2020
DOI: 10.1515/chem-2020-0004
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Study on online soft sensor method of total sugar content in chlorotetracycline fermentation tank

Abstract: AbstractIn order to solve the problem that the total sugar content of the chlortetracycline fermentation tank can not be automatically detected online, a prediction method which combines the output recursive wavelet neural network and the Gauss process regression is proposed in this paper. A soft sensor model between the measurable parameters (inputs) and the total sugar content (output) of the chlortetracycline fermentation tank was established. The soft sensor model was train… Show more

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Cited by 4 publications
(2 citation statements)
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“…Training adaptive soft sensors update historical data sets to predict data at an early stage of change after cumulative training Sun et al (2020) Use special metrics to work with data samples and select the most relevant data from the historical data set to model。 Zheng et al (2021) Extracting temporal and spatial features Industrial processes have a strong temporal dependence. Traditional static models are unable to derive from process data relevant dynamic information The network contains time and spatial attention modules that extract time and space features from the data.…”
Section: Referencesmentioning
confidence: 99%
“…Training adaptive soft sensors update historical data sets to predict data at an early stage of change after cumulative training Sun et al (2020) Use special metrics to work with data samples and select the most relevant data from the historical data set to model。 Zheng et al (2021) Extracting temporal and spatial features Industrial processes have a strong temporal dependence. Traditional static models are unable to derive from process data relevant dynamic information The network contains time and spatial attention modules that extract time and space features from the data.…”
Section: Referencesmentioning
confidence: 99%
“…In this paper, we take two parameters as basic parameters. In addition, the two indicators of attribute and distance can be used to jointly determine the optimization results [14].…”
Section: Seismic Attribute Sandstonementioning
confidence: 99%