Artificial Intelligence as Self-Instantiated, Temporally Continuous, Disturbance-Driven Adaptive World-Builder
Abstract
Consciousness remains one of the most elusive features to replicate in artificial agents. This paper proposes a novel framework for artificial consciousness based on four integrative pillars: (1) self-instantiation, a mechanism for continuous self-representation and identity; (2) temporal continuity, preserving an internal narrative through persistent memory; (3) disturbance-driven adaptation, an intrinsic feedback loop that triggers learning in response to surprises or anomalies; and (4) autonomous world-building, the ability to construct and simulate internal models of the world. We propose that current AI models, despite their sophistication, are fundamentally constrained by functionalist architectures and cannot fulfill these requirements through computational scaling alone. Unlike Integrated Information Theory or Global Workspace Theory, our approach emphasizes the necessity of autonomous world-building and genuine temporal flow. Our experiments demonstrate that combining these pillars can yield emergent conscious-like behaviors in AI systems, allowing them to exhibit self-awareness, resilience, and creative problem solving beyond the capabilities of conventional models. The significance of this framework lies in bridging theoretical foundations of consciousness with practical AI design, providing a roadmap for developing more adaptive and interpretable intelligent agents while raising important ethical considerations about the potential moral status of truly conscious artificial systems.
Keywords: AI, LLM, Philosophy, Consciousness, Cognition, Cognitive Science, Artificial Consciousness
DOI: 10.54941/ahfe1005955
Cite this paper
More from this volume
- Enabling the Transfer of Large Files Across Security Domains in a Multinational Environment
- Defining Autonomous Weapon Systems: A Conceptual Overview of Existing Definitory Attempts and the Effectiveness of Human Oversight
- Exploring the Effect of Wearable Digital Devices (WDDs) on Adverse Occupational Health and Safety Practices of High-Risk Workers
- Evaluating the Effectiveness of Machine Learning Algorithms in Stock Price Prediction Across Different Time Frames
- Enhancing the Viability of Battery-Electric Trucks in Long-Distance Freight Transport: Assessing the User Acceptance of Overhead Line Technology
- Cognitive Science and Information Technologies in Team Sports: Enhancing Performance and Safety
- Knowledge Evolution and Scientific Breakthroughs triggered by AI Hallucinations - A Paradigm Shift?
- Effectiveness of Knowledge Models for Visual Object Detection
- Talent Development and Retention in Industry 4.0: Strategy to Overcome Talent Challenges in VUCA Environments and Drive Digital Transformation with Agility
- Architectural Analysis of RFID Integration in Medical Device Logistics: A Healthcare Information Systems Study
- Early Detection of Arthritis Using Convolutional Neural Networks and Explainable AI
- Transforming Mental Health Assessment: Machine Learning for Early Detection and Personalized Care Among College Students


AHFE Open Access