立轴高速离心机模态参数辨识的特征系统实现算法

Sina Piramoon, M. Ayoubi
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引用次数: 7

摘要

本文利用观测器/卡尔曼滤波识别(OKID)和特征系统实现算法(ERA)技术来识别离心机器的模态参数。为此,我们使用实验装置来生成伪脉冲输入并收集被噪声破坏的输出测量值。我们使用伪脉冲输入和OKID来求系统的马尔可夫参数。然后构造了系统的汉克尔矩阵,确定了系统的奇异值。通过马尔可夫参数实现系统的最小阶状态空间模型,然后利用ERA估计传感器位置的固有频率、阻尼比、模态振型和模态幅值。我们为三种不同的情况找到了三个模型,并用测量数据和瀑布图验证了所有三个确定的模型。所识别的模型可用于设计被动或主动振动抑制控制和故障检测系统。结果表明,OKID/ERA是一种可靠的识别立式离心机模态参数的时域方法。
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An Eigensystem Realization Algorithm for Modal Parameter Identification of a Vertical-Shaft High-Speed Centrifugal Machine
In this paper, we utilize the observer/Kalman filter identification (OKID) and the eigensystem realization algorithm (ERA) techniques to identify the modal parameters of a centrifugal machine. To this end, we use an experimental setup to generate a pseudo-impulse input and collect output measurements which are corrupted by noise. We use the pseudo-impulse input and the OKID to find the Markov parameters of the system. Then we form the Hankel matrix of the system and determine the singular values of the system. A minimum-order, state-space model of the system is realized through the Markov parameters and then the natural frequency, damping ratio, mode shapes, and modal amplitudes at the sensor location are estimated by the ERA. We find three models for three separate cases and validate all the three identified models with the measured data and the Waterfall plot. The identified models are useful for designing passive or active vibration suppression control and fault detection systems. The results confirm that OKID/ERA is a reliable time-domain method for identifying the modal parameters of vertical centrifuge machines.
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