Patents by Inventor Pallavi S. Gawade

Pallavi S. Gawade 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: 20220344934
    Abstract: Aspects of the present disclosure provide systems, methods, and computer-readable storage media that leverage artificial intelligence and machine learning (ML) to forecast energy demand and to generate an energy plan for one or more facilities of an organization. For example, a system may forecast an occupancy of the facilities for use with historical demand data in forecasting the energy demand. The forecasting may be performed by one or more trained ML models. Additional ML models may be trained to select energy resources that satisfy the forecasted energy demand and that prioritize constraint(s). The system may generate an energy plan that indicates information related to the selected energy resources, such as cost, energy type, environmental impact, etc., for use in increasing an amount of renewable energy resources used at the facilities. In some implementations, the system may recommend actions to reduce a negative environmental impact associated with the selected energy resources.
    Type: Application
    Filed: April 27, 2021
    Publication date: October 27, 2022
    Inventors: Jinu Jayan, Pallavi S. Gawade, Bhushan Gurmukhdas Jagyasi, Sandeep Narendra Vaity, Pollachi Seetharam Sreedhar, Rengaraj Ramasubbu, Saurabh Pashine, Tamal Bhattacharyya
  • Patent number: 11170217
    Abstract: A method for predicting conditions associated with a coal stock pile is described. The method includes collecting aerial data for a site including one or more coal stock piles. Using the aerial data, the method includes performing localization of the site to identify boundaries of the coal stock piles and extracting multi-spectral features. The method also includes obtaining additional data associated with the coal stock piles from at least one data source and merging the aerial data with the additional data. Using the merged data and the extracted multi-spectral features, the method includes analyzing a status of the coal stock piles by a prediction module to predict at least one of an impending combustion event or a severe condition associated with the coal stock piles. In response to the predicted at least one impending combustion event or severe condition, the method includes implementing a response.
    Type: Grant
    Filed: August 30, 2019
    Date of Patent: November 9, 2021
    Assignee: Accenture Global Solutions Limited
    Inventors: Bhushan Gurmukhdas Jagyasi, Abhijeet Chowdhary, Ramaa Gopal Varma Vegesna, Nasiruddin Mohammad, Pallavi S. Gawade, Urvi Suresh Shah, Abhishek Kumar Jaiswal, Akash Manikrao Jadhav, Bolaka Mukherjee
  • Publication number: 20210064848
    Abstract: A method for predicting conditions associated with a coal stock pile is described. The method includes collecting aerial data for a site including one or more coal stock piles. Using the aerial data, the method includes performing localization of the site to identify boundaries of the coal stock piles and extracting multi-spectral features. The method also includes obtaining additional data associated with the coal stock piles from at least one data source and merging the aerial data with the additional data. Using the merged data and the extracted multi-spectral features, the method includes analyzing a status of the coal stock piles by a prediction module to predict at least one of an impending combustion event or a severe condition associated with the coal stock piles. In response to the predicted at least one impending combustion event or severe condition, the method includes implementing a response.
    Type: Application
    Filed: August 30, 2019
    Publication date: March 4, 2021
    Inventors: Bhushan Gurmukhdas Jagyasi, Abhijeet Chowdhary, Ramaa Gopal Varma Vegesna, Nasiruddin Mohammad, Pallavi S. Gawade, Urvi Suresh Shah, Abhishek Kumar Jaiswal, Akash Manikrao Jadhav, Bolaka Mukherjee