Correlation-Based Damage Detection for Complicated Truss Bridges Using Multi-Layer Genetic Algorithm

The study presents a multi-layer genetic algorithm (GA) approach using correlation-based methods to facilitate damage determination for through-truss bridge structures. To begin, the structure's damage-suspicious elements are divided into several groups. In the first GA layer, the damage is initially optimised for all groups using correlation objective function. In the second layer, the groups are combined to larger groups and the optimisation starts over at the normalised point of the first layer result. Then the identification process repeats until reaching the final layer where one group includes all structural elements and only minor optimisations are required to fine tune the final result. Several damage scenarios on a complicated through-truss bridge example are nominated to address the proposed approach's effectiveness. Structural modal strain energy has been employed as the variable vector in the correlation function for damage determination. Simulations and comparison with the traditional single-layer optimisation shows that the proposed approach is efficient and feasible for complicated truss bridge structures when the measurement noise is taken into account.

[1]  David P. Thambiratnam,et al.  Structural Health Monitoring: Vibration-Based Damage Detection and Condition Assessment of Bridges , 2010 .

[2]  S. S. Law,et al.  DAMAGE LOCALIZATION BY DIRECTLY USING INCOMPLETE MODE SHAPES. TECHNICAL NOTE , 2000 .

[3]  Lalit M. Patnaik,et al.  Genetic algorithms: a survey , 1994, Computer.

[4]  Gongkang Fu,et al.  Signal versus Noise in Damage Detection by Experimental Modal Analysis , 1997 .

[5]  Tommy H.T. Chan,et al.  Damage detection for truss bridge structures using correlation-based structural modal strain energy , 2010 .

[6]  E. J. Williams,et al.  STRUCTURAL DAMAGE DETECTION BY A SENSITIVITY AND STATISTICAL-BASED METHOD , 1998 .

[7]  Tae W. Lim,et al.  Structural damage detection of space truss structures using best achievable eigenvectors , 1994 .

[8]  C. Ratcliffe DAMAGE DETECTION USING A MODIFIED LAPLACIAN OPERATOR ON MODE SHAPE DATA , 1997 .

[9]  Zhengliang Li,et al.  A two-stage method to identify structural damage sites and extents by using evidence theory and micro-search genetic algorithm , 2009 .

[10]  Shirley J. Dyke,et al.  Structural health monitoring for flexible bridge structures using correlation and sensitivity of modal data , 2007 .

[11]  Jiann-Shiun Lew,et al.  Using transfer function parameter changes for damage detection of structures , 1995 .

[12]  Jin-Hak Yi,et al.  Vibration-based damage detection in beams using genetic algorithm , 2007 .

[13]  A. Ramm,et al.  Inverse Problems: Mathematical and Analytical Techniques with Applications to Engineering , 2004 .

[14]  Robert D. Adams,et al.  The location of defects in structures from measurements of natural frequencies , 1979 .

[15]  Raphael T. Haftka,et al.  Damage Detection and Damage Detectability—Analysis and Experiments , 1997 .

[16]  Walter M. West,et al.  Illustration of the use of modal assurance criterion to detect structural changes in an Orbiter test specimen , 1986 .

[17]  Charles R. Farrar,et al.  Computation of structural flexibility for bridge health monitoring using ambient modal data , 1996 .

[18]  J. Vantomme,et al.  Damage assessment in reinforced concrete beams using eigenfrequencies and mode shape derivatives , 2002 .

[19]  Lichu Fan,et al.  Nondestructive Damage Detection of Bridges: A Status Review , 2001 .

[20]  Tommy H.T. Chan,et al.  Improved correlation-based modal strain energy method for global damage detection of truss bridge structures , 2010 .

[21]  Maria Q. Feng,et al.  Periodic seismic performance evaluation of highway bridges using structural health monitoring system , 2009 .

[22]  Hoon Sohn,et al.  A Review of Structural Health Review of Structural Health Monitoring Literature 1996-2001. , 2002 .

[23]  Damodar Maity,et al.  Damage assessment of structures from changes in natural frequencies using genetic algorithm , 2005 .