Patents by Inventor Nasrin SADEGHIANPOURHAMAMI

Nasrin SADEGHIANPOURHAMAMI 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: 12174604
    Abstract: Improvements in computer-based energy asset management technologies are provided. An energy asset management system with a data summarization mechanism can perform computations, for example relating to controlling the assets, which may include electric vehicles (EVs), with fewer computing resources. Further, the system can perform computations on large datasets where such computations would have otherwise been impractical with conventional systems due to the size of the data. A large dataset relating to the energy asset management system is reduced using the summarization mechanism, and a computation model is trained using the reduced dataset. Energy assets in the system may be controlled using the trained computational model. Assets may include EVs, and controlling the EVs may be based on generated predictions relating to charging interactions. The predictions may be based on road traffic information and/or weather related information.
    Type: Grant
    Filed: July 9, 2021
    Date of Patent: December 24, 2024
    Inventors: Owen Kelly, Nasrin Sadeghianpourhamami, Mostafa Farrokhabadi
  • Publication number: 20240157836
    Abstract: Improvements in energy distribution for electric vehicle (EV) energy delivery technologies are provided. An EV charging station management system optimizes the use of various sources of power for charging EVs. The optimizing may be based on current and/or forecasted EV charging demand, and the amount of greenhouse gas emissions produced by various sources to generate the power used for EV charging. In another embodiment, the optimizing may be based on current and/or forecasted EV charging demand, and current or forecasted cost of acquiring power from a power grid, which varies over time. The system may be configured to maximize earnings from EV charging at one or more charging stations.
    Type: Application
    Filed: November 16, 2022
    Publication date: May 16, 2024
    Inventors: Christopher GALBRAITH, Keegan Michael John GREEN, Nasrin SADEGHIANPOURHAMAMI, Alexander LINCHIEH, Devashish PAUL, Mostafa FARROKHABADI
  • Publication number: 20240025270
    Abstract: Improvements in the field of electric vehicles (EV) are provided, including EV telematics estimation. Prior techniques estimate a state of charge (SoC) of a battery of an EV based on electrochemical measurements of the battery, such as battery terminal voltage, battery current, or cell temperature. The present improvements estimate SoC or other parameters based on non-electrochemical variables, referred to as exogenous information, meaning information other than electrochemical parameters of the battery. Example exogenous information includes battery type, and battery capacity, vehicle type or load, driver behaviour, weather conditions, or traffic or road conditions. Exogenous information may be used to enable more accurate estimations of EV SoC by EV related systems.
    Type: Application
    Filed: July 21, 2022
    Publication date: January 25, 2024
    Inventors: Mostafa FARROKHABADI, Nasrin SADEGHIANPOURHAMAMI, Rahul GAHLAWAT, Devashish PAUL
  • Publication number: 20230009568
    Abstract: Improvements in computer-based energy asset management technologies are provided. An energy asset management system with a data summarization mechanism can perform computations, for example relating to controlling the assets, which may include electric vehicles (EVs), with fewer computing resources. Further, the system can perform computations on large datasets where such computations would have otherwise been impractical with conventional systems due to the size of the data. A large dataset relating to the energy asset management system is reduced using the summarization mechanism, and a computation model is trained using the reduced dataset. Energy assets in the system may be controlled using the trained computational model. Assets may include EVs, and controlling the EVs may be based on generated predictions relating to charging interactions. The predictions may be based on road traffic information and/or weather related information.
    Type: Application
    Filed: July 9, 2021
    Publication date: January 12, 2023
    Inventors: Owen KELLY, Nasrin SADEGHIANPOURHAMAMI, Mostafa FARROKHABADI
  • Publication number: 20220227252
    Abstract: Systems and methods are provided for dynamically selecting a control policy from among several available control policies for controlling an energy system having multiple controllable assets. The performance of the selected control policy is monitored and a different control policy may be deployed in its place if the different control policy has a higher chance of providing better performance given the current control environment. Thus, as the control environment changes, the control policy that controls the power system may also be changed in an adaptive manner. In this way, the control policies may be changed as the control environment changes to provide an improved real-time performance compared to the use of a single control policy.
    Type: Application
    Filed: February 4, 2022
    Publication date: July 21, 2022
    Inventors: Nasrin SADEGHIANPOURHAMAMI, Mostafa FARROKHABADI
  • Publication number: 20220164722
    Abstract: Methods and systems are provided relating to energy management of controllable assets in a system, such as vehicles in a fleet. Where the vehicle fleet has little or no historical data for a particular type of vehicle, for example electric vehicles, a data-driven based predictor for the fleet may be trained using third party data for that particular type of vehicle. This enables a data-driven control approach even when the fleet has little or no historical data of a give type. Historical data may include information relating to journeys travelled by vehicles on roads. A specific journey of a given vehicle may be subdivided into segments, and a segment signature data structure may be created and populated for each segment. The predictor(s) may be trained using data in a global repository of segment signatures. A fleet specific signature repository may be created for use by the fleet by selecting a subset of the signatures from the global repository.
    Type: Application
    Filed: November 24, 2020
    Publication date: May 26, 2022
    Inventors: Nasrin SADEGHIANPOURHAMAMI, Alexander LINCHIEH, Mostafa FARROKHABADI, Devashish PAUL
  • Patent number: 11267362
    Abstract: Systems and methods are provided for dynamically selecting a control policy from among several available control policies for controlling an electric vehicle fleet charging system. A control policy may take into account fluctuating local renewable generation and/or time of use electricity pricing. The performance of the selected control policy is monitored and a different control policy may be deployed in its place if the different control policy has a higher chance of providing better performance given the current control environment. Thus, as the control environment changes, the control policy that controls the power system may also be changed in an adaptive manner. In this way, the control policies may be changed as the control environment changes to provide an improved real-time performance compared to the use of a single control policy.
    Type: Grant
    Filed: August 5, 2020
    Date of Patent: March 8, 2022
    Assignee: BLUWAVE INC.
    Inventors: Nasrin Sadeghianpourhamami, Mostafa Farrokhabadi
  • Publication number: 20220041076
    Abstract: Systems and methods are provided for dynamically selecting a control policy from among several available control policies for controlling an electric vehicle fleet charging system. A control policy may take into account fluctuating local renewable generation and/or time of use electricity pricing. The performance of the selected control policy is monitored and a different control policy may be deployed in its place if the different control policy has a higher chance of providing better performance given the current control environment. Thus, as the control environment changes, the control policy that controls the power system may also be changed in an adaptive manner. In this way, the control policies may be changed as the control environment changes to provide an improved real-time performance compared to the use of a single control policy.
    Type: Application
    Filed: August 5, 2020
    Publication date: February 10, 2022
    Inventors: Nasrin SADEGHIANPOURHAMAMI, Mostafa FARROKHABADI