Digital Twins for Trust Building in Autonomous Drones through Dynamic Safety Evaluation

Danish Iqbal, Barbora Buhnova, Emilia Cioroaica
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Abstract

The adoption process of innovative software-intensive technologies leverages complex trust concerns in different forms and shapes. Perceived safety plays a fundamental role in technology adoption, being especially crucial in the case of those innovative software-driven technologies characterized by a high degree of dynamism and unpredictability, like collaborating autonomous systems. These systems need to synchronize their maneuvers in order to collaboratively engage in reactions to unpredictable incoming hazardous situations. That is however only possible in the presence of mutual trust. In this paper, we propose an approach for machine-to-machine dynamic trust assessment for collaborating autonomous systems that supports trust-building based on the concept of dynamic safety assurance within the collaborative process among the software-intensive autonomous systems. In our approach, we leverage the concept of digital twins which are abstract models fed with real-time data used in the run-time dynamic exchange of information. The information exchange is performed through the execution of specialized models that embed the necessary safety properties. More particularly, we examine the possible role of the Digital Twins in machine-to-machine trust building and present their design in supporting dynamic trust assessment of autonomous drones. Ultimately, we present a proof of concept of direct and indirect trust assessment by employing the Digital Twin in a use case involving two autonomous collaborating drones.
基于动态安全评估的自主无人机信任构建数字孪生模型
创新软件密集型技术的采用过程以不同的形式和形式利用了复杂的信任问题。感知安全性在技术采用中起着至关重要的作用,对于那些具有高度动态性和不可预测性的创新软件驱动技术(如协作自主系统)来说,这一点尤为重要。这些系统需要同步它们的机动,以便协同参与对不可预测的即将到来的危险情况的反应。然而,这只有在相互信任的情况下才有可能实现。在本文中,我们提出了一种协作自治系统的机器对机器动态信任评估方法,该方法支持基于软件密集型自治系统之间协作过程中的动态安全保证概念的信任构建。在我们的方法中,我们利用了数字孪生的概念,数字孪生是一种抽象模型,它由运行时动态信息交换中使用的实时数据提供。信息交换是通过嵌入必要安全属性的专门模型的执行来完成的。更具体地说,我们研究了数字孪生在机器对机器信任建立中的可能作用,并介绍了它们在支持自主无人机动态信任评估方面的设计。最后,我们通过在涉及两个自主协作无人机的用例中使用数字孪生,提出了直接和间接信任评估的概念证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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