未知搜索环境中的无人机在线搜索规划

Drones Pub Date : 2024-07-19 DOI:10.3390/drones8070336
Haopeng Duan, Kaiming Xiao, Lihua Liu, Haiwen Chen, Hongbin Huang
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引用次数: 0

摘要

无人飞行器(UAV)已被广泛应用于本地化数据收集和信息搜索。然而,在无人机搜索的实际操作中仍存在许多实际挑战,例如未知的搜索环境。具体来说,每个搜索点的回报和成本对于规划者来说都是事先未知的,这给决策带来了极大的挑战。也就是说,无人机搜索决策应以在线方式依次做出,从而适应未知的搜索环境。为此,本文提出了无人机搜索规划中的在线决策问题,即无人机以有限的能源供应为约束条件,必须以在线方式做出不可撤销的决定,是搜索这一区域还是航线到下一区域。为了克服搜索环境未知的挑战,我们提出了一种联合规划方法,即路线选择和搜索决策都以综合在线方式进行。综合在线决策是通过在线线性规划做出的,事实证明这种方法接近最优,能带来较高的信息搜索收益。此外,这种联合规划方法可以很好地应用于多轮无人机在线搜索规划场景,在收集信息方面显示出极大的先发优势。所提方法的有效性在一个广泛应用的数据集中得到了验证,实验结果表明了在线搜索决策的优越性能。
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Online Unmanned Aerial Vehicles Search Planning in an Unknown Search Environment
Unmanned Aerial Vehicles (UAVs) have been widely used in localized data collection and information search. However, there are still many practical challenges in real-world operations of UAV search, such as unknown search environments. Specifically, the payoff and cost at each search point are unknown for the planner in advance, which poses a great challenge to decision making. That is, UAV search decisions should be made sequentially in an online manner thereby adapting to the unknown search environment. To this end, this paper initiates the problem of online decision making in UAV search planning, where the drone has limited energy supply as a constraint and has to make an irrevocable decision to search this area or route to the next in an online manner. To overcome the challenge of unknown search environment, a joint-planning approach is proposed, where both route selection and search decision are made in an integrated online manner. The integrated online decision is made through an online linear programming which is proved to be near-optimal, resulting in high information search revenue. Furthermore, this joint-planning approach can be favorably applied to multi-round online UAV search planning scenarios, showing a great superiority in first-mover dominance of gathering information. The effectiveness of the proposed approach is validated in a widely applied dataset, and experimental results show the superior performance of online search decision making.
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