2022
DOI: 10.1098/rspa.2021.0833
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Stochastic reduced order modelling and analysis of rotating bladed discs

Abstract: A computational finite-element (FE)-based technique is proposed for developing a stochastic reduced order model for rotating bladed disc with spatial random inhomogeneities. The spatial inhomogeneities imply the system to be randomly mistuned. The formulation assumes the availability of a high fidelity FE model for the tuned system. The corresponding FE matrices are antisymmetric on account of the Coriolis forces due to rotation. The spatial inhomogeneities, available from limited point measurements on the bla… Show more

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“…These imperfections, known as mistuning, lead to disturbing the regularity of the networked system even in a topology that is perfectly regular. Since the mistuning is assumed to be on account of manufacturing tolerances, they can be assumed to be random and is referred to as random mistuning [16]. To investigate their effects on ζ, the pendulum lengths are assumed to follow a Gaussian distribution about its nominal design value with standard deviation σ, such that 0 < σ ⩽ 0.10.…”
Section: Effect Of Parametric Uncertainty On ζmentioning
confidence: 99%
“…These imperfections, known as mistuning, lead to disturbing the regularity of the networked system even in a topology that is perfectly regular. Since the mistuning is assumed to be on account of manufacturing tolerances, they can be assumed to be random and is referred to as random mistuning [16]. To investigate their effects on ζ, the pendulum lengths are assumed to follow a Gaussian distribution about its nominal design value with standard deviation σ, such that 0 < σ ⩽ 0.10.…”
Section: Effect Of Parametric Uncertainty On ζmentioning
confidence: 99%