A stall diagnosis method based on entropy feature identification in axial compressors

IF 3.4 Q1 ENGINEERING, MECHANICAL 国际机械系统动力学学报(英文) Pub Date : 2023-02-03 DOI:10.1002/msd2.12064
Yang Liu, Juan Du, Jichao Li, Yang Xu, Junqiang Zhu, Chaoqun Nie
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引用次数: 1

Abstract

A stall diagnosis method based on the entropy feature extraction algorithm is developed in axial compressors. The reliability of the proposed method is determined and a parametric sensitivity analysis is experimentally conducted for two different types of compressor stall diagnoses. A collection of time-resolved pressure sensors is mounted circumferentially and along the chord direction to measure the dynamic pressure on the casing. Results show that the stall and prestall precursor embedded in the dynamic pressures are identified through nonlinear feature perturbation extraction using the entropy feature extraction algorithm. Further analysis demonstrates that the prestall precursor with the peak entropy value is related to the unsteady tip leakage flow for the spike-type stall diagnosis. The modal wave inception with increasing amplitude is identified by the considerable increase of the entropy value. The flow field in the tip region indicates that the modal wave corresponds to the flow separation in the suction side of the rotor blade. The warning time is 100–300 rotor revolutions for both types of stall diagnoses, which is beneficial for stall control in different axial compressors. Moreover, a parametric study of the embedding dimension m, similar tolerance n, similar radius r, and data length N in the fuzzy entropy method is conducted to determine the optimal parameter setting for stall diagnosis. The stall warning based on the entropy feature extraction algorithm provides a new stall diagnosis approach in the axial compressor with different stall types. This stall warning can also be adopted as an online stability monitoring index when using the concept of active stall control.

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基于熵特征识别的轴流压缩机失速诊断方法
提出了一种基于熵特征提取算法的轴流压缩机失速诊断方法。确定了所提出方法的可靠性,并对两种不同类型的压缩机失速诊断进行了参数灵敏度分析。一组时间分辨压力传感器沿弦向安装,以测量套管上的动态压力。结果表明,利用熵特征提取算法,通过非线性特征摄动提取,识别出了嵌入动压中的失速和叠前前兆。进一步分析表明,峰值熵值的叠前前兆与尖峰型失速诊断的非定常叶尖泄漏流有关。振幅增加的模态波起始由熵值的显著增加来识别。叶尖区域的流场表明,模态波对应于转子叶片吸力侧的流动分离。两种类型的失速诊断的警告时间均为100–300转,这有利于不同轴流压缩机的失速控制。此外,对模糊熵方法中的嵌入维数m、相似公差n、相似半径r和数据长度n进行了参数研究,以确定失速诊断的最佳参数设置。基于熵特征提取算法的轴流压气机失速预警为不同失速类型的轴流压缩机提供了一种新的失速诊断方法。当使用主动失速控制的概念时,该失速警告也可以作为在线稳定性监测指标。
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