HoneyEVSE: An Honeypot to emulate Electric Vehicle Supply Equipments
- URL: http://arxiv.org/abs/2309.06077v1
- Date: Tue, 12 Sep 2023 09:15:07 GMT
- Title: HoneyEVSE: An Honeypot to emulate Electric Vehicle Supply Equipments
- Authors: Massimiliano Baldo, Tommaso Bianchi, Mauro Conti, Alessio Trevisan, Federico Turrin,
- Abstract summary: HoneyEVSE is the first honeypot conceived to simulate an Electric Vehicle charging station.
HoneyEVSE can simulate with high fidelity the EV charging process and, at the same time, enables a user to interact with it through a dashboard.
Results show that HoneyEVSE can successfully evade the Shodan honeyscore metric while attracting a high number of interactions on the exposed services.
- Score: 14.413675592484926
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: To fight climate change, new "green" technology are emerging, most of them using electricity as a power source. Among the solutions, Electric Vehicles (EVs) represent a central asset in the future transport system. EVs require a complex infrastructure to enable the so-called Vehicle-to-Grid (V2G) paradigm to manage the charging process between the smart grid and the EV. In this paradigm, the Electric Vehicle Supply Equipment (EVSE), or charging station, is the end device that authenticates the vehicle and delivers the power to charge it. However, since an EVSE is publicly exposed and connected to the Internet, recent works show how an attacker with physical tampering and remote access can target an EVSE, exposing the security of the entire infrastructure and the final user. For this reason, it is important to develop novel strategies to secure such infrastructures. In this paper we present HoneyEVSE, the first honeypot conceived to simulate an EVSE. HoneyEVSE can simulate with high fidelity the EV charging process and, at the same time, enables a user to interact with it through a dashboard. Furthermore, based on other charging columns exposed on the Internet, we emulate the login and device information pages to increase user engagement. We exposed HoneyEVSE for 30 days to the Internet to assess its capability and measured the interaction received with its Shodan Honeyscore. Results show that HoneyEVSE can successfully evade the Shodan honeyscore metric while attracting a high number of interactions on the exposed services.
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