The code of Soft Sensor Experiments
This file is a pytorch realization of this papaer:
This file is a pytorch realization of this papaer:
This file is a pytorch realization of this papaer (part):
- Gated Stacked Target-Related Autoencoder: A Novel Deep Feature Extraction and Layerwise Ensemble Method for Industrial Soft Sensor Application
- Hierarchical Quality-Relevant Feature Representation for Soft Sensor Modeling: A Novel Deep Learning Strategy
This file is a pytorch realization of this papaer (part):
This file is a pytorch realization of this papaer:
This file is a pytorch realization of this papaer:
This file is a pytorch realization of this papaer:
This file is a pytorch realization of these papaers:
- Deep learning with spatiotemporal attention-based LSTM for industrial soft sensor model development
- Dual Attention-Based Encoder–Decoder: A Customized Sequence-to-Sequence Learning for Soft Sensor Development
Justus
12032042@zju.edu.cn
or
chenzhch7@mail3.sysu.edu.cn
Please cite the corresponding paper if the code shown aboved is used in your research.
如果在您的研究中使用了上述代码,请引用对应的论文。
No reprobaiction without permission/ secondary creation(limited to articles). Please indicate the source if authorized.
未经许可, 严禁转载/二次创作(仅限于发文章)。 转载请说明出处。
The data proposed in this repo is downloaded via this link. No confidential data is involved!
本仓库的数据是通过此链接下载得到。不涉及任何保密数据!