基于动态神经网络的燃气轮机振动特性检测与建模

Q3 Engineering
Mohamed Benrahmoune, Hafaifa Ahmed, Guemana Mouloud, Chen Xiaoqi
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引用次数: 15

摘要

摘要在燃气轮机开发过程中,微小缺陷的存在会引起非常高的振动放大,并局限在燃气轮机的部件上。为此,在监测由振动现象引起的故障时,诊断过程是必要的,它包括通过将当前数据与正常操作的数据进行比较来观察系统。这些指标帮助工程师确定系统中出现故障的组件的症状。这项工作处理与这些振动相关的问题,目的是开发一个使用动态神经网络方法检测故障的系统。该贡献的独创性在于计算基于该系统的各种报警,这些报警使用确定的振动模型,以确保使用检查的燃气轮机的气体压缩装置可靠和安全运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Modeling Vibrational Behavior of a Gas Turbine Based on Dynamic Neural Networks Approach
Abstract During the gas turbine exploitation the presence of small defects can cause very high vibration amplifications, localized on the components of this rotating machine. For this, a diagnostic process is necessary for decision-making during the monitoring of failures caused by vibration phenomena, which consists in observing the system by comparing its current data with the data coming from a normal operation. These indicators help engineer to determine the symptoms for the failing components of the system. This work deals with problems related to these vibrations, with the aim of developing a system of detection of failures using dynamic neural networks approach. The originality of this contribution is to calculate the various alarms based on this system which used the determined vibration models in order to ensure a reliable and safe operation of the gas compression installation using the examined gas turbine.
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来源期刊
Strojnicky Casopis
Strojnicky Casopis Engineering-Mechanical Engineering
CiteScore
2.00
自引率
0.00%
发文量
33
审稿时长
14 weeks
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