Patents Examined by Sally T. Ley
  • Patent number: 12135927
    Abstract: A set of material candidates expected to yield materials with target properties can be generated. A subject matter expert's decision indicating accepted and rejected material candidates from the set of material candidates can be received. Based on the subject matter expert's input, a machine learning model can be trained to replicate the subject matter expert's decision.
    Type: Grant
    Filed: March 31, 2020
    Date of Patent: November 5, 2024
    Assignee: International Business Machines Corporation
    Inventors: Petar Ristoski, Dmitry Zubarev, Linda Ha Kato, Anna Lisa Gentile, Nathaniel H. Park, Daniel Gruhl, Steven R. Welch, Daniel Paul Sanders, James L. Hedrick, Chandrasekhar Narayan, Chad Eric DeLuca, Alfredo Alba
  • Patent number: 11880776
    Abstract: A graph neural network (GNN)-based prediction system for total organic carbon (TOC) in shale solves the problem that the existing shale TOC prediction method cannot fully analyze the complex nonlinear relationship between all logging curves and TOC. The prediction system adopts a method including: acquiring and preprocessing a plurality of logging curves of a target well location in a target shale bed to acquire a plurality of standardized logging curves, windowing the plurality of standardized logging curves, and inputting the windowed logging curves and weight matrix into a trained GNN-based TOC prediction network to acquire TOC of the target well location. The prediction system inputs the plurality of logging curves as correlative multi-dimensional dynamic graph data for analysis and can acquire the complex nonlinear relationship between the logging curves and TOC, thus improving the prediction accuracy of TOC.
    Type: Grant
    Filed: November 23, 2022
    Date of Patent: January 23, 2024
    Assignee: INSTITUTE OF GEOLOGY AND GEOPHYSICS, CHINESE ACADEMY OF SCIENCES
    Inventors: Xiaocai Shan, Wang Zhang, Yongjian Zhou