Analyzing Cyber-Physical Systems from the Perspective of Artificial Intelligence

Eric M. S. P. Veith, Lars Fischer, Martin Tröschel, Astrid Nieße
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引用次数: 14

Abstract

Principles of modern cyber-physical system (CPS) analysis are based on analytical methods that depend on whether safety or liveness requirements are considered. Complexity is abstracted through different techniques, ranging from stochastic modelling to contracts. However, both distributed heuristics and Artificial Intelligence (AI)-based approaches as well as the user perspective or unpredictable effects, such as accidents or the weather, introduce enough uncertainty to warrant reinforcement-learning-based approaches. This paper compares traditional approaches in the domain of CPS modelling and analysis with the AI researcher perspective to exploring unknown complex systems.
从人工智能的角度分析信息物理系统
现代网络物理系统(CPS)分析的原理是基于是否考虑安全性或活动性要求的分析方法。复杂性是通过不同的技术抽象出来的,从随机建模到契约。然而,分布式启发式和基于人工智能(AI)的方法,以及用户视角或不可预测的影响(如事故或天气),都引入了足够的不确定性,以保证基于强化学习的方法。本文将传统的CPS建模和分析方法与人工智能研究人员的观点进行了比较,以探索未知的复杂系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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