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Sampled-Data State Estimation for LSTM

Yongsik Jin, Sangmoon Lee

2024IEEE Transactions on Neural Networks and Learning Systems18 citationsDOI

Abstract

This article first introduces a sampled-data state estimator design method for continuous-time long short-term memory (LSTM) neural networks with irregularly sampled output. To this end, the structure of the LSTM is addressed to obtain its dynamic equation. As a result, the LSTM neural network is modeled as a continuous-time linear parameter-varying system that is dependent on the gate units. For this system, the sampled-data Luenberger- and Arcak-type state estimator design methods are presented in terms of linear matrix inequalities (LMIs) by using the properties of the gate units. Lastly, the proposed method not only provides a numerical example for analyzing absolute stability but also demonstrates it in practice by applying a pre-trained behavior generation model of a robot manipulator.

Topics & Concepts

EstimatorArtificial neural networkState estimatorState (computer science)Computer scienceControl theory (sociology)Stability (learning theory)Recurrent neural networkMatrix (chemical analysis)AlgorithmArtificial intelligenceMathematicsControl (management)Machine learningStatisticsMaterials scienceComposite materialControl Systems and IdentificationFault Detection and Control SystemsNeural Networks and Applications
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