Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning

Because charging coordination is a solution for avoiding grid instability by prioritizing charging requests, electric vehicles may lie and send false data to illegally receive higher charging priorities. In this article, we first study the impact of such attacks on both the lying and honest electric...

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Main Authors: Ahmed A. Shafee, Mostafa M. Fouda, Mohamed M. E. A. Mahmoud, Abdulah Jeza Aljohani, Waleed Alasmary, Fathi Amsaad
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9210521/
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spelling doaj-c661cba95b61414998bf0653134fa3272021-03-30T04:11:21ZengIEEEIEEE Access2169-35362020-01-01817940017941410.1109/ACCESS.2020.30280979210521Detection of Lying Electrical Vehicles in Charging Coordination Using Deep LearningAhmed A. Shafee0https://orcid.org/0000-0002-4119-9525Mostafa M. Fouda1https://orcid.org/0000-0003-1790-8640Mohamed M. E. A. Mahmoud2https://orcid.org/0000-0002-8719-501XAbdulah Jeza Aljohani3https://orcid.org/0000-0002-9992-7177Waleed Alasmary4https://orcid.org/0000-0002-4349-144XFathi Amsaad5https://orcid.org/0000-0002-1641-5046Department of Electrical and Computer Engineering, Tennessee Tech University, Cookeville, TN, USADepartment of Electrical and Computer Engineering, College of Science and Engineering, Idaho State University, ID, USADepartment of Electrical and Computer Engineering, Tennessee Tech University, Cookeville, TN, USADepartment of Electrical and Computer Engineering, King Abdulaziz University, Jeddah, Saudi ArabiaDepartment of Computer Engineering, Umm Al-Qura University, Makkah, Saudi ArabiaSchool of Information Security and Applied Computing (SISAC), Eastern Michigan University (EMU), Ypsilanti, MI, USABecause charging coordination is a solution for avoiding grid instability by prioritizing charging requests, electric vehicles may lie and send false data to illegally receive higher charging priorities. In this article, we first study the impact of such attacks on both the lying and honest electric vehicles. Our evaluations indicate that lying electric vehicles have a higher chance of charging, whereas honest electric vehicles may not be able to charge or may charge late. Then, an anomaly-based detector based on a deep neural network is devised to identify lying electric vehicles. The idea is that since each electric vehicle driver has a particular driving pattern, the data reported by the corresponding electric vehicle should follow this pattern, and any deviation due to reporting false data can be detected. To train the detector, we first create an honest dataset for the charging coordination application using real driving traces and information provided by an electric vehicle manufacturer, and we then propose a number of attacks as a basis for creating malicious data. We train and evaluate a gated recurrent unit model using this dataset. Our evaluations indicate that our detector can detect lying electric vehicles with high accuracy and a low false alarm rate even when tested on attacks that are not represented in the training dataset.https://ieeexplore.ieee.org/document/9210521/Securityfalse data injectioncharging coordinationelectric vehiclessmart grid
collection DOAJ
language English
format Article
sources DOAJ
author Ahmed A. Shafee
Mostafa M. Fouda
Mohamed M. E. A. Mahmoud
Abdulah Jeza Aljohani
Waleed Alasmary
Fathi Amsaad
spellingShingle Ahmed A. Shafee
Mostafa M. Fouda
Mohamed M. E. A. Mahmoud
Abdulah Jeza Aljohani
Waleed Alasmary
Fathi Amsaad
Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning
IEEE Access
Security
false data injection
charging coordination
electric vehicles
smart grid
author_facet Ahmed A. Shafee
Mostafa M. Fouda
Mohamed M. E. A. Mahmoud
Abdulah Jeza Aljohani
Waleed Alasmary
Fathi Amsaad
author_sort Ahmed A. Shafee
title Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning
title_short Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning
title_full Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning
title_fullStr Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning
title_full_unstemmed Detection of Lying Electrical Vehicles in Charging Coordination Using Deep Learning
title_sort detection of lying electrical vehicles in charging coordination using deep learning
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Because charging coordination is a solution for avoiding grid instability by prioritizing charging requests, electric vehicles may lie and send false data to illegally receive higher charging priorities. In this article, we first study the impact of such attacks on both the lying and honest electric vehicles. Our evaluations indicate that lying electric vehicles have a higher chance of charging, whereas honest electric vehicles may not be able to charge or may charge late. Then, an anomaly-based detector based on a deep neural network is devised to identify lying electric vehicles. The idea is that since each electric vehicle driver has a particular driving pattern, the data reported by the corresponding electric vehicle should follow this pattern, and any deviation due to reporting false data can be detected. To train the detector, we first create an honest dataset for the charging coordination application using real driving traces and information provided by an electric vehicle manufacturer, and we then propose a number of attacks as a basis for creating malicious data. We train and evaluate a gated recurrent unit model using this dataset. Our evaluations indicate that our detector can detect lying electric vehicles with high accuracy and a low false alarm rate even when tested on attacks that are not represented in the training dataset.
topic Security
false data injection
charging coordination
electric vehicles
smart grid
url https://ieeexplore.ieee.org/document/9210521/
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