© 2013 IEEE. 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...
For a genuinely connected smart world, the overlapping of the Internet of Things (IoT) services from...
As anomaly detection for electrical power steering (EPS) systems has been centralized using model- a...
International audienceThis paper presents a neural network-based anomaly detection system for vehicu...
The integration of the open communication layer to the physical layer of the power grids facilitates...
The widespread deployment of "smart" electric vehicle charging stations (EVCSs) will be a key step t...
The Supervisory control and data acquisition (SCADA) systems have been continuously leveraging the e...
The market for Electric Vehicles (EVs) has expanded tremendously as seen in the recent Conference of...
The Electric Vehicles (EVs) market has seen rapid growth recently despite the anxiety about driving ...
Abstract The surging usage of electric vehicles (EVs) demand the robust deployment of trustworthy el...
Smart cities are envisioned to include million of sensors and devices tied together through the Inte...
A smart grid improves power grid efficiency by using modern information and communication technologi...
This paper presents the artificial intelligence (AI) techniques based on the deep learning algorithm...
The gradual transition from a traditional transportation system to an intelligent transportation sys...
The demand for electric vehicles (EVs) is growing rapidly. This requires an ecosystem that meets the...
The rapid growth of the electric vehicle (EV) sector is giving rise to many infrastructural challeng...
For a genuinely connected smart world, the overlapping of the Internet of Things (IoT) services from...
As anomaly detection for electrical power steering (EPS) systems has been centralized using model- a...
International audienceThis paper presents a neural network-based anomaly detection system for vehicu...
The integration of the open communication layer to the physical layer of the power grids facilitates...
The widespread deployment of "smart" electric vehicle charging stations (EVCSs) will be a key step t...
The Supervisory control and data acquisition (SCADA) systems have been continuously leveraging the e...
The market for Electric Vehicles (EVs) has expanded tremendously as seen in the recent Conference of...
The Electric Vehicles (EVs) market has seen rapid growth recently despite the anxiety about driving ...
Abstract The surging usage of electric vehicles (EVs) demand the robust deployment of trustworthy el...
Smart cities are envisioned to include million of sensors and devices tied together through the Inte...
A smart grid improves power grid efficiency by using modern information and communication technologi...
This paper presents the artificial intelligence (AI) techniques based on the deep learning algorithm...
The gradual transition from a traditional transportation system to an intelligent transportation sys...
The demand for electric vehicles (EVs) is growing rapidly. This requires an ecosystem that meets the...
The rapid growth of the electric vehicle (EV) sector is giving rise to many infrastructural challeng...
For a genuinely connected smart world, the overlapping of the Internet of Things (IoT) services from...
As anomaly detection for electrical power steering (EPS) systems has been centralized using model- a...
International audienceThis paper presents a neural network-based anomaly detection system for vehicu...