Open AccessPosted Content
Cyber-Physical Security and Safety of Autonomous Connected Vehicles: Optimal Control Meets Multi-Armed Bandit Learning.
TL;DR: In this article, a comprehensive framework is proposed to thwart cyber and physical attacks on autonomous connected vehicles (ACV) networks, where an optimal safe controller is derived to maximize the street traffic flow while minimizing the risk of accidents by optimizing ACV speed and inter-ACV spacing.
read more
Abstract: Autonomous connected vehicles (ACVs) rely on intra-vehicle sensors such as camera and radar as well as inter-vehicle communication to operate effectively. This reliance on cyber components exposes ACVs to cyber and physical attacks in which an adversary can manipulate sensor readings and physically take control of an ACV. In this paper, a comprehensive framework is proposed to thwart cyber and physical attacks on ACV networks. First, an optimal safe controller for ACVs is derived to maximize the street traffic flow while minimizing the risk of accidents by optimizing ACV speed and inter-ACV spacing. It is proven that the proposed controller is robust to physical attacks which aim at making ACV systems instable. To improve the cyber-physical security of ACV systems, next, data injection attack (DIA) detection approaches are proposed to address cyber attacks on sensors and their physical impact on the ACV system. To comprehensively design the DIA detection approaches, ACV sensors are characterized in two subsets based on the availability of a-priori information about their data. For sensors having a prior information, a DIA detection approach is proposed and an optimal threshold level is derived for the difference between the actual and estimated values of sensors data which enables ACV to stay robust against cyber attacks. For sensors having no prior information, a novel multi-armed bandit (MAB) algorithm is proposed to enable ACV to securely control its motion. Simulation results show that the proposed optimal safe controller outperforms current state of the art controllers by maximizing the robustness of ACVs to physical attacks. The results also show that the proposed DIA detection approaches, compared to Kalman filtering, can improve the security of ACV sensors against cyber attacks and ultimately improve the physical robustness of an ACV system.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Linear systems
S.R. Liberty
- 01 Nov 1981
TL;DR: In this paper, the authors studied the effect of local derivatives on the detection of intensity edges in images, where the local difference of intensities is computed for each pixel in the image.
2.6K
•Posted Content
6G for Vehicle-to-Everything (V2X) Communications: Enabling Technologies, Challenges, and Opportunities
Md. Noor-A-Rahim,Zilong Liu,Haeyoung Lee,M. Omar Khyam,Jianhua He,Dirk Pesch,Klaus Moessner,Walid Saad,H. Vincent Poor +8 more
TL;DR: A series of key enabling technologies from a range of domains, such as new materials, algorithms, and system architectures are outlined, envisioning that machine learning will play an instrumental role for advanced vehicular communication and networking.
255
Attacks on Self-Driving Cars and Their Countermeasures: A Survey
TL;DR: This paper analyzed the attacks that already targeted self-driving cars and extensively present potential cyber-attacks and their impacts on those cars along with their vulnerabilities and the possible mitigation strategies taken by the manufacturers and governments.
122
Secure Distributed Adaptive Platooning Control of Automated Vehicles Over Vehicular Ad-Hoc Networks Under Denial-of-Service Attacks.
TL;DR: In this paper, a scalable distributed neural-network-based adaptive platooning design approach is proposed to achieve secure platooning control in the presence of intermittent denial-of-service (DoS) attacks.
120
Recommendation-Based Trust Model for Vehicle-to-Everything (V2X)
Aljawharah Alnasser,Hongjian Sun,Jing Jiang +2 more
- 31 Jan 2020
TL;DR: A recommendation-based trust model for V2X communications is proposed to defend against internal attacks and shows an improvement in network throughput and the detection rate for all types of considered malicious behaviors.
References
Finite-time Analysis of the Multiarmed Bandit Problem
TL;DR: This work shows that the optimal logarithmic regret is also achievable uniformly over time, with simple and efficient policies, and for all reward distributions with bounded support.
Common Lyapunov functions for families of commuting nonlinear systems
Linh Vu,Daniel Liberzon +1 more
TL;DR: These results extend a previously available one which relies on exponential stability of the vector fields, and are based on an iterative procedure, which at each step invokes a converse Lyapunov theorem for one of the individual systems.
3.3K
The Matrix Cookbook
Kaare Brandt Petersen,Michael Syskind Pedersen +1 more
- 01 Jan 2006
TL;DR: Theodorakopoulos et al. as mentioned in this paper used the Oticon Foundation for funding their PhD studies, and they would like to thank the following for contributions and suggestions: Bill Baxter, Brian Templeton, Christian Rishoj, Christian Schroppel Douglas L. Theobald, Esben Hoegh-Rasmussen, Glynne Casteel, Jan Larsen, Jun Bin Gao, Jurgen Struckmeier, Kamil Dedecius, Korbinian Strimmer, Lars Christiansen, Lars Kai Hansen, Leland Wilkinson, Lig
Linear systems
S.R. Liberty
- 01 Nov 1981
TL;DR: In this paper, the authors studied the effect of local derivatives on the detection of intensity edges in images, where the local difference of intensities is computed for each pixel in the image.
2.6K
A behavioural car-following model for computer simulation
TL;DR: A new model is constructed for the response of the following vehicle based on the assumption that each driver sets limits to his desired braking and acceleration rates and it is shown that when realistic values are assigned to the parameters in a simulation, the model reproduces the characteristics of real traffic flow.
2.2K