Runtime Policy Orchestration for Autonomous Industrial Control and Smart Manufacturing Systems: A Unified Framework for Governance, Compliance, and Adaptive Resilience

Akinde Michael Ogunmolu *

Texas A&M University, 700 University Blvd, Kingsville, TX 78363, United States.

Anuoluwapo Deborah Popoola

Heriot-Watt University, Edinburgh EH14 4AS, UK.

Ololade Zainab Adesokan

Institution and Address American National University, Salem VA 1813 E Main St, Salem, VA 24153, United States.

Asmau Abubakar Abdulmalik

School of Veterinary Medicine, Louisiana State University, Skip Bertman Drive, Baton Rouge, Louisiana, 70803, USA.

Sunday Abayomi Joseph

Ottawa University, 1001 S Cedar, Ottawa, KS 66067, United States of America.

*Author to whom correspondence should be addressed.


Abstract

The rapid evolution of Industry 4.0 and emerging Industry 5.0 paradigms has accelerated the adoption of autonomous cyber-physical systems (CPS) in smart manufacturing, creating a need for robust runtime policy orchestration to ensure governance, regulatory compliance, and resilience under dynamic disruptions and cyber threats. This study addresses the lack of unified frameworks by proposing the Policy Resilient Orchestrator (PRO), a simulation-driven architecture integrating machine-readable policy cards, multi-agent reinforcement learning using Proximal Policy Optimization (PPO), multi-objective optimization via NSGA-II, runtime verification, and digital twin-based validation. A quantitative, desk-based methodology utilizing synthetic and benchmark datasets was employed to model CPS environments without physical hardware. NSGA-II generated Pareto-optimal policy configurations, while PPO enabled adaptive runtime control supported by simplex switching for resilience. Monte Carlo simulations across normal, attack, and failure scenarios showed significant improvements, with Governance Efficiency (0.961), Resilience Index (0.993), and Downtime Reduction (0.988), all statistically outperforming baselines (p < 0.0001). PRO demonstrates a scalable, reliable solution for trustworthy smart manufacturing systems.

Keywords: Runtime policy orchestration, cyber-physical systems, smart manufacturing, adaptive resilience, digital twins


How to Cite

Ogunmolu, Akinde Michael, Anuoluwapo Deborah Popoola, Ololade Zainab Adesokan, Asmau Abubakar Abdulmalik, and Sunday Abayomi Joseph. 2026. “Runtime Policy Orchestration for Autonomous Industrial Control and Smart Manufacturing Systems: A Unified Framework for Governance, Compliance, and Adaptive Resilience”. Journal of Engineering Research and Reports 28 (4):275-93. https://doi.org/10.9734/jerr/2026/v28i41862.

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