Global Multidisciplinary Journal

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A Large-Scale Intelligent System Architecture Model for Controlled Autonomy and Distributed Agent Management

4 Department of Data Science, University of Birmingham, United Kingdom

Abstract

The rapid evolution of intelligent systems has necessitated the development of scalable, secure, and autonomous architectures capable of managing distributed agents across heterogeneous environments. Traditional centralized control paradigms are increasingly inadequate in addressing the complexity, adaptability, and resilience requirements of modern large-scale systems. This paper proposes a comprehensive architectural model for controlled autonomy and distributed agent management, integrating principles from intelligent agent theory, adaptive control systems, and cybersecurity frameworks.

The proposed model emphasizes a hybrid governance structure combining centralized oversight with decentralized decision-making capabilities. Drawing on foundational theories of intelligent agents (Wooldridge & Jennings, 1995), neural network-based control systems (Ku & Lee, 1995), and adaptive predictive control mechanisms (Ghezelayagh & Lee, 2002), the architecture introduces a layered framework for managing autonomy levels across distributed agents. The model incorporates real-time monitoring, anomaly detection, and resilience strategies inspired by intrusion detection systems and survivability engineering (Bowen et al., 2000; Debar & Wespi, 2001).

A key contribution of this work is the integration of agentic governance principles, as highlighted in recent enterprise-level frameworks (Venkiteela, 2026), into large-scale system design. This enables controlled autonomy, where agents operate independently within predefined constraints while maintaining alignment with organizational objectives. The architecture further supports adaptive scaling through modular design, allowing seamless integration of new agents and dynamic reconfiguration under changing operational conditions.

The study critically evaluates the performance of the proposed architecture through theoretical modeling and comparative analysis with existing approaches. Results indicate improved scalability, robustness against cyber threats, and enhanced decision-making efficiency in distributed environments. However, challenges related to coordination overhead, policy enforcement, and computational complexity are also identified.

This research contributes to the advancement of intelligent system design by providing a structured and scalable framework for managing distributed autonomous agents. The findings have significant implications for applications in industrial automation, smart grids, cybersecurity systems, and large-scale enterprise infrastructures, where controlled autonomy and resilience are critical.

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Keywords

References

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How to Cite

Dr. Daniel Hughes. (2026). A Large-Scale Intelligent System Architecture Model for Controlled Autonomy and Distributed Agent Management. Global Multidisciplinary Journal, 5(03), 22-34. https://www.grpublishing.org/journals/index.php/gmj/article/view/399

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