Patents by Inventor Aditya MANDAL

Aditya MANDAL 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: 20230115272
    Abstract: A classifier capable of predicting if cylinder valves of an engine commanded to activate or deactivate failed to activate or deactivate respectively. In various embodiments, the classifier can be binary or multi-class Logistic Regression, or a Multi-Layer Perceptron (MLP) classifier. The variable displacement engine can operate in cooperation with a variable displacement engine using cylinder deactivation (CDA) or skip fire, including dynamic skip fire and/or multi-level skip fire.
    Type: Application
    Filed: July 8, 2022
    Publication date: April 13, 2023
    Inventors: Louis J. SERRANO, Elliott A. ORTIZ-SOTO, Shikui Kevin CHEN, Li-Chun CHIEN, Aditya MANDAL
  • Patent number: 11434839
    Abstract: A system and method for the use of machine learning for detecting faults for cylinder intake and/or exhaust valves that do not properly open or close as commanded and for generating a flag for such faults.
    Type: Grant
    Filed: December 30, 2020
    Date of Patent: September 6, 2022
    Assignee: Tula Technology, Inc.
    Inventors: Shikui Kevin Chen, Aditya Mandal, Louis J. Serrano, Xiaoping Cai
  • Publication number: 20220205398
    Abstract: A system and method for the use of machine learning for detecting faults for cylinder intake and/or exhaust valves that do not properly open or close as commanded and for generating a flag for such faults.
    Type: Application
    Filed: December 30, 2020
    Publication date: June 30, 2022
    Inventors: Shikui Kevin CHEN, Aditya MANDAL, Louis J. SERRANO, Xiaoping CAI
  • Patent number: 11326534
    Abstract: Using machine learning for cylinder misfire detection in a dynamic firing level modulation controlled internal combustion engine is described. In a classification embodiment, cylinder misfires are differentiated from intentional skips based on a measured exhaust manifold pressure. In a regressive model embodiment, the measured exhaust manifold pressure is compared to a predicted exhaust manifold pressure generated by neural network in response to one or more inputs indicative of the operation of the vehicle. Based on the comparison, a prediction is made if a misfire has occurred or not. In yet other alternative embodiment, angular crank acceleration is used as well for misfire detection.
    Type: Grant
    Filed: August 20, 2021
    Date of Patent: May 10, 2022
    Assignee: Tula Technology, Inc.
    Inventors: Shikui Kevin Chen, Aditya Mandal, Li-Chun Chien, Elliott Ortiz-Soto
  • Publication number: 20220010744
    Abstract: Using machine learning for cylinder misfire detection in a dynamic firing level modulation controlled internal combustion engine is described. In a classification embodiment, cylinder misfires are differentiated from intentional skips based on a measured exhaust manifold pressure. In a regressive model embodiment, the measured exhaust manifold pressure is compared to a predicted exhaust manifold pressure generated by neural network in response to one or more inputs indicative of the operation of the vehicle. Based on the comparison, a prediction is made if a misfire has occurred or not. In yet other alternative embodiment, angular crank acceleration is used as well for misfire detection.
    Type: Application
    Filed: August 20, 2021
    Publication date: January 13, 2022
    Inventors: Shikui Kevin CHEN, Aditya MANDAL, Li-Chun CHIEN, Elliott ORTIZ-SOTO
  • Patent number: 11125175
    Abstract: Using machine learning for cylinder misfire detection in a dynamic firing level modulation controlled internal combustion engine is described. In a classification embodiment, cylinder misfires are differentiated from intentional skips based on a measured exhaust manifold pressure. In a regressive model embodiment, the measured exhaust manifold pressure is compared to a predicted exhaust manifold pressure generated by neural network in response to one or more inputs indicative of the operation of the vehicle. Based on the comparison, a prediction is made if a misfire has occurred or not. In yet other alternative embodiment, angular crank acceleration is used as well for misfire detection.
    Type: Grant
    Filed: September 21, 2020
    Date of Patent: September 21, 2021
    Assignee: Tula Technology, Inc.
    Inventors: Shikui Kevin Chen, Aditya Mandal, Li-Chun Chien, Elliott Ortiz-Soto
  • Publication number: 20210003088
    Abstract: Using machine learning for cylinder misfire detection in a dynamic firing level modulation controlled internal combustion engine is described. In a classification embodiment, cylinder misfires are differentiated from intentional skips based on a measured exhaust manifold pressure. In a regressive model embodiment, the measured exhaust manifold pressure is compared to a predicted exhaust manifold pressure generated by neural network in response to one or more inputs indicative of the operation of the vehicle. Based on the comparison, a prediction is made if a misfire has occurred or not. In yet other alternative embodiment, angular crank acceleration is used as well for misfire detection.
    Type: Application
    Filed: September 21, 2020
    Publication date: January 7, 2021
    Inventors: Shikui Kevin CHEN, Aditya MANDAL, Li-Chun CHIEN, Elliott ORTIZ-SOTO
  • Patent number: 10816438
    Abstract: Using machine learning for misfire detection in a Dynamic firing level modulation controlled internal combustion engine is described. A neural network is used to calculate expected crank acceleration from various inputs, including the dynamically defined cylinder skip fire sequence. The output of the neural network is then compared to a signal indicative of the measured crank acceleration. Based the comparison, a prediction is made if a misfire has occurred or not. In alternative embodiment, the neural network is expanded to include the measured crank acceleration as an additional input. With the latter embodiment, the neural network is arranged to directly predict misfire events.
    Type: Grant
    Filed: November 5, 2018
    Date of Patent: October 27, 2020
    Assignee: Tula Technology, Inc.
    Inventors: Shikui Kevin Chen, Aditya Mandal, Li-Chun Chien, Elliott Ortiz-Soto
  • Publication number: 20190145859
    Abstract: Using machine learning for misfire detection in a Dynamic firing level modulation controlled internal combustion engine is described. A neural network is used to calculate expected crank acceleration from various inputs, including the dynamically defined cylinder skip fire sequence. The output of the neural network is then compared to a signal indicative of the measured crank acceleration. Based the comparison, a prediction is made if a misfire has occurred or not. In alternative embodiment, the neural network is expanded to include the measured crank acceleration as an additional input. With the latter embodiment, the neural network is arranged to directly predict misfire events.
    Type: Application
    Filed: November 5, 2018
    Publication date: May 16, 2019
    Inventors: Shikui Kevin CHEN, Aditya MANDAL, Li-Chun CHIEN, Elliot ORTIZ-SOTO