Selenium Contamination in Water. Группа авторов

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Название Selenium Contamination in Water
Автор произведения Группа авторов
Жанр Биология
Серия
Издательство Биология
Год выпуска 0
isbn 9781119693543



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reduce Se levels in rice, wheat, and maize up to 97% in Se‐contaminated farms (Dhillon et al. 2010). In situ bioremediation can be achieved by bacterial cultures belonging to b‐Proteobacteria and Bacilli class, which are fairly selenium‐tolerant microorganisms (Ghosh et al. 2008; Prakash et al. 2010).

Graphs depict (upper panel) word dynamics for India. (Lower panel) word dynamics for China.

      Figure 1.5 Upper panel: word dynamics for India. Lower panel: word dynamics for China.

      Among the other technologies being used for the remediation of selenium‐contaminated waters are: ion exchange, reverse osmosis, nanofiltration, solar ponds, chemical reduction with iron, microalgal–bacterial treatment, alumina adsorption, Fe+3 coagulation/filtration, lime softening, and ferrihydrite adsorption (El‐Shafey 2007; Luo et al. 2008). Use of waste wheat bran can be an eco‐friendly technology in a continuous up‐flow fixed‐bed column system for biosorption of selenium species in aqueous solution (Hasan et al. 2010). One of the efficient methods of selenium removal from waste water can be use of double‐layered synthetic hydroxide materials (Zn/Al, Mg/Al, and Zn/Fe) as an adsorbent (Mandal et al. 2009).

      Another technology demonstrates photoreductive removal of selenium (IV) using spherical binary oxide photo catalysts under visible light. As a range of scavengers, EDTA (ethylene diamine tetra acetic acid) and formic acid are found to be the most suitable for the reduction reaction, and of these two, formic acid is found best for reduction of selenium – the catalyst used for the process is TiO2, which is non‐corrosive, non‐toxic, and has high photoactivity, high photostability, and an economical nature. It has been reported that catalyst can be used repeatedly at least five times with marginal change in the activity (Aman et al. 2011).

      Nanoscale zero‐valent iron (nZVI) is the most widely applied nanomaterial as an adsorbent for groundwater and hazardous waste treatment. It is also effective for selenium treatment and removal. Batch experiments have been conducted and show that nano‐ZVI has approximately a removal rate three times or higher than those of micro‐scale iron, nanoscale iron oxides, Fe(OH)3, nanoscale TiO2, and activated alumina for selenium removal (Ling et al. 2015). ZVI or nano‐ZVI is effective for SeVI removal from wastewater by reducing to more adsorptive SeIV and/or to insoluble Se species (i.e. Se0, SeI, and SeII). A key role is known to be played by dissolved Fe2+ in the reductive removal of selenate by ZVI. There are two major roles for Fe2+: (i) it participates in selenate reduction directly as partial electron donor with a Fe2+:Se stoichiometry of ~1:1, and (ii) helping in the transformation of the passive layer on iron grain and corrosion products to magnetite, favoring electron transfer and thus enhancing selenate removal. ZVI was the main electron donor. In a ZVI‐SeVI‐Fe2+ system, sequential reduction of selenate is reported where elemental Se was the dominant reductive product. Selenate reduction by ZVI assisted by Fe2+ has been identified as a sustainable treatment method for wastewater contaminated with selenate (Tang et al. 2014).

      Taking the role of AI further, there is another powerful area of predictive modeling which is a method used in predictive analytics to generate a statistical visualization of future behavior. Predictive analytics is the domain of data mining related to anticipating likelihoods and inclinations. Alternatively, AI deals with intelligent acts, i.e. the activities that describe them as intelligent. Subsequent to the thought process, the sole purpose is to evaluate the influence of AI algorithms for the implementation of intelligent predictive models. On piece of promising research (Pinto et al. 2009) answers many crucial issues by construction predictive models. These models stimulate prediction of manganese and turbidity echelons in treated water, to guarantee that the water supply does not distress community healthiness in a undesirable mode and observes the existing regulation. Additionally, popular supervised classification algorithms such as decision trees and the unsupervised k‐means algorithm build clustering models.

      Recently, it has been interesting to note that the presence of selenium in plants has been modeled to show a tight borderline limit between nutritious prerequisite and toxic supplement in plants (Soil Science Society of America 2008). The AI algorithms beautifully model how the steep dose response curve caused by bioaccumulation properties have led to the description of selenium as a “tinderbox” modeled through anthropogenic events.

      AI and Deep learning methods have spread their capabilities in depicting contests for water‐sanitation amenities and research forums. Deep learning presents an outstanding substitute to countless studies in optimization (Dentel 1995). Compared to out‐of‐date machine learning algorithms, deep learning has a robust learning capability to efficiently utilize data sets for data mining and knowledge mining. The objective of this investigation is to assess the prevailing unconventional methods. This paper further explores the boundaries and predictions of deep learning.

      An alternate implementation of ANN along with SVM (Haghiabi et al. 2018) investigates water quality prediction. These authors reach a valuable outcome from their research, that “tansig” and “RBF”, which are transfer and kernel functions, demonstrate significant