Utilizing artificial neural networks (ANN) for predictive modeling of sulfate removal from water
Abstract
Keywords
References
- REFERENCES
- [1] Quintana-Baquedano AA, Sanchez-Salas JL, Flores-Cervantes DX. A review of technologies for the removal of sulfate from drinking water. Water Environ J 2023;37:718–728. [CrossRef]
- [2] Gupta A, Yunus M, Sankararamakrishnan N. Zerovalent iron encapsulated chitosan nanospheres - A novel adsorbent for the removal of total inorganic Arsenic from aqueous systems. Chemosphere 2012;86:150–155. [CrossRef]
- [3] Darbi, Viraraghavan T, Jin YC, Braul L, Darrell C. Sulfate removal from water. Water Qual Res J Canada 2003;38:169–182. [CrossRef]
- [4] Hong S, Cannon FS, Hou P, Byrne T, Nieto-Delgado C. Sulfate removal from acid mine drainage using polypyrrole-grafted granular activated carbon. Carbon 2014;73:51–60. [CrossRef]
- [5] Runtti H, Luukkonen T, Niskanen M, Tuomikoskia S, Kangasa T, Tynjäläc P, Emma-Tuulia Tolonena ET Sarkkinen M, Kemppainen K, Rämö J, Lassi U. Sulphate removal over barium-modified blast- furnace-slag geopolymer. J Hazard Mater 2016;317:373–384. [CrossRef]
- [6] Fernando WAM, Ilankoon IMSK, Syed TH, Yellishetty M. Challenges and opportunities in the removal of sulphate ions in contaminated mine water: A review. Miner Eng 2018;117:74–90. [CrossRef]
- [7] Salman MS. Removal of Sulfate from Waste Water by Activated Carbon. Khwarizmi Eng J 2009;5:72–76.
Details
Primary Language
English
Subjects
Clinical Chemistry
Journal Section
Research Article
Authors
Erdal Karadurmuş
0000-0002-1836-5126
Türkiye
Eda Göz
*
0000-0002-3111-9042
Türkiye
Cankat Keleş
This is me
0000-0002-0369-9975
Türkiye
Mehmet Yüceer
0000-0002-2648-3931
Türkiye
Publication Date
December 9, 2024
Submission Date
September 5, 2023
Acceptance Date
January 1, 2024
Published in Issue
Year 2024 Volume: 42 Number: 6