Patents by Inventor Lulu WEN

Lulu WEN 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: 20230419182
    Abstract: The present disclosure provides systems and methods for improving a product conversion rate based on federated learning and blockchain. The system may in response to receiving a federated learning request sent by an initiator node, broadcast the federated learning request within a blockchain federation; in response to obtaining a response to the federated learning request from at least one node in the blockchain federation, determine at least one participant node; obtain first representation data related to first user data from the initiator node and second representation data related to second user data from the at least one participant node; determine a federated learning strategy corresponding to the federated learning request based on the first representation data and the second representation data; and coordinate the initiator node and the at least one participant node for federated learning based on the federated learning strategy to generate a trained conversion rate model.
    Type: Application
    Filed: May 22, 2023
    Publication date: December 28, 2023
    Applicant: HANGZHOU TONGHUASHUN DATA PROCESSING CO., LTD.
    Inventors: Lulu WEN, Ming CHEN, Yongfei BAO, Tianyi MA, Yilin YAO
  • Patent number: 11581740
    Abstract: The present invention provides a method, system and storage medium for load dispatch optimization for residential microgrid. The method includes collecting environmental data and time data of residential microgrid in preset future time period; obtaining power load data of residential microgrid in future time period by inputting environmental data and time data into pre-trained load forecasting model; obtaining photovoltaic output power data of residential microgrid in future time period by inputting environmental data and time data into pre-trained photovoltaic output power forecasting model; determining objective function and corresponding constraint condition of residential microgrid in future time period, where optimization objective of objective function is to minimize total cost of residential microgrid; obtaining load dispatch scheme of residential microgrid in future time period by solving objective function with particle swarm algorithm.
    Type: Grant
    Filed: August 11, 2019
    Date of Patent: February 14, 2023
    Assignee: Hefei University of Technology
    Inventors: Kaile Zhou, Lulu Wen, Shanlin Yang
  • Patent number: 11409347
    Abstract: The disclosure provides a method, a system and a storage medium for predicting power load probability density based on deep learning. The method comprises: S101, collecting power load data of a user, meteorological data and air quality data in a preset historical time period, and dividing the collected data into a training set and a test set; S102, determining a deep learning model for predicting power load; S103, inputting the test set into the deep learning model for predicting power load, and obtaining power load prediction data of the user at different quantile points in a third time interval; S104, performing kernel density estimation and obtaining a probability density curve of the power load of the user in the third time interval.
    Type: Grant
    Filed: February 25, 2019
    Date of Patent: August 9, 2022
    Assignee: Hefei University of Technology
    Inventors: Kaile Zhou, Zhifeng Guo, Shanlin Yang, Pengtao Li, Lulu Wen, Xinhui Lu
  • Publication number: 20200161867
    Abstract: The present invention provides a method, system and storage medium for load dispatch optimization for residential microgrid. The method includes collecting environmental data and time data of residential microgrid in preset future time period; obtaining power load data of residential microgrid in future time period by inputting environmental data and time data into pre-trained load forecasting model; obtaining photovoltaic output power data of residential microgrid in future time period by inputting environmental data and time data into pre-trained photovoltaic output power forecasting model; determining objective function and corresponding constraint condition of residential microgrid in future time period, where optimization objective of objective function is to minimize total cost of residential microgrid; obtaining load dispatch scheme of residential microgrid in future time period by solving objective function with particle swarm algorithm.
    Type: Application
    Filed: August 11, 2019
    Publication date: May 21, 2020
    Inventors: Kaile ZHOU, Lulu WEN, Shanlin YANG
  • Publication number: 20190265768
    Abstract: The disclosure provides a method, a system and a storage medium for predicting power load probability density based on deep learning. The method comprises: S101, collecting power load data of a user, meteorological data and air quality data in a preset historical time period, and dividing the collected data into a training set and a test set; S102, determining a deep learning model for predicting power load; S103, inputting the test set into the deep learning model for predicting power load, and obtaining power load prediction data of the user at different quantile points in a third time interval; S104, performing kernel density estimation and obtaining a probability density curve of the power load of the user in the third time interval.
    Type: Application
    Filed: February 25, 2019
    Publication date: August 29, 2019
    Inventors: Kaile ZHOU, Zhifeng GUO, Shanlin YANG, Pengtao LI, Lulu WEN, Xinhui LU
  • Patent number: 10211851
    Abstract: The present invention relates to a method and a system for compressing data from a smart meter. The method comprises: LZ-encoding electricity load data collected by the smart meter whenever the smart meter collects the electricity load data; storing the LZ-encoded electricity load data in a temporary database through a smart grid communication channel; reading the electricity load data from the temporary database every preset second duration, wherein the read electricity load data is electricity load data stored in the temporary database within the second duration before a corresponding reading time point; and LZ-decoding the read electricity load data, SAX-compressing the LZ-decoded electricity load data, and storing the SAX-compressed electricity load data in a data center. The present invention has high compression rate, reduces the transmission burden for communication lines and storage burden for the data center, and improves the efficiency of smart electricity data analysis and mining.
    Type: Grant
    Filed: April 8, 2018
    Date of Patent: February 19, 2019
    Assignee: Hefei University of Technology
    Inventors: Kaile Zhou, Lulu Wen, Shanlin Yang, Xinhui Lu, Zhen Shao, Li Sun
  • Publication number: 20180294819
    Abstract: The present invention relates to a method and a system for compressing data from a smart meter. The method comprises: LZ-encoding electricity load data collected by the smart meter whenever the smart meter collects the electricity load data; storing the LZ-encoded electricity load data in a temporary database through a smart grid communication channel; reading the electricity load data from the temporary database every preset second duration, wherein the read electricity load data is electricity load data stored in the temporary database within the second duration before a corresponding reading time point; and LZ-decoding the read electricity load data, SAX-compressing the LZ-decoded electricity load data, and storing the SAX-compressed electricity load data in a data center. The present invention has high compression rate, reduces the transmission burden for communication lines and storage burden for the data center, and improves the efficiency of smart electricity data analysis and mining.
    Type: Application
    Filed: April 8, 2018
    Publication date: October 11, 2018
    Inventors: Kaile ZHOU, Lulu WEN, Shanlin YANG, Xinhui LU, Zhen SHAO, Li SUN