Litcius/Paper detail

Device-Centric Firmware Malware Detection for Smart Inverters using Deep Transfer Learning

Syed Raqueed Bin Alvee, Bohyun Ahn, Seerin Ahmad, Kyoung‐Tak Kim, Taesic Kim, Jianwu Zeng

202215 citationsDOIOpen Access PDF

Abstract

Since future power grids are inverter-dominant grids and inverters are getting smarter by incorporating remote access and seamless firmware update, it is anticipated that malware attackers will directly target smart inverters. However, malware threats targeting smart inverters have been less studied yet. This paper explores potential malware attacks targeting smart inverters and proposes a deep transfer-learning (DTL)-based malware detection framework for smart inverters. The proposed DTL method can significantly reduce development time and efforts for an artificial intelligence-based malware detection algorithm while improving detection accuracy. The experimental result shows that the proposed method achieves 98% of firmware malware detection accuracy. This approach will be transformative to other smart grid devices enabling seamless firmware update.

Topics & Concepts

FirmwareMalwareComputer scienceEmbedded systemTransformative learningSmart gridArtificial intelligenceComputer hardwareComputer securityEngineeringElectrical engineeringPsychologyPedagogyAdvanced Malware Detection TechniquesSmart Grid Security and ResilienceIoT-based Smart Home Systems