Integrated Condition Monitoring of Large Captive Power Plants and Aluminum Smelters

IF 0.9 Q4 ACOUSTICS Sound and Vibration Pub Date : 2019-01-01 DOI:10.32604/sv.2019.07737
J. Mohanty, A. Adarsh, P. Dash, K. Parida, P. Pradhan
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引用次数: 5

Abstract

Condition monitoring is implementation of the advanced diagnostic techniques to reduce downtime and to increase the efficiency and reliability. The research is for determining the usage of advanced techniques like Vibration analysis, Oil analysis and Thermography to diagnose ensuing problems of the Plant and Machinery at an early stage and plan to take corrective and preventive actions to eliminate the forthcoming breakdown and enhancing the reliability of the system. Nowadays, the most of the industries have adopted the condition monitoring techniques as a part of support system to the basic maintenance strategies. Major condition monitoring technique they follow is Vibration Spectrum Analysis, which can detect faults at a very early stage. However implementation of other techniques like Oil analysis or Ferrography, Thermography etc. can further enhance the data interpretation as they would detect the source of abnormality at much early stage thus providing us with a longer lead time to plan and take the corrective actions. In Large Captive Power Plants and Aluminium Smelters, Integrated Condition Monitoring techniques play an important role as stoppage of primary system and its auxiliaries (boiler, steam turbine, generator, coal and ash handling plants etc.) results into the stoppage of the entire plant, which in turn leads to loss of productivity. From economical and operational point of view, it is desirable to ensure optimum level of system availability.
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大型自备电厂和铝冶炼厂综合状态监测
状态监测是先进诊断技术的实施,以减少停机时间,提高效率和可靠性。这项研究是为了确定使用先进的技术,如振动分析、油分析和热成像,在早期阶段诊断设备和机器的后续问题,并计划采取纠正和预防措施,以消除即将发生的故障,提高系统的可靠性。目前,大多数工业都将状态监测技术作为基本维护策略的支持系统的一部分。他们采用的主要状态监测技术是振动频谱分析,可以在早期发现故障。然而,其他技术,如油分析、铁谱、热成像等,可以进一步提高数据的解释,因为它们可以在早期发现异常的来源,从而为我们提供更长的准备时间来计划和采取纠正措施。在大型自备电厂和炼铝厂中,综合状态监测技术起着重要的作用,因为一次系统及其辅助设备(锅炉、汽轮机、发电机、煤和灰处理厂等)的停机将导致整个工厂的停机,从而导致生产力的损失。从经济和操作的角度来看,确保系统可用性的最佳水平是可取的。
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来源期刊
Sound and Vibration
Sound and Vibration 物理-工程:机械
CiteScore
1.50
自引率
33.30%
发文量
33
审稿时长
>12 weeks
期刊介绍: Sound & Vibration is a journal intended for individuals with broad-based interests in noise and vibration, dynamic measurements, structural analysis, computer-aided engineering, machinery reliability, and dynamic testing. The journal strives to publish referred papers reflecting the interests of research and practical engineering on any aspects of sound and vibration. Of particular interest are papers that report analytical, numerical and experimental methods of more relevance to practical applications. Papers are sought that contribute to the following general topics: -broad-based interests in noise and vibration- dynamic measurements- structural analysis- computer-aided engineering- machinery reliability- dynamic testing
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