TY - JOUR
T1 - Event-Triggered Practical Finite-Time Distributed Optimization for Networked Multiagent Systems With Edge-Based Noise
AU - Leng, Jiahao
AU - Zhong, Qishui
AU - Hua, Lanfeng
AU - Zhou, Hanmei
AU - Han, Lijin
AU - Shi, Kaibo
AU - Li, Shuai
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2026
Y1 - 2026
N2 - This article addresses the time-varying distributed optimization problem (DOP) for networked multiagent systems (NMASs) operating over directed graphs, considering the impact of edge-based additive measurement noise (EBAMN). First, a finite-time stochastic stability framework is established to demonstrate the global stochastic practical finite-time attraction of the origin, enabling robust control design for stochastic nonlinear systems. The proposed method achieves faster convergence rates and provides bounded finite convergence time estimates, outperforming asymptotic methods. Second, a novel distributed optimization algorithm (DOA) is introduced, incorporating consensus-gain function, state-dependent optimization gains, and integral information of the gradient of local objective functions. Using the Itô lemma and Lyapunov theory, the continuous-time DOA guarantees the pth moment convergence for all agents, ensures practical finite-time consensus in probability, and drives that states of NMASs converge to the time-varying optimal solution, even in the presence of EBAMN interferences. Furthermore, a new adaptive dynamic event-triggered mechanism (ETM) integrated with the DOA is proposed. This mechanism significantly enhances communication efficiency and reduces resource consumption throughout the process of tracking the optimal solution while preventing Zeno behavior. Finally, numerical simulations in multiuncrewed aerial vehicle (UAV) target tracking validate the effectiveness of the robust continuous-time DOA against random EBAMN.
AB - This article addresses the time-varying distributed optimization problem (DOP) for networked multiagent systems (NMASs) operating over directed graphs, considering the impact of edge-based additive measurement noise (EBAMN). First, a finite-time stochastic stability framework is established to demonstrate the global stochastic practical finite-time attraction of the origin, enabling robust control design for stochastic nonlinear systems. The proposed method achieves faster convergence rates and provides bounded finite convergence time estimates, outperforming asymptotic methods. Second, a novel distributed optimization algorithm (DOA) is introduced, incorporating consensus-gain function, state-dependent optimization gains, and integral information of the gradient of local objective functions. Using the Itô lemma and Lyapunov theory, the continuous-time DOA guarantees the pth moment convergence for all agents, ensures practical finite-time consensus in probability, and drives that states of NMASs converge to the time-varying optimal solution, even in the presence of EBAMN interferences. Furthermore, a new adaptive dynamic event-triggered mechanism (ETM) integrated with the DOA is proposed. This mechanism significantly enhances communication efficiency and reduces resource consumption throughout the process of tracking the optimal solution while preventing Zeno behavior. Finally, numerical simulations in multiuncrewed aerial vehicle (UAV) target tracking validate the effectiveness of the robust continuous-time DOA against random EBAMN.
KW - Adaptive event-triggered mechanism (ETM)
KW - continuous-time distributed optimization algorithm (DOA)
KW - edge-based additive measurement noise (EBAMN)
KW - networked multiagent systems (NMASs)
KW - practical finite-time consensus
UR - https://www.scopus.com/pages/publications/105027689025
U2 - 10.1109/TCYB.2025.3645098
DO - 10.1109/TCYB.2025.3645098
M3 - Article
AN - SCOPUS:105027689025
SN - 2168-2267
JO - IEEE Transactions on Cybernetics
JF - IEEE Transactions on Cybernetics
ER -