Exploring the Cognitive Evolution of Artificial Intelligence and Its Implications for Autonomous Systems in Critical Infrastructure
Keywords:
Artificial Intelligence, Cognitive Architectures, Autonomous Systems, Critical Infrastructure, Human-Machine Interaction, Ethical AI, Resilience Engineering, Risk AssessmentAbstract
The rapid advancement of artificial intelligence (AI), particularly in the domain of cognitive architectures and autonomous reasoning, has redefined the integration of intelligent systems into critical infrastructure. This paper explores the cognitive evolution of AI, focusing on developments in machine learning, symbolic reasoning, and adaptive cognition, and assesses their implications for deploying autonomous agents in sectors such as energy, transportation, and public safety. Drawing on historical and contemporary literature, this study evaluates both the technological potential and systemic risks of AI systems embedded within vital societal operations. Through analysis of architecture frameworks, cognitive models, and policy trends, the paper presents a forward-looking perspective on aligning AI capabilities with human-centered resilience and ethical governance in infrastructure.
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