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首页> 外文期刊>Journal of Engineering for Gas Turbines and Power >Compressor Stall Warning Using Nonlinear Feature Extraction Algorithms
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Compressor Stall Warning Using Nonlinear Feature Extraction Algorithms

机译:使用非线性特征提取算法的压缩机摊位警告

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Stall is a type of flow instability in compressors that sets the low-flow limit for compressor operation. During the past few decades, efforts to develop a reliable stall warning system have had limited success. This paper focuses on the small nonlinear disturbances prior to deep surge and introduces a new approach to identify these disturbances using nonlinear feature extraction algorithms including phase-reconstruction of time-series signals and evaluation of a parameter called approximate entropy. To the best of our knowledge, this is the first time approximate entropy has been used for stall warning, and thus, its definition and utility are presented in detail. The technique is applied to stall data sets from two different compressors: a high-speed centrifugal compressor that unexpectedly entered rotating stall during a speed transient and a multistage axial compressor with both modal- and spike-type stall inception. In both cases, nonlinear disturbances appear, in terms of spikes in approximate entropy, prior to surge. The presence of these presurge spikes indicates the potential of using the approximate entropy parameter for small disturbance detection and stall warning. The details of the nonlinear feature extraction algorithm, including guidelines for its application as well as results from applying the algorithm to rig-level data, are presented.
机译:Stall是压缩机中的一种流量不稳定性,用于设置压缩机操作的低流量限制。在过去几十年中,开发可靠的摊位警告系统的努力取得了有限的成功。本文侧重于深浪涌之前的小非线性干扰,并引入了使用非线性特征提取算法识别这些干扰的新方法,包括时间序列信号的相位重建和称为近似熵的参数的评估。据我们所知,这是第一次近似熵已被用于摊位警告,因此,详细介绍了其定义和实用。该技术应用于从两个不同的压缩机停止数据组:高速离心压缩机,其在速度瞬态和多级轴向压缩机期间意外地进入旋转失速,其具有模态和尖峰型失速初始化。在这两种情况下,在浪涌之前,在近似熵的尖峰方面出现非线性干扰。这些假设尖峰的存在表示使用用于小扰动检测和失速警告的近似熵参数。呈现了非线性特征提取算法的细节,包括其应用指南以及将算法应用于钻机级数据的结果。

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