结合爬行元强化学习和生成式对抗模仿学习的无人机控制方法

IF 2.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Future Internet Pub Date : 2024-03-20 DOI:10.3390/fi16030105
Shui Jiang, Yanning Ge, Xu Yang, Wencheng Yang, Hui Cui
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引用次数: 0

摘要

强化学习(RL)在帮助无人驾驶飞行器(UAV)在复杂多变的环境中高效、智能地导航和决策方面发挥着关键作用。尽管 RL 非常重要,但其固有的局限性却阻碍了 RL 的发展,例如样本效率低、泛化能力受限以及严重依赖复杂的奖励函数设计。这些挑战往往使单一方法的 RL 方法无法满足需要,尤其是在无人机操作中,现实应用中的高成本和安全风险不容忽视。为了解决这些问题,本文介绍了一种新颖的 RL 框架,该框架协同整合了元学习和模仿学习。通过利用元学习中的 Reptile 算法和生成式对抗模仿学习(GAIL),以及处理状态数据的状态归一化技术,该框架显著增强了模型的适应性。它通过识别和利用各种任务的共性来实现这一目标,从而无需复杂的奖励函数设计就能迅速适应新的挑战。为了确定这种集成方法的有效性,我们在两个二维环境中进行了模拟实验。实证结果清楚地表明,我们的 GAIL 增强 Reptile 方法在训练效率方面超过了传统的单一方法 RL 算法。这些证据凸显了元学习和模仿学习相结合的潜力,可以克服强化学习在无人机轨迹规划和决策过程中所面临的传统障碍。
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UAV Control Method Combining Reptile Meta-Reinforcement Learning and Generative Adversarial Imitation Learning
Reinforcement learning (RL) is pivotal in empowering Unmanned Aerial Vehicles (UAVs) to navigate and make decisions efficiently and intelligently within complex and dynamic surroundings. Despite its significance, RL is hampered by inherent limitations such as low sample efficiency, restricted generalization capabilities, and a heavy reliance on the intricacies of reward function design. These challenges often render single-method RL approaches inadequate, particularly in the context of UAV operations where high costs and safety risks in real-world applications cannot be overlooked. To address these issues, this paper introduces a novel RL framework that synergistically integrates meta-learning and imitation learning. By leveraging the Reptile algorithm from meta-learning and Generative Adversarial Imitation Learning (GAIL), coupled with state normalization techniques for processing state data, this framework significantly enhances the model’s adaptability. It achieves this by identifying and leveraging commonalities across various tasks, allowing for swift adaptation to new challenges without the need for complex reward function designs. To ascertain the efficacy of this integrated approach, we conducted simulation experiments within both two-dimensional environments. The empirical results clearly indicate that our GAIL-enhanced Reptile method surpasses conventional single-method RL algorithms in terms of training efficiency. This evidence underscores the potential of combining meta-learning and imitation learning to surmount the traditional barriers faced by reinforcement learning in UAV trajectory planning and decision-making processes.
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来源期刊
Future Internet
Future Internet Computer Science-Computer Networks and Communications
CiteScore
7.10
自引率
5.90%
发文量
303
审稿时长
11 weeks
期刊介绍: Future Internet is a scholarly open access journal which provides an advanced forum for science and research concerned with evolution of Internet technologies and related smart systems for “Net-Living” development. The general reference subject is therefore the evolution towards the future internet ecosystem, which is feeding a continuous, intensive, artificial transformation of the lived environment, for a widespread and significant improvement of well-being in all spheres of human life (private, public, professional). Included topics are: • advanced communications network infrastructures • evolution of internet basic services • internet of things • netted peripheral sensors • industrial internet • centralized and distributed data centers • embedded computing • cloud computing • software defined network functions and network virtualization • cloud-let and fog-computing • big data, open data and analytical tools • cyber-physical systems • network and distributed operating systems • web services • semantic structures and related software tools • artificial and augmented intelligence • augmented reality • system interoperability and flexible service composition • smart mission-critical system architectures • smart terminals and applications • pro-sumer tools for application design and development • cyber security compliance • privacy compliance • reliability compliance • dependability compliance • accountability compliance • trust compliance • technical quality of basic services.
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