Visible to the public A Study of EV BMS Cyber Security Based on Neural Network SOC Prediction

TitleA Study of EV BMS Cyber Security Based on Neural Network SOC Prediction
Publication TypeConference Paper
Year of Publication2018
AuthorsRahman, S., Aburub, H., Mekonnen, Y., Sarwat, A. I.
Conference Name2018 IEEE/PES Transmission and Distribution Conference and Exposition (T D)
Date PublishedApril 2018
PublisherIEEE
ISBN Number978-1-5386-5583-2
Keywordsair pollution control, back propagation neural network training, Backpropagation, battery testers, battery testing, BP NN, cyber security, cyber security threat, electric vehicle, electric vehicle market, electric vehicles, EV batterys state of charge, EV BMS cyber security, greenhouse gas emission policies, Measurement, Metrics, metrics testing, neural nets, Neural Network, neural network SOC prediction, NeuralWare software, power engineering computing, pubcrawl, security of data, stability, state of charge, statistic metrics, statistical analysis
Abstract

Recent changes to greenhouse gas emission policies are catalyzing the electric vehicle (EV) market making it readily accessible to consumers. While there are challenges that arise with dense deployment of EVs, one of the major future concerns is cyber security threat. In this paper, cyber security threats in the form of tampering with EV battery's State of Charge (SOC) was explored. A Back Propagation (BP) Neural Network (NN) was trained and tested based on experimental data to estimate SOC of battery under normal operation and cyber-attack scenarios. NeuralWare software was used to run scenarios. Different statistic metrics of the predicted values were compared against the actual values of the specific battery tested to measure the stability and accuracy of the proposed BP network under different operating conditions. The results showed that BP NN was able to capture and detect the false entries due to a cyber-attack on its network.

URLhttps://ieeexplore.ieee.org/document/8440144
DOI10.1109/TDC.2018.8440144
Citation Keyrahman_study_2018