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A robust damage detection method developed for offshore jacket platforms using modified artificial immune system algorithm
Authors:A Mojtahedi  M A Lotfollahi Yaghin  Y Hassanzadeh  F Abbasidoust  M M Ettefagh  M H Aminfar
Institution:1. Faculty of Civil Engineering, University of Tabriz, Tabriz, 51666-14766, Iran
2. Faculty of Mechanical Engineering, University of Tabriz, Tabriz, 51666-14766, Iran
Abstract:Steel jacket-type platforms are the common kind of the offshore structures and health monitoring is an important issue in their safety assessment. In the present study, a new damage detection method is adopted for this kind of structures and inspected experimentally by use of a laboratory model. The method is investigated for developing the robust damage detection technique which is less sensitive to both measurement and analytical model uncertainties. For this purpose, incorporation of the artificial immune system with weighted attributes (AISWA) method into finite element (FE) model updating is proposed and compared with other methods for exploring its effectiveness in damage identification. Based on mimicking immune recognition, noise simulation and attributes weighting, the method offers important advantages and has high success rates. Therefore, it is proposed as a suitable method for the detection of the failures in the large civil engineering structures with complicated structural geometry, such as the considered case study.
Keywords:structural health monitoring  jacket-type platforms  artificial immune system  FEM  modal test
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