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一种基于人工神经网络和排队搜索算法的新型人工智能模型,用于预测各种生物炭系统的水处理效率。

A novel artificial intelligent model for predicting water treatment efficiency of various biochar systems based on artificial neural network and queuing search algorithm.

机构信息

School of Construction Management, Chongqing Jianzhu College, Chongqing, 400072, China.

Department of Surface Mining, Mining Faculty, Hanoi University of Mining and Geology, 18 Vien Str., Duc Thang wards, Bac Tu Liem Dist., Hanoi, 100000, Viet Nam; Innovations for Sustainable and Responsible Mining (ISRM) Group, Hanoi University of Mining and Geology, 18 Vien Str., Duc Thang wards, Bac Tu Liem Dist., Hanoi, 100000, Viet Nam.

出版信息

Chemosphere. 2022 Jan;287(Pt 3):132251. doi: 10.1016/j.chemosphere.2021.132251. Epub 2021 Sep 20.

Abstract

This study aims at providing a robust artificial intelligent model for predicting the efficiency of heavy metal removal from aqueous solutions of biochar systems with high accuracy and reliability. Not only is it environmentally significant, but it is also a powerful tool for improving biochar adsorption efficiency, reducing the risk of a global water shortage. Accordingly, 22 types of biomass feedstock with a total of 44 biochar systems and 353 experiments, aiming to remove six heavy metal ions (i.e., Cu, Pb, Zn, As, Cd, and Ni) from water were considered and evaluated. Subsequently, an artificial neural network (ANN) model was designed for predicting the heavy metal adsorption efficiency onto these biochar systems. To improve the accuracy of the ANN model, the queuing search algorithm (QSA), a human activities-based algorithm, was applied, aiming to optimize the parameters of the developed ANN model, called the QSA-ANN model. The results showed that the proposed optimization QSA-ANN model provided high accuracy with a root-mean-squared error (RMSE) of 0.051 and 0.074; determination coefficient (R) of 0.978 and 0.960; variance accounted for (VAF) of 97.707 and 95.882, for the training and testing phases, respectively. Compared to the traditional ANN model, the accuracy of the proposed optimization QSA-ANN model was improved 2.7% on the training dataset and 2.9% on the testing dataset. With an accuracy of 96% in practice, the proposed optimization QSA-ANN model was recommended for practical engineering to predict and improve heavy metal adsorption efficiency onto biochar systems.

摘要

本研究旨在提供一个强大的人工智能模型,以高精度和高可靠性预测生物炭系统从水溶液中去除重金属的效率。这不仅在环境方面具有重要意义,而且还是提高生物炭吸附效率、降低全球水资源短缺风险的有力工具。因此,考虑并评估了 22 种生物质原料,共计 44 种生物炭系统和 353 个实验,旨在从水中去除六种重金属离子(即 Cu、Pb、Zn、As、Cd 和 Ni)。随后,设计了一个人工神经网络(ANN)模型来预测这些生物炭系统对重金属的吸附效率。为了提高 ANN 模型的准确性,应用了基于人类活动的排队搜索算法(QSA),旨在优化所开发的 ANN 模型的参数,称为 QSA-ANN 模型。结果表明,所提出的优化 QSA-ANN 模型具有很高的准确性,训练集和测试集的均方根误差(RMSE)分别为 0.051 和 0.074,确定系数(R)分别为 0.978 和 0.960,方差解释率(VAF)分别为 97.707 和 95.882。与传统 ANN 模型相比,所提出的优化 QSA-ANN 模型在训练数据集上的准确性提高了 2.7%,在测试数据集上的准确性提高了 2.9%。在实际应用中,该优化 QSA-ANN 模型的准确率达到 96%,推荐用