Fostering Trust in Smart Inverters: A Framework for Firmware Update Management and Tracking in VPP Context
- URL: http://arxiv.org/abs/2404.18453v1
- Date: Mon, 29 Apr 2024 06:23:35 GMT
- Title: Fostering Trust in Smart Inverters: A Framework for Firmware Update Management and Tracking in VPP Context
- Authors: Thusitha Dayaratne, Carsten Rudolph, Tom Shirley, Sol Levi, David Shirley,
- Abstract summary: This paper introduces a novel framework to manage and track firmware update history, leveraging verifiable credentials.
By tracking the update history and implementing a trust cycle based on these verifiable updates, we aim to improve grid resilience, enhance cybersecurity, and increase transparency for stakeholders.
- Score: 1.25828876338076
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Ensuring the reliability and security of smart inverters that provide the interface between distributed energy resources (DERs) and the power grid becomes paramount with the surge in integrating DERs into the (smart) power grid. Despite the importance of having updated firmware / software versions within a reasonable time frame, existing methods for establishing trust through firmware updates lack effective historical tracking and verification. This paper introduces a novel framework to manage and track firmware update history, leveraging verifiable credentials. By tracking the update history and implementing a trust cycle based on these verifiable updates, we aim to improve grid resilience, enhance cybersecurity, and increase transparency for stakeholders.
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