Patents by Inventor Robyn Freeman

Robyn Freeman 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: 20260050845
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: October 27, 2025
    Publication date: February 19, 2026
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12530637
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: May 12, 2025
    Date of Patent: January 20, 2026
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20260017574
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: September 22, 2025
    Publication date: January 15, 2026
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20260010841
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: September 12, 2025
    Publication date: January 8, 2026
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12475412
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: April 23, 2025
    Date of Patent: November 18, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12443899
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: February 27, 2025
    Date of Patent: October 14, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20250272622
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: May 12, 2025
    Publication date: August 28, 2025
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20250264870
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: May 9, 2025
    Publication date: August 21, 2025
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Steven Chad Richardson, Robyn Freeman, Luke Gerdes, Margaret Alden Tinsley, Dana Geislinger, Akaash Sanyal, Travis Gaddie, Muneeb Alam, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20250252363
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: April 23, 2025
    Publication date: August 7, 2025
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12373743
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: December 28, 2023
    Date of Patent: July 29, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12353196
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: June 27, 2022
    Date of Patent: July 8, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Steven Chad Richardson, Robyn Freeman, Luke Gerdes, Margaret Alden Tinsley, Dana Geislinger, Akaash Sanyal, Travis Gaddie, Muneeb Alam, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20250217766
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: February 28, 2025
    Publication date: July 3, 2025
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Travis Gaddie, Dana Geislinger, Margaret Alden Tinsley, Luciano Kiniti Issoe, Tianfang Ni, Muneeb Alam, Luke Gerdes, Oleksandr Klesov, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Cory A. Demieville, Robyn Freeman
  • Patent number: 12346845
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: December 28, 2023
    Date of Patent: July 1, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20250209388
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: February 27, 2025
    Publication date: June 26, 2025
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12288169
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: June 6, 2024
    Date of Patent: April 29, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12260371
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: June 27, 2022
    Date of Patent: March 25, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12259256
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: June 27, 2022
    Date of Patent: March 25, 2025
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Margaret Alden Tinsley, Akaash Sanyal, Robyn Freeman, Travis Gaddie, Muneeb Alam, Steven Chad Richardson, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Oleksandr Klesov, Luciano Kiniti Issoe
  • Publication number: 20250044094
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: October 24, 2024
    Publication date: February 6, 2025
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Luciano Kiniti Issoe, Tianfang Ni, Luke Gerdes, Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Cory A. Demieville, Robyn Freeman, Oleksandr Klesov
  • Publication number: 20240418697
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Application
    Filed: August 27, 2024
    Publication date: December 19, 2024
    Applicant: FREEPORT MINERALS CORPORATION
    Inventors: Cory A. Demieville, Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe
  • Patent number: 12169796
    Abstract: The method may comprise receiving historical data (e.g., mineralogy data, irrigation data, raffinate data, heat data, lift height data, geographic data on ore placement and/or blower data); training a predictive model using the historical data to create a trained predictive model; adding future assumption data to the trained predictive model; running the forecast engine for a plurality of parameters to obtain forecast data for a mining production target; comparing the forecast data for the mining production target to the actual data for the mining production target; determining deviations between the forecast data and the actual data, based on the comparing; and changing each of the plurality of parameters from the forecast data to the actual data to determine a contribution to the deviations for each of the plurality of parameters.
    Type: Grant
    Filed: February 6, 2024
    Date of Patent: December 17, 2024
    Assignee: FREEPORT MINERALS CORPORATION
    Inventors: Dana Geislinger, Travis Gaddie, Margaret Alden Tinsley, Muneeb Alam, Steven Chad Richardson, Akaash Sanyal, Raquel Crossman, Tianfang Ni, Cory A. Demieville, Luke Gerdes, Robyn Freeman, Oleksandr Klesov, Luciano Kiniti Issoe