Abstract
As the most critical procedure in the hot strip mill process (HSMP), the performance of the finishing mill process (FMP) has a significant influence on the key performance indicators (KPIs). Considering that the multivariate statistical process monitoring (MSPM) methods and batch alignment methods (which are implemented in a point-to-point manner) cannot effectively handle the uneven-length and multiphase characteristics of FMP data, we propose a method to monitor the shape of the variable trajectories that are closely associated with KPIs. First, the historical FMP data characterized by different grades and thickness is utilized to build monitoring models based on the Shape-Based Distance (SBD) to obtain two statistics, i.e. the SBDs and the corresponding offsets when aligned with the central trajectories. Then, by comparing the statistics of the new coming trajectories with the control limits obtained from the training set, the new coming batches can be monitored. In the end, the proposed method is tested on the real FMP dataset to validate its effectiveness.
Published Version
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