Meta learning based residual network for industrial production quality prediction with limited data
Yiguan Shi,
Yazhao Cao,
Yong Chen
et al.
Abstract:Due to the challenge of collecting a substantial amount of production-quality data in real-world industrial settings, the implementation of production quality prediction models based on deep learning is not effective. To achieve the goal of predicting production quality with limited data and address the issue of model degradation in the training process of deep learning networks, we propose Meta-Learning based on Residual Network (MLRN) models for production quality prediction with limited data. Firstly, the M… Show more
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