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2019 | OriginalPaper | Chapter

Reservoir Computing Approaches Applied to Energy Management in Industry

Authors : Valentina Colla, Ismael Matino, Stefano Dettori, Silvia Cateni, Ruben Matino

Published in: Engineering Applications of Neural Networks

Publisher: Springer International Publishing

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Abstract

Echo-State Neural Networks represent a very efficient solution for modelling of dynamic systems, thanks to their particular structure, which allows faithful reproduction of the behavior of the system to model with a usually limited computational burden for a training phase. This aspect favors the deployment of Echo-State Neural networks in the industrial field. In this paper, a novel application of such approach is proposed for the modelling of industrial processes. The developed models are part of a complex system for optimizing the exploitation of process off-gases in an integrated steelwork. Two models are presented and discussed, where both shallow Echo-State Neural Networks and Deep Echo State Neural networks are applied. The achieved results are presented and discussed, by comparing advantages and drawbacks of both approaches.

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Metadata
Title
Reservoir Computing Approaches Applied to Energy Management in Industry
Authors
Valentina Colla
Ismael Matino
Stefano Dettori
Silvia Cateni
Ruben Matino
Copyright Year
2019
DOI
https://doi.org/10.1007/978-3-030-20257-6_6

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