LGSYOct 16, 2017

Safe Learning of Quadrotor Dynamics Using Barrier Certificates

arXiv:1710.05472v1211 citations
Originality Incremental advance
AI Analysis

This work addresses safe model learning for quadrotor control, which is incremental as it builds on existing barrier certificate and Gaussian process methods.

The paper tackles the problem of safely learning quadrotor dynamics in unknown environments using Gaussian processes, with barrier certificates ensuring stability to prevent crashes, and simulation results demonstrate its effectiveness.

To effectively control complex dynamical systems, accurate nonlinear models are typically needed. However, these models are not always known. In this paper, we present a data-driven approach based on Gaussian processes that learns models of quadrotors operating in partially unknown environments. What makes this challenging is that if the learning process is not carefully controlled, the system will go unstable, i.e., the quadcopter will crash. To this end, barrier certificates are employed for safe learning. The barrier certificates establish a non-conservative forward invariant safe region, in which high probability safety guarantees are provided based on the statistics of the Gaussian Process. A learning controller is designed to efficiently explore those uncertain states and expand the barrier certified safe region based on an adaptive sampling scheme. In addition, a recursive Gaussian Process prediction method is developed to learn the complex quadrotor dynamics in real-time. Simulation results are provided to demonstrate the effectiveness of the proposed approach.

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