Implementing AI and Automation for Monitoring Complex Utility Data (NERC): Its Challenges and Recovery
Authors: Suchismita Chatterjee, Sripada Manasa Lakshmi
DOI: https://doi.org/10.37082/IJIRMPS.v13.i2.232249
Short DOI: https://doi.org/g88qwj
Country: United States
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Abstract: The utility sector, particularly those adhering to North American Electric Reliability Corporation (NERC) standards, is increasingly challenged by the exponential growth and complexity of data generated across its infrastructure. The integration of Artificial Intelligence (AI) and automation for monitoring such complex utility data offers a transformative approach to enhancing operational efficiency, ensuring regulatory compliance, and mitigating potential cyber and operational risks. This paper explores the implementation of AI-driven solutions and automated systems in NERC environments, highlighting their potential to streamline data analysis, detect anomalies, and optimize response times. However, the journey is not without challenges. Issues such as data silos, legacy system integration, skill gaps, and ethical considerations around AI adoption pose significant barriers. The paper also examines strategies for overcoming these challenges, emphasizing robust recovery mechanisms to maintain resilience against unforeseen failures. By presenting practical insights and case studies, this study provides a roadmap for leveraging AI and automation in complex utility data monitoring, ultimately supporting the critical mission of safeguarding the nation's energy infrastructure.
Keywords: Keywords: AI, Automation, Utility Data Monitoring, NERC Compliance, Data Complexity, Anomaly Detection, Legacy Systems, Resilience, Cybersecurity, Energy Infrastructure.
Paper Id: 232249
Published On: 2025-03-16
Published In: Volume 13, Issue 2, March-April 2025