MTD-Diorama: Moving Target Defense Visualization Engine for Systematic Cybersecurity Strategy Orchestration

Author:

Lee Se-Han12ORCID,Kim Kyungshin3,Kim Youngsoo4ORCID,Park Ki-Woong2ORCID

Affiliation:

1. SysCore Lab., Convergence Engineering for Intelligent Drone, Sejong University, Seoul 05006, Republic of Korea

2. Department of Computer and Information Security, Sejong University, Seoul 05006, Republic of Korea

3. Agency of Defense Development (ADD), Daejeon 34186, Republic of Korea

4. Electronics and Telecommunications Research Institute (ETRI), Daejeon 34129, Republic of Korea

Abstract

With the advancement in information and communication technology, modern society has relied on various computing systems in areas closely related to human life. However, cyberattacks are also becoming more diverse and intelligent, with personal information and human lives being threatened. The moving target defense (MTD) strategy was designed to protect mission-critical systems from cyberattacks. The MTD strategy shifted the paradigm from passive to active system defense. However, there is a lack of indicators that can be used as a reference when deriving general system components, making it difficult to configure a systematic MTD strategy. Additionally, even when selecting system components, a method to confirm whether the systematic components are selected to respond to actual cyberattacks is needed. Therefore, in this study, we surveyed and analyzed existing cyberattack information and MTD strategy research results to configure a component dataset. Next, we found the correlation between the cyberattack information and MTD strategy component datasets and used this to design and implement the MTD-Diorama data visualization engine to configure a systematic MTD strategy. Through this, researchers can conveniently identify the attack surface contained in cyberattack information and the MTD strategies that can respond to each attack surface. Furthermore, it will allow researchers to configure more systematic MTD strategies that can be used universally without being limited to specific computing systems.

Funder

Agency for Defense Development Institute

Publisher

MDPI AG

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