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Using the combined model of gamma test and neuro-fuzzy system for modeling and estimating lead bonds in reservoir sediments.

Authors :
Mohammadi AA
Yousefi M
Soltani J
Ahangar AG
Javan S
Source :
Environmental science and pollution research international [Environ Sci Pollut Res Int] 2018 Oct; Vol. 25 (30), pp. 30315-30324. Date of Electronic Publication: 2018 Aug 29.
Publication Year :
2018

Abstract

Heavy metals attract a great deal of attention nowadays due to their potential accumulation in living creatures and transference in the food chain. Sediments of water reservoirs are considered to be a source of accumulation of these metals that develop in response to human activities and soil erosion. This study collected 180 samples of the surface sediments of water reservoir 1 at Chahnimeh in Sistan. Efficiency of the ANFIS model was evaluated to estimate the five bonds following the measurement of parameters in the laboratory.The following results were obtained for the parameters: organic carbon (OC) %, 0.31; cation exchange capacity (CEC), 37.07 Cmol kg; total Pb, 25.19 mg/kg; clay %, 45.87; and silt %, 39.02. These parameters were used as input for the training model. In the output layer, lead bonds were chosen as modeling targets in the following way: Pb f1 (4.61); Pb f2 (0.54); Pb f3 (16.28); Pb f4 (3.42); and Pb f5 (0.38) mg/kg. The best input compound in this model was chosen using the gamma test. From a total of 180, 88 data were considered for the model training section. Eventually, the neural-fuzzy model (subtractive clustering), developed for the prediction of lead bonds in the studied region, was able to account for over 99% of lead bonds in the sediments; considering statistical criteria of root mean squares error or RMSE (0.0337-0.0813) and determination coefficient or R <superscript>2</superscript> (0.92-0.99), this model showed good performance with regard to prediction.

Details

Language :
English
ISSN :
1614-7499
Volume :
25
Issue :
30
Database :
MEDLINE
Journal :
Environmental science and pollution research international
Publication Type :
Academic Journal
Accession number :
30159837
Full Text :
https://doi.org/10.1007/s11356-018-3026-7