Syed. R. B. Alvee, Bohyun Ahn, Taesic Kim, Ying Su, Y. Youn, Myung-Hyo Ryu
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Ransomware Attack Modeling and Artificial Intelligence-Based Ransomware Detection for Digital Substations
Ransomware has become a serious threat to the current computing world, requiring immediate attention to prevent it. Ransomware attacks can also have disruptive impacts on operation of smart grids including digital substations. This paper provides a ransomware attack modeling method targeting disruptive operation of a digital substation and investigates an artificial intelligence (AI)-based ransomware detection approach. The proposed ransomware file detection model is designed by a convolutional neural network (CNN) using 2-D grayscale image files converted from binary files. The experimental results show that the proposed method achieves 96.22% of ransomware detection accuracy.