A Strategic Framework for Strengthening Cyber Risk Governance and Resilience in US Critical Infrastructure Sectors
Keywords:
Cyber risk, infrastructure protection, cybersecurity strategy, threat intelligence, risk managementAbstract
This paper presents a comprehensive approach to the strategic governance and resilience of cyber risk in the US critical infrastructure sectors. With threats such as the 2021 Colonial Pipeline ransomware attack, which disrupted fuel supply and caused economic and social chaos, strong governance is vital. The current study employs resilience theory, risk management, and governance models to develop a solution for protecting critical infrastructure amid evolving threats. The framework includes four pillars: adaptive governance, real-time threat intelligence, cross-sector collaboration, and resilience building. By examining existing frameworks, regulations, and sector weaknesses, key gaps are identified, leading to potential improvements suggested. Results show that effective cyber risk governance should move beyond compliance to dynamic, intelligence-led models that emphasize rapid adaptation, stakeholder coordination, and capability development. This framework provides practical guidance for policymakers, operators, and cybersecurity experts to strengthen national resilience against cyber threats. These implications are intended to inform future policy-making, enhance relations between the populace and the private sector, and improve the security landscape of critical infrastructure sectors essential to national security and economic stability.
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