• Title of article

    How to learn from the resilience of Human–Machine Systems?

  • Author/Authors

    Ouedraogo، نويسنده , , Kiswendsida Abel and Enjalbert، نويسنده , , Simon and Vanderhaegen، نويسنده , , Frédéric، نويسنده ,

  • Pages
    11
  • From page
    24
  • To page
    34
  • Abstract
    This paper proposes a functional architecture to learn from resilience. First, it defines the concept of resilience applied to Human–Machine System (HMS) in terms of safety management for perturbations and proposes some indicators to assess this resilience. Local and global indicators for evaluating human–machine resilience are used for several criteria. A multi-criteria resilience approach is then developed in order to monitor the evolution of local and global resilience. The resilience indicators are the possible inputs of a learning system that is capable of producing several outputs, such as predictions of the possible evolutions of the systemʹs resilience and possible alternatives for human operators to control resilience. Our system has a feedback–feedforward architecture and is capable of learning from the resilience indicators. A practical example is explained in detail to illustrate the feasibility of such prediction.
  • Keywords
    Resilience , Feedback/feedforward control , learning process , Human–machine systems
  • Journal title
    Astroparticle Physics
  • Record number

    2047527