Patents by Inventor Dongjin Song

Dongjin Song 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).

  • Publication number: 20240120727
    Abstract: The present disclosure relates to a power device protection apparatus. A power device protection apparatus according to an embodiment of the present invention comprises: a comparator which is connected to a power device, and determines whether an overcurrent of the power device occurs; and a control unit which controls the comparator so as to change, by software, a overcurrent reference value for determining whether the overcurrent occurs, wherein the control unit receives temperature information of the power device, changes the overcurrent reference value on the basis of the temperature information, and performs the overcurrent reference value change according to the temperature information, on the basis of the characteristics of the power device.
    Type: Application
    Filed: April 1, 2022
    Publication date: April 11, 2024
    Inventors: Sunghee KANG, Jungwook SIM, Woonghyeob SONG, Dongjin YUN, Chaeyoon BAE
  • Patent number: 11741146
    Abstract: Methods and systems of training and using a neural network model include training a time series embedding model and a text embedding model with unsupervised clustering to translate time series and text, respectively, to a shared latent space. The time series embedding model and the text embedding model are further trained using semi-supervised clustering that samples training data pairs of time series information and associated text for annotation.
    Type: Grant
    Filed: July 8, 2021
    Date of Patent: August 29, 2023
    Inventors: Yuncong Chen, Dongjin Song, Cristian Lumezanu, Haifeng Chen, Takehiko Mizoguchi, Xuchao Zhang
  • Patent number: 11699065
    Abstract: A method for multivariate time series prediction is provided. Each time series from among a batch of multiple driving time series and a target time series is decomposed into a raw component, a shape component, and a trend component. For each decomposed component, select a driving time series relevant thereto from the batch and obtain hidden features of the selected driving time series, by applying the batch to an input attention-based encoder of an Ensemble of Clustered dual-stage attention-based Recurrent Neural Networks (EC-DARNNS). Automatically cluster the hidden features in a hidden space using a temporal attention-based decoder of the EC-DARNNS. Each Clustered dual-stage attention-based RNN in the Ensemble is dedicated and applied to a respective one of the decomposed components. Predict a respective value of one or more future time steps for the target series based on respective prediction outputs for each of the decomposed components by the EC-DARNNS.
    Type: Grant
    Filed: August 4, 2020
    Date of Patent: July 11, 2023
    Inventors: Dongjin Song, Yuncong Chen, Haifeng Chen
  • Patent number: 11620518
    Abstract: Systems and methods for updating a classification model of a neural network. The methods include selecting, as a set of landmarks, a limited number of data from a set of historical data used to train a classification model. Additionally, the methods generate new training data from recently collected data. Further, the methods update the classification model with the new training data and the set of landmarks to obtain an updated classification model having a loss function configured to capture similarities in the new training data and remember similarities in the historical data represented by the set of landmarks within a predefined tolerance.
    Type: Grant
    Filed: May 5, 2020
    Date of Patent: April 4, 2023
    Assignee: NEC Corporation
    Inventors: Cristian Lumezanu, Haifeng Chen, Dongjin Song, Wei Cheng, Takehiko Mizoguchi, Xiaoyuan Liang, Yuncong Chen
  • Patent number: 11604969
    Abstract: Systems and methods for predicting system device failure are provided. The method includes representing device failure related data associated with the devices from a predetermined domain by temporal graphs for each of the devices. The method also includes extracting vector representations based on temporal graph features from the temporal graphs that capture both temporal and structural correlation in the device failure related data. The method further includes predicting, based on the vector representations and device failure related metrics in the predetermined domain, one or more of the devices that is expected to fail within a predetermined time.
    Type: Grant
    Filed: August 28, 2019
    Date of Patent: March 14, 2023
    Inventors: Wei Cheng, LuAn Tang, Dongjin Song, Bo Zong, Haifeng Chen, Jingchao Ni, Wenchao Yu
  • Patent number: 11543808
    Abstract: Methods and systems for detecting and correcting anomalies includes generating historical binary codes from historical time series segments. The historical time series segments are each made up of measurements from respective sensors. A latest binary code is generated from a latest time series segment. It is determined that the latest time series segment represents anomalous behavior, based on a comparison of the latest binary code to the historical binary codes. The sensors are ranked, based on a comparison of time series data of the sensors in the latest time series segment to respective time series data of the historical time series, to generate a sensor ranking. A corrective action is performed responsive to the detected anomaly, prioritized according to the sensor ranking.
    Type: Grant
    Filed: April 6, 2021
    Date of Patent: January 3, 2023
    Inventors: Dongjin Song, Takehiko Mizoguchi, Cristian Lumezanu, Haifeng Chen
  • Patent number: 11538143
    Abstract: Systems and methods for detecting anomaly in video data are provided. The system includes a generator that receives past video frames and extracts spatio-temporal features of the past video frames and generates frames. The generator includes fully convolutional transformer based generative adversarial networks (FCT-GANs). The system includes an image discriminator that discriminates generated frames and real frames. The system also includes a video discriminator that discriminates generated video and real video. The generator trains a fully convolutional transformer network (FCTN) model and determines an anomaly score of at least one test video based on a prediction residual map from the FCTN model.
