Cofta Piotr, Ledziński Damian, Śmigiel Sandra, Gackowska Marta
Faculty of Telecommunications, Computer Science and Technology, UTP University of Science and Technology, 85-796 Bydgoszcz, Poland.
Entropy (Basel). 2020 May 27;22(6):597. doi: 10.3390/e22060597.
Due to their growing number and increasing autonomy, drones and drone swarms are equipped with sophisticated algorithms that help them achieve mission objectives. Such algorithms vary in their quality such that their comparison requires a metric that would allow for their correct assessment. The novelty of this paper lies in analysing, defining and applying the construct of cross-entropy, known from thermodynamics and information theory, to swarms. It can be used as a synthetic measure of the robustness of algorithms that can control swarms in the case of obstacles and unforeseen problems. Based on this, robustness may be an important aspect of the overall quality. This paper presents the necessary formalisation and applies it to a few examples, based on generalised unexpected behaviour and the results of collision avoidance algorithms used to react to obstacles.
由于无人机和无人机群数量不断增加且自主性日益增强,它们配备了复杂的算法以帮助实现任务目标。这些算法质量各异,因此对它们进行比较需要一个能够对其进行正确评估的指标。本文的新颖之处在于分析、定义并将热力学和信息论中已知的交叉熵结构应用于群体。它可以用作一种综合度量,来衡量在遇到障碍物和意外问题时能够控制群体的算法的鲁棒性。基于此,鲁棒性可能是整体质量的一个重要方面。本文给出了必要的形式化,并基于广义意外行为和用于应对障碍物的避碰算法结果将其应用于几个示例。