Parameter Estimation for Decoding Sensor Signals

Abstract: 

This paper introduces a parameter estimation approach for decoding digital sensor signals in a cyber-physical system. For unknown or not fully characterized digital sensor data, it can be difficult to decipher a desired signal from background or noise. In a cyber-physical system with networked sensors, we can leverage knowledge of the physical system to inform the decoding of the digital signals. This work in progress is a case study on deciphering commercial vehicle on-board sensor networks that communicate through the Controller Area Network (CAN). By understanding the stock vehicle sensor network, a vehicle can be extended into a scalable research platform with minimal instrumentation. Our challenge was to localize desired sensor signals encoded in network traffic that included other sensor data, control messages, as well as encoding and security overhead. Due to the vehicle's unknown sensor network, our approach developed methods to efficiently analyze and identify key signals despite the large state-space for potential signal embeddings. The contribution of this work-in-progress is a formal approach to deciphering pertinent signals uncharacterized cyber-physical system, with a case study in using this approach in vehicle on-board sensor networks. We share a code repository with analysis tools for analyzing digital signals.

Author: 
Nice, Matthew
Bunting, Matthew
Zachár, Gergely
Bhadani, Rahul
Bayen, Alexandre M.
Publication date: 
May 9, 2023
Publication type: 
Conference Paper
Citation: 
Nice, M., Bunting, M., Zachar, G., Bhadani, R., Ngo, P., Lee, J., Bayen, A., Work, D., & Sprinkle, J. (2023). Parameter Estimation for Decoding Sensor Signals. Proceedings of the ACM/IEEE 14th International Conference on Cyber-Physical Systems (with CPS-IoT Week 2023), 253–255. https://doi.org/10.1145/3576841.3589622