scholarly journals Sensor Data Required for Automatic Recognition of Athletic Tasks Using Deep Neural Networks

Author(s):  
Allison L. Clouthier ◽  
Gwyneth B. Ross ◽  
Ryan B. Graham
IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 22802-22811
Author(s):  
Zhigang Li ◽  
Jialin Wang ◽  
Di Cai ◽  
Yingqi Li ◽  
Changxin Cai ◽  
...  

Sensors ◽  
2021 ◽  
Vol 21 (3) ◽  
pp. 880
Author(s):  
Tao Wu ◽  
Xiaoyang Li ◽  
Deyun Zhou ◽  
Na Li ◽  
Jiao Shi

Deep neural networks have evolved significantly in the past decades and are now able to achieve better progression of sensor data. Nonetheless, most of the deep models verify the ruling maxim in deep learning—bigger is better—so they have very complex structures. As the models become more complex, the computational complexity and resource consumption of these deep models are increasing significantly, making them difficult to perform on resource-limited platforms, such as sensor platforms. In this paper, we observe that different layers often have different pruning requirements, and propose a differential evolutionary layer-wise weight pruning method. Firstly, the pruning sensitivity of each layer is analyzed, and then the network is compressed by iterating the weight pruning process. Unlike some other methods that deal with pruning ratio by greedy ways or statistical analysis, we establish an optimization model to find the optimal pruning sensitivity set for each layer. Differential evolution is an effective method based on population optimization which can be used to address this task. Furthermore, we adopt a strategy to recovery some of the removed connections to increase the capacity of the pruned model during the fine-tuning phase. The effectiveness of our method has been demonstrated in experimental studies. Our method compresses the number of weight parameters in LeNet-300-100, LeNet-5, AlexNet and VGG16 by 24×, 14×, 29× and 12×, respectively.


2021 ◽  
Author(s):  
Haiyue Wu ◽  
Aihua Huang ◽  
John W. Sutherland

Abstract Predictive maintenance (PdM) is an advanced technique to predict the time to failure (TTF) of a system. PdM collects sensor data on the health of a system, processes the information using data analytics, and then establishes data-driven models that can forecast system failure. Deep neural networks are increasingly being used as these data-driven models owing to their high predictive accuracy and efficiency. However, deep neural networks are often criticized as being “black boxes,” which owing to their multi-layered and non-linear structure provide little insight into the underlying physics of the system being monitored, and that are nontransparent and untraceable in their predictions. In order to address this issue, the layer-wise relevance propagation (LRP) technique is applied to analyze a long short-term memory (LSTM) recurrent neural network (RNN) model. The proposed method is demonstrated and validated for a bearing health monitoring study based on vibration data. The obtained LRP results provide insights into how the model “learns” from the input data and demonstrate the distribution of contribution/relevance to the neural network classification in the input space. In addition, comparisons are made with gradient-based sensitivity analysis to show the power of LRP in interpreting RNN models. The LRP is proved to have promising potential in interpreting deep neural network models and improving model accuracy and efficiency for PdM.


Author(s):  
Orken Mamyrbayev ◽  
Mussa Turdalyuly ◽  
Nurbapa Mekebayev ◽  
Keylan Alimhan ◽  
Aizat Kydyrbekova ◽  
...  

Sensors ◽  
2017 ◽  
Vol 17 (3) ◽  
pp. 549 ◽  
Author(s):  
Ran Zhang ◽  
Zhen Peng ◽  
Lifeng Wu ◽  
Beibei Yao ◽  
Yong Guan

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