• Title of article

    A real-time spiking cerebellum model for learning robot control

  • Author/Authors

    Richard R. Carrillo، نويسنده , , Eduardo Ros، نويسنده , , Christian Boucheny، نويسنده , , Olivier J.-M.D. Coenen، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2008
  • Pages
    10
  • From page
    18
  • To page
    27
  • Abstract
    We describe a neural network model of the cerebellum based on integrate-and-fire spiking neurons with conductance-based synapses. The neuron characteristics are derived from our earlier detailed models of the different cerebellar neurons. We tested the cerebellum model in a real-time control application with a robotic platform. Delays were introduced in the different sensorimotor pathways according to the biological system. The main plasticity in the cerebellar model is a spike-timing dependent plasticity (STDP) at the parallel fiber to Purkinje cell connections. This STDP is driven by the inferior olive (IO) activity, which encodes an error signal using a novel probabilistic low frequency model. We demonstrate the cerebellar model in a robot control system using a target-reaching task. We test whether the system learns to reach different target positions in a non-destructive way, therefore abstracting a general dynamics model. To test the system’s ability to self-adapt to different dynamical situations, we present results obtained after changing the dynamics of the robotic platform significantly (its friction and load). The experimental results show that the cerebellar-based system is able to adapt dynamically to different contexts.
  • Keywords
    SpikingNeuronCerebellumAdaptiveSimulationLearningInferior oliveProbabilisticRobotReal time
  • Journal title
    BioSystems
  • Serial Year
    2008
  • Journal title
    BioSystems
  • Record number

    498047