Matches in SemOpenAlex for { <https://semopenalex.org/work/W3179924948> ?p ?o ?g. }
- W3179924948 endingPage "11192" @default.
- W3179924948 startingPage "11177" @default.
- W3179924948 abstract "We consider the recurrent neural network (RNN)-based remote state estimation for nonlinear dynamic systems with unknown state dynamics. The nonlinear dynamic plant is monitored by multiple distributed IIoT sensors over a random access wireless network with shared common spectrum. We focus on the remote state estimation algorithm design so as to achieve remote state estimation stability subject to noninvertible nonlinear sensor state observations, imperfect channel state information (CSI) at the remote estimator, and various wireless impairments, such as multisensor interference, wireless fading, and additive channel noise. Utilizing a state diffeomorphism, the original system is transformed into a canonical form with a linear rank deficient observation matrix. We propose a novel RNN remote state estimator based on the pole placement design associated with the transformed rank deficient state measurement matrices. We further propose a novel online training algorithm such that the RNN at the remote estimator can not only address the divergence issue over wireless networks but also effectively learn the unknown nonlinear plant dynamics despite rank deficiency and imperfect CSI. Using the Lyapunov drift analysis approach, we establish closed-form sufficient requirements on the communication resources needed to achieve almost sure stability of both state estimation and RNN online training in the high signal-to-noise ratio (SNR) regime. As a result, our proposed scheme is asymptomatic optimal for large SNR in the sense that both the plant state and the unknown plant nonlinearity can be perfectly recovered at the remote estimator. The proposed scheme is also compared with various baselines and we show that significant performance gains can be achieved." @default.
- W3179924948 created "2021-07-19" @default.
- W3179924948 creator A5073153992 @default.
- W3179924948 creator A5084587735 @default.
- W3179924948 date "2021-07-15" @default.
- W3179924948 modified "2023-10-06" @default.
- W3179924948 title "RNN-Based Learning of Nonlinear Dynamic System Using Wireless IIoT Networks" @default.
- W3179924948 cites W1974037141 @default.
- W3179924948 cites W1986631447 @default.
- W3179924948 cites W1987571991 @default.
- W3179924948 cites W2006689319 @default.
- W3179924948 cites W2022406843 @default.
- W3179924948 cites W2034564563 @default.
- W3179924948 cites W2042733674 @default.
- W3179924948 cites W2058401212 @default.
- W3179924948 cites W2088936270 @default.
- W3179924948 cites W2103536212 @default.
- W3179924948 cites W2104192126 @default.
- W3179924948 cites W2106379493 @default.
- W3179924948 cites W2111075016 @default.
- W3179924948 cites W2122640492 @default.
- W3179924948 cites W2129915998 @default.
- W3179924948 cites W2137152139 @default.
- W3179924948 cites W2155908111 @default.
- W3179924948 cites W2164522996 @default.
- W3179924948 cites W2166116275 @default.
- W3179924948 cites W2168662436 @default.
- W3179924948 cites W2169074446 @default.
- W3179924948 cites W2342500365 @default.
- W3179924948 cites W2579757613 @default.
- W3179924948 cites W2580381586 @default.
- W3179924948 cites W2586459757 @default.
- W3179924948 cites W2589366957 @default.
- W3179924948 cites W2598678894 @default.
- W3179924948 cites W2915945464 @default.
- W3179924948 cites W2935056970 @default.
- W3179924948 cites W2971350222 @default.
- W3179924948 cites W2973525699 @default.
- W3179924948 cites W2979346274 @default.
- W3179924948 cites W2981617647 @default.
- W3179924948 cites W3101637649 @default.
- W3179924948 cites W4247332980 @default.
- W3179924948 cites W4253990512 @default.
- W3179924948 cites W612816339 @default.
- W3179924948 doi "https://doi.org/10.1109/jiot.2021.3052925" @default.
- W3179924948 hasPublicationYear "2021" @default.
- W3179924948 type Work @default.
- W3179924948 sameAs 3179924948 @default.
- W3179924948 citedByCount "4" @default.
- W3179924948 countsByYear W31799249482022 @default.
- W3179924948 countsByYear W31799249482023 @default.
- W3179924948 crossrefType "journal-article" @default.
- W3179924948 hasAuthorship W3179924948A5073153992 @default.
- W3179924948 hasAuthorship W3179924948A5084587735 @default.
- W3179924948 hasConcept C105795698 @default.
- W3179924948 hasConcept C108037233 @default.
- W3179924948 hasConcept C121332964 @default.
- W3179924948 hasConcept C147168706 @default.
- W3179924948 hasConcept C148063708 @default.
- W3179924948 hasConcept C154945302 @default.
- W3179924948 hasConcept C158622935 @default.
- W3179924948 hasConcept C185429906 @default.
- W3179924948 hasConcept C2775924081 @default.
- W3179924948 hasConcept C33923547 @default.
- W3179924948 hasConcept C41008148 @default.
- W3179924948 hasConcept C47446073 @default.
- W3179924948 hasConcept C50644808 @default.
- W3179924948 hasConcept C555944384 @default.
- W3179924948 hasConcept C62520636 @default.
- W3179924948 hasConcept C76155785 @default.
- W3179924948 hasConceptScore W3179924948C105795698 @default.
- W3179924948 hasConceptScore W3179924948C108037233 @default.
- W3179924948 hasConceptScore W3179924948C121332964 @default.
- W3179924948 hasConceptScore W3179924948C147168706 @default.
- W3179924948 hasConceptScore W3179924948C148063708 @default.
- W3179924948 hasConceptScore W3179924948C154945302 @default.
- W3179924948 hasConceptScore W3179924948C158622935 @default.
- W3179924948 hasConceptScore W3179924948C185429906 @default.
- W3179924948 hasConceptScore W3179924948C2775924081 @default.
- W3179924948 hasConceptScore W3179924948C33923547 @default.
- W3179924948 hasConceptScore W3179924948C41008148 @default.
- W3179924948 hasConceptScore W3179924948C47446073 @default.
- W3179924948 hasConceptScore W3179924948C50644808 @default.
- W3179924948 hasConceptScore W3179924948C555944384 @default.
- W3179924948 hasConceptScore W3179924948C62520636 @default.
- W3179924948 hasConceptScore W3179924948C76155785 @default.
- W3179924948 hasFunder F4320337111 @default.
- W3179924948 hasIssue "14" @default.
- W3179924948 hasLocation W31799249481 @default.
- W3179924948 hasOpenAccess W3179924948 @default.
- W3179924948 hasPrimaryLocation W31799249481 @default.
- W3179924948 hasRelatedWork W1496660757 @default.
- W3179924948 hasRelatedWork W2115030441 @default.
- W3179924948 hasRelatedWork W2147578878 @default.
- W3179924948 hasRelatedWork W2159990075 @default.
- W3179924948 hasRelatedWork W2171331836 @default.
- W3179924948 hasRelatedWork W2187808779 @default.
- W3179924948 hasRelatedWork W2614149677 @default.