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Dynamical System Parameter Identification Using Deep Recurrent Cell Networks Which Gated Recurrent Unit and When

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Date

2021

Journal Title

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Publisher

Springer London Ltd

Open Access Color

Green Open Access

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Abstract

In this paper, we investigate the parameter identification problem in dynamical systems through a deep learning approach. Focusing mainly on second-order, linear time-invariant dynamical systems, the topic of damping factor identification is studied. By utilizing a six-layer deep neural network with different recurrent cells, namely GRUs, LSTMs or BiLSTMs; and by feeding input/output sequence pairs captured from a dynamical system simulator, we search for an effective deep recurrent architecture in order to resolve the damping factor identification problem. Our study's results show that, although previously not utilized for this task in the literature, bidirectional gated recurrent cells (BiLSTMs) provide better parameter identification results when compared to unidirectional gated recurrent memory cells such as GRUs and LSTM. Thus, indicating that an input/output sequence pair of finite length, collected from a dynamical system and when observed anachronistically, may carry information in both time directions to predict a dynamical systems parameter.

Description

Cifdaloz, Oguzhan/0000-0003-0523-946X; Akagunduz, Erdem/0000-0002-0792-7306

Keywords

Dynamical Systems Parameter Identification, Recurrent Cells, Lstm, Gru, Bilstm, FOS: Computer and information sciences, Computer Science - Machine Learning, Artificial Intelligence (cs.AI), Computer Science - Artificial Intelligence, FOS: Electrical engineering, electronic engineering, information engineering, Systems and Control (eess.SY), Electrical Engineering and Systems Science - Systems and Control, Machine Learning (cs.LG)

Fields of Science

0209 industrial biotechnology, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

Akagündüz, Erdem; Çifdalöz, Oğuzhan (2021). "Dynamical system parameter identification using deep recurrent cell networks: Which gated recurrent unit and when?", Neural Computing and Applications, Vol. 33, No. 23, pp. 16745-16757.

WoS Q

Q2

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Q1
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OpenCitations Citation Count
3

Source

Neural Computing and Applications

Volume

33

Issue

23

Start Page

16745

End Page

16757
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Scopus : 2

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