Regression Based Anomaly Detection in Electric Vehicle State of Charge Fluctuations Through Analysis of EVCI Data
Mitikiri Sagar Babu, Yash Tiwari, vedantham Lakshmi Srinivas, Mayukha, Pal

TL;DR
This paper proposes a regression-based method to detect anomalies in electric vehicle state of charge data within electric vehicle charging infrastructure, enhancing cyber-physical security and reliability.
Contribution
It introduces an anomaly detection approach using regression analysis on EVCI data to identify irregularities in EV SoC, addressing security vulnerabilities.
Findings
Effective detection of SoC anomalies in EVCI data.
Improved security against cyber attacks in EV charging systems.
Potential reduction in energy theft and revenue loss.
Abstract
With the increase in the number of electric vehicles (EV), there is a need for the development of the EV charging infrastructure (EVCI) to facilitate fast charging, thereby mitigating the EV congestion at charging stations. The role of the public charging station depot is to charge the vehicle, prioritizing the achievement of the desired state of charge (SoC) value for the EV battery or charging till the departure of the EV, whichever occurs first. The integration of cyber and physical components within EVCI defines it as a cyber physical power system (CPPS), increasing its vulnerability to diverse cyber attacks. When an EV interfaces with the EVCI, mutual exchange of data takes place via various communication protocols like the Open Charge Point Protocol (OCPP), and IEC 61850. Unauthorized access to this data by intruders leads to cyber attacks, potentially resulting in consequences…
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Taxonomy
TopicsAdvanced Battery Technologies Research · Electric Vehicles and Infrastructure · Smart Grid Security and Resilience
