TELEMETRY REPORTING IN VEHICLE SUPER RESOLUTION SYSTEMS

    公开(公告)号:US20230388150A1

    公开(公告)日:2023-11-30

    申请号:US18202680

    申请日:2023-05-26

    Abstract: In one embodiment, a processor of a vehicle detects a difference between a physical characteristic of the vehicle predicted by a first machine learning-based model and a physical characteristic of the vehicle indicated by telemetry data generated by a sub-system of the vehicle. The processor forms a packet payload of an update packet indicative of the detected difference, based in part on a relevancy of the physical characteristic to the first machine learning-based model. The processor applies a synchronization strategy to the update packet, to synchronize the update packet with a second machine learning-based model executed by a receiver. The processor sends the update packet to the receiver via a network, to update the second machine learning-based model.

    INDEPENDENT SPARSE SUB-SYSTEM CALCULATIONS FOR DYNAMIC STATE ESTIMATION IN EMBEDDED SYSTEMS

    公开(公告)号:US20190266499A1

    公开(公告)日:2019-08-29

    申请号:US15907634

    申请日:2018-02-28

    Abstract: In one embodiment, a processor of a vehicle maintains a machine learning-based behavioral model for the vehicle that is configured to predict a current state of the vehicle based on a plurality of state variables that are available from a plurality of sub-systems of the vehicle and are indicative of physical characteristics of the vehicle. The processor receives, from a first one of the sub-systems, a particular subset of the state variables associated with the first sub-system. The processor performs an index lookup of the state variables in the particular subset within an index of the state variables on which the behavioral model is based. The processor updates a portion of the machine learning-based behavioral model using the received subset of state variables and based on the index lookup.

    BEHAVIORAL MODELS FOR VEHICLES
    3.
    发明申请

    公开(公告)号:US20190266498A1

    公开(公告)日:2019-08-29

    申请号:US15907584

    申请日:2018-02-28

    Abstract: In one embodiment, a processor of a vehicle receives a plurality of variables indicative of physical characteristics of the vehicle. The processor uses a machine learning-based model to predict physical states of the vehicle from the plurality of variables indicative of physical characteristics of the vehicle. The model predicts a current physical state of the vehicle from at least two or more prior physical states of the vehicle, and is based on a physical relationship between the physical characteristics. The processor sends synthetic data indicative of the predicted current physical state of the vehicle for use by a receiver application. The processor provides an update to the receiver based on a comparison between the predicted current physical state of the vehicle and the plurality of received variables.

    TELEMETRY REPORTING IN VEHICLE SUPER RESOLUTION SYSTEMS

    公开(公告)号:US20190266484A1

    公开(公告)日:2019-08-29

    申请号:US15907952

    申请日:2018-02-28

    Abstract: In one embodiment, a processor of a vehicle detects a difference between a physical characteristic of the vehicle predicted by a first machine learning-based model and a physical characteristic of the vehicle indicated by telemetry data generated by a sub-system of the vehicle. The processor forms a packet payload of an update packet indicative of the detected difference, based in part on a relevancy of the physical characteristic to the first machine learning-based model. The processor applies a synchronization strategy to the update packet, to synchronize the update packet with a second machine learning-based model executed by a receiver. The processor sends the update packet to the receiver via a network, to update the second machine learning-based model.

    Telemetry reporting in vehicle super resolution systems

    公开(公告)号:US11665017B2

    公开(公告)日:2023-05-30

    申请号:US15907952

    申请日:2018-02-28

    Abstract: In one embodiment, a processor of a vehicle detects a difference between a physical characteristic of the vehicle predicted by a first machine learning-based model and a physical characteristic of the vehicle indicated by telemetry data generated by a sub-system of the vehicle. The processor forms a packet payload of an update packet indicative of the detected difference, based in part on a relevancy of the physical characteristic to the first machine learning-based model. The processor applies a synchronization strategy to the update packet, to synchronize the update packet with a second machine learning-based model executed by a receiver. The processor sends the update packet to the receiver via a network, to update the second machine learning-based model.

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