单级轴流压气机系统特性Moore-Greitzer模型参数辨识

Chris K. Bitikofer, M. Schoen, Ji-chao Li, F. Lin
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引用次数: 6

摘要

轴向压缩机系统在其最佳工作点附近容易发生不稳定。不稳定性包括喘振或失速,对压缩机系统的运行健康和完整性造成严重后果。Moore-Greitzer (MG)模型通常被认为是描述轴向压缩机内部动态特性的标准,并且有利于控制器的开发。这种控制器有望提高压缩机系统的效率;然而,由于无法提取定义实际压缩机行为的MG参数,控制器设计一直受到阻碍。因此,控制并不是基于MG模型。通过实验确定这些系统参数是不切实际的,因为压缩机可以承受的操作范围有限而不会持续损坏。本文提出了一种概念验证的灰盒识别方法,从实验数据中提取MG模型的特征参数。该技术利用了基于遗传算法的优化。在本研究中,利用MG模型的仿真数据和单级压缩机系统的实测数据提取MG模型的关键参数。建立一种间接确定MG模型参数的方法,将其从理论应用扩展到具体应用,为直接控制轴流压气机打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characteristic Moore-Greitzer model parameter identification for a one stage axial compressor system
Axial compressor systems are predisposed to instability near their optimum operating point. Instabilities include surge or stall, leading to severe consequences to the operational health and integrity of compressor system. The Moore-Greitzer (MG) model has been commonly recognized as a standard when characterizing the dynamics within an axial compressor and is advantageous for the development of a controller. Such a controller promises to increase the efficiency of compressor systems; yet, controller design has been barred by an inability to extract the MG parameters defining the behavior of real-life compressors. Hence, control has not been based on the MG model. Determining these system parameters experimentally is impractical due the limited range of operation compressors can withstand without sustaining damage. In this paper a proof-of-concept gray-box identification method is proposed to extract the characteristic parameters of a MG model from experimental data. This technique utilizes a genetic algorithm based optimization. In this study, simulated data from a MG model and measured data from a one stage compressor system is utilized to extract key parameters of the MG model. Establishing an indirect method to determine the parameters for the MG model extends its relevance from theoretical use to concrete application and opens the door for the direct control of axial compressors.
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