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使用纳米铁/牡蛎壳复合材料去除模拟废水中的砷。

Removal of arsenic from simulation wastewater using nano-iron/oyster shell composites.

机构信息

College of Resource and Environment, Fujian Agriculture and Forestry University, Fuzhou, Fujian 350002, China; Center for Renewable Carbon, University of Tennessee, Knoxville, TN 37996-4570, USA.

College of Resource and Environment, Fujian Agriculture and Forestry University, Fuzhou, Fujian 350002, China.

出版信息

J Environ Manage. 2015 Jun 1;156:109-14. doi: 10.1016/j.jenvman.2015.03.044. Epub 2015 Apr 1.

Abstract

In this paper, a nano-iron/oyster shell composite (NI/OS) was firstly prepared by an in-situ synthesis method to explore an efficient treatment technology for arsenic (As) contaminated wastewater. The micromorphologies and composition of the composite were characterized using field emission scanning electron microscopy and Fourier transform infrared spectroscopy. The effects of the preparation parameters, as well as the treatment conditions, on the removal of As(Ⅲ) were also investigated. The characterization results showed that iron nanoparticles with a diameter of 60 nm were introduced into the composite by an in-situ reduction method. The physicochemical properties of the iron nanoparticles, such as diameter and aggregation, were influenced by the iron source more than the choice of reductant and temperature in the synthesis process, and these properties were closely related to the treatment performance of the composite. Under the suitable reaction conditions of a pH value of 6.8, a temperature of 20 °C, and an initial concentration of As(Ⅲ) of 1.8 mg/L, As(Ⅲ) was almost completely removed from the simulation wastewater.

摘要

本文首次采用原位合成法制备纳米铁/牡蛎壳复合材料(NI/OS),探索了一种处理含砷废水的有效技术。采用场发射扫描电子显微镜和傅里叶变换红外光谱对复合材料的微观形貌和组成进行了表征。考察了制备参数以及处理条件对去除 As(Ⅲ)的影响。表征结果表明,通过原位还原法将直径为 60nm 的铁纳米粒子引入到复合材料中。铁纳米粒子的物理化学性质,如直径和聚集程度,更多地受到铁源的影响,而不是合成过程中还原剂和温度的选择,这些性质与复合材料的处理性能密切相关。在 pH 值为 6.8、温度为 20°C、As(Ⅲ)初始浓度为 1.8mg/L 的适宜反应条件下,模拟废水中的 As(Ⅲ)几乎被完全去除。

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