Fuse and Federate: Enhancing EV Charging Station Security with Multimodal Fusion and Federated Learning
Journal:
arXiv
Published Date:
Jun 7, 2025
Abstract
The rapid global adoption of electric vehicles (EVs) has established electric
vehicle supply equipment (EVSE) as a critical component of smart grid
infrastructure. While essential for ensuring reliable energy delivery and
accessibility, EVSE systems face significant cybersecurity challenges,
including network reconnaissance, backdoor intrusions, and distributed
denial-of-service (DDoS) attacks. These emerging threats, driven by the
interconnected and autonomous nature of EVSE, require innovative and adaptive
security mechanisms that go beyond traditional intrusion detection systems
(IDS). Existing approaches, whether network-based or host-based, often fail to
detect sophisticated and targeted attacks specifically crafted to exploit new
vulnerabilities in EVSE infrastructure. This paper proposes a novel intrusion
detection framework that leverages multimodal data sources, including network
traffic and kernel events, to identify complex attack patterns. The framework
employs a distributed learning approach, enabling collaborative intelligence
across EVSE stations while preserving data privacy through federated learning.
Experimental results demonstrate that the proposed framework outperforms
existing solutions, achieving a detection rate above 98% and a precision rate
exceeding 97% in decentralized environments. This solution addresses the
evolving challenges of EVSE security, offering a scalable and privacypreserving
response to advanced cyber threats