An experimental and prediction modeling study on water lettuce (Pistia stratiotes L.) assisted heavy metals removal from glass industry effluent

The glass manufacturing industry produces hazardous effluent that is difficult to manage and causes numerous environmental problems when disposed of in the open. In this study, an attempt was made to study the phytoremediation feasibility of water lettuce ( Pistia stratiotes L.), a free-floating aqu...

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Veröffentlicht in:Environmental science and pollution research international 2024-04, Vol.31 (19), p.28090-28104
Hauptverfasser: Singh, Jogendra, Alhag, Sadeq K., Al-Shahari, Eman A., Al-Shuraym, Laila A., Alsudays, Ibtisam M., Ahmed, Mohamed T., Eid, Ebrahem M., Fayssal, Sami Abou, Kumar, Pankaj, Malyan, Sandeep Kumar, Singh, Om, Kumar, Vinod
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Sprache:eng
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Zusammenfassung:The glass manufacturing industry produces hazardous effluent that is difficult to manage and causes numerous environmental problems when disposed of in the open. In this study, an attempt was made to study the phytoremediation feasibility of water lettuce ( Pistia stratiotes L.), a free-floating aquatic macrophyte, for the removal of six heavy metals from glass industry effluent (GIE) at varying concentrations (0, 25, 50, 75, and 100%). After a 40-day experiment, the results showed that 25% GIE dilution showed maximum removal of heavy metals i.e., Cu (91.74%), Cr (95.29%), Fe (86.47%), Mn (92.95%), Pb (87.10%), and Zn (91.34%), respectively. The bioaccumulation, translocation, and Pearson correlation studies showed that the amount of heavy metals absorbed by vegetative parts of P. stratiotes was significantly correlated with concentrations. The highest biomass production, chlorophyll content, relative growth rate, and biomass productivity were also noted in the 25% GIE treatment. Moreover, the multiple linear regression models developed for the prediction of heavy metal uptake by P. stratiotes also showed good performance in determining the impact of GIE properties. The models showed a high coefficient of determination ( R 2  > 0.99), low mean average normalizing error (MANE = 0.01), and high model efficiency (ME > 0.99) supporting the robustness of the developed equations. This study outlined an efficient method for the biological treatment of GIE using P. stratiotes to reduce risks associated with its unsafe disposal.
ISSN:1614-7499
0944-1344
1614-7499
DOI:10.1007/s11356-024-32664-9