Fluoranthene biotreatment using prominent freshwater microalgae: physiological responses of microalgae and artificial neural network modeling of the bioremoval process.

IF 3.4 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Samaneh Torbati, Behrouz Atashbar Kangarloei, Zahra Asalpisheh
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引用次数: 0

Abstract

Due to the intensified industrial activities and other anthropogenic actions, contamination of polycyclic aromatic hydrocarbons (PAHs) has been growing at an alarming rate, turning in to a serious environmental concern. Bioremediation, as an eco-friendly and sustainable removal technology, can be used by organisms to reduce the resulting contaminations. In the present study, the ability of Tetradesmus obliquus to remove of fluoranthene (FLA) was evaluated. It was confirmed that FLA removal efficiency was managed by various environmental parameters and pH was found to be one of the most important influencial factors. The reusability of the algae in long-term repetitive operations confirmed the occurrence of biodegradation along with other natural attenuation and 10 intermediate compounds were identified in the FLA biodegradation pathway by GC-MS. As a result of physiological assays, induced antioxidant enzymes activities and augmentation of phenol and flavonoids contents, after the treatment of the microalgae by a high concentration of FLA, confirmed the ability of the microalgae to upregulate its antioxidant defense system in response to the toxic effects of FLA. An artificial neural network (ANN) model was then developed to predict FLA biodegradation efficiency and the appropriate predictive performance of ANN was confirmed by comparing the experimental FLA removal efficiency with its predicted amounts (R2 = 0.99).

利用突出淡水微藻对荧蒽进行生物处理:微藻的生理反应和生物去除过程的人工神经网络模型。
由于工业活动和其他人为活动的加剧,多环芳烃(PAHs)污染以惊人的速度增长,已成为一个严重的环境问题。生物修复作为一种生态友好和可持续的清除技术,可被生物用来减少由此产生的污染。本研究评估了四裂殖藻(Tetradesmus obliquus)去除荧蒽(FLA)的能力。结果表明,FLA 的去除效率受各种环境参数的影响,而 pH 值是最重要的影响因素之一。藻类在长期重复操作中的可再利用性证实了生物降解和其他自然衰减的发生,并通过气相色谱-质谱(GC-MS)鉴定了 FLA 生物降解途径中的 10 种中间化合物。生理检测结果表明,微藻类经高浓度 FLA 处理后,抗氧化酶活性增强,酚类和黄酮类化合物含量增加,这证实微藻类有能力提高其抗氧化防御系统,以应对 FLA 的毒性影响。然后建立了一个人工神经网络(ANN)模型来预测 FLA 的生物降解效率,并通过比较实验的 FLA 去除效率和预测量(R2 = 0.99)证实了 ANN 的适当预测性能。
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来源期刊
International Journal of Phytoremediation
International Journal of Phytoremediation 环境科学-环境科学
CiteScore
7.60
自引率
5.40%
发文量
145
审稿时长
3.4 months
期刊介绍: The International Journal of Phytoremediation (IJP) is the first journal devoted to the publication of laboratory and field research describing the use of plant systems to solve environmental problems by enabling the remediation of soil, water, and air quality and by restoring ecosystem services in managed landscapes. Traditional phytoremediation has largely focused on soil and groundwater clean-up of hazardous contaminants. Phytotechnology expands this umbrella to include many of the natural resource management challenges we face in cities, on farms, and other landscapes more integrated with daily public activities. Wetlands that treat wastewater, rain gardens that treat stormwater, poplar tree plantings that contain pollutants, urban tree canopies that treat air pollution, and specialized plants that treat decommissioned mine sites are just a few examples of phytotechnologies.
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