Volume 46 Issue 8
Aug.  2025
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WANG Lei, CHENG Liaoliao, HU Juxi, GU Kaixuan, LIU Yingliang. A Long Short-Term Memory Networks Based Method for Force Reconstruction With Interval Uncertainties[J]. Applied Mathematics and Mechanics, 2025, 46(8): 959-972. doi: 10.21656/1000-0887.450152
Citation: WANG Lei, CHENG Liaoliao, HU Juxi, GU Kaixuan, LIU Yingliang. A Long Short-Term Memory Networks Based Method for Force Reconstruction With Interval Uncertainties[J]. Applied Mathematics and Mechanics, 2025, 46(8): 959-972. doi: 10.21656/1000-0887.450152

A Long Short-Term Memory Networks Based Method for Force Reconstruction With Interval Uncertainties

doi: 10.21656/1000-0887.450152
  • Received Date: 2024-05-22
  • Rev Recd Date: 2024-12-17
  • Available Online: 2025-09-10
  • In response to the instability issues of traditional neural networks in handling time-dependent dynamic processes and noisy data, a dynamic force reconstruction method based on long short-term memory (LSTM) networks was proposed. The measured response signals, contaminated by noise, were normalized as input variables, while the normalized dynamic loads as output variables. The implementation approach of LSTM networks was adopted. To enhance the network's generalization ability, various types of dynamic responses and original loads were defined as sample structures at each time step. In view of interval uncertainty, the point distribution strategy results were adjusted to build the dimension-wise method (DWM) based on the traditional point distribution methods, to get precise resolution of uncertainty load identification with independent interval variables in the investigation of uncertainty variables in a specific dimension through fixation of others. Finally, by numerical examples and a comparison with traditional neural networks (back-propagation neural networks), the LSTM neural network was proved to be more stable in handling noisy data. An experimental design validates the effectiveness and feasibility of this method for time-dependent data.
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