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Adaptive inverse control of random vibration based on the filtered-X LMS algorithm 被引量:10

Adaptive inverse control of random vibration based on the filtered-X LMS algorithm
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摘要 Random vibration control is aimed at reproducing the power spectral density (PSD) at specified control points. The classical frequency-spectrum equalization algorithm needs to compute the average of the multiple frequency response functions (FRFs), which lengthens the control loop time in the equalization process. Likewise, the feedback control algorithm has a very slow convergence rate due to the small value of the feedback gain parameter to ensure stability of the system. To overcome these limitations, an adaptive inverse control of random vibrations based on the filtered-X least mean-square (LMS) algorithm is proposed. Furthermore, according to the description and iteration characteristics of random vibration tests in the frequency domain, the frequency domain LMS algorithm is adopted to refine the inverse characteristics of the FRF instead of the traditional time domain LMS algorithm. This inverse characteristic, which is called the impedance function of the system under control, is used to update the drive PSD directly. The test results indicated that in addition to successfully avoiding the instability problem that occurs during the iteration process, the adaptive control strategy minimizes the amount of time needed to obtain a short control loop and achieve equalization. Random vibration control is aimed at reproducing the power spectral density (PSD) at specified control points. The classical frequency-spectrum equalization algorithm needs to compute the average of the multiple frequency response functions (FRFs), which lengthens the control loop time in the equalization process. Likewise, the feedback control algorithm has a very slow convergence rate due to the small value of the feedback gain parameter to ensure stability of the system. To overcome these limitations, an adaptive inverse control of random vibrations based on the filtered-X least mean-square (LMS) algorithm is proposed. Furthermore, according to the description and iteration characteristics of random vibration tests in the frequency domain, the frequency domain LMS algorithm is adopted to refine the inverse characteristics of the FRF instead of the traditional time domain LMS algorithm. This inverse characteristic, which is called the impedance function of the system under control, is used to update the drive PSD directly. The test results indicated that in addition to successfully avoiding the instability problem that occurs during the iteration process, the adaptive control strategy minimizes the amount of time needed to obtain a short control loop and achieve equalization.
出处 《Earthquake Engineering and Engineering Vibration》 SCIE EI CSCD 2010年第1期141-146,共6页 地震工程与工程振动(英文刊)
基金 Program for New Century Excellent Talents in Universities Under Grant No.NCET-04-0325
关键词 random vibration power spectral density frequency response function adaptive inverse control filtered-X LMS algorithm random vibration power spectral density frequency response function adaptive inverse control filtered-X LMS algorithm
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  • 1B.Widrow E.Walach.自适应逆控制[M].西安:西安交通大学,1999..
  • 2M. M. Sondhi, A. J. Presrti. A self-adaptive echo canceller. Bell Sytst. Tech., 1966,45(12) : 1851 -- 1854.
  • 3(美)威德罗(BernardWidrow),(以)瓦莱斯(EugeneWalach)[编著],刘树棠,韩崇昭.自适应逆控制[M]西安交通大学出版社,2000.

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