Patents by Inventor Youxian Sun

Youxian Sun 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: 11649803
    Abstract: Provided is a method of identification and compensation of an inherent deviation of a yaw error of a wind turbine based on a true power curve. The method, based on a wind turbine data acquisition and monitoring control (SCADA) system includes a wind speed, an active power, and a yaw error and so on, runs data in real-time, first pre-processes the data to a certain degree, and then divides a power curve data according to a certain yaw error interval, fits the power curves according to different yaw error intervals through a true power curve fitting flow in connection with an outlier discrimination method, further quantitatively analyzes the different power curves and determines an interval scope of the yaw error inherent deviation value based on an interval determination criterion, and finally compensates the identified inherent deviation value to a yaw error measurement value.
    Type: Grant
    Filed: May 13, 2021
    Date of Patent: May 16, 2023
    Assignee: ZHEJIANG UNIVERSITY
    Inventors: Qinmin Yang, Yunong Bao, Jiming Chen, Youxian Sun
  • Publication number: 20220100815
    Abstract: The invention discloses a method of realizing accelerated parallel Jacobi computing for an FPGA. Data of a n×n-dimensional matrix are input to the FPGA, and a rotation transformation process is carried out by using parallel Jacobi computing. Processors are initialized. A diagonal processor computes a symbol set corresponding to a rotation angle and outputs the symbol set to a non-diagonal processor. Elements of the diagonal processor are updated. Elements of the non-diagonal processor are updated. Elements between the processors are exchanged. After the elements of the respective processors are updated, the updated elements between the processors are exchanged. The invention requires less FPGA resources while yields a higher internal computational processing performance of the FPGA. Accordingly, the invention is capable of facilitating the efficiency of realizing eigenvalue decomposition in the FPGA and is highly applicable in actual processing.
    Type: Application
    Filed: April 19, 2019
    Publication date: March 31, 2022
    Applicant: ZHEJIANG UNIVERSITY
    Inventors: Jiming CHEN, Zhiguo SHI, Junfeng WU, Qianwen HE, Ying LIU, Youxian SUN
  • Publication number: 20210319113
    Abstract: A method for generating malicious samples against an industrial control system based on adversarial learning is provided. With the method, the adversarial samples for the industrial control intrusion detection system based on the machine learning method is calculated using the adversarial learning technology and the optimization algorithm. The attack sample that can be detected by the intrusion detection system before generates a corresponding new adversarial sample after being processed with this method. This adversarial sample still maintain the attack effect after evading the original intrusion detector (being identified as normal). The present disclosure effectively ensures the security of the industrial control system and prevents accidents by actively generating malicious samples against the industrial control system.
    Type: Application
    Filed: August 18, 2019
    Publication date: October 14, 2021
    Inventors: Peng CHENG, Xiangshan GAO, Ruilong DENG, Jingpei WANG, Jiming CHEN, Youxian SUN
  • Publication number: 20210262439
    Abstract: Provided is a method of identification and compensation of an inherent deviation of a yaw error of a wind turbine based on a true power curve. The method, based on a wind turbine data acquisition and monitoring control (SCADA) system includes a wind speed, an active power, and a yaw error and so on, runs data in real-time, first pre-processes the data to a certain degree, and then divides a power curve data according to a certain yaw error interval, fits the power curves according to different yaw error intervals through a true power curve fitting flow in connection with an outlier discrimination method, further quantitatively analyzes the different power curves and determines an interval scope of the yaw error inherent deviation value based on an interval determination criterion, and finally compensates the identified inherent deviation value to a yaw error measurement value.
    Type: Application
    Filed: May 13, 2021
    Publication date: August 26, 2021
    Inventors: Qinmin YANG, Yunong BAO, Jiming CHEN, Youxian SUN
  • Patent number: 9864356
    Abstract: The invention discloses an identification method of nonlinear parameter varying models (NPV) and belongs to the industrial identification field. The invention carries out identification tests and model identification for an identified object with nonlinear parameter varying characteristics. Firstly, the multi-input single-output nonlinear parameter varying model is identified through the steps of local nonlinear model tests, local nonlinear models identification, and operating point variable transition tests; after completing the identification of all the multi-input single-output nonlinear parameter varying models with respect to all the controlled variables, the completed multi-input multi-output nonlinear parameter varying models are built. The nonlinear parameter varying models of an identified object can be obtained by the identification method of the present invention with limited input/output data without detailed mechanism knowledge of the identified object.
    Type: Grant
    Filed: June 21, 2012
    Date of Patent: January 9, 2018
    Assignee: Zhejiang University
    Inventors: Jiangang Lu, Jie You, Qinmin Yang, Youxian Sun
  • Publication number: 20150120630
    Abstract: The invention discloses an identification method of nonlinear parameter varying models (NPV) and belongs to the industrial identification field. The invention carries out identification tests and model identification for an identified object with nonlinear parameter varying characteristics. Firstly, the multi-input single-output nonlinear parameter varying model is identified through the steps of local nonlinear model tests, local nonlinear models identification, and operating point variable transition tests; after completing the identification of all the multi-input single-output nonlinear parameter varying models with respect to all the controlled variables, the completed multi-input multi-output nonlinear parameter varying models are built. The nonlinear parameter varying models of an identified object can be obtained by the identification method of the present invention with limited input/output data without detailed mechanism knowledge of the identified object.
    Type: Application
    Filed: June 21, 2012
    Publication date: April 30, 2015
    Applicant: ZHEJIANG UNIVERSITY
    Inventors: Jiangang Lu, Jie You, Qinmin Yang, Youxian Sun