This paper aims to enhance the computational efficiency of safety verification of neural network control systems by developing a guaranteed neural network model reduction method. First, a concept of model reduction precision is proposed to describe the guaranteed distance between the outputs of a neural network and its reduced-size version. A reachability-based algorithm is proposed to accurately compute the model reduction precision. Then, by substituting a reduced-size neural network controller into the closed-loop system, an algorithm to compute the reachable set of the original system is developed, which is able to support much more computationally efficient safety verification processes. Finally, the developed methods are applied to a case study of the Adaptive Cruise Control system with a neural network controller, which is shown to significantly reduce the computational time of safety verification and thus validate the effectiveness of the method.
翻译:本文旨在通过开发一个有保障的神经网络模型减少方法,提高神经网络控制系统安全核查的计算效率。首先,提出了模型减少精确度概念,以描述神经网络产出与其缩小版本之间的保证距离。提出了基于可实现性的算法,以准确计算模型减少精确度。然后,通过将一个缩小尺寸的神经网络控制器替换为闭环系统,开发了一个计算原始系统可达到的数据集的算法,从而能够支持更高效的计算安全核查程序。最后,将开发出的方法应用于对配有神经网络控制器的适应性巡航控制系统的案例研究,该案例研究显示大大缩短了安全核查的计算时间,从而验证了该方法的有效性。