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Prediction of trapping efficiency of vortex tube ejector
Vortex tube ejector is employed to extract sediments from canal. It consists of a duct laid across whole bed of the canal with a slit along its top edge and compared to the other alternative sediment-extraction devices, it is very efficient and economical. In this study, adaptive neuro-fuzzy inference system (ANFIS), artificial neural network (ANN) approaches were employed to predict the trapping efficiency of vortex tube ejector. Data-set as many as 144 was obtained by conducting experiments on vortex ejector. Out of 144 data-set, 100 data selected randomly were used for training whereas remaining 44 were used for testing the models. Input data-set consists of sediment size (mm), concentration of sediment (ppm), ratio of slit thickness and diameter of tube, (t/d) and extraction ratio (%) whereas trapping efficiency (%) was considered as output. Three membership’s functions, i.e. triangular, generalized bell-shaped, and Gaussian were used with ANFIS. A comparison of results suggests that Gaussian membership function-based ANFIS model performs well in comparison to other membership functions-based ANFIS models, ANN and predictive equations proposed by previous researchers. Sensitivity analyses suggest that extraction ratio is the most important parameter in estimating trapping efficiency of vortex ejector.
Prediction of trapping efficiency of vortex tube ejector
Vortex tube ejector is employed to extract sediments from canal. It consists of a duct laid across whole bed of the canal with a slit along its top edge and compared to the other alternative sediment-extraction devices, it is very efficient and economical. In this study, adaptive neuro-fuzzy inference system (ANFIS), artificial neural network (ANN) approaches were employed to predict the trapping efficiency of vortex tube ejector. Data-set as many as 144 was obtained by conducting experiments on vortex ejector. Out of 144 data-set, 100 data selected randomly were used for training whereas remaining 44 were used for testing the models. Input data-set consists of sediment size (mm), concentration of sediment (ppm), ratio of slit thickness and diameter of tube, (t/d) and extraction ratio (%) whereas trapping efficiency (%) was considered as output. Three membership’s functions, i.e. triangular, generalized bell-shaped, and Gaussian were used with ANFIS. A comparison of results suggests that Gaussian membership function-based ANFIS model performs well in comparison to other membership functions-based ANFIS models, ANN and predictive equations proposed by previous researchers. Sensitivity analyses suggest that extraction ratio is the most important parameter in estimating trapping efficiency of vortex ejector.
Prediction of trapping efficiency of vortex tube ejector
Tiwari, N. K. (author) / Sihag, Parveen (author) / Kumar, Sanjeev (author) / Ranjan, Subodh (author)
ISH Journal of Hydraulic Engineering ; 26 ; 59-67
2020-01-02
9 pages
Article (Journal)
Electronic Resource
English
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