Forecasting industrial aging processes with machine learning methods

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United States of America Patent

PATENT NO 11860617
SERIAL NO

17779737

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By accurately predicting industrial aging processes (IAP), such as the slow deactivation of a catalyst in a chemical plant, it is possible to schedule maintenance events further in advance, thereby ensuring a cost-efficient and reliable operation of the plant. So far, these degradation processes were usually described by mechanistic models or simple empirical prediction models. In order to accurately predict IAP, data-driven models are proposed, comparing some traditional stateless models (linear and kernel ridge regression, as well as feed-forward neural networks) to more complex stateful recurrent neural networks (echo state networks and long short-term memory networks). Additionally, variations of the stateful models are discussed. In particular, stateful models using mechanistical pre-knowledge about the degradation dynamics (hybrid models). Stateful models and their variations may be more suitable for generating near perfect predictions when they are trained on a large enough dataset, while hybrid models may be more suitable for generalizing better given smaller datasets with changing conditions.

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TECHNISCHE UNIVERSITAET BERLINSTRASSE DES 17 JUNI 135 BERLIN 10623

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Bogojeski, Mihail Berlin, DE 2 0
Horn, Franziska Berlin, DE 1 0
Mueller, Klaus-Robert Berlin, DE 8 206
Sauer, Simeon Heidelberg, DE 4 1
Yakut, Nataliya Ludwigshafen am Rhein, DE 9 0

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