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Learning Hybrid Policies for MPC with Application to Drone Flight in Unknown Dynamic Environments (2401.09705v2)

Published 18 Jan 2024 in cs.RO, cs.SY, and eess.SY

Abstract: In recent years, drones have found increased applications in a wide array of real-world tasks. Model predictive control (MPC) has emerged as a practical method for drone flight control, owing to its robustness against modeling errors/uncertainties and external disturbances. However, MPC's sensitivity to manually tuned parameters can lead to rapid performance degradation when faced with unknown environmental dynamics. This paper addresses the challenge of controlling a drone as it traverses a swinging gate characterized by unknown dynamics. This paper introduces a parameterized MPC approach named hyMPC that leverages high-level decision variables to adapt to uncertain environmental conditions. To derive these decision variables, a novel policy search framework aimed at training a high-level Gaussian policy is presented. Subsequently, we harness the power of neural network policies, trained on data gathered through the repeated execution of the Gaussian policy, to provide real-time decision variables. The effectiveness of hyMPC is validated through numerical simulations, achieving a 100\% success rate in 20 drone flight tests traversing a swinging gate, demonstrating its capability to achieve safe and precise flight with limited prior knowledge of environmental dynamics.

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Authors (6)
  1. Zhaohan Feng (3 papers)
  2. Jie Chen (602 papers)
  3. Wei Xiao (100 papers)
  4. Jian Sun (416 papers)
  5. Bin Xin (4 papers)
  6. Gang Wang (407 papers)
Citations (1)

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