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Research on Initial Installed Power Loss of a Certain Type of Turbo-Shaft Engine Using Data Mining and Statistical Approach

机译:基于数据挖掘和统计方法的某类涡轴发动机初始装机功率损失研究

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The installed positions of three domestic turbo-shaft engines mounted on a certain type of ship-borne helicopter interfere with the intake air flow of the engines, resulting in a decline of engine performance after initial installation. Due to the difference of load and adjustment method under the bench and installed conditions, it is necessary to study the change in gas turbine power rather than output shaft power of the engine before and after installation to evaluate the engine initial installed power loss. In this paper, quantum-behaved particle swarm optimization (QPSO) is applied to optimize the calculation of gas turbine power at different steady states based on the component-level aerodynamic thermal model of gas generator. Then, extreme learning machine (ELM) is adopted for regressive identification of the established gas generator state assessment model based on data mining and the identification model is applied to engine installed condition. Finally, statistical analysis of engine initial installed gas turbine power loss at three installed positions is carried out, respectively. Results show that the values of engine initial installed gas turbine power loss at three installed positions all conform to the normal distribution, the mean values are 1.658%, 9.828%, and 5.089%, respectively, and a confidence interval with 95% confidence level of the mean values are (1.388%, 1.928%), (9.178%, 10.478%) and (4.308%, 5.870%), which can provide references for determining the power monitoring thresholds after engine installation.
机译:在某种类型的舰载直升机上安装的三台家用涡轮轴发动机的安装位置会干扰发动机的进气流,导致初始安装后发动机性能下降。由于工作台和安装条件下负载和调整方法的差异,有必要研究燃气轮机功率的变化,而不是研究安装前后的发动机输出轴功率,以评估发动机的初始安装功率损失。本文采用量子行为粒子群算法(QPSO),基于气体发生器的组件级空气动力学模型,对不同稳态下的燃气轮机功率进行了优化。然后,基于数据挖掘,采用极限学习机(ELM)对建立的气体发生器状态评估模型进行回归识别,并将该识别模型应用于发动机安装状态。最后,分别对三个安装位置处的发动机初始安装的燃气轮机功率损失进行统计分析。结果表明,三个安装位置的发动机初始安装燃气轮机功率损耗值均符合正态分布,平均值分别为1.658%,9.828%和5.089%,置信区间为95%置信度为平均值为(1.388%,1.928%),(9.178%,10.478%)和(4.308%,5.870%),可为确定发动机安装后的功率监控阈值提供参考。

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