4.6 Article

Structural Damage Identification Using a Modified Directional Bat Algorithm

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 14, 页码 -

出版社

MDPI
DOI: 10.3390/app11146507

关键词

directional bat algorithm; structural damage identification; constrained optimization problem; modal parameters; objective function

资金

  1. National Key R&D Program of China [2017YFC1500603]

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The study proposes a modified directional bat algorithm (MDBA) to address the shortcomings of the standard BA, such as premature convergence and lack of diversity. The MDBA uses individual optimal updating mechanism and an elimination strategy to improve population diversity. The results show that MDBA has better accuracy and convergence compared to other swarm intelligence algorithms with the same small population and few iterations, exhibiting good robustness against noise.
Bat algorithm (BA) has been widely used to solve optimization problems in different fields. However, there are still some shortcomings of standard BA, such as premature convergence and lack of diversity. To solve this problem, a modified directional bat algorithm (MDBA) is proposed in this paper. Based on the directional bat algorithm (DBA), the individual optimal updating mechanism is employed to update a bat's position by using its own optimal solution. Then, an elimination strategy is introduced to increase the diversity of the population, in which individuals with poor fitness values are eliminated, and new individuals are randomly generated. The proposed algorithm is applied to the structural damage identification and to an objective function composed of the actual modal information and the calculated modal information. Finally, the proposed MDBA is used to solve the damage detection of a beam-type bridge and a truss-type bridge, and the results are compared with those of other swarm intelligence algorithms and other variants of BA. The results show that in the case of the same small population number and few iterations, MDBA has more accurate identification and better convergence than other algorithms. Moreover, the study on anti-noise performance of the MDBA shows that the maximum relative error is only 5.64% at 5% noise level in the beam-type bridge, and 6.53% at 3% noise in the truss-type bridge, which shows good robustness.

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