Gas turbine vibration monitoring based on real data using neuro-fuzzy system

Diagnostyka Pub Date : 2024-01-21 DOI:10.29354/diag/181190
B. Nail, Djaidir Benrabeh, Imad Eddine Tibermacne, C. Napoli, Haidour Nabil, Rabehi Abdelaziz
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Abstract

The gas turbine is considered to be a very complex piece of machinery because of both its static structure and the dynamic behavior that results from the occurrence of vibration phenomena. It is required to adopt monitoring and diagnostic procedures for the identification and localization of vibration flaws in order to ensure the appropriate operation of large rotating equipment such as gas turbines. This is necessary in order to avoid catastrophic failures and deterioration and to ensure that proper operation occurs. Utilizing an approach that is based on spectrum analysis, the purpose of this study is to provide a model for the monitoring and diagnosis of vibrations in a GE MS3002 gas turbine and its driven centrifugal compressor. This will be done by utilizing the technique. Following that, the collection of vibration measurements for a model of the centrifugal compressor served as a suggestion for an additional method. This method is based on the neuro-fuzzy approach type ANFIS, and it aims to create an equivalent system that is able to make decisions without consulting a human being for the purpose of detecting vibratory defects. In spite of the fact that the compressor that was investigated has flaws, this procedure produced satisfactory results.
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利用神经模糊系统基于真实数据监测燃气轮机振动
燃气轮机被认为是一种非常复杂的机械,因为它既有静态结构,又有因发生振动现象而产生的动态行为。需要采用监测和诊断程序来识别和定位振动缺陷,以确保燃气轮机等大型旋转设备的正常运行。为了避免灾难性故障和恶化,并确保正常运行,这是必要的。本研究采用基于频谱分析的方法,旨在为通用电气 MS3002 燃气轮机及其驱动的离心压缩机的振动监测和诊断提供一个模型。这将通过使用该技术来实现。随后,收集离心压缩机模型的振动测量结果,作为对另一种方法的建议。该方法以 ANFIS 神经模糊方法为基础,旨在创建一个等效系统,无需人工即可做出检测振动缺陷的决策。尽管被调查的压缩机存在缺陷,但这一程序产生了令人满意的结果。
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