    Type: Grant
    Filed: October 24, 2019
    Date of Patent: December 27, 2022
    Inventors: Dongjin Song, Yuncong Chen, Haifeng Chen, Xinyang Feng
  • Patent number: 11520993
    Abstract: A system for cross-modal data retrieval is provided that includes a neural network having a time series encoder and text encoder which are jointly trained using an unsupervised training method which is based on a loss function. The loss function jointly evaluates a similarity of feature vectors of training sets of two different modalities of time series and free-form text comments and a compatibility of the time series and the free-form text comments with a word-overlap-based spectral clustering method configured to compute pseudo labels for the unsupervised training method. The computer processing system further includes a database for storing the training sets with feature vectors extracted from encodings of the training sets. The encodings are obtained by encoding a training set of the time series using the time series encoder and encoding a training set of the free-form text comments using the text encoder.
    Type: Grant
    Filed: July 1, 2020
    Date of Patent: December 6, 2022
    Inventors: Yuncong Chen, Hao Yuan, Dongjin Song, Cristian Lumezanu, Haifeng Chen, Takehiko Mizoguchi
  • Patent number: 11494618
    Abstract: Methods and systems for detecting and correcting anomalies include comparing a new time series segment, generated by a sensor in a cyber-physical system, to previous time series segments of the sensor to generate a similarity measure for each previous time series segment. It is determined that the new time series represents anomalous behavior based on the similarity measures. A corrective action is performed on the cyber-physical system to correct the anomalous behavior.
    Type: Grant
    Filed: September 3, 2019
    Date of Patent: November 8, 2022
    Inventors: Ning Xia, Dongjin Song, Haifeng Chen
  • Patent number: 11496493
    Abstract: Systems and methods for implementing dynamic graph analysis (DGA) to detect anomalous network traffic are provided. The method includes processing communications and profile data associated with multiple devices to determine dynamic graphs. The method includes generating features to model temporal behaviors of network traffic generated by the multiple devices based on the dynamic graphs. The method also includes formulating a list of prediction results for sources of the anomalous network traffic from the multiple devices based on the temporal behaviors.
    Type: Grant
    Filed: September 10, 2019
    Date of Patent: November 8, 2022
    Inventors: LuAn Tang, Jingchao Ni, Wei Cheng, Haifeng Chen, Dongjin Song, Bo Zong, Wenchao Yu
  • Patent number: 11417090
    Abstract: Systems and methods for anomaly detection are provided. The method includes structuring a multi-channel spatial-temporal sequence as a four-dimensional array. The method also includes decomposing the four-dimensional array to form a low-rank component representing a background signal and a residual component representing anomalies for each time point of the multi-channel spatial-temporal sequence. The method further includes determining a sequence of anomaly maps by stacking the residual components at all time points together. Anomalies are identified based on the sequence of anomaly maps.
    Type: Grant
    Filed: February 13, 2020
    Date of Patent: August 16, 2022
    Inventors: Yuncong Chen, Dongjin Song, Haifeng Chen
  • Publication number: 20220215256
    Abstract: Methods and systems for training a neural network include collecting model exemplar information from edge devices, each model exemplar having been trained using information local to the respective edge devices. The collected model exemplar information is aggregated together using federated averaging. Global model exemplars are trained using federated constrained clustering. The trained global exemplars are transmitted to respective edge devices.
    Type: Application
    Filed: March 15, 2022
    Publication date: July 7, 2022
    Inventors: Dongjin Song, Yuncong Chen, Cristian Lumezanu, Takehiko Mizoguchi, Haifeng Chen, Wei Zhu
  • Patent number: 11355138
    Abstract: A method is provided. Intermediate audio features are generated from respective segments of an input acoustic time series for a same scene. Using a nearest neighbor search, respective segments of the input acoustic time series are classified based on the intermediate audio features to generate a final intermediate feature as a classification for the input acoustic time series. Each respective segment corresponds to a respective different acoustic window. The generating step includes learning the intermediate audio features from Multi-Frequency Cepstral Component (MFCC) features extracted from the input acoustic time series, dividing the same scene into the different windows having varying MFCC features, and feeding the MFCC features of each window into respective LSTM units such that a hidden state of each respective LSTM unit is passed through an attention layer to identify feature correlations between hidden states at different time steps corresponding to different ones of the different windows.
