2015
DOI: 10.1177/1687814015578351
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Reliability analysis on resonance for low-pressure compressor rotor blade based on least squares support vector machine with leave-one-out cross-validation

Abstract: This research article analyzes the resonant reliability at the rotating speed of 6150.0 r/min for low-pressure compressor rotor blade. The aim is to improve the computational efficiency of reliability analysis. This study applies least squares support vector machine to predict the natural frequencies of the low-pressure compressor rotor blade considered. To build a more stable and reliable least squares support vector machine model, leave-one-out cross-validation is introduced to search for the optimal paramet… Show more

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Cited by 10 publications
(2 citation statements)
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“…Compared with the direct MCS method, the surrogate model requires fewer samples and holds lower time consumptions (Zhang et al, 2016). Current surrogate model methods include polynomial function (Meng et al, 2019b(Meng et al, , 2020a, Kriging model (Huang et al, 2020;Zhang et al, 2015Zhang et al, , 2020b, support vector machine (Hurtado, 2007;Gao and Bai, 2015;Dai et al, 2012) and artificial neural network (Song et al, 2018;Barbosa et al, 2020;Liu et al, 2019a).…”
Section: Surrogate Model Methodsmentioning
confidence: 99%
“…Compared with the direct MCS method, the surrogate model requires fewer samples and holds lower time consumptions (Zhang et al, 2016). Current surrogate model methods include polynomial function (Meng et al, 2019b(Meng et al, , 2020a, Kriging model (Huang et al, 2020;Zhang et al, 2015Zhang et al, , 2020b, support vector machine (Hurtado, 2007;Gao and Bai, 2015;Dai et al, 2012) and artificial neural network (Song et al, 2018;Barbosa et al, 2020;Liu et al, 2019a).…”
Section: Surrogate Model Methodsmentioning
confidence: 99%
“…The harmonics frequency depends on the rotational speed: n • E =n • ω /60, where n is the engine order. Also, the intersection between the nth engine order line and the line of natural frequencies of a mode is possible resonance point [8,9].…”
Section: Establishing Campbell Diagrammentioning
confidence: 99%