Validation of Measured Dynamic Data Using Rigid Body Response

Q4 Engineering
D. Smallwood
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引用次数: 0

Abstract

As multiple axis vibration testing has become more widespread, it has become increasingly important to ensure the instrumentation is accurately portrayed in the instrumentation table. However, errors do occur. The method used in this paper to help uncover these errors is based on the condition that at low frequencies (below any resonant frequencies of the object being studied) the response is essentially rigid body. The spectral density matrix (SDM) at a low frequency, of many more than six response measurements, is decomposed using singular value decomposition (SVD). Under the assumption of rigid body response, it is assumed that the first six singular vectors are linear combinations of the six rigid body modes. The best linear fit is then calculated for this fit. The measurements are then removed one at a time, and the reduction in the fit error is calculated. It is assumed that if the removal of a measurement reduces the error significantly, that measurement is likely in error.
利用刚体响应验证实测动态数据
随着多轴振动测试的日益普及,确保仪器仪表在仪表表中被准确地描绘出来变得越来越重要。然而,错误确实会发生。本文中用于帮助揭示这些错误的方法是基于在低频(低于所研究对象的任何谐振频率)下响应本质上是刚体的条件。采用奇异值分解(SVD)方法,对6次以上响应测量的低频谱密度矩阵(SDM)进行分解。在刚体响应假设下,假定前6个奇异向量是6个刚体模态的线性组合。然后计算该拟合的最佳线性拟合。然后每次删除一个测量值,并计算拟合误差的减小。假设如果去除一个测量值显著地减少了误差,那么该测量值很可能是错误的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of the IEST
Journal of the IEST Engineering-Safety, Risk, Reliability and Quality
CiteScore
0.40
自引率
0.00%
发文量
0
期刊介绍: The Journal of the IEST is an official publication of the Institute of Environmental Sciences and Technology and is of archival quality and noncommercial in nature. It was established to advance knowledge through technical articles selected by peer review, and has been published for over 50 years as a benefit to IEST members and the technical community at large as as a permanent record of progress in the science and technology of the environmental sciences
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