurality of process subsystems of an industrial automation process. The time-series industrial process data is fed into a machine learning model associated with the industrial automation process to dynamically generate a process duration prediction for a first one of the process subsystems and responsively determine an updated set point for a second one of the process subsystems based on the process duration prediction for the first one of the process subsystems. The updated set point for the second one of the process subsystems is provided to an industrial controller associated with the second one of the process subsystems.
    Type: Grant
    Filed: April 19, 2022
    Date of Patent: February 20, 2024
    Assignee: ROCKWELL AUTOMATION TECHNOLOGIES, INC.
    Inventors: Nicole R. Bulanda, Fabio M. Mielli, Andrew J. Schaeffler, Peter A. Morell, David C. Mazur, Barry N. Elliott, Scotty Bromfield
  • Publication number: 20220244711
    Abstract: Techniques to facilitate synchronization of industrial assets in an industrial automation environment are disclosed herein. In at least one implementation, a computing system receives time-series industrial process data associated with a plurality of process subsystems of an industrial automation process. The time-series industrial process data is fed into a machine learning model associated with the industrial automation process to dynamically generate a process duration prediction for a first one of the process subsystems and responsively determine an updated set point for a second one of the process subsystems based on the process duration prediction for the first one of the process subsystems. The updated set point for the second one of the process subsystems is provided to an industrial controller associated with the second one of the process subsystems.
    Type: Application
    Filed: April 19, 2022
    Publication date: August 4, 2022
    Inventors: Nicole R. Bulanda, Fabio M. Mielli, Andrew J. Schaeffler, Peter A. Morell, David C. Mazur, Barry N. Elliott, Scotty Bromfield
  • Patent number: 11340594
    Abstract: Techniques to facilitate synchronization of industrial assets in an industrial automation environment are disclosed herein. In at least one implementation, a computing system receives time-series industrial process data associated with a plurality of process subsystems of an industrial automation process. The time-series industrial process data is fed into a machine learning model associated with the industrial automation process to dynamically generate a process duration prediction for a first one of the process subsystems and responsively determine an updated set point for a second one of the process subsystems based on the process duration prediction for the first one of the process subsystems. The updated set point for the second one of the process subsystems is provided to an industrial controller associated with the second one of the process subsystems.
    Type: Grant
    Filed: August 16, 2019
    Date of Patent: May 24, 2022
    Assignee: Rockwell Automation Technologies, Inc.
    Inventors: Nicole R. Bulanda, Fabio M. Mielli, Andrew J. Schaeffler, Peter A. Morell, David C. Mazur, Barry N. Elliott, Scotty Bromfield
  • Publication number: 20210048798
    Abstract: Techniques to facilitate synchronization of industrial assets in an industrial automation environment are disclosed herein. In at least one implementation, a computing system receives time-series industrial process data associated with a plurality of process subsystems of an industrial automation process. The time-series industrial process data is fed into a machine learning model associated with the industrial automation process to dynamically generate a process duration prediction for a first one of the process subsystems and responsively determine an updated set point for a second one of the process subsystems based on the process duration prediction for the first one of the process subsystems. The updated set point for the second one of the process subsystems is provided to an industrial controller associated with the second one of the process subsystems.
    Type: Application
    Filed: August 16, 2019
    Publication date: February 18, 2021
    Inventors: Nicole R. Bulanda, Fabio M. Mielli, Andrew J. Schaeffler, Peter A. Morell, David C. Mazur, Barry N. Elliott, Scotty Bromfield