State-Space Neural Network with Ordered Variance
This paper presents a novel state-space neural network with ordered variance (SSNNO) in which the state variables are ordered in decreasing variance. A systematic way of identifying the order of the model with SSNNO is proposed, which is further extended for model order reduction. Theoretical result...
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Zusammenfassung: | This paper presents a novel state-space neural network with ordered variance
(SSNNO) in which the state variables are ordered in decreasing variance. A
systematic way of identifying the order of the model with SSNNO is proposed,
which is further extended for model order reduction. Theoretical results on the
existence of SSNNO with an arbitrarily small prediction error is presented. The
effectiveness of the SSNNO in system identification and model order reduction
is illustrated using simulation results. |
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DOI: | 10.48550/arxiv.2406.10359 |