Journal Article10.1109/JSAC.2022.3228558
Deep Reinforcement Learning Based Computation Offloading and Trajectory Planning for Multi-UAV Cooperative Target Search
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TL;DR: In this paper , a deep reinforcement learning (DRL) technique was proposed to jointly make optimal computation offloading decisions and flying orientation choices for multi-UAV cooperative target search, and extensive simulations validate the effectiveness of the proposed techniques, and comprehensive discussions on how different parameters affect the search performance are given.
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Abstract: Unmanned aerial vehicles (UAVs) are widely used for surveillance and monitoring to complete target search tasks. However, the short battery life and moderate computational capability hinder UAVs to process computation-intensive tasks. The emerging edge computing technologies can alleviate this problem by offloading tasks to the ground edge servers. How to evaluate the search process so as to make optimal offloading decisions and make optimal flying trajectories represent fundamental research challenges. In this paper, we propose to utilize the concept of uncertainty to evaluate the search process, which reflects the reliability of the target search results. Thereafter, we propose a deep reinforcement learning (DRL) technique to jointly make optimal computation offloading decisions and flying orientation choices for multi-UAV cooperative target search. Specifically, we first formulate an uncertainty minimization problem based on the established system model. By introducing a reward function, we prove that the uncertainty minimization problem is equivalent to a reward maximization problem, which is further analyzed by a Markov decision process (MDP). To obtain the optimal task offloading decisions and flying orientation choices, a deep Q-network (DQN) based DRL architecture with a separated Q-network is then proposed. Finally, extensive simulations validate the effectiveness of the proposed techniques, and comprehensive discussions on how different parameters affect the search performance are given.
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Citations
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A multi-agent reinforcement learning algorithm with the action preference selection strategy for massive target cooperative search mission planning
TL;DR: In this article , an improved reinforcement learning algorithm using the action preference selection strategy was proposed to solve the problem of invalid searches within the stochastic strategy by changing the preferred action selection method, which improved the efficiency of multiple agents in the search for targets without collision using a cooperative mechanism and reward rules based on the odor effect.
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Profit-Aware Cooperative Offloading in UAV-Enabled MEC Systems Using Lightweight Deep Reinforcement Learning
Zheyi Chen,Junjie Zhang,Xianghan Zheng,Geyong Min,Jie Li,Chunming Rong +5 more
TL;DR: Profit-aware cooperative offloading framework DisOff for UAV-enabled MEC systems using lightweight DRL, improving QoS and maximizing ESP profits.
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