Patents by Inventor Xianbin GUO

Xianbin GUO 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: 11761859
    Abstract: The present disclosure provides a self-adaption faster-than-real-time method for estimating a working condition start-up state of a unit. Firstly, an event recording sequence, an analog measurement point ID, an analog measurement point first-level alarm value and a history scatter point distribution record are read from a time sequence event record table, an analog measurement point table, an alarm threshold table and a historical scatter record table. A measured value slope of the analog measurement point is calculated according to an event recording relative time. Then, an abnormal state estimated value is calculated based on the history scatter point distribution record, the analog measurement point first-level alarm value and the measured value slope of the analog measurement point. Finally, a pre-warning is sent to remind a watchman to perform a preventive operation when the abnormal state estimated value is above the threshold.
    Type: Grant
    Filed: September 30, 2020
    Date of Patent: September 19, 2023
    Assignee: CSG POWER GENERATION CO., LTD.
    Inventors: Hao Zhang, Man Chen, Yu Gong, Yumin Peng, Xiong Dai, Mingxuan Yang, Xiaobo Qiu, Mingliang Yao, Yaxiong Yu, Jun She, Rufei He, Yanming Gao, Dehua Li, Xianbin Guo, Xiaoyi Wang
  • Publication number: 20220326122
    Abstract: The present disclosure provides a self-adaption faster-than-real-time method for estimating a working condition start-up state of a unit. Firstly, an event recording sequence, an analog measurement point ID, an analog measurement point first-level alarm value and a history scatter point distribution record are read from a time sequence event record table, an analog measurement point table, an alarm threshold table and a historical scatter record table. A measured value slope of the analog measurement point is calculated according to an event recording relative time. Then, an abnormal state estimated value is calculated based on the history scatter point distribution record, the analog measurement point first-level alarm value and the measured value slope of the analog measurement point. Finally, a pre-warning is sent to remind a watchman to perform a preventive operation when the abnormal state estimated value is above the threshold.
    Type: Application
    Filed: September 30, 2020
    Publication date: October 13, 2022
    Applicant: CSG POWER GENERATION CO., LTD.
    Inventors: Hao ZHANG, Man CHEN, Yu GONG, Yumin PENG, Xiong DAI, Mingxuan YANG, Xiaobo QIU, Mingliang YAO, Yaxiong YU, Jun SHE, Rufei HE, Yanming GAO, Dehua LI, Xianbin GUO, Xiaoyi WANG
  • Publication number: 20220317646
    Abstract: The present disclosure provides a self-adaptive test method for an intelligent prediction algorithm of analog measured values. Firstly, an event recording sequence, an analog measurement point ID and an analog measurement point alarm value are read from a time sequence event record table, an analog measurement point table and an alarm threshold table. Next, operation records of a normal operation state of a unit within a statistical cycle are acquired to form historical statistics of measured values of the analog measurement point based on switching value signals. Then, simulated measured values of the analog measurement point with time scales are calculated based on the historical statistics, the analog measurement point alarm value and an analog measurement point current measured value. Finally, sensitivity is calculated; and an alarm is sent to remind a technician to adjust the algorithm when the sensitivity is greater than a threshold.
    Type: Application
    Filed: September 30, 2020
    Publication date: October 6, 2022
    Applicant: CSG POWER GENERATION CO., LTD.
    Inventors: Hao ZHANG, Man CHEN, Yu GONG, Yumin PENG, Xiong DAI, Mingxuan YANG, Xiaobo QIU, Mingliang YAO, Yaxiong YU, Jun SHE, Rufei HE, Yanming GAO, Zhenglin XIANG, Jianqiu LI, Dehua LI, Xianbin GUO, Xiaoyi WANG