Department of Biosciences, Faculty of Science, Universiti Teknologi Malaysia, 81310 Johor Bahru, Johor, Malaysia.
Department of Structure and Materials, School of Civil Engineering, Faculty of Engineering, Universiti Teknologi Malaysia, 81310 Johor Bahru, Johor, Malaysia.
Ecotoxicol Environ Saf. 2019 May 15;172:176-185. doi: 10.1016/j.ecoenv.2019.01.067. Epub 2019 Jan 29.
Globally, the contamination of water with arsenic is a serious health issue. Recently, several researches have endorsed the efficiency of biomass to remove As (III) via adsorption process, which is distinguished by its low cost and easy technique in comparison with conventional solutions. In the present work, biomass was prepared from indigenous Bacillus thuringiensis strain WS3 and was evaluated to remove As (III) from aqueous solution under different contact time, temperature, pH, As (III) concentrations and adsorbent dosages, both experimentally and theoretically. Subsequently, optimal conditions for As (III) removal were found; 6 (ppm) As (III) concentration at 37 °C, pH 7, six hours of contact time and 0.50 mg/ml of biomass dosage. The maximal As (III) loading capacity was determined as 10.94 mg/g. The equilibrium adsorption was simulated via the Langmuir isotherm model, which provided a better fitting than the Freundlich model. In addition, FESEM-EDX showed a significant change in the morphological characteristic of the biomass following As (III) adsorption. 128 batch experimental data were taken into account to create an artificial neural network (ANN) model that mimicked the human brain function. 5-7-1 neurons were in the input, hidden and output layers respectively. The batch data was reserved for training (75%), testing (10%) and validation process (15%). The relationship between the predicted output vector and experimental data offered a high degree of correlation (R = 0.9959) and mean squared error (MSE; 0.3462). The predicted output of the proposed model showed a good agreement with the batch work with reasonable accuracy.
从全球范围来看,水砷污染是一个严重的健康问题。最近,多项研究证实,生物质通过吸附过程去除砷(III)的效率很高,与传统方法相比,该方法具有成本低、技术简单的特点。本研究采用本土苏云金芽孢杆菌(Bacillus thuringiensis)WS3 菌株制备生物质,并从实验和理论两个方面评估其在不同接触时间、温度、pH 值、砷(III)浓度和吸附剂剂量条件下从水溶液中去除砷(III)的能力。随后,确定了去除砷(III)的最佳条件:6(ppm)砷(III)浓度、37°C、pH7、六小时接触时间和 0.50mg/ml 生物质剂量。最大砷(III)负载量确定为 10.94mg/g。平衡吸附通过 Langmuir 等温模型进行模拟,该模型比 Freundlich 模型具有更好的拟合效果。此外,FESEM-EDX 显示,在吸附砷(III)后,生物质的形态特征发生了显著变化。考虑到 128 批实验数据,创建了一个人工神经网络(ANN)模型,该模型模拟了人脑的功能。输入、隐藏和输出层分别有 5-7-1 个神经元。批处理数据保留用于训练(75%)、测试(10%)和验证过程(15%)。预测输出向量与实验数据之间的关系表现出高度相关性(R=0.9959)和均方误差(MSE;0.3462)。该模型的预测输出与批量实验结果吻合较好,具有合理的准确性。