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Anomaly detection for vehicular networks for intrusion and malfunction detection

  • US 10,437,992 B2
  • Filed: 09/11/2017
  • Issued: 10/08/2019
  • Est. Priority Date: 12/30/2014
  • Status: Active Grant
First Claim
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1. A Support Vector Machine (SVM) classifier training device comprising:

  • a computer programmed to train a Support Vector Machine (SVM) one-class classifier using a Radial Basis Function (RBF) kernel K calculated using the equation;


    K(xi

    x
    j)=e

    γ



    (x
    i

    x
    j)∥

    2 where x

    custom character and γ

    >

    0where custom character is the set of all real numbers, γ

    represents the curvature of the hyperplane, xi and xj are features of a training set comprising vectors with associated times representing CAN bus messages, and γ



    (Var(D)) where ƒ

    ( ) denotes a function and D denotes message density in time and Var(D) denotes variance of the message density in time, to perform anomaly monitoring of a controller area network (CAN) bus employing a message-based communication protocol by operations including;

    receiving the training set comprising vectors with associated times representing CAN bus messages;

    calculating a hyperplane curvature parameter γ

    functionally dependent on message density in time; and

    training the SVM one-class classifier on the training set using the calculated γ

    .

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