当网络物理系统遇到人工智能:基准,评估和前进的道路

Jiayang Song, Deyun Lyu, Zhenya Zhang, Zhijie Wang, Tianyi Zhang, L. Ma
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引用次数: 10

摘要

信息物理系统(CPS)已广泛应用于安全关键领域,如汽车系统、航空电子设备、医疗设备等。近年来,人工智能(AI)越来越多地用于控制CPS。尽管人工智能支持的CPS很受欢迎,但很少有公开的基准。对于人工智能支持的CPS在不同工业领域的性能和可靠性也缺乏深入的了解。为了弥补这一差距,我们在七个领域提出了行业级CPS的公共基准,并通过最先进的深度强化学习(DRL)方法为它们构建人工智能控制器。在此基础上,我们进一步对这些人工智能系统与传统系统进行系统评估,以确定当前的挑战和未来的机遇。我们的主要发现包括:(1)人工智能控制器并不总是优于传统控制器,(2)现有的CPS测试技术(特别是证伪)无法分析人工智能支持的CPS,以及(3)构建一个混合系统,在人工智能控制器和传统控制器之间进行战略性组合和切换,可以在不同领域实现更好的性能。我们的研究结果强调了对人工智能CPS的新测试技术的需求,以及对混合CPS进行更多研究以实现最佳性能和可靠性的需求。我们的基准测试、代码、详细的评估结果和实验脚本可在https://sites.google.com/view/ai-cps-benchmark上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When Cyber-Physical Systems Meet AI: A Benchmark, an Evaluation, and a Way Forward
Cyber-Physical Systems (CPS) have been broadly deployed in safety-critical domains, such as automotive systems, avionics, medical devices, etc. In recent years, Artificial Intelligence (AI) has been increasingly adopted to control CPS. Despite the popularity of AI-enabled CPS, few benchmarks are publicly available. There is also a lack of deep understanding on the performance and reliability of AI-enabled CPS across different industrial domains. To bridge this gap, we present a public benchmark of industry-level CPS in seven domains and build AI controllers for them via state-of-the-art deep reinforcement learning (DRL) methods. Based on that, we further perform a systematic evaluation of these AI-enabled systems with their traditional counterparts to identify current challenges and future opportunities. Our key findings include (1) AI controllers do not always outperform traditional controllers, (2) existing CPS testing techniques (falsification, specifically) fall short of analyzing AI-enabled CPS, and (3) building a hybrid system that strategically combines and switches between AI controllers and traditional controllers can achieve better performance across different domains. Our results highlight the need for new testing techniques for AI-enabled CPS and the need for more investigations into hybrid CPS to achieve optimal performance and reliability. Our benchmark, code, detailed evaluation results, and experiment scripts are available on https://sites.google.com/view/ai-cps-benchmark.
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