Functional verification of cyber-physical systems containing machine-learnt components

IF 1 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS IT-Information Technology Pub Date : 2021-10-01 DOI:10.1515/itit-2021-0009
Farzaneh Moradkhani, M. Fränzle
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Abstract

Abstract Functional architectures of cyber-physical systems increasingly comprise components that are generated by training and machine learning rather than by more traditional engineering approaches, as necessary in safety-critical application domains, poses various unsolved challenges. Commonly used computational structures underlying machine learning, like deep neural networks, still lack scalable automatic verification support. Due to size, non-linearity, and non-convexity, neural network verification is a challenge to state-of-art Mixed Integer linear programming (MILP) solvers and satisfiability modulo theories (SMT) solvers [2], [3]. In this research, we focus on artificial neural network with activation functions beyond the Rectified Linear Unit (ReLU). We are thus leaving the area of piecewise linear function supported by the majority of SMT solvers and specialized solvers for Artificial Neural Networks (ANNs), the successful like Reluplex solver [1]. A major part of this research is using the SMT solver iSAT [4] which aims at solving complex Boolean combinations of linear and non-linear constraint formulas (including transcendental functions), and therefore is suitable to verify the safety properties of a specific kind of neural network known as Multi-Layer Perceptron (MLP) which contain non-linear activation functions.
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包含机器学习组件的网络物理系统的功能验证
网络物理系统的功能架构越来越多地由训练和机器学习生成的组件组成,而不是通过更传统的工程方法生成的组件,这在安全关键应用领域是必要的,这带来了各种尚未解决的挑战。机器学习基础上常用的计算结构,如深度神经网络,仍然缺乏可扩展的自动验证支持。由于神经网络的大小、非线性和非凸性,神经网络验证对目前最先进的混合整数线性规划(MILP)求解器和可满足模理论(SMT)求解器[2],[3]提出了挑战。在本研究中,我们重点研究了具有超越整流线性单元(ReLU)激活函数的人工神经网络。因此,我们离开了由大多数SMT求解器和人工神经网络(ann)的专用求解器支持的分段线性函数领域,成功的如Reluplex求解器[1]。本研究的主要部分是使用SMT求解器iSAT[4],它旨在求解线性和非线性约束公式(包括超越函数)的复杂布尔组合,因此适合验证包含非线性激活函数的特定类型的神经网络多层感知器(MLP)的安全性。
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来源期刊
IT-Information Technology
IT-Information Technology COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.80
自引率
0.00%
发文量
29
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