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EVScout2.0: Electric Vehicle Profiling through Charging Profile
Electric Vehicles (EVs) represent a green alternative to traditional fuel-powered vehicles. To enforce their widespread use, both the technical development and the security of users shall be guaranteed. Users’ privacy represents a possible threat that ...
Control Performance Analysis of Automotive Cyber-physical Systems: A Study on Efficient Formal Verification
Automotive cyber-physical systems consist of multiple control subsystems working under resource limitations, and the trend is to run the corresponding control tasks on a shared platform. The resource requirements of the tasks are usually variable at ...
CANOA: CAN Origin Authentication through Power Side-channel Monitoring
The lack of any sender authentication mechanism in place makes Controller Area Network (CAN) vulnerable to security threats. For instance, an attacker can impersonate an Electronic Control Unit (ECU) on the bus and send spoofed messages unobtrusively with ...
Remote Perception Attacks against Camera-based Object Recognition Systems and Countermeasures
In vision-based object recognition systems, imaging sensors perceive the environment and then objects are detected and classified for decision-making purposes, e.g., to maneuver an automated vehicle around an obstacle or to raise alarms for intruders in ...
Performance Comparison of Timing-Based Anomaly Detectors for Controller Area Network: A Reproducible Study
This work presents an experimental evaluation of the detection performance of eight different algorithms for anomaly detection on the Controller Area Network (CAN) bus of modern vehicles based on the analysis of the timing or frequency of CAN messages. ...
A Deep Time Delay Filter for Cooperative Adaptive Cruise Control
- Kuei-Fang Hsueh,
- Ayleen Farnood,
- Isam Al-Darabsah,
- Mohammad Al Saaideh,
- Mohammad Al Janaideh,
- Deepa Kundur
Cooperative adaptive cruise control (CACC) is a smart transportation solution to alleviate traffic congestion and enhance road safety. The performance of CACC systems can be remarkably affected by communication time delays, and traditional control methods ...
Green Data Center Cooling Control via Physics-guided Safe Reinforcement Learning
Deep reinforcement learning (DRL) has shown good performance in tackling Markov decision process (MDP) problems. As DRL optimizes a long-term reward, it is a promising approach to improving the energy efficiency of data-center cooling. However, ...
Scalable Pythagorean Mean-based Incident Detection in Smart Transportation Systems
- Md. Jaminur Islam,
- Jose Paolo Talusan,
- Shameek Bhattacharjee,
- Francis Tiausas,
- Abhishek Dubey,
- Keiichi Yasumoto,
- Sajal K. Das
Modern smart cities need smart transportation solutions to quickly detect various traffic emergencies and incidents in the city to avoid cascading traffic disruptions. To materialize this, roadside units and ambient transportation sensors are being ...
Memory-based Distribution Shift Detection for Learning Enabled Cyber-Physical Systems with Statistical Guarantees
Incorporating learning based components in the current state-of-the-art cyber-physical systems (CPS) has been a challenge due to the brittleness of the underlying deep neural networks. On the bright side, if executed correctly with safety guarantees, this ...
Statistical Verification using Surrogate Models and Conformal Inference and a Comparison with Risk-Aware Verification
Uncertainty in safety-critical cyber-physical systems can be modeled using a finite number of parameters or parameterized input signals. Given a system specification in Signal Temporal Logic (STL), we would like to verify that for all (infinite) values of ...
CASTNet: A Context-Aware, Spatio-Temporal Dynamic Motion Prediction Ensemble for Autonomous Driving
Autonomous vehicles are cyber-physical systems that combine embedded computing and deep learning with physical systems to perceive the world, predict future states, and safely control the vehicle through changing environments. The ability of an autonomous ...
Interpretable Latent Space for Meteorological Out-of-Distribution Detection via Weak Supervision
Deep neural networks (DNNs) are effective tools for learning-enabled cyber-physical systems (CPSs) that handle high-dimensional image data. However, DNNs may make incorrect decisions when presented with inputs outside the distribution of their training ...