scholarly journals Integrating Multiscale Numerical Simulations with Machine Learning to Predict the Strain Sensing Efficiency of Nano-engineered Smart Cementitious Composites

2021 ◽  
pp. 109995
Author(s):  
Gideon A. Lyngdoh ◽  
Sumanta Das
2018 ◽  
Vol 2 (4) ◽  
pp. 36 ◽  
Author(s):  
Simon Thomas ◽  
Marianna Giassi ◽  
Mikael Eriksson ◽  
Malin Göteman ◽  
Jan Isberg ◽  
...  

This paper introduces a machine learning based control strategy for energy converter arrays designed to work under realistic conditions where the optimal control parameter can not be obtained analytically. The control strategy neither relies on a mathematical model, nor does it need a priori information about the energy medium. Therefore several identical energy converters are arranged so that they are affected simultaneously by the energy medium. Each device uses a different control strategy, of which at least one has to be the machine learning approach presented in this paper. During operation all energy converters record the absorbed power and control output; the machine learning device gets the data from the converter with the highest power absorption and so learns the best performing control strategy for each situation. Consequently, the overall network has a better overall performance than each individual strategy. This concept is evaluated for wave energy converters (WECs) with numerical simulations and experiments with physical scale models in a wave tank. In the first of two numerical simulations, the learnable WEC works in an array with four WECs applying a constant damping factor. In the second simulation, two learnable WECs were learning with each other. It showed that in the first test the WEC was able to absorb as much as the best constant damping WEC, while in the second run it could absorb even slightly more. During the physical model test, the ANN showed its ability to select the better of two possible damping coefficients based on real world input data.


2021 ◽  
Author(s):  
Kun Wang ◽  
Christopher Johnson ◽  
Kane Bennett ◽  
Paul Johnson

Abstract Data-driven machine-learning for predicting instantaneous and future fault-slip in laboratory experiments has recently progressed markedly due to large training data sets. In Earth however, earthquake interevent times range from 10's-100's of years and geophysical data typically exist for only a portion of an earthquake cycle. Sparse data presents a serious challenge to training machine learning models. Here we describe a transfer learning approach using numerical simulations to train a convolutional encoder-decoder that predicts fault-slip behavior in laboratory experiments. The model learns a mapping between acoustic emission histories and fault-slip from numerical simulations, and generalizes to produce accurate results using laboratory data. Notably slip-predictions markedly improve using the simulation-data trained-model and training the latent space using a portion of a single laboratory earthquake-cycle. The transfer learning results elucidate the potential of using models trained on numerical simulations and fine-tuned with small geophysical data sets for potential applications to faults in Earth.


2020 ◽  
Vol 51 ◽  
pp. 130-141
Author(s):  
Shantanu Shahane ◽  
Narayana Aluru ◽  
Placid Ferreira ◽  
Shiv G. Kapoor ◽  
Surya Pratap Vanka

2021 ◽  
Vol 43 ◽  
pp. 102544
Author(s):  
Junbo Sun ◽  
Yongzhi Ma ◽  
Jianxin Li ◽  
Junfei Zhang ◽  
Zhenhua Ren ◽  
...  

Carbon ◽  
2019 ◽  
Vol 146 ◽  
pp. 265-275 ◽  
Author(s):  
Miguel A.S. Matos ◽  
Silvestre T. Pinho ◽  
Vito L. Tagarielli

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