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通过回归分析和参数建模优化多孔吸附剂对农药的吸附作用并增强其性能。

Process optimization and enhancement of pesticide adsorption by porous adsorbents by regression analysis and parametric modelling.

机构信息

Department of Environmental Health Engineering, School of Public Health, Tehran University of Medical Sciences, Tehran, Iran.

Center for Solid Waste Research, Institute for Environmental Research, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

Sci Rep. 2021 Jun 3;11(1):11719. doi: 10.1038/s41598-021-91178-3.

Abstract

In the present study, the adsorptive removal of organophosphate diazinon pesticide using porous pumice adsorbent was experimentally investigated in a batch system, modelled and optimized upon response surface methodology (RSM) and artificial neural network-genetic algorithm (ANN-GA), fitted to isotherm, kinetic and thermodynamic models. The quantification of adsorbent elements was determined using EDX. XRD analysis was utilized to study the crystalline properties of adsorbent. The FT-IR spectra were taken from adsorbent before and after adsorption to study the presence and changes in functional groups. The constituted composition of the adsorbent was determined by XRF. Also, the ionic strength and adsorbent reusability were explored. The influences of operational parameters like pH, initial pesticide concentration, adsorbent dosage and contact time were investigated systematically. ANN-GA and RSM techniques were used to identify the optimal process variables that result in the highest removal. Based on the RSM approach, the optimization conditions for maximum removal efficiency is obtained at pH = 3, adsorbent dosage = 4 g/L, contact time = 30 min, and initial pesticide concentration = 6.2 mg/L. To accurately identify the parameters of nonlinear isotherm and kinetic models, a hybrid evolutionary differential evolution optimization (DEO) is applied. Results indicated that the equilibrium adsorption data were best fitted with Langmuir and Temkin isotherms and kinetic data were well described by pseudo-first and second-order kinetic models. The thermodynamic parameters such as entropy, enthalpy and Gibbs energy were evaluated to study the effect of temperature on pesticide adsorption.

摘要

在本研究中,采用多孔浮石吸附剂在间歇系统中对有机磷敌百虫农药进行了吸附去除实验研究,采用响应面法(RSM)和人工神经网络-遗传算法(ANN-GA)对其进行了建模和优化,拟合了吸附等温线、动力学和热力学模型。使用 EDX 确定吸附剂元素的定量。通过 XRD 分析研究了吸附剂的晶体性质。FT-IR 光谱取自吸附前后的吸附剂,以研究功能基团的存在和变化。通过 XRF 确定了吸附剂的组成成分。还研究了离子强度和吸附剂的可重复使用性。系统研究了操作参数(如 pH 值、初始农药浓度、吸附剂用量和接触时间)的影响。ANN-GA 和 RSM 技术用于确定导致最高去除率的最佳工艺变量。根据 RSM 方法,在 pH = 3、吸附剂用量 = 4 g/L、接触时间 = 30 min 和初始农药浓度 = 6.2 mg/L 时,获得了最大去除效率的最佳优化条件。为了准确识别非线性吸附等温线和动力学模型的参数,应用了混合进化差分进化优化(DEO)。结果表明,平衡吸附数据最好拟合 Langmuir 和 Temkin 等温线,动力学数据很好地描述了准一级和准二级动力学模型。评估了热力学参数(如熵、焓和吉布斯自由能)以研究温度对农药吸附的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6d2a/8175395/6611e738cd06/41598_2021_91178_Fig1_HTML.jpg

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