Effects of sampling decimation on a gas turbine performance monitoring

Houman Hanachi, Jie Liu, A. Banerjee, Ying Chen
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Abstract

Monitoring the performance of gas turbine engines (GTEs) by sampling the operating parameters of the GTEs is the central part of the GTEs health management program. The rate of data sampling and the consequent analyses of the sampled data are restricted to the available resources. It especially appears as a principal constraint where the data is manually logged by the operators. In a recent research work, a physics-based approach and resulting performance indicators, i.e., “Heat Loss index” and “Power Deficit index” were introduced by the authors to monitor the health state of the gas turbines using only the readings from the GTE operating system. Statistical estimation approach was taken to establish prediction models for performance indicators. This study provides a quantitative analysis for the effect of sampling decimation on the accuracy of the developed predictor within a time window. Consequently, it provides an insight into the performance prediction uncertainty, in connection with the sampling frequency and the length of the observation window on which the model is established.
采样抽取对燃气轮机性能监测的影响
通过对燃气涡轮发动机的运行参数进行采样来监测燃气涡轮发动机的性能是燃气涡轮发动机健康管理项目的核心部分。数据采样的速率和随后对采样数据的分析受到可用资源的限制。当数据由操作人员手动记录时,它尤其作为主要约束出现。在最近的一项研究工作中,作者引入了一种基于物理的方法和由此产生的性能指标,即“热损失指数”和“功率赤字指数”,仅使用GTE操作系统的读数来监测燃气轮机的健康状态。采用统计估计的方法建立绩效指标的预测模型。本研究提供了一个定量分析抽样抽取对开发的预测器在一个时间窗口内的准确性的影响。因此,它提供了一个洞察性能预测的不确定性,与采样频率和观测窗口的长度,其中建立了模型。
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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