-
公开(公告)号:US20210175962A1
公开(公告)日:2021-06-10
申请号:US16707927
申请日:2019-12-09
Applicant: INTELLIGENT FUSION TECHNOLOGY, INC.
Inventor: Lun LI , Jingyang LU , John NGUYEN , Dan SHEN , Khanh PHAM , Genshe CHEN
Abstract: The present disclosure provides a high power amplifier (HPA) linearization method, applied to a ground hub which includes a predistorter and a PD controller. The ground hub is arranged in a satellite communication system together with a transmitter and a satellite transponder, and the satellite transponder includes an HPA. The HPA linearization method includes determining an initial correction signal based on a physical model with a plurality of PD parameters to compensate AM-AM and AM-PM characteristics of the HPA; receiving a signal from the satellite transponder; determining a reward function for an action taken by the PD controller; examining an action-value function for actions taken in a preset past period; taking an action to adjust the plurality of PD parameters for the PD to generate an updated correction signal; sending the update correction signal to the transmitter to compensate the AM-AM and AM-PM characteristics of the HPA.
-
公开(公告)号:US20220092420A1
公开(公告)日:2022-03-24
申请号:US17480999
申请日:2021-09-21
Applicant: Intelligent Fusion Technology, Inc.
Inventor: Jingyang LU , Erik BLASCH , Roman ILIN , Hua-mei CHEN , Dan SHEN , Nichole SULLIVAN , Genshe CHEN
Abstract: Embodiments of the present disclosure provide a method, a device, and a storage medium for domain adaptation for efficient learning fusion (DAELF). The method includes acquiring data from a plurality of data sources of a plurality of sensors; for each of the plurality of sensors, training an auxiliary classifier generative adversarial network (AC-GAN) by a hardware processor with data from each data source of the plurality of data sources, thereby obtaining a trained feature extraction network and a trained label prediction network for each data source; forming a decision-level fusion network or a feature-level fusion network; and training the decision-level fusion network or the feature-level fusion network with a source-only mode or a generate to adapt (GTA) mode; and applying the trained decision-level fusion network or the trained feature-level fusion network to detect a target of interest.
-
公开(公告)号:US20210134046A1
公开(公告)日:2021-05-06
申请号:US16674929
申请日:2019-11-05
Applicant: INTELLIGENT FUSION TECHNOLOGY, INC.
Inventor: Jingyang LU , Yiran XU , Dan SHEN , Nichole SULLIVAN , Genshe CHEN , Khanh PHAM , Erik BLASCH
Abstract: The present disclosure provides a method for wave propagation prediction based on a 3D ray tracing engine and machine-learning based dominant ray selection. The method includes receiving, integrating, and processing input data. Integrating and processing the input data includes dividing a cone of the original millimeter wave (mmWave) into a plurality of sub cones; determining a contribution weight of rays coming from each sub cone to the received signal strength (RSS) at a receiving end of interest; and determining rays coming from one or more sub cones that have a total contribution weight to the RSS larger than a preset threshold value as dominant rays using a neural network obtained through a machine learning approach. The method further includes performing ray tracing based on the input data and the dominant rays to predict wave propagation.
-
公开(公告)号:US20210103841A1
公开(公告)日:2021-04-08
申请号:US16595107
申请日:2019-10-07
Applicant: INTELLIGENT FUSION TECHNOLOGY, INC.
Inventor: Dan SHEN , Carolyn SHEAFF , Jingyang LU , Genshe CHEN , Erik BLASCH , Khanh PHAM
Abstract: A method for rapid discovery of satellite behavior, applied to a pursuit-evasion system including at least one satellite and a plurality of space sensing assets. The method includes performing transfer learning and zero-shot learning to obtain a semantic layer using space data information. The space data information includes simulated space data based on a physical model. The method further includes obtaining measured space-activity data of the satellite from the space sensing assets; performing manifold learning on the measured space-activity data to obtain measured state-related parameters of the satellite; modeling the state uncertainty and the uncertainty propagation of the satellite based on the measured state-related parameters; and performing game reasoning based on a Markov game model to predict satellite behavior and management of the plurality of space sensing assets according to the semantic layer and the modeled state uncertainty and uncertainty propagation.
-
公开(公告)号:US20200373972A1
公开(公告)日:2020-11-26
申请号:US16991583
申请日:2020-08-12
Applicant: INTELLIGENT FUSION TECHNOLOGY, INC.
Inventor: Zhonghai WANG , Lun LI , Jingyang LU , Genshe CHEN , Weifeng SU , Xingping LIN , Xingyu XIANG , Wenhao XIONG
IPC: H04B7/0413 , H04B17/336 , H04B17/391
Abstract: A multiple-input and multiple-output (MIMO) bolt-on device for a single-input and single-output (SISO) radio, a MIMO channel emulator for testing the MIMO bolt-on device, and a MIMO channel emulation method are provided. The MIMO bolt-on device includes: a plurality of antennas, a multi-channel receiver, a plurality of couplers, a micro-controller, and a switch device. The multi-channel receiver includes a plurality of channels for signal transmission. Each coupler is configured to couple the multi-channel receiver with one of the plurality of antennas. The micro-controller is coupled to the multi-channel receiver to compare signals from the plurality of channels, thereby identifying a channel with a highest signal-to-noise (SNR) among the plurality of channels. The switch device is coupled to the micro-controller and configured to select an antenna corresponding to the channel with the highest SNR among the plurality of antennas for a connection between a selected antenna and the SISO radio.
-
6.
公开(公告)号:US20190228272A1
公开(公告)日:2019-07-25
申请号:US15878188
申请日:2018-01-23
Applicant: Intelligent Fusion Technology, Inc
Inventor: Dan SHEN , Peter ZULCH , Marcello DISASIO , Erik BLASCH , Genshe CHEN , Zhonghai WANG , Jingyang LU
Abstract: The present disclosure provides a method for joint manifold learning based heterogenous sensor data fusion, comprising: obtaining learning heterogeneous sensor data from a plurality sensors to form a joint manifold, wherein the plurality sensors include different types of sensors that detect different characteristics of targeting objects; performing, using a hardware processor, a plurality of manifold learning algorithms to process the joint manifold to obtain raw manifold learning results, wherein a dimension of the manifold learning results is less than a dimension of the joint manifold; processing the raw manifold learning results to obtain intrinsic parameters of the targeting objects; evaluating the multiple manifold learning algorithms based on the raw manifold learning results and the intrinsic parameters to determine one or more optimum manifold learning algorithms; and applying the one or more optimum manifold learning algorithms to fuse heterogeneous sensor data generated by the plurality sensors.
-
-
-
-
-