Synthesizing barrier certificates using neural networks

Hengjun Zhao, Xia Zeng, Taolue Chen, Zhiming Liu
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引用次数: 37

Abstract

This paper presents an approach of safety verification based on neural networks for continuous dynamical systems which are modeled as a system of ordinary differential equations. We adopt the deductive verification methods based on barrier certificates. These are functions over the states of the dynamical system with certain constraints the existence of which entails the safety of the system under consideration. We propose to represent the barrier function by neural networks and provide a comprehensive synthesis framework. In particular, we devise a new type of activation functions, i.e., Bent-ReLU, for the neural networks; we provide sampling based approaches to generate training sets and formulate the loss functions for neural network training which can capture the essence of barrier certificate; we also present practical methods to check a learnt candidate barrier certificate against the criteria of barrier certificates as a formal guarantee. We implement our approaches via proof-of-concept experiments with encouraging results.
利用神经网络合成屏障证书
本文提出了一种基于神经网络的常微分方程组连续动力系统安全验证方法。我们采用了基于屏障证书的演绎验证方法。这些是具有一定约束的动力系统状态上的函数,这些约束的存在意味着所考虑的系统的安全性。我们建议用神经网络来表示障碍函数,并提供一个全面的综合框架。特别地,我们为神经网络设计了一种新的激活函数,即Bent-ReLU;我们提供了基于采样的方法来生成训练集,并制定了能够捕捉障碍证书本质的神经网络训练损失函数;我们还提出了实际的方法来检查学习的候选屏障证书对屏障证书作为正式保证的标准。我们通过概念验证实验实现了我们的方法,并取得了令人鼓舞的结果。
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