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Certified Neural Network Control Architectures: Methodological Advances in Stability, Robustness, and Cross-Domain Applications

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  • Rui Liu

    (Institute of Robotics and Automatic Information System, College of Artificial Intelligence, Nankai University, Tianjin 300353, China
    Institute of Intelligence Technology and Robotic Systems, Shenzhen Research Institute of Nankai University, Shenzhen 518083, China)

  • Jianhua Huang

    (State Key Laboratory of Intelligent Manufacturing of Advanced Construction Machinery, Jiangsu XCMG National Key Laboratory Technology Co., Ltd., Xuzhou 221004, China)

  • Biao Lu

    (Institute of Robotics and Automatic Information System, College of Artificial Intelligence, Nankai University, Tianjin 300353, China
    Institute of Intelligence Technology and Robotic Systems, Shenzhen Research Institute of Nankai University, Shenzhen 518083, China)

  • Weili Ding

    (National Key Laboratory of Key Technologies for Lifting Machinery, Yanshan University, Qinhuangdao 066004, China
    Engineering Research Center of Intelligent Control System and Intelligent Equipment, Ministry of Education, Yanshan University, Qinhuangdao 066004, China)

Abstract

Neural network (NN)-based controllers have emerged as a paradigm-shifting approach in modern control systems, demonstrating unparalleled capabilities in governing nonlinear dynamical systems with inherent uncertainties. This comprehensive review systematically investigates the theoretical foundations and practical implementations of NN controllers through the prism of Lyapunov stability theory, NN controller frameworks, and robustness analysis. The review establishes that recurrent neural architectures inherently address time-delayed state compensation and disturbance rejection, achieving superior trajectory tracking performance compared to classical control strategies. By integrating imitation learning with barrier certificate constraints, the proposed methodology ensures provable closed-loop stability while maintaining safety-critical operation bounds. Experimental evaluations using chaotic system benchmarks confirm the exceptional modeling capacity of NN controllers in capturing complex dynamical behaviors, complemented by formal verification advances through reachability analysis techniques. Practical demonstrations in aerial robotics and intelligent transportation systems highlight the efficacy of controllers in real-world scenarios involving environmental uncertainties and multi-agent interactions. The theoretical framework synergizes data-driven learning with nonlinear control principles, introducing hybrid automata formulations for transient response analysis and adjoint sensitivity methods for network optimization. These innovations position NN controllers as a transformative technology in control engineering, offering fundamental advances in stability-guaranteed learning and topology optimization. Future research directions will emphasize the integration of physics-informed neural operators for distributed control systems and event-triggered implementations for resource-constrained applications, paving the way for next-generation intelligent control architectures.

Suggested Citation

  • Rui Liu & Jianhua Huang & Biao Lu & Weili Ding, 2025. "Certified Neural Network Control Architectures: Methodological Advances in Stability, Robustness, and Cross-Domain Applications," Mathematics, MDPI, vol. 13(10), pages 1-45, May.
  • Handle: RePEc:gam:jmathe:v:13:y:2025:i:10:p:1677-:d:1660131
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