Academic Journal

Localized and adaptive soft sensor based on an extreme learning machine with automated self‐correction strategies.

Bibliographic Details
Title: Localized and adaptive soft sensor based on an extreme learning machine with automated self‐correction strategies.
Authors: Poerio, Dominic V., Brown, Steven D.
Superior Title: Journal of Chemometrics; Jul2020, Vol. 34 Issue 7, p1-18, 18p
Subject Terms: MACHINE learning, FEEDFORWARD neural networks, SELF-adaptive software, DETECTORS, LEAST squares, ALGORITHMS, FORECASTING
Abstract: A novel, nonlinear soft sensor based on a localized, adaptive single‐layer feedforward neural network with random hidden layer weights, also called an extreme learning machine, combined with the recursive partial least squares algorithm to update the linear output layer weights, is explored. The soft sensor is highly adaptive with minimal operator input, and automated mechanisms are included to self‐correct numerous aspects of the underlying model. For instance, mechanisms are put in place to automatically select an optimized local model region describing the current process dynamics from the historical data when the current prediction error reaches an adaptively computed threshold. Additionally, the new soft sensor simultaneously employs an ensemble of models with diverse recursive partial least squares forgetting factors with automated and adaptive reweighting of the models in the ensemble, thus enabling real‐time model memory adjustment. The validity of the method is shown by comparison with numerous other soft sensor methods for the prediction of the activity of a polymerization catalyst. We report a novel, highly adaptive, nonlinear soft sensor based on an extreme learning machine, a localized, adaptive single‐layer feedforward neural network with random hidden layer weights, that is combined with the recursive partial least squares algorithm to update the linear output layer weights. This new soft sensor simultaneously employs an ensemble of automated, adaptively re‐weighted models, thus enabling real‐time model memory adjustment. The method is compared with other soft sensor methods. [ABSTRACT FROM AUTHOR]
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Database: Complementary Index
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