Time weighted kernel sparse representation based real-time nonlinear multimode process monitoring}

2021 
Real-time nonlinear multimode process monitoring of actual industrial systems has attracted increasing attention recently. In this paper, the Time Weighed Kernel Sparse Representation (TWKSR) method is proposed to partition the mode of training dataset by introducing the time series-dependent characteristics into the kernel sparse representation algorithm. The alternating direction method of multipliers (ADMM) is utilized to solve the optimization problem of the proposed TWKSR method. Then, the representative samples from each identified mode are selected to update the dictionary matrix. Based on the updated dictionary matrix, the sparse coefficient is used for on-line mode identification and the reconstruction error is utilized for fault detection, respectively. Finally, a numerical simulation case and the wastewater treatment process example verify the effectiveness of the proposed method.
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