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Multivariate adaptive regression (MARS) and hinged hyperplanes (HHP) for doweled pavement performance modeling
AbstractStandard neural networks in infrastructure performance modeling cannot handle discontinuities in the input training data set, and the performance can in some cases be an issue in the presence of higher frequency and higher order non linearity in pavement condition, traffic and other environmental data. This makes the traditional neural network more of a “black box” with limited physical explanation of the results. This paper is a comparative analysis between multivariate adaptive regression and hinged hyperplanes for doweled pavement performance modeling.
Multivariate adaptive regression (MARS) and hinged hyperplanes (HHP) for doweled pavement performance modeling
AbstractStandard neural networks in infrastructure performance modeling cannot handle discontinuities in the input training data set, and the performance can in some cases be an issue in the presence of higher frequency and higher order non linearity in pavement condition, traffic and other environmental data. This makes the traditional neural network more of a “black box” with limited physical explanation of the results. This paper is a comparative analysis between multivariate adaptive regression and hinged hyperplanes for doweled pavement performance modeling.
Multivariate adaptive regression (MARS) and hinged hyperplanes (HHP) for doweled pavement performance modeling
Attoh-Okine, Nii O. (author) / Cooger, Ken (author) / Mensah, Stephen (author)
Construction and Building Materials ; 23 ; 3020-3023
2009-04-12
4 pages
Article (Journal)
Electronic Resource
English
British Library Online Contents | 2009
|Numerical Simulations of Load Transfer Between Doweled Pavement Slabs
British Library Conference Proceedings | 1997
|Engineering Index Backfile | 1942
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