2024
DOI: 10.1002/cjce.25465
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Three‐layer deep learning network random trees for fault detection in chemical production process

Ming Lu,
Zhen Gao,
Ying Zou
et al.

Abstract: With the development of technology, the chemical production process is becoming increasingly complex and large‐scale, making fault detection particularly important. However, current detection methods struggle to address the complexities of large‐scale production processes. In this paper, we integrate the strengths of deep learning and machine learning technologies, combining the advantages of bidirectional long‐ and short‐term memory neural networks, fully connected neural networks, and the extra trees algorit… Show more

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