Gaussian mixture model sample selection strategy–based active semi-supervised soft sensor for industrial processes
Xing Luo,
Qi Lei,
Huirui Wang
Abstract:Soft sensors have become reliable tools for estimating difficult-to-measure target variables in modern industrial processes. In order to make full use of labeled and unlabeled samples, an active semi-supervised soft sensor modeling method is proposed, which combines active learning and semi-supervised learning to maximize model performance and minimize the laboratory analysis cost of expanding the labeled sample data set. First, manifold regularization is introduced into the deep extreme learning machine (DELM… Show more
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