Model identification in computational stochastic dynamics using experimental modal data: Probabilistic Engineering Mechanics, 38, 102–179

Publikation: Buch/Bericht/Sammelwerk/KonferenzbandSonderausgabeForschungPeer-Review

Autoren

  • Michael Beer (Herausgeber*in)
  • Ioannis Kougioumtzoglou (Herausgeber*in)
  • Arvid Naess (Herausgeber*in)

Externe Organisationen

  • Norwegian University of Science and Technology (NTNU)
  • Columbia University
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Seitenumfang16
Band50-51
PublikationsstatusVeröffentlicht - Jan. 2015

Publikationsreihe

NameMechanical Systems and Signal Processing
Herausgeber (Verlag)Academic Press Inc.
ISSN (Print)0888-3270

Abstract

This paper deals with the identification of a stochastic computational model using experimental eigenfrequencies and mode shapes. In the presence of randomness, it is difficult to construct a one-to-one correspondence between the results provided by the stochastic computational model and the experimental data because of the random modes crossing and veering phenomena that may occur from one realization to another one. In this paper, this correspondence is constructed by introducing an adapted transformation for the computed modal quantities. Then the transformed computed modal quantities can be compared with the experimental data in order to identify the parameters of the stochastic computational model. The methodology is applied to a booster pump of thermal units for which experimental modal data have been measured on several sites.

ASJC Scopus Sachgebiete

Zitieren

Model identification in computational stochastic dynamics using experimental modal data: Probabilistic Engineering Mechanics, 38, 102–179. / Beer, Michael (Herausgeber*in); Kougioumtzoglou, Ioannis (Herausgeber*in); Naess, Arvid (Herausgeber*in).
2015. 16 S. (Mechanical Systems and Signal Processing).

Publikation: Buch/Bericht/Sammelwerk/KonferenzbandSonderausgabeForschungPeer-Review

Beer M, (ed.), Kougioumtzoglou I, (ed.), Naess A, (ed.). Model identification in computational stochastic dynamics using experimental modal data: Probabilistic Engineering Mechanics, 38, 102–179. 2015. 16 S. (Mechanical Systems and Signal Processing). doi: 10.1016/j.ymssp.2014.05.010
Beer, Michael (Herausgeber*in) ; Kougioumtzoglou, Ioannis (Herausgeber*in) ; Naess, Arvid (Herausgeber*in). / Model identification in computational stochastic dynamics using experimental modal data : Probabilistic Engineering Mechanics, 38, 102–179. 2015. 16 S. (Mechanical Systems and Signal Processing).
Download
@book{32d3588d9d654ab6b82414274e62a0a3,
title = "Model identification in computational stochastic dynamics using experimental modal data: Probabilistic Engineering Mechanics, 38, 102–179",
abstract = "This paper deals with the identification of a stochastic computational model using experimental eigenfrequencies and mode shapes. In the presence of randomness, it is difficult to construct a one-to-one correspondence between the results provided by the stochastic computational model and the experimental data because of the random modes crossing and veering phenomena that may occur from one realization to another one. In this paper, this correspondence is constructed by introducing an adapted transformation for the computed modal quantities. Then the transformed computed modal quantities can be compared with the experimental data in order to identify the parameters of the stochastic computational model. The methodology is applied to a booster pump of thermal units for which experimental modal data have been measured on several sites.",
keywords = "Computational stochastic dynamics, Experimental modal analysis, Mode crossing, Model identification, Structural dynamics",
editor = "Michael Beer and Ioannis Kougioumtzoglou and Arvid Naess",
note = "Funding information: This research work has been carried out in the context of the FUI 2012–2015 SICODYN Project (pour des SImulations cr{\'e}dibles via la COrr{\'e}lation calculs-essais et l?estimation des incertitudes en DYNamique des structures). The support of the FUI (Fonds Unique Interminist{\'e}riel) (Grant No. F1202017 Z ) is gratefully acknowledged.",
year = "2015",
month = jan,
doi = "10.1016/j.ymssp.2014.05.010",
language = "English",
volume = "50-51",
series = "Mechanical Systems and Signal Processing",
publisher = "Academic Press Inc.",

}

Download

TY - BOOK

T1 - Model identification in computational stochastic dynamics using experimental modal data

T2 - Probabilistic Engineering Mechanics, 38, 102–179

A2 - Beer, Michael

A2 - Kougioumtzoglou, Ioannis

A2 - Naess, Arvid

N1 - Funding information: This research work has been carried out in the context of the FUI 2012–2015 SICODYN Project (pour des SImulations crédibles via la COrrélation calculs-essais et l?estimation des incertitudes en DYNamique des structures). The support of the FUI (Fonds Unique Interministériel) (Grant No. F1202017 Z ) is gratefully acknowledged.

PY - 2015/1

Y1 - 2015/1

N2 - This paper deals with the identification of a stochastic computational model using experimental eigenfrequencies and mode shapes. In the presence of randomness, it is difficult to construct a one-to-one correspondence between the results provided by the stochastic computational model and the experimental data because of the random modes crossing and veering phenomena that may occur from one realization to another one. In this paper, this correspondence is constructed by introducing an adapted transformation for the computed modal quantities. Then the transformed computed modal quantities can be compared with the experimental data in order to identify the parameters of the stochastic computational model. The methodology is applied to a booster pump of thermal units for which experimental modal data have been measured on several sites.

AB - This paper deals with the identification of a stochastic computational model using experimental eigenfrequencies and mode shapes. In the presence of randomness, it is difficult to construct a one-to-one correspondence between the results provided by the stochastic computational model and the experimental data because of the random modes crossing and veering phenomena that may occur from one realization to another one. In this paper, this correspondence is constructed by introducing an adapted transformation for the computed modal quantities. Then the transformed computed modal quantities can be compared with the experimental data in order to identify the parameters of the stochastic computational model. The methodology is applied to a booster pump of thermal units for which experimental modal data have been measured on several sites.

KW - Computational stochastic dynamics

KW - Experimental modal analysis

KW - Mode crossing

KW - Model identification

KW - Structural dynamics

UR - http://www.scopus.com/inward/record.url?scp=84905828296&partnerID=8YFLogxK

U2 - 10.1016/j.ymssp.2014.05.010

DO - 10.1016/j.ymssp.2014.05.010

M3 - Special issue

VL - 50-51

T3 - Mechanical Systems and Signal Processing

BT - Model identification in computational stochastic dynamics using experimental modal data

ER -

Von denselben Autoren