Patents by Inventor Aiqing Feng

Aiqing Feng 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: 11874429
    Abstract: A high-temperature disaster forecast method based on a directed graph neural network is provided, and the method includes the following steps: S1, performing standardization processing on meteorological elements respectively to scale the meteorological elements into a same value range; S2, taking the meteorological elements as nodes in the graph, and describing relationships among the nodes by an adjacency matrix of graph; then learning node information by a stepwise learning strategy and continuously updating a state of the adjacency matrix; S3, training the directed graph neural network model after determining a loss function, obtaining a model satisfying requirements by adjusting a learning rate, an optimizer and regularization parameters as a forecast model, and saving the forecast model; and S4, inputting historical multivariable time series into the forecast model, changing an output stride according to demands, and thereby obtaining high-temperature disaster forecast for a future period of time.
    Type: Grant
    Filed: April 4, 2023
    Date of Patent: January 16, 2024
    Assignee: Nanjing University of Information Science & Technology
    Inventors: Buda Su, Guojie Wang, Zicong Luo, Tong Jiang, Yanjun Wang, Guofu Wang, Aiqing Feng
  • Publication number: 20230375745
    Abstract: A high-temperature disaster forecast method based on a directed graph neural network is provided, and the method includes the following steps: S1, performing standardization processing on meteorological elements respectively to scale the meteorological elements into a same value range; S2, taking the meteorological elements as nodes in the graph, and describing relationships among the nodes by an adjacency matrix of graph; then learning node information by a stepwise learning strategy and continuously updating a state of the adjacency matrix; S3, training the directed graph neural network model after determining a loss function, obtaining a model satisfying requirements by adjusting a learning rate, an optimizer and regularization parameters as a forecast model, and saving the forecast model; and S4, inputting historical multivariable time series into the forecast model, changing an output stride according to demands, and thereby obtaining high-temperature disaster forecast for a future period of time.
    Type: Application
    Filed: April 4, 2023
    Publication date: November 23, 2023
    Inventors: Buda Su, Guojie Wang, Zicong Luo, Tong Jiang, Yanjun Wang, Guofu Wang, Aiqing Feng
  • Patent number: 11521379
    Abstract: A method for flood disaster monitoring and disaster analysis based on vision transformer is provided. It includes: step (1), constructing a bi-temporal image change detection model based on vision transformer; step (2), selecting bi-temporal remote sensing images to make flood disaster labels; and step (3), performing flood monitoring and disaster analysis according to the bi-temporal image change detection model constructed in the step (1). In combination with the bi-temporal image change detection model based on an advanced vision transformer in deep learning and radar data which is not affected by time and weather and has strong penetration ability, data when floods occur can be obtained and recognition accuracy is improved.
    Type: Grant
    Filed: July 4, 2022
    Date of Patent: December 6, 2022
    Assignees: NANJING UNIVERSITY OF INFORMATION SCI. & TECH., NATIONAL CLIMATE CENTER
    Inventors: Guojie Wang, Buda Su, Yanjun Wang, Tong Jiang, Aiqing Feng, Lijuan Miao, Mingyue Lu, Zhen Dong
  • Patent number: 11521377
    Abstract: A landslide recognition method based on Laplacian pyramid remote sensing image fusion includes: performing original remote sensing image reconstruction based on extracted local features and global features of remote sensing images through a Laplacian pyramid fusion module to generate a fused image, constructing a deep learning semantic segmentation model through a semantic segmentation network, labeling the fused image to obtain a dataset of landslide disaster label map, and training the deep learning semantic segmentation model by the dataset, and then storing when a loss curve is fitted and a landslide recognition accuracy of remote sensing image of the deep learning semantics segmentation model meets a requirement by modifying a structure of the semantic segmentation network and adjusting parameters of the deep learning semantics segmentation model.
    Type: Grant
    Filed: July 28, 2022
    Date of Patent: December 6, 2022
    Assignees: NANJING UNIVERSITY OF INFORMATION SCI. & TECH., NATIONAL CLIMATE CENTER
    Inventors: Guojie Wang, Zhen Dong, Zifan Liang, Aiqing Feng, Guofu Wang, Yanjun Wang, Buda Su