Data-driven models (DDM) based on machine learning and other AI techniques play an important role in the perception of increasingly autonomous systems. Due to the merely implicit definition of their behavior mainly based on the data used for training, DDM outputs are subject to uncertainty. This poses a challenge with respect to the realization of safety-critical perception tasks by means of DDMs. A promising approach to tackling this challenge is to estimate the uncertainty in the current situation during operation and adapt the system behavior accordingly. In previous work, we focused on runtime estimation of uncertainty and discussed approaches for handling uncertainty estimations. In this paper, we present additional architectural patterns for handling uncertainty. Furthermore, we evaluate the four patterns qualitatively and quantitatively with respect to safety and performance gains. For the quantitative evaluation, we consider a distance controller for vehicle platooning where performance gains are measured by considering how much the distance can be reduced in different operational situations. We conclude that the consideration of context information of the driving situation makes it possible to accept more or less uncertainty depending on the inherent risk of the situation, which results in performance gains.
翻译:以机器学习和其他AI技术为基础的数据驱动模型(DDM)在对日益自主的系统的看法中起着重要作用。由于仅仅以培训所用数据为基础对其行为作出隐含的定义,DDM产出受到不确定性的影响。这对通过DDM实现安全关键认知任务构成挑战。应对这一挑战的一个有希望的方法是估计运行期间目前状况的不确定性,并相应调整系统行为。在以往的工作中,我们侧重于对不确定性的运行时间估计,并讨论了处理不确定性估计的方法。在本文件中,我们提出了处理不确定性的其他建筑模式。此外,我们从质量和数量上评估了安全和绩效收益方面的四种模式。关于数量评估,我们考虑通过考虑不同运行情况下的距离可以减少多少,以此来衡量绩效收益的车辆排的远程控制器。我们的结论是,对驱动情况的背景信息的审议使得人们能够接受多少或更少的不确定性,取决于情况的内在风险,从而导致绩效收益。