In order to perform the accurate tuning of a machine and improve its performance to the requested tasks, the knowledge of the reciprocal influence among the system's parameters is of paramount importance to achieve the sought result with minimum effort and time. Numerical simulations are an invaluable tool to carry out the system optimization, but modeling limitations restrict the capabilities of this approach. On the other side, real tests and measurements are lengthy, expensive, and not always feasible. This is the reason why a mixed approach is presented in this work. The combination, through recursive cokriging, of low-fidelity, yet extensive, numerical model results, together with a limited number of highly accurate experimental measurements, allows to understand the dynamics of the machine in an extended and accurate way. The results of a controllable experiment are presented and the advantages and drawbacks of the proposed approach are also discussed.
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February 2019
Research-Article
Multifidelity Recursive Cokriging for Dynamic Systems' Response Modification
Luigi Bregant,
Luigi Bregant
Department of Engineering and Architecture,
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: bregant@units.it
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: bregant@units.it
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Lucia Parussini,
Lucia Parussini
Department of Engineering and Architecture,
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: lparussini@units.it
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: lparussini@units.it
Search for other works by this author on:
Valentino Pediroda
Valentino Pediroda
Department of Engineering and Architecture,
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: pediroda@units.it
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: pediroda@units.it
Search for other works by this author on:
Luigi Bregant
Department of Engineering and Architecture,
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: bregant@units.it
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: bregant@units.it
Lucia Parussini
Department of Engineering and Architecture,
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: lparussini@units.it
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: lparussini@units.it
Valentino Pediroda
Department of Engineering and Architecture,
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: pediroda@units.it
University of Trieste,
Via A. Valerio 10,
Trieste 34127, Italy
e-mail: pediroda@units.it
Contributed by the Technical Committee on Vibration and Sound of ASME for publication in the JOURNAL OF VIBRATION AND ACOUSTICS. Manuscript received December 1, 2017; final manuscript received June 19, 2018; published online July 24, 2018. Assoc. Editor: Julian Rimoli.
J. Vib. Acoust. Feb 2019, 141(1): 011002 (10 pages)
Published Online: July 24, 2018
Article history
Received:
December 1, 2017
Revised:
June 19, 2018
Citation
Bregant, L., Parussini, L., and Pediroda, V. (July 24, 2018). "Multifidelity Recursive Cokriging for Dynamic Systems' Response Modification." ASME. J. Vib. Acoust. February 2019; 141(1): 011002. https://doi.org/10.1115/1.4040597
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