研究目的
To improve the monitoring capability of pyrolysis reactors by introducing a deep learning approach for automatic identification of tube regions from infrared images, enabling precise temperature and shape monitoring.
研究成果
The proposed monitoring framework, utilizing deep learning for tube segmentation and AkNN for fault detection, effectively monitors pyrolysis reactors' temperature and shape changes. It provides a practical solution for industrial process monitoring under harsh conditions, with potential for broader applications in industrial manufacturing.
研究不足
The study is limited by the diversity of the photos taken from fixed camera positions, which may affect the training set's variability. Additionally, the computational time for processing images, though reasonable, may not be suitable for all real-time applications.