Dynamic response prediction model of thin-wall workpiece-fixture system with magnetorheological damping in milling

2022 ◽  
Vol 74 ◽  
pp. 500-510
Author(s):  
Junjin Ma ◽  
Yunfei Li ◽  
Dinghua Zhang ◽  
Bo Zhao ◽  
Geng Wang ◽  
...  
Author(s):  
Linna Li ◽  
Chenchen Fang ◽  
Dongwang Zhong ◽  
Li He ◽  
Jianfeng Si

The water medium explosion container is an experimental device that simulates explosion in different water depth environments by loading different hydrostatic pressures and different doses of explosive. To ensure its safety during service, it is necessary to study the dynamic response of water medium explosion container. Because the dynamic response is complicated and the correlation between the response and the load of the container is nonlinear, it is difficult to calculate the dynamic response by analytical and numerical methods. In this paper, a model is built based on convolutional neural network (CNN) to predict the dynamic response of water medium explosion container. The accuracy and usability of the CNN prediction model are verified by comparison with the prediction results of the BP neural network model. The results show that CNN can be effectively used to predict the strain response of the dynamic response of water medium explosion container. and this method will play an important role in the later study of the overall feature analysis of the dynamic response of the water medium explosion vessel.


Author(s):  
Linna Li ◽  
Yanfei Hu ◽  
Chenchen Fang ◽  
Yue You ◽  
Kai Liu ◽  
...  

2020 ◽  
Vol 157 (2) ◽  
pp. 437-443
Author(s):  
Chel Hun Choi ◽  
Joon-Yong Chung ◽  
Jun Hyeok Kang ◽  
E. Sun Paik ◽  
Yoo-Young Lee ◽  
...  

1986 ◽  
Vol 22 (3) ◽  
pp. 353-360
Author(s):  
V. I. Patsyuk ◽  
V. K. Rimskii

Author(s):  
Hong Peng ◽  
Jingwen Yan ◽  
Ying Yu ◽  
Yaozhi Luo

In this paper, a new deep learning framework named encoding convolution long short-term memory (encoding ConvLSTM) is proposed to build a surrogate structural model with spatiotemporal evolution of structure, estimate the structural spatiotemporal state and predict the dynamic response under similar future dynamic load conditions. The main work of this study includes: (a) The spatiotemporal response tensor database is developed using discrete-time history data of structural dynamic response. (b) As an extension of LSTM, convolution operation is combined with LSTM network to construct structural surrogate model from the spatiotemporal evolution structural performance. (c) To enhance the anti-interference ability of structural surrogate models, a new three-layer encoding layer is added for denoising autoencoders of the hybrid network. The influence of building types and input noise on the accuracy and antinoise performance of the surrogate models are analyzed through the dynamic response prediction of a frame-shear wall, a cylindrical, and a spherical reticulated shell structure. As a testbed for the proposed network, a case study is performed on a laboratory stadium structure. The results demonstrate that the developed surrogate model can predict the structural dynamic response precisely with more under 30% noise interference.


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