Abstract:
During the past few year, recurrent neural network (RNN) has been proposed to model the nonlinear dynamics of various dynamic systems, such as nano positioning systems (e...Show MoreMetadata
Abstract:
During the past few year, recurrent neural network (RNN) has been proposed to model the nonlinear dynamics of various dynamic systems, such as nano positioning systems (e.g, piezo electric actuators (PEAs)). Although high modeling accuracy has been demonstrated using RNNs, it has been found that the conventional RNNs (such as vanilla RNN) are susceptible to gradient vanishing or exploding issue and hence difficult to train. Deep RNNs, such as Long short-term memory (LSTM), have been proposed to address these issues. However, due to the conventional training data construction, the training is susceptible to overfitting and the computation is extensive. In this paper, we propose a new type of LSTM in the application of PEA system identification: a sequence-to-sequence learning approach (namely, LSTMseq2seq). The structure of LSTMseq2seq and its training data construction are presented in detail. The efficacy of LSTMseq2seq in terms of modeling accuracy and computation speed is demonstrated by applying it for PEA system identification and comparing its performance with that of vanilla RNN.
Published in: 2023 American Control Conference (ACC)
Date of Conference: 31 May 2023 - 02 June 2023
Date Added to IEEE Xplore: 03 July 2023
ISBN Information:
ISSN Information:
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- IEEE Keywords
- Index Terms
- System Dynamics ,
- System Identification ,
- Dynamic Design ,
- Piezoelectric Actuator ,
- Identification Of Dynamical Systems ,
- Neural Network ,
- Training Data ,
- Short-term Memory ,
- Long Short-term Memory ,
- Recurrent Neural Network ,
- Nonlinear Dynamics ,
- Computational Speed ,
- High Accuracy Of The Model ,
- Deep Recurrent Neural Network ,
- Training Set ,
- Frequency Range ,
- Nonlinear Function ,
- Hidden Layer ,
- Nonlinear Systems ,
- Memory Cells ,
- Traditional Recurrent Neural Network ,
- Encoder Layer ,
- Vanishing Gradient Problem ,
- Hidden State ,
- Training Input ,
- Design For Nonlinear Systems ,
- Forget Gate ,
- Feed-forward Network ,
- Input Sequence
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- System Dynamics ,
- System Identification ,
- Dynamic Design ,
- Piezoelectric Actuator ,
- Identification Of Dynamical Systems ,
- Neural Network ,
- Training Data ,
- Short-term Memory ,
- Long Short-term Memory ,
- Recurrent Neural Network ,
- Nonlinear Dynamics ,
- Computational Speed ,
- High Accuracy Of The Model ,
- Deep Recurrent Neural Network ,
- Training Set ,
- Frequency Range ,
- Nonlinear Function ,
- Hidden Layer ,
- Nonlinear Systems ,
- Memory Cells ,
- Traditional Recurrent Neural Network ,
- Encoder Layer ,
- Vanishing Gradient Problem ,
- Hidden State ,
- Training Input ,
- Design For Nonlinear Systems ,
- Forget Gate ,
- Feed-forward Network ,
- Input Sequence
- Author Keywords