Measuring an overall autonomy score for a robotic system requires the combination of a set of relevant aspects and features of the system that might be measured in different units, qualitative, and/or discordant. In this paper, we build upon an existing non-contextual autonomy framework that measures and combines the Autonomy Level and the Component Performance of a system as overall autonomy score. We examine several methods of combining features, showing how some methods find different rankings of the same data, and we employ the weighted product method to resolve this issue. Furthermore, we introduce the non-contextual autonomy coordinate and represent the overall autonomy of a system with an autonomy distance. We apply our method to a set of seven Unmanned Aerial Systems (UAS) and obtain their absolute autonomy score as well as their relative score with respect to the best system.
翻译:测量机器人系统的总体自主性分数需要将该系统的一组相关方面和特征结合起来,这些方面和特征可以按不同单位、质量和/或差异度度量,在本文件中,我们以现有的非通俗性自主性框架为基础,将一个系统的自主性水平和组件性能作为整体自主性分数进行衡量和组合。我们研究了几种组合性特征的方法,显示一些方法如何发现同一数据的不同等级,我们采用加权产品方法解决这一问题。此外,我们引入了非通性自主性协调,并代表了具有自主性距离的系统的总体自主性。我们将我们的方法应用于一套七种无人驾驶航空系统(UAS),并获得了它们相对于最佳系统的绝对自主性分数和相对分数。