Modeling the effect of process parameters on the photocatalytic degradation of organic pollutants using artificial neural networks
Antibiotics; Azo dyes; Biodegradation; Network architecture; Neural networks; Phenols; Sensitivity analysis; Styrene; Hydrothermal temperature; Initial concentration; Levenberg-Marquardt; Mean absolute error; Modelling techniques; Phenol concentration; Photo catalytic degradation; Photocatalyst conc...
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Main Authors: | Ayodele B.V., Alsaffar M.A., Mustapa S.I., Cheng C.K., Witoon T. |
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Other Authors: | 56862160400 |
Format: | Article |
Published: |
Institution of Chemical Engineers
2023
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