Multiaxial sensor placement optimization in structural health monitoring using distributed wolf algorithm
Summary Optimal sensor placement technique plays a key role in the design of an effective structural health monitoring system. Recent advances in sensing technologies have also promoted using multiaxial sensors to perform efficiently and economically monitoring for civil engineering structures. Howe...
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Published in | Structural control and health monitoring Vol. 23; no. 4; pp. 719 - 734 |
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Main Authors | , , |
Format | Journal Article |
Language | English |
Published |
Pavia
Blackwell Publishing Ltd
01.04.2016
Wiley Subscription Services, Inc |
Subjects | |
Online Access | Get full text |
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Summary: | Summary
Optimal sensor placement technique plays a key role in the design of an effective structural health monitoring system. Recent advances in sensing technologies have also promoted using multiaxial sensors to perform efficiently and economically monitoring for civil engineering structures. However, the available evaluation criteria for the optimal sensor placement can only guarantee that the optimization is conducted in a single structural direction but not in multi‐dimension space, which may result in the non‐optimal placement of multiaxial sensors. To tackle this issue thoroughly, a new multiaxial optimal criterion termed as the triaxial modal assurance criterion is developed by taking account into three translational degrees of freedom as a single unit in the Fisher information matrix. Afterwards, a novel distributed wolf algorithm is proposed to improve the optimization performance in identifying the best sensor locations. The dual‐structure coding method is improved and adopted to represent the solution. The shuffling strategy is proposed to enhance the searching capability and convergence performance. The attacking process is also modified to prevent the algorithm from being trapped in a local minimum. The effectiveness of the proposed scheme is investigated by the benchmark structure developed by the University of Central Florida, USA. The results clearly demonstrate that the proposed distributed wolf algorithm outperforms the existing algorithm in its global optimization capability. Copyright © 2015 John Wiley & Sons, Ltd. |
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Bibliography: | ark:/67375/WNG-GVB7WV4F-M 973 Program - No. 2015CB060000 Science Fund for Distinguished Young Scholars of Dalian - No. 2014J11JH125 istex:88588AF1BD64FE71B1B9B2154765281412D26AAD National Natural Science Foundation of China - No. 51421064; No. 51478081; No. 51222806 Fok Ying Tong Education Foundation - No. 141072 ArticleID:STC1806 |
ISSN: | 1545-2255 1545-2263 |
DOI: | 10.1002/stc.1806 |