CIVIDS aims to provide a framework for collaborative intrusion detection system for the automotive domain
This repo consists of all files related to the masters thesis conducted by Daniel Aryan and Kristoffer Söderberg, during the Spring of 2021, at Chalmers University of Technology.
The thesis was conducted in the Software Engineering and Technology mastersprogram under the Computer Science and Engineering (CSE) Department.
The supervisor for this thesis was Rodi Jolak. The examiner of this thesis was Christian Berger.
Implementation
contains all files related to the implementation of the CIVIDS framework.Implementation/Data
Contains the dataset files used during the implementation.Implementation/Other
Contains both the resources used to train the ML models, as well as the scripts used to generate simulation runsImplementation/Simulation
Contains the python files used to simulate a virtual CAN-network and to collect the experimental resultsImplementation/Validation
contains the Results acquired from the simulation runs as well as the script-files used to validate the results and obtain F1-scoresReport
contains both the LaTex project as well as the full masters thesis in PDF format.
Dataset
Hyunjae Kang; Byung Il Kwak; Young Hun Lee; Haneol Lee; Hwejae Lee;Huy Kang Kim. “Car Hacking: Attack & Defense Challenge 2020 Dataset”.In: (2021).doi:10.21227/qvr7- n418.url:https://dx.doi.org/10.21227/qvr7-n418python-can
hardbytepython-can-isotp
pylessardpython-can-remote
christiansandberg