This paper presents an accelerated distributed receding horizon controller for cooperative network estimation problems using multiple autonomous agents. Our approach accelerates decision-making by integrating a novel heuristic-based ranking system, significantly reducing the dependency on computationally expensive Nonlinear Programs (NLPs). The reduction of computational complexity enables real-time responses and scalability to large systems while maintaining high levels of estimation accuracy. To mitigate the small loss of performance, we further introduce a method that aims at generating the best solution within a given computational time constraint by leveraging both the newly introduced ranking scheme and the traditional NLP solutions. Numerical simulations demonstrate competitive performance when benchmarked against data-driven offline policies (e.g., RL), showing that our methods achieve good results while having enhanced flexibility and robustness properties due to their online nature.
Accelerated Decision Making for Distributed Network Estimation Problems
Carli R.;
2025
Abstract
This paper presents an accelerated distributed receding horizon controller for cooperative network estimation problems using multiple autonomous agents. Our approach accelerates decision-making by integrating a novel heuristic-based ranking system, significantly reducing the dependency on computationally expensive Nonlinear Programs (NLPs). The reduction of computational complexity enables real-time responses and scalability to large systems while maintaining high levels of estimation accuracy. To mitigate the small loss of performance, we further introduce a method that aims at generating the best solution within a given computational time constraint by leveraging both the newly introduced ranking scheme and the traditional NLP solutions. Numerical simulations demonstrate competitive performance when benchmarked against data-driven offline policies (e.g., RL), showing that our methods achieve good results while having enhanced flexibility and robustness properties due to their online nature.Pubblicazioni consigliate
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.




