Using Data Analytics to Detect Anomalous States in Vehicles

12/25/2015
by   Sandeep Nair Narayanan, et al.
0

Vehicles are becoming more and more connected, this opens up a larger attack surface which not only affects the passengers inside vehicles, but also people around them. These vulnerabilities exist because modern systems are built on the comparatively less secure and old CAN bus framework which lacks even basic authentication. Since a new protocol can only help future vehicles and not older vehicles, our approach tries to solve the issue as a data analytics problem and use machine learning techniques to secure cars. We develop a Hidden Markov Model to detect anomalous states from real data collected from vehicles. Using this model, while a vehicle is in operation, we are able to detect and issue alerts. Our model could be integrated as a plug-n-play device in all new and old cars.

READ FULL TEXT
research
10/02/2019

Automotive Cybersecurity: Foundations for Next-Generation Vehicles

The automotive industry is experiencing a serious transformation due to ...
research
11/06/2017

Advanced Analytics for Connected Cars Cyber Security

The vehicular connectivity revolution is fueling the automotive industry...
research
02/01/2019

OODIDA: On-board/Off-board Distributed Data Analytics for Connected Vehicles

Connected vehicles may produce gigabytes of data per hour, which makes c...
research
08/01/2022

Connected Vehicle Platforms for Dynamic Insurance

Following a regulatory change in Europe which mandates that car manufact...
research
12/15/2021

EXT-TAURUM P2T: an Extended Secure CAN-FD Architecture for Road Vehicles

The automobile industry is no longer relying on pure mechanical systems;...
research
01/10/2023

Improving unlinkability in C-ITS: a methodology for optimal obfuscation

In this paper, we develop a new methodology to provide high assurance ab...
research
06/26/2023

On the Resilience of Machine Learning-Based IDS for Automotive Networks

Modern automotive functions are controlled by a large number of small co...

Please sign up or login with your details

Forgot password? Click here to reset