Steam turbine stress control using NARX neural network

Autor: Dominiczak Krzysztof, Rzadkowski Romuald, Radulski Wojciech
Jazyk: angličtina
Rok vydání: 2015
Předmět:
Zdroj: Open Engineering, Vol 5, Iss 1 (2015)
Druh dokumentu: article
ISSN: 2391-5439
DOI: 10.1515/eng-2015-0043
Popis: Considered here is concept of steam turbine stress control, which is based on Nonlinear AutoRegressive neural networks with eXogenous inputs. Using NARX neural networks,whichwere trained based on experimentally validated FE model allows to control stresses in protected thickwalled steam turbine element with FE model quality. Additionally NARX neural network, which were trained base on FE model, includes: nonlinearity of steam expansion in turbine steam path during transients, nonlinearity of heat exchange inside the turbine during transients and nonlinearity of material properties during transients. In this article NARX neural networks stress controls is shown as an example of HP rotor of 18K390 turbine. HP part thermodynamic model as well as heat exchange model in vicinity of HP rotor,whichwere used in FE model of the HP rotor and the HP rotor FE model itself were validated based on experimental data for real turbine transient events. In such a way it is ensured that NARX neural network behave as real HP rotor during steam turbine transient events.
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