Support vector regression based modeling of pier scour using field data
نویسندگان
چکیده
This paper investigates the potential of support vector machines based regression approach to model the local scour around bridge piers using field data. A dataset of consisting of 232 pier scour measurements taken from BSDMS were used for this analysis. Results obtained by using radial basis function and polynomial kernel based Support vector regressionwere comparedwith four empirical relation aswell as with a backpropagation neural network and generalized regression neural network. A total of 154 data were used for training different algorithms whereas remaining 78 data were used to test the created model. A coefficient of determination value of 0.897 (root mean square error1⁄40.356) was achieved by radial basis kernel based support vector regression in comparison to 0.880 and 0.835 (root mean square error1⁄40.388 and 0.438) by backpropagation neural and generalized regression neural network. Comparisons of results with four predictive equations suggest an improved performance by support vector regression. Results with dimensionless data using all three algorithms suggest a better performance by dimensional data with this dataset. Sensitivity analysis suggests the importance of depth of flow and pier width in predicting the scour depth when using support vector regression based modeling approach. & 2010 Elsevier Ltd. All rights reserved.
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ورودعنوان ژورنال:
- Eng. Appl. of AI
دوره 24 شماره
صفحات -
تاریخ انتشار 2011