Integrally Bladed Rotor Modal Identification Under Traveling Wave Excitation with High Density Measurement Points

Author:

Beck Joseph1,Brown Jeffrey2,Gillaugh Daniel2

Affiliation:

1. Perceptive Engineering Analytics, LLC, Minneapolis, Minnesota 55418

2. AFRL/RQTI, Wright-Patterson AFB, Ohio, 45433

Abstract

Abstract Vibration testing of an Integrally Bladed Rotor (IBR) is often completed through Traveling Wave Excitation (TWE) bench tests composed of multiple, simultaneously excited inputs. Often, each blade has many output locations. For IBRs with many blades, as often found in the high pressure compressor, the total number of outputs can be several orders of magnitude. Formulation of a full output spectral density matrix from all measurements will then contain an exponential number of values at each frequency bin that can be detrimental to computational resources during the spectral density matrix formulation as well as down-stream system identification algorithms. An online algorithm is proposed for collecting and analyzing TWE data to reduce the large, computationally burdensome data sets into a manageable number of subsets for subsequent system identification. Furthermore, a frequency domain decomposition technique is also proposed for system identification that also attempts to reduce the data size through singular value decomposition. Identified system poles can be averaged from each subset, but mode shapes require stitching each subset together to identify the full mode shape at all output locations. The developed approaches are tested on synthetic TWE data and compared to baseline system identification results obtained using the full spectral density matrix. Results indicate the data subsets accurately compare to the baseline without much loss in accuracy.

Publisher

ASME International

Subject

Mechanical Engineering,Energy Engineering and Power Technology,Aerospace Engineering,Fuel Technology,Nuclear Energy and Engineering

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