Patents by Inventor Jicheng DING

Jicheng DING 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: 11821729
    Abstract: A tight-integrated navigation method assisted by Elman neural network when GNSS signals are blocked based on the tight-integrated navigation system model of the INS and GNSS, where the dynamic Elman neural network prediction model is used to train the inertial navigation error model and the GNSS compensation model, so as to solve the problem of tight-integrated navigation when the GNSS signals are blocked. When the GNSS signals are blocked, the trained neural network is used to predict the output error of GNSS and compensate the output of inertial navigation, so that the error will not diverge sharply, and the system can continue to work in the integrated navigation mode. The low-cost tight-integrated navigation module is used, and the collected information is preprocessed to form the sample data for training the neural network to train the Elman neural network model.
    Type: Grant
    Filed: September 7, 2020
    Date of Patent: November 21, 2023
    Assignee: Harbin Engineering University
    Inventors: Lin Zhao, Zihang Peng, Jicheng Ding, Kun Wang, Yaguo Bai, Yongchao Zhang, Renlong Wang
  • Publication number: 20210095965
    Abstract: The disclosure relates to a tight-integrated navigation method assisted by Elman neural network when GNSS signals are blocked based on the tight-integrated navigation system model of the INS and GNSS. The dynamic Elman neural network prediction model is used to train the inertial navigation error model and the GNSS compensation model, so as to solve the problem of tight-integrated navigation when the GNSS signals are blocked. When the GNSS signals are blocked, the trained neural network is used to predict the output error of GNSS and compensate the output of inertial navigation, so that the error will not diverge sharply, and the system can continue to work in the integrated navigation mode. The low-cost tight-integrated navigation module is used, and the collected information is preprocessed to form the sample data for training the neural network to train the Elman neural network model.
    Type: Application
    Filed: September 7, 2020
    Publication date: April 1, 2021
    Inventors: Lin ZHAO, Zihang PENG, Jicheng DING, Kun WANG, Yaguo BAI, Yongchao ZHANG, Renlong WANG