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A stochastic hybrid blade tip timing approach for the identification and classification of turbomachine blade damage

机译:涡轮叶片叶片损伤的识别和分类的随机混合叶片叶尖正时方法

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摘要

Blade Tip Timing (BTT) has been in existence for many decades as an attractive vibration based condition monitoring technique for turbomachine blades. The technique is non-intrusive and online monitoring is possible. For these reasons, BTT may be regarded as a feasible technique to track the condition of turbomachine blades, thus preventing unexpected and catastrophic failures. The processing of BTT data to find the associated vibration characteristics is however non-trivial. In addition, these vibration characteristics are difficult to validate, therefore resulting in great uncertainty of the reliability of BTT techniques. This article therefore proposes a hybrid approach comprising a stochastic Finite Element Model (FEM) based modal analysis and Bayesian Linear Regression (BLR) based BIT technique. The use of this stochastic hybrid approach is demonstrated for the identification and classification of turbomachine blade damage. For the purposes of this demonstration, discrete damage is incrementally introduced to a simplified test blade of an experimental rotor setup. The damage identification and classification processes are further used to determine whether a damage threshold has been reached, therefore providing sufficient evidence to schedule a turbomachine outage. It is shown that the proposed stochastic hybrid approach may offer many short- and long-term benefits for practical implementation. (C) 2018 Elsevier Ltd. All rights reserved.
机译:叶片尖端正时(BTT)作为涡轮机叶片基于振动的有吸引力的状态监测技术已经存在了数十年。该技术是非侵入性的,可以进行在线监视。由于这些原因,BTT可能被视为追踪涡轮机叶片状况的可行技术,从而防止了意料之外的灾难性故障。然而,处理BTT数据以找到相关的振动特性并非易事。另外,这些振动特性难以验证,因此导致BTT技术可靠性的极大不确定性。因此,本文提出了一种混合方法,包括基于随机有限元模型(FEM)的模态分析和基于贝叶斯线性回归(BLR)的BIT技术。证明了这种随机混合方法用于涡轮机叶片损坏的识别和分类。为了演示的目的,将离散损坏逐步引入到实验转子设置的简化测试叶片上。损伤识别和分类过程还用于确定是否已达到损伤阈值,因此提供了足够的证据来安排涡轮机停机。结果表明,所提出的随机混合方法可能为实际实施提供许多短期和长期利益。 (C)2018 Elsevier Ltd.保留所有权利。

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