Patents by Inventor Saikat RAY MAJUMDER

Saikat RAY MAJUMDER 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: 20220245048
    Abstract: Generating fault indications for an additive manufacturing machine based on a comparison of the outputs of multiple process models to measured sensor data. The method receiving sensor data from the additive manufacturing machine during manufacture of at least one part. Models are selected from a model database, each model generating expected sensor values for a defined condition. Difference values are computed between the received sensor data and an output of each of the models. A probability density function is computed, which defines, for each of the models, a likelihood that a given difference value corresponds to each respective model. A probabilistic rule is applied to determine, for each of the models, a probability that the corresponding model output matches the received sensor data. An indicator is output of a defined condition corresponding to a model having the highest match probability.
    Type: Application
    Filed: April 20, 2022
    Publication date: August 4, 2022
    Inventors: Harry Kirk MATHEWS, JR., Sarah FELIX, Subhrajit ROYCHOWDHURY, Saikat RAY MAJUMDER, Thomas SPEARS
  • Patent number: 11327870
    Abstract: Generating fault indications for an additive manufacturing machine based on a comparison of the outputs of multiple process models to measured sensor data. The method receiving sensor data from the additive manufacturing machine during manufacture of at least one part. Models are selected from a model database, each model generating expected sensor values for a defined condition. Difference values are computed between the received sensor data and an output of each of the models. A probability density function is computed, which defines, for each of the models, a likelihood that a given difference value corresponds to each respective model. A probabilistic rule is applied to determine, for each of the models, a probability that the corresponding model output matches the received sensor data. An indicator is output of a defined condition corresponding to a model having the highest match probability.
    Type: Grant
    Filed: January 8, 2019
    Date of Patent: May 10, 2022
    Assignee: General Electric Company
    Inventors: Harry Kirk Mathews, Jr., Sarah Felix, Subhrajit Roychowdhury, Saikat Ray Majumder, Thomas Spears
  • Publication number: 20200218628
    Abstract: Generating fault indications for an additive manufacturing machine based on a comparison of the outputs of multiple process models to measured sensor data. The method receiving sensor data from the additive manufacturing machine during manufacture of at least one part. Models are selected from a model database, each model generating expected sensor values for a defined condition. Difference values are computed between the received sensor data and an output of each of the models. A probability density function is computed, which defines, for each of the models, a likelihood that a given difference value corresponds to each respective model. A probabilistic rule is applied to determine, for each of the models, a probability that the corresponding model output matches the received sensor data. An indicator is output of a defined condition corresponding to a model having the highest match probability.
    Type: Application
    Filed: January 8, 2019
    Publication date: July 9, 2020
    Inventors: Harry Kirk MATHEWS, JR., Sarah FELIX, Subhrajit ROYCHOWDHURY, Saikat RAY MAJUMDER, Thomas SPEARS
  • Patent number: 10452845
    Abstract: According to some embodiments, a plurality of heterogeneous data source nodes may each generate a series of current data source node values over time that represent a current operation of an electric power grid. A real-time threat detection computer, coupled to the plurality of heterogeneous data source nodes, may receive the series of current data source node values and generate a set of current feature vectors. The threat detection computer may then access an abnormal state detection model having at least one decision boundary created offline using at least one of normal and abnormal feature vectors. The abnormal state detection model may be executed, and a threat alert signal may be transmitted if appropriate based on the set of current feature vectors and the at least one decision boundary.
    Type: Grant
    Filed: March 8, 2017
    Date of Patent: October 22, 2019
    Assignee: GENERAL ELECTRIC COMPANY
    Inventors: Lalit Keshav Mestha, Santosh Sambamoorthy Veda, Masoud Abbaszadeh, Chaitanya Ashok Baone, Weizhong Yan, Saikat Ray Majumder, Sumit Bose, Annartia Giani, Olugbenga Anubi
  • Publication number: 20180260561
    Abstract: According to some embodiments, a plurality of heterogeneous data source nodes may each generate a series of current data source node values over time that represent a current operation of an electric power grid. A real-time threat detection computer, coupled to the plurality of heterogeneous data source nodes, may receive the series of current data source node values and generate a set of current feature vectors. The threat detection computer may then access an abnormal state detection model having at least one decision boundary created offline using at least one of normal and abnormal feature vectors. The abnormal state detection model may be executed, and a threat alert signal may be transmitted if appropriate based on the set of current feature vectors and the at least one decision boundary.
    Type: Application
    Filed: March 8, 2017
    Publication date: September 13, 2018
    Inventors: Lalit Keshav MESTHA, Santosh Sambamoorthy VEDA, Masoud ABBASZADEH, Chaitanya Ashok BAONE, Weizhong YAN, Saikat RAY MAJUMDER, Sumit BOSE, Annartia GIANI, Olugbenga ANUBI
  • Publication number: 20180225684
    Abstract: A system for strategic operation of a variable generation power plant includes a computing device in communication with a data store including environmental data independent system operator rules, operator risk metrics, power storage systems, a maintenance schedule, and a capacity record. The computing device including a statistical modeling unit to generate a risk-to-revenue strategic bid estimate for successive time periods based on one or more factors accessible in the data store, a display device to display a graphical representation of the risk-to-revenue strategic bid estimate; and a control processor that analyzes the risk-to-revenue strategic bid estimate to schedule the daily operation of a power storage system and to identify one or more time periods of the successive time periods in which to perform a scheduled maintenance. A method and a non-transitory computer readable medium are also disclosed.
    Type: Application
    Filed: February 3, 2017
    Publication date: August 9, 2018
    Inventors: Saikat RAY MAJUMDER, Jason BATES, Sumit BOSE