Visible to the public Biblio

Filters: Author is Bere, Gomanth  [Clear All Filters]
2021-12-21
Ahn, Bohyun, Bere, Gomanth, Ahmad, Seerin, Choi, JinChun, Kim, Taesic, Park, Sung-won.  2021.  Blockchain-Enabled Security Module for Transforming Conventional Inverters toward Firmware Security-Enhanced Smart Inverters. 2021 IEEE Energy Conversion Congress and Exposition (ECCE). :1307–1312.
As the traditional inverters are transforming toward more intelligent inverters with advanced information and communication technologies, the cyber-attack surface has been remarkably expanded. Specifically, securing firmware of smart inverters from cyber-attacks is crucial. This paper provides expanded firmware attack surface targeting smart inverters. Moreover, this paper proposes a security module for transforming a conventional inverter to a firmware security built-in smart inverter by preventing potential malware and unauthorized firmware update attacks as well as fast automated inverter recovery from zero-day attacks. Furthermore, the proposed security module as a client of blockchain is connected to blockchain severs to fully utilize blockchain technologies such as membership service, ledgers, and smart contracts to detect and mitigate the firmware attacks. The proposed security module framework is implemented in an Internet-of-Thing (IoT) device and validated by experiments.
2021-06-28
Lee, Hyunjun, Bere, Gomanth, Kim, Kyungtak, Ochoa, Justin J., Park, Joung-hu, Kim, Taesic.  2020.  Deep Learning-Based False Sensor Data Detection for Battery Energy Storage Systems. 2020 IEEE CyberPELS (CyberPELS). :1–6.
Battery energy storage systems are facing risks of unreliable battery sensor data which might be caused by sensor faults in an embedded battery management system, communication failures, and even cyber-attacks. It is crucial to evaluate the trustworthiness of battery sensor data since inaccurate sensor data could lead to not only serious damages to battery energy storage systems, but also threaten the overall reliability of their applications (e.g., electric vehicles or power grids). This paper introduces a battery sensor data trust framework enabling detecting unreliable data using a deep learning algorithm. The proposed sensor data trust mechanism could potentially improve safety and reliability of the battery energy storage systems. The proposed deep learning-based battery sensor fault detection algorithm is validated by simulation studies using a convolutional neural network.