Cyber-Physical Behaviour Detection and Understanding using Artificial Intelligence

Z. Sabeur, A. Bruno, Liam Johnstone, Marouane Ferjani, D. Benaouda, Banafshe Arbab-Zavar, D. Cetinkaya, Muntadhar Sallal
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Abstract

The advancement of cyber-physical behaviour detection and understanding in context of urban environment safety and security has been developed in the S4AllCities project (S4AllCities, 2020). Specifically, various concepts of fundamental artificial intelligence and reasoning have been successfully developed and will subsequently be tested in situ in S4AllCities pilot sites during the coming year 2022 (Sabeur et al, 2021). The detection of anomalies in TCP and UDP communication-based protocols taking place in context of urban spaces have been investigated. These were also complemented with the detection of unusualness in crowd physical behaviour in the same urban spaces. The aim is to combine both modes (cyber and physical) of detection and behaviour understanding, in order to advance our situation awareness in context of native knowledge and reasoning for efficiently maintaining safety and security across the urban space. Native knowledge concerns the evaluated risks and mitigation measures for response to potential cyber-physical attacks on the urban space. In this study, the deployed machine learning techniques achieved good performances for classifying cyber and physical behaviour under various scenarios of potential attacks. Our future work is to exercise the performance, evaluation and validation of our intelligent algorithms using in situ cyber and physical observation scenarios of the urban spaces of the three S4AllCities pilot sites in Europe.References:S4AllCities (2020). Safe and Secure Smart Spaces for all Cities H2020 project ID number 883522. https://www.s4allcities.eu/project. Sabeur Z., Angelopoulos C.M., Collick L., Chechina N., Cetinkaya D., Bruno A. (2021) Advanced Cyber and Physical Situation Awareness in Urban Smart Spaces. In: Ayaz H., Asgher U., Paletta L. (eds) Advances in Neuroergonomics and Cognitive Engineering. AHFE 2021. Lecture Notes in Networks and Systems, vol 259. pp. 428-441. Springer, Cham. https://doi.org/10.1007/978-3-030-80285-1_50
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使用人工智能的网络物理行为检测和理解
S4AllCities项目(S4AllCities, 2020)发展了城市环境安全和安保背景下的网络物理行为检测和理解的进步。具体来说,基础人工智能和推理的各种概念已经成功开发,随后将在即将到来的2022年在S4AllCities试点站点进行现场测试(Sabeur等人,2021年)。在城市空间的背景下,基于TCP和UDP通信的协议的异常检测已经进行了调查。这些还与在同一城市空间中检测人群身体行为的不寻常相辅相成。目的是结合检测和行为理解的两种模式(网络和物理),以便在本地知识和推理的背景下提高我们的态势意识,从而有效地维护整个城市空间的安全和保障。本土知识涉及为应对城市空间潜在的网络物理攻击而评估的风险和缓解措施。在本研究中,部署的机器学习技术在各种潜在攻击场景下的网络和物理行为分类方面取得了良好的性能。我们未来的工作是利用欧洲三个S4AllCities试点城市空间的现场网络和物理观测场景,对我们的智能算法进行性能、评估和验证。引用:S4AllCities(2020)。H2020项目ID号883522。https://www.s4allcities.eu/project。张建军,张建军,张建军,张建军。(2021)城市智能空间的网络和物理状态感知。1 .刘建军,刘建军,刘建军。神经工程学与认知工程的研究进展。AHFE 2021。网络与系统课堂讲稿,卷259。428 - 441页。施普林格,可汗。https://doi.org/10.1007/978-3-030-80285-1_50
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