Learning-Based UAV Trajectory Optimization with Collision Avoidance and Connectivity Constraints
This addresses the challenge of safe and connected UAV operations in wireless networks, representing an incremental improvement by applying existing deep reinforcement learning methods to a specific domain.
The paper tackles the problem of optimizing collision-free trajectories for multiple UAVs while maintaining wireless connectivity with ground base stations, using a decentralized deep reinforcement learning approach that achieves high success rates in real-time navigation across various environments.
Unmanned aerial vehicles (UAVs) are expected to be an integral part of wireless networks, and determining collision-free trajectories for multiple UAVs while satisfying requirements of connectivity with ground base stations (GBSs) is a challenging task. In this paper, we first reformulate the multi-UAV trajectory optimization problem with collision avoidance and wireless connectivity constraints as a sequential decision making problem in the discrete time domain. We, then, propose a decentralized deep reinforcement learning approach to solve the problem. More specifically, a value network is developed to encode the expected time to destination given the agent's joint state (including the agent's information, the nearby agents' observable information, and the locations of the nearby GBSs). A signal-to-interference-plus-noise ratio (SINR)-prediction neural network is also designed, using accumulated SINR measurements obtained when interacting with the cellular network, to map the GBSs' locations into the SINR levels in order to predict the UAV's SINR. Numerical results show that with the value network and SINR-prediction network, real-time navigation for multi-UAVs can be efficiently performed in various environments with high success rate.