    Type: Grant
    Filed: August 19, 2020
    Date of Patent: June 7, 2022
    Inventors: Cristian Lumezanu, Yuncong Chen, Dongjin Song, Takehiko Mizuguchi, Haifeng Chen, Bo Dong
  • Publication number: 20220075822
    Abstract: A method classifies missing labels. The method computes, using a neural network model trained on training data, rank-based statistics of a feature of a time series segment to attempt to select two candidate labels from the training data that the segment most likely belongs to. The method classifies the segment using k-NN-based classification applied to the training data, responsive to the two candidate labels being present in the training data. The method classifies the segment by hypothesis testing, responsive to only one candidate label being present in the training data. The method classifies the segment into a class with higher values of the rank-based statistics from among a plurality of classes with different values of the rank-based statistics, responsive to no candidate labels being present in the training data. The method corrects a prediction by an applicable one of the classifying steps by majority voting with time windows.
    Type: Application
    Filed: August 23, 2021
    Publication date: March 10, 2022
    Inventors: Cristian Lumezanu, Yuncong Chen, Takehiko Mizoguchi, Dongjin Song, Haifeng Chen, Jurijs Nazarovs
  • Publication number: 20220044117
    Abstract: Methods and systems for training a neural network include collecting model exemplar information from edge devices, each model exemplar having been trained using information local to the respective edge devices. The collected model exemplar information is aggregated together using federated averaging. Global model exemplars are trained using federated constrained clustering. The trained global exemplars are transmitted to respective edge devices.
    Type: Application
    Filed: August 5, 2021
    Publication date: February 10, 2022
    Inventors: Dongjin Song, Yuncong Chen, Cristian Lumezanu, Takehiko Mizoguchi, Haifeng Chen, Wei Zhu
  • Patent number: 11228606
    Abstract: Methods and systems for detecting and correcting anomalies include ranking sensors in a cyber-physical system according to a degree of influence each sensor has on a measured performance indicator in the cyber-physical system. An anomaly is detected in the cyber-physical system based on the measured performance indicator. A corrective action is performed responsive to the detected anomaly, prioritized according to sensor rank.
    Type: Grant
    Filed: October 2, 2019
    Date of Patent: January 18, 2022
    Inventors: Shuchu Han, Wei Cheng, Dongjin Song, Haifeng Chen, Yuncong Chen
  • Publication number: 20220012538
    Abstract: Systems and methods for retrieving similar multivariate time series segments are provided. The systems and methods include extracting a long feature vector and a short feature vector from a time series segment, converting the long feature vector into a long binary code, and converting the short feature vector into a short binary code. The systems and methods further include obtaining a subset of long binary codes from a binary dictionary storing dictionary long codes based on the short binary codes, and calculating similarity measure for each pair of the long feature vector with each dictionary long code. The systems and methods further include identifying a predetermined number of dictionary long codes having the similarity measures indicting a closest relationship between the long binary codes and dictionary long codes, and retrieving a predetermined number of time series segments associated with the predetermined number of dictionary long codes.
    Type: Application
    Filed: June 30, 2021
    Publication date: January 13, 2022
    Inventors: Takehiko Mizoguchi, Dongjin Song, Yuncong Chen, Cristian Lumezanu, Haifeng Chen
  • Publication number: 20220012274
    Abstract: Methods and systems of training and using a neural network model include training a time series embedding model and a text embedding model with unsupervised clustering to translate time series and text, respectively, to a shared latent space. The time series embedding model and the text embedding model are further trained using semi-supervised clustering that samples training data pairs of time series information and associated text for annotation.
    Type: Application
    Filed: July 8, 2021
    Publication date: January 13, 2022
    Inventors: Yuncong Chen, Dongjin Song, Cristian Lumezanu, Haifeng Chen, Takehiko Mizoguchi, Xuchao Zhang
  • Patent number: 11169514
    Abstract: Methods and systems for anomaly detection and correction include generating original signature matrices that represent a state of a system of multiple time series. The original signature matrices are encoded using convolutional neural networks. Temporal patterns in the encoded signature matrices are modeled using convolutional long-short term memory neural networks for each respective convolutional neural network. The modeled signature matrices using deconvolutional neural networks. An occurrence of an anomaly is determined using a loss function based on a difference between the decoded signature matrices and the original signature matrices. A corrective action is performed responsive to the determination of the occurrence of the anomaly.
    Type: Grant
    Filed: August 23, 2019
    Date of Patent: November 9, 2021
    Inventors: Dongjin Song, Yuncong Chen, Cristian Lumezanu, Haifeng Chen, Chuxu Zhang
  • Publication number: 20210341910
    Abstract: Methods and systems for detecting and correcting anomalies includes generating historical binary codes from historical time series segments. The historical time series segments are each made up of measurements from respective sensors. A latest binary code is generated from a latest time series segment. It is determined that the latest time series segment represents anomalous behavior, based on a comparison of the latest binary code to the historical binary codes. The sensors are ranked, based on a comparison of time series data of the sensors in the latest time series segment to respective time series data of the historical time series, to generate a sensor ranking. A corrective action is performed responsive to the detected anomaly, prioritized according to the sensor ranking.
    Type: Application
    Filed: April 6, 2021
    Publication date: November 4, 2021
    Inventors: Dongjin Song, Takehiko Mizoguchi, Cristian Lumezanu, Haifeng Chen