Patents by Inventor Ka H Lin

Ka H Lin 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: 11841699
    Abstract: An industrial data broker system receives contextualized industrial data from one or more industrial devices that support data modeling at the device level. The received industrial data is augmented with contextualization metadata that defines correlations between the data relevant to an analytical objective, and labels specifying analytic topics to which each data item is relevant. The broker system allows external systems, such as analytic systems, to subscribe to topics of interest, and streams a subset of contextualized device data relevant to the topic of interest to the external system for analysis.
    Type: Grant
    Filed: September 30, 2019
    Date of Patent: December 12, 2023
    Assignee: Rockwell Automation Technologies, Inc.
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H Lin, Juergen K Weinhofer, Andrew J Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj
  • Patent number: 11709481
    Abstract: An industrial device supports device-level data modeling that pre-models data stored in the device with known relationships, correlations, key variable identifiers, and other such metadata to assist higher-level analytic systems to more quickly and accurately converge to actionable insights relative to a defined business or analytic objective. Data at the device level can be modeled according to modeling templates stored on the device that define relationships between items of device data for respective analytic goals (e.g., improvement of product quality, maximizing product throughput, optimizing energy consumption, etc.). This device-level modeling data can be provided to higher level systems together with their corresponding data tag values to high level analytic systems, which discovers insights into an industrial process or machine based on analysis of the data and its modeling data.
    Type: Grant
    Filed: August 25, 2022
    Date of Patent: July 25, 2023
    Assignee: Rockwell Automation Technologies, Inc.
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H Lin, Juergen K Weinhofer, Andrew J Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj
  • Publication number: 20220404803
    Abstract: An industrial device supports device-level data modeling that pre-models data stored in the device with known relationships, correlations, key variable identifiers, and other such metadata to assist higher-level analytic systems to more quickly and accurately converge to actionable insights relative to a defined business or analytic objective. Data at the device level can be modeled according to modeling templates stored on the device that define relationships between items of device data for respective analytic goals (e.g., improvement of product quality, maximizing product throughput, optimizing energy consumption, etc.). This device-level modeling data can be provided to higher level systems together with their corresponding data tag values to high level analytic systems, which discovers insights into an industrial process or machine based on analysis of the data and its modeling data.
    Type: Application
    Filed: August 25, 2022
    Publication date: December 22, 2022
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H Lin, Juergen K Weinhofer, Andrew J Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj
  • Patent number: 11435726
    Abstract: An industrial device supports device-level data modeling that pre-models data stored in the device with known relationships, correlations, key variable identifiers, and other such metadata to assist higher-level analytic systems to more quickly and accurately converge to actionable insights relative to a defined business or analytic objective. Data at the device level can be modeled according to modeling templates stored on the device that define relationships between items of device data for respective analytic goals (e.g., improvement of product quality, maximizing product throughput, optimizing energy consumption, etc.). This device-level modeling data can be provided to higher level systems together with their corresponding data tag values to high level analytic systems, which discovers insights into an industrial process or machine based on analysis of the data and its modeling data.
    Type: Grant
    Filed: September 30, 2019
    Date of Patent: September 6, 2022
    Assignee: Rockwell Automation Technologies, Inc.
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H Lin, Juergen K Weinhofer, Andrew J Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj
  • Publication number: 20210096551
    Abstract: An industrial data broker system receives contextualized industrial data from one or more industrial devices that support data modeling at the device level. The received industrial data is augmented with contextualization metadata that defines correlations between the data relevant to an analytical objective, and labels specifying analytic topics to which each data item is relevant. The broker system allows external systems, such as analytic systems, to subscribe to topics of interest, and streams a subset of contextualized device data relevant to the topic of interest to the external system for analysis.
    Type: Application
    Filed: September 30, 2019
    Publication date: April 1, 2021
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H. Lin, Juergen K. Weinhofer, Andrew J. Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj
  • Publication number: 20210096541
    Abstract: An industrial device supports device-level data modeling that pre-models data stored in the device with known relationships, correlations, key variable identifiers, and other such metadata to assist higher-level analytic systems to more quickly and accurately converge to actionable insights relative to a defined business or analytic objective. Data at the device level can be modeled according to modeling templates stored on the device that define relationships between items of device data for respective analytic goals (e.g., improvement of product quality, maximizing product throughput, optimizing energy consumption, etc.). This device-level modeling data can be provided to higher level systems together with their corresponding data tag values to high level analytic systems, which discovers insights into an industrial process or machine based on analysis of the data and its modeling data.
    Type: Application
    Filed: September 30, 2019
    Publication date: April 1, 2021
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H Lin, Juergen K Weinhofer, Andrew J Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj
  • Publication number: 20210097456
    Abstract: A smart gateway platform leverages pre-defined industrial expertise to identify limited subsets of available industrial data deemed relevant to a desired business objective, and to collect and model this relevant data to apply useful constraints on subsequent artificial intelligence or machine learning analytics applied to the data. This approach can reduce the data space to which AI analytics are applied and assist data analytic systems to more quickly derive valuable insights and business outcomes. In some embodiments, the smart gateway platform can operate within the context of a multi-level industrial analytic system, feeding pre-modeled data to one or more AI or machine learning systems executing on one or more different levels of an industrial enterprise. The multi-level industrial analytic system can also further refine modeled industrial data as the data moves upward through the system (e.g., from the device level to higher levels).
    Type: Application
    Filed: September 30, 2019
    Publication date: April 1, 2021
    Inventors: Bijan Sayyarrodsari, Michael Pantaleano, Ka H Lin, Juergen K Weinhofer, Andrew J Ellis, Kyle Crum, Sujeet Chand, David Vasko, Subbian Govindaraj