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INTEGRATION OF TECHNOLOGY CAPABILITY FOR PERFORMANCE DIAGNOSTICS OF MS7001EA USING PYTHIA

机译:利用毕氏整合了MS7001EA性能诊断的技术能力

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Gas turbine components are susceptible to degradation during operations; hence, the identification of the engine condition is really important for the gas turbine users. To this end, a comprehensive adaptive diagnostic tool is an important step to monitoring the engine health condition and planning appropriate maintenance actions, thereby increasing the availability and reliability of the unit, and at the same time reducing the operation and maintenance expenses. In this paper, the capability of PYTHIA; a computer software technology for engine diagnostic purpose using a non-linear gas path analysis was explored on GE MS700IEA industrial heavy duty gas turbine during a plot period of 12,000 hours. The method used in this paper was to adapt an accurate engine performance model from the real engine historical data readings, and by implicating multiple component degradation parameters onto the diagnostic tool; which represents the possible phenomena in the real engine operation period. The adaptive gas path analysis was used to identify the level of degradation or health indices of the gas turbine at the module level and its degraded performance compared with the actual engine data trending. The results obtained indicated the capability of PYTHIA to successfully adapt real engine data and detect fault patterns in response to implanted faults of selected measurement set during engine operation period. The deviations between the predicted and measured values showed a satisfactory result with a root mean square error (RMS) ≤ 0.004 and Gas Path Analysis index value ≥ 0.996. The component parameter degradation during the 12000 hours engine operation was detected, indicating a decrease in flow capacity by 2.1% for compressor and turbine by 2.8%.
机译:燃气轮机部件在运行过程中容易降解。因此,对燃气轮机用户来说,发动机状态的识别非常重要。为此,全面的自适应诊断工具是监视发动机健康状况并计划适当维护措施的重要步骤,从而提高了设备​​的可用性和可靠性,同时减少了运营和维护费用。本文介绍了PYTHIA的功能;在GE MS700IEA工业重型燃气轮机上,在12,000小时的试验期内探索了一种用于非线性诊断的计算机软件,用于发动机诊断。本文所使用的方法是根据实际发动机历史数据读取来调整准确的发动机性能模型,并将多个部件退化参数包含到诊断工具中。它代表了实际发动机运行期间的可能现象。与实际发动机数据趋势相比,自适应气路分析被用来确定燃气轮机在模块级的退化程度或健康指标及其退化的性能。所获得的结果表明,PYTHIA能够成功地调整实际发动机数据并响应发动机运行期间所选测量集的植入故障而检测故障模式。预测值与测量值之间的偏差显示出令人满意的结果,均方根误差(RMS)≤0.004,气路分析指标值≥0.996。在12000小时的发动机运行期间检测到了组件参数的下降,这表明压缩机和涡轮的流量减少了2.1%,降低了2.8%。

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