用神经网络验证神经网络控制系统

Qingye Zhao, Xin Chen, Zhuoyu Zhao, Yifan Zhang, Enyi Tang, Xuandong Li
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引用次数: 3

摘要

当神经网络控制系统应用于安全关键领域时,安全性验证是其基本要求。本文提出了一种新的神经网络屏障证书合成方法,为神经网络控制系统提供安全保障。我们首先提出了神经网络屏障证书的构造条件,然后给出了一个迭代框架来综合它们。每次迭代使用从神经网络控制系统中采样的训练数据集训练一个神经网络作为候选障碍证书。经过训练后,将神经网络控制系统的候选障碍证书识别转化为一组混合整数规划问题,由数值优化求解器进行求解,结果有保证。我们实现了NetBC工具,并通过6个实际基准示例评估了其性能。实验结果表明,NetBC比现有的基于多项式屏障证书的方法更有效,可扩展性更强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Verifying Neural Network Controlled Systems Using Neural Networks
Safety verification is an essential requirement of neural network controlled systems when they are adopted in safety-critical fields. This paper proposes a novel approach to synthesizing neural networks as barrier certificates, which can provide safety guarantees for neural network controlled systems. We first propose the construction conditions of neural network barrier certificates, followed by an iterative framework to synthesize them. Each iteration trains a neural network as the candidate barrier certificate using the training datasets sampled from the neural network controlled system. After training, identifying whether the candidate barrier certificate is a real one for the neural network controlled system is transformed into a group of mixed-integer programming problems, which the numerical optimization solver solves with guaranteed results. We implement the tool NetBC and evaluate its performance over 6 practical benchmark examples. The experimental results show that NetBC is more effective and scalable than the existing polynomial barrier certificate-based method.
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