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The Pre-Stall Behavior of a 4-Stage Transonic Compressor and Stall Monitoring Based on Artificial Neural Networks

机译:基于人工神经网络的4级跨音速压缩机的失速行为和失速监测

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Current research concerned with the aerodynamic instability of compressors aims at an extension of the operating range of the compressor towards decreased massflow. In practice, a safety margin is maintained between operating point and stability limit to prevent the compressor from going into stall and surge. In this article, we analyze the behavior of a 4-stage transonic axial compressor before entering the unstable range and present an approach to identifying incipient surge and stall using artificial neural networks. This method is based on measurements of the unsteady static wall pressure in front of the first rotor. Analyzing the static pressure signals by using the Fast Fourier Transform shows that peripheral disturbances (modal waves) can only be identified in a small range close to nominal speed (at 95%). At lower speeds (60 to 80% of nominal speed), the investigated compressor flow enters instability by spike-type stall. Monitoring stability over the entire speed range of the compressor relies on artificial neural networks using the unsteady wall pressure signal. In the present case, artificial neural networks show to be the most useful tool to indicate approaching instability. The method works reliably for both types of instabilities, spike-type stall as well as modal waves.
机译:当前与压缩机的空气动力学不稳定性有关的研究旨在将压缩机的工作范围扩展到减小的质量流量。实际上,在工作点和稳定性极限之间保持安全裕度,以防止压缩机进入失速和喘振状态。在本文中,我们分析了进入不稳定范围之前的四级跨音速轴向压缩机的性能,并提出了一种使用人工神经网络识别初期喘振和失速的方法。该方法基于对第一转子前面的不稳定壁静态压力的测量。通过使用快速傅立叶变换分析静压力信号表明,只能在接近标称速度(95%)的小范围内识别出外围干扰(模态波)。在较低速度(标称速度的60%至80%)下,所研究的压缩机流量会由于尖峰型失速而进入不稳定状态。监测压缩机整个速度范围内的稳定性依赖于使用不稳定壁压力信号的人工神经网络。在当前情况下,人工神经网络被证明是指示接近不稳定的最有用工具。该方法对于两种类型的不稳定,尖峰型失速以及模态波均能可靠地工作。

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