2022
DOI: 10.36227/techrxiv.21113374
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Nonlinear Semi-supervised Inference Networks for the Extraction of Slow Oscillating Features

Abstract: <p>Due to physical and monetary constraints, quality-related variables in the process industries are generally difficult to measure using hardware sensors. Therefore, they are often not available as frequently as the other variables since obtaining them typically via laboratory analysis are time-consuming. On the other hand, the dynamic nature of easy-to-measure process data contains valuable predictive information about the quality variables. Consequently, modelling sequential data is beneficial in buil… Show more

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