Improvement of Marine Steam Turbine Conventional E xergy Analysis by Neural Network Application (CROSBI ID 285268)
Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija
Podaci o odgovornosti
Baressi Šegota, Sandi ; Lorencin, Ivan ; Anđelić, Nikola ; Mrzljak, Vedran ; Car, Zlatan
engleski
Improvement of Marine Steam Turbine Conventional E xergy Analysis by Neural Network Application
This article presented an improvement of marine steam turbine conventional exergy analysis by application of neural networks. The conventional exergy analysis requires numerous measurements in seven different turbine operating points at each load, while the intention of MLP (Multilayer Perceptron) neural network‐based analysis was to investigate the possibilities for measurements reducing. At the same time, the accuracy and precision of the obtained results should be maintained. In MLP analysis, six separate models are trained. Due to a low number of instances within the data set, a 10‐fold cross‐validation algorithm is performed. The stated goal is achieved and the best solution suggests that MLP application enables reducing of measurements to only three turbine operating points. In the best solution, MLP model errors falling within the desired error ranges (Mean Relative Error) MRE < 2.0% and (Coefficient of Correlation) R2 > 0.95 for the whole turbine and each of its cylinders.
exergy destruction ; exergy efficiency ; marine steam turbine ; MLP neural network ; turbine cylinders
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Podaci o izdanju
8 (11)
2020.
884
38
objavljeno
2077-1312
10.3390/jmse8110884
Povezanost rada
Računarstvo, Strojarstvo