Abstract
Sedimentation in storm sewers strongly depends on velocity at limit of deposition. This study provides application of a novel stochastic-based model to predict the densimetric Froude number in sewer pipes. In this way, the generalized likelihood uncertainty estimation (GLUE) is used to develop two parametric equations, called GLUE-based four-parameter and GLUE-based two-parameter (GBTP) models to enhance the prediction accuracy of the velocity at the limit of deposition. A number of performance indices are calculated in training and testing phases to compare the developed models with the conventional regression-based equations available in the literature. Based on the obtained performance indices and some graphical techniques, the research findings confirm that a significant enhancement in prediction performance is achieved through the proposed GBTP compared with the previously developed formulas in the literature. To make a quantified comparison between the established and literature models, an index, called improvement index (IM), is computed. This index is a resultant of all the selected indices, and this indicator demonstrates that GBTP is capable of providing the most performance improvement in both training (IMtrain ¼ 9:2%) and testing (IMtest ¼ 11:3%) phases, comparing with a well-known formula in this context.
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Tafarojnoruz, A., & Sharafati, A. (2020). New formulations for prediction of velocity at limit of deposition in storm sewers based on a stochastic technique. Water Science and Technology, 81(12), 2634–2649. https://doi.org/10.2166/wst.2020.321
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