Presentation of our tool

  • Gitlab link: Millly/robotic-synthesis
  • Our tool is an implementation, based on python and PPLPY, of a three-layer method:
  • SWA-SMT solver: verifying reachability and compute a trace of a successful run.
    This method is based on Stopwatches Timed Automata synchronized with channels and SMT solver.
  • RL: get a real-time policies for a controller for a multi-agent system.
    This method is based on Reinforcement Learning and using our previously computed dataset of SWA-SMT solutions.
  • Here is few episodes played by a neural network policy trained with TD3BC: