Patents by Inventor Ruiwei LU

Ruiwei LU 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: 11403546
    Abstract: The invention discloses a sewage treatment process fault monitoring method based on fuzzy width adaptive learning model. Including “offline modeling” and “online monitoring” two stages. “Offline modeling” first uses a batch of normal data and 4 batches of fault data as training samples to train the network offline and label the data. After the network training is completed, the weight parameters are obtained for online monitoring. “Online monitoring” includes: using newly collected data as test data, using the same steps as offline training networks for online monitoring. The output result of online monitoring adopts one-hot encoding to realize zero-one discrimination of the output result of online monitoring, so as to realize fault monitoring. The present invention only needs to increase the number of enhanced nodes, reconstruct in an incremental manner, and does not need to retrain the entire network from the beginning.
    Type: Grant
    Filed: October 22, 2021
    Date of Patent: August 2, 2022
    Assignee: BEIJING UNIVERSITY OF TECHNOLOGY
    Inventors: Peng Chang, Chunhao Ding, Ruiwei Lu, Zeyu Li, Kai Wang
  • Publication number: 20220155770
    Abstract: The invent relates to an intelligent fault monitoring method based on high-order information enhanced recurrent neural network, for real-time fault monitoring of sewage treatment process. The invent includes two phases of offline modeling and online monitoring. In offline phase, the original data is extracted into high-dimensional high-order information features using OCIA, which can effectively deal with the non Gaussian feature of the data and solve the correlation between variables. Then the extracted features are trained by DRNN. In the online phase, the data are directly mapped to new high-order feature components, and to be discriminated in category by the DRNN network after trained offline. If there is no fault, then the results get into the monitoring model composed of simple OICA for unsupervised monitoring. If no fault is detected, it is determined that there is no fault in the process.
    Type: Application
    Filed: November 5, 2021
    Publication date: May 19, 2022
    Inventors: Peng CHANG, Zeyu LI, Kai WANG, Chunhao DING, Chen JIN, Xiangyu ZHANG, Ruiwei LU, Pu WANG
  • Publication number: 20220114467
    Abstract: The invention discloses a sewage treatment process fault monitoring method based on fuzzy width adaptive learning model. Including “offline modeling” and “online monitoring” two stages. “Offline modeling” first uses a batch of normal data and 4 batches of fault data as training samples to train the network offline and label the data. After the network training is completed, the weight parameters are obtained for online monitoring. “Online monitoring” includes: using newly collected data as test data, using the same steps as offline training networks for online monitoring. The output result of online monitoring adopts one-hot encoding to realize zero-one discrimination of the output result of online monitoring, so as to realize fault monitoring. The present invention only needs to increase the number of enhanced nodes, reconstruct in an incremental manner, and does not need to retrain the entire network from the beginning.
    Type: Application
    Filed: October 22, 2021
    Publication date: April 14, 2022
    Inventors: Peng CHANG, Chunhao DING, Ruiwei LU, Zeyu LI, Kai WANG