Keywords
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adaptive neuro-fuzzy inference system, colliding bodies optimization, empirical equations, scour depth, vibrating particles system
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Abstract
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An accurate estimation of bridge pier scour has been considered as one of the important parameters in designing of bridges. However,
due to the numerous involved parameters and convolution of this phenomenon, many existing approaches cannot predict scour
depth with an acceptable accuracy. Obtained results from the empirical relationships show that these relationships have low accuracy
in determining the maximum scour depth and they need a high safety factor for many cases, which leads to uneconomic designs of
bridges. To cover these disadvantages, three new models are provided to estimate the bridge pier scour using an adaptive networkbased
fuzzy inference system. The parameters of the system are optimized by using the colliding bodies optimization, enhanced
colliding bodies optimization and vibrating particles system methods. To evaluate the efficiency of the proposed methods, their results
were compared with those of simple adaptive network-based fuzzy inference system and its improved versions by using the particle
swarm optimization and genetic algorithm as well as the empirical equations. Comparison of results showed that the new vibrating
particles system based algorithm could find better results than other two ones. In addition, comparison of the results obtained by the
proposed methods with those of the empirical relations confirmed the high performance of the new methods.
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