Performance Optimization of 500MW Steam Turbine by Condition Monitoring Technique Using Vibration Analysis Method

Mohammed Fazal Ur Rahman, Prof. Syed Nawazish Mehdi, Praveen Kumar B
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引用次数: 2

Abstract

In this paper, description of vibration analysis method used for condition monitoring of 500MW steam turbine (Kraftwork Union, Germany) has been discussed. The importance and critical role of this technique in predictive maintenance used in thermal power plant is evaluated based on possible type of failures that can be detected at early stage before any unexpected, unscheduled breakdown during operation of steam turbine.

Efforts are being made for most of the steam turbines in power generation thermal plants to run or operate them at Ideal condition by regular technical consultations resulting in continuous generation of power and reasonable increase in operational life span of these turbines. This paper deals with one such effort. In this paper real time condition monitoring of 500MW turbine, which was carried out by them at NTPC-Ramagundum power plant, using vibration analysis, has been discussed without disturbing its operational working condition and the causes for increase in the vibrations and its practical diagnosis by spectrum analysis, Interpretations and recommended steps to be taken to minimize the vibrations.
基于振动分析方法的500MW汽轮机状态监测技术性能优化
本文论述了500MW汽轮机(德国kraft Union, Germany)状态监测所采用的振动分析方法。基于在汽轮机运行过程中任何意外的、计划外的故障发生之前的早期阶段可以检测到的可能的故障类型,评估了该技术在火电厂预测性维护中的重要性和关键作用。通过定期的技术咨询,努力使火力发电厂的大部分汽轮机在理想状态下运行或运行,使汽轮机连续发电,合理提高汽轮机的使用寿命。本文论述的就是这样一种努力。本文采用振动分析的方法,对NTPC-Ramagundum电厂500MW水轮机在不干扰其运行工况的情况下进行了实时状态监测,讨论了振动增加的原因,并通过频谱分析对其进行了实际诊断,提出了减少振动的措施和解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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