Non-fragile set-membership estimation for sensor-saturated memristive neural networks via weighted try-once-discard protocol
DOI10.1049/IET-CTA.2020.0219zbMATH Open1542.93381MaRDI QIDQ6608898
Hongjian Liu, Junhua Du, Jun Hu, Dongyan Chen, Yu Yang
Publication date: 20 September 2024
Published in: IET Control Theory \& Applications (Search for Journal in Brave)
robust controlconvex programmingnonlinear control systemsdelaysnetworked control systemscommunication channelmixed time-delaysactivation functionestimation errorconvex optimisationweighted try-once-discard protocolcontrol system synthesisnetwork resourcessector-bounded conditionneurocontrollerscommunication protocol transmissionsdelayed sensor-saturated memristive neural networksgain perturbation estimatornonfragile estimatornonfragile set-membership estimation problem
Convex programming (90C25) Estimation and detection in stochastic control theory (93E10) Delay control/observation systems (93C43) Networked control (93B70)
Cites Work
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