气动

Comparison of Rotating Stall Warning by Different Methods for Variable Speed Configurations in a Contra-Rotating Compressor

  • XUE Fei ,
  • WANG Yan’gang ,
  • LIU Qian ,
  • WU Tong ,
  • LIU Hanru
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  • School of Power and Energy, Northwestern Polytechnical University, Xi’an 710072, China

网络出版日期: 2024-07-15

基金资助

This work has been supported by the National Natural Science Foundation of China (Grant No. 52276039).

版权

Science Press, Institute of Engineering Thermophysics, CAS and Springer-Verlag GmbH Germany, part of Springer Nature 2024

Comparison of Rotating Stall Warning by Different Methods for Variable Speed Configurations in a Contra-Rotating Compressor

  • XUE Fei ,
  • WANG Yan’gang ,
  • LIU Qian ,
  • WU Tong ,
  • LIU Hanru
Expand
  • School of Power and Energy, Northwestern Polytechnical University, Xi’an 710072, China

Online published: 2024-07-15

Supported by

This work has been supported by the National Natural Science Foundation of China (Grant No. 52276039).

Copyright

Science Press, Institute of Engineering Thermophysics, CAS and Springer-Verlag GmbH Germany, part of Springer Nature 2024

摘要

压气机失速会引起其性能急剧恶化甚至导致灾难的产生,通过在线监测失速先兆并采取主动控制措施能够有效避免失速发生。本文以一台低速轴流对转压气机为对象开展旋转失速预警研究,首先分析了对转压气机在不同转速配置下的失速扰动特征,发现基于后转子转速的失速扰动传播速度随着转速比增大逐渐减小。随后分别利用标准差(SD)方法、互相关系数(CC)方法和离散小波变换(DWT)方法在三种不同转速配置条件下开展失速预警研究,结果显示SD方法和CC方法在所有转速配置下均未取得令人满意的失速预警效果;DWT方法在RR=1.125时得到的失速发生时刻在失速成熟发展一个周期之后,这显然是不可接受的。因此,本文发展了一种基于长短时记忆(LSTM)神经网络的失速预警方法,利用该方法得到三种转速配置下的失速发生时刻分别在第557转、第518转以及第333转,分别取得了44转、2转以及74转的失速预警效果。进一步研究结果表明:当失速前存在小扰动时,LSTM方法取得的失速预警效果比上述三种方法更好,而当失速前动态压力波动较小时,四种方法取得的失速预警效果相差不大。

本文引用格式

XUE Fei , WANG Yan’gang , LIU Qian , WU Tong , LIU Hanru . Comparison of Rotating Stall Warning by Different Methods for Variable Speed Configurations in a Contra-Rotating Compressor[J]. 热科学学报, 2024 , 33(4) : 1379 -1393 . DOI: 10.1007/s11630-024-1985-1

Abstract

Stall in compressors can cause performance degradation and even lead to disasters. These unacceptable consequences can be avoided by timely monitoring stall inception and taking effective measures. This paper focused on the rotating stall warning in a low-speed axial contra-rotating compressor. Firstly, the stall disturbance characteristics under different speed configurations were analyzed. The results showed that as the speed ratio (RR) increased, the stall disturbance propagation speed based on the rear rotor speed gradually decreased. Subsequently, the standard deviation (SD) method, the cross-correlation (CC) method, and the discrete wavelet transform (DWT) method were employed to obtain the stall initiation moments of three different speed configurations. It was found that the SD and CC methods did not achieve significant stall warning results in all three speed configurations. Besides, the stall initiation moment obtained by the DWT method at RR=1.125 was one period after the stall had fully developed, which was unacceptable. Therefore, a stall warning method was developed in the present work based on the long short-term memory (LSTM) regression model. By applying the LSTM model, the predicted stall initiation moments of three speed configurations were at the 557th, 518th, and 333rd revolution, which were 44, 2, and 74 revolutions ahead of stall onset moments, respectively. Furthermore, in scenarios where a minor disturbance preceded the stall, the stall warning effect of the LSTM was greatly improved in comparison with the aforementioned three methods. In contrast, when the pressure fluctuation before the stall was relatively small, the differences between the stall initiation moments predicted by these four methods were not significant.

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