Patents by Inventor Tiancheng SHI

Tiancheng SHI 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: 11280826
    Abstract: An analog-circuit fault diagnosis method based on continuous wavelet analysis and an ELM network comprises: data acquisition: performing data sampling on output responses of an analog circuit respectively through Multisim simulation to obtain an output response data set; feature extraction: performing continuous wavelet analysis by taking the output response data set of the circuit as training and testing data sets respectively to obtain a wavelet time-frequency coefficient matrix, dividing the coefficient matrix into eight sub-matrixes of the same size, and performing singular value decomposition on the sub-matrixes to calculate a Tsallis entropy for each sub-matrix to form feature vectors of corresponding faults; and fault classification: submitting the feature vector of each sample to the ELM network to implement accurate and quick fault classification.
    Type: Grant
    Filed: January 6, 2017
    Date of Patent: March 22, 2022
    Assignee: HEFEI UNIVERSITY OF TECHNOLOGY
    Inventors: Yigang He, Wei He, Qiwu Luo, Zhigang Li, Tiancheng Shi, Tao Wang, Zhijie Yuan, Deqin Zhao, Luqiang Shi, Liulu He
  • Publication number: 20200300907
    Abstract: An analog-circuit fault diagnosis method based on continuous wavelet analysis and an ELM network comprises: data acquisition: performing data sampling on output responses of an analog circuit respectively through Multisim simulation to obtain an output response data set; feature extraction: performing continuous wavelet analysis by taking the output response data set of the circuit as training and testing data sets respectively to obtain a wavelet time-frequency coefficient matrix, dividing the coefficient matrix into eight sub-matrixes of the same size, and performing singular value decomposition on the sub-matrixes to calculate a Tsallis entropy for each sub-matrix to form feature vectors of corresponding faults; and fault classification: submitting the feature vector of each sample to the ELM network to implement accurate and quick fault classification.
    Type: Application
    Filed: January 6, 2017
    Publication date: September 24, 2020
    Applicant: HEFEI UNIVERSITY OF TECHNOLOGY
    Inventors: Yigang HE, Wei HE, Qiwu LUO, Zhigang LI, Tiancheng SHI, Tao WANG, Zhijie YUAN, Deqin ZHAO, Luqiang SHI, Liulu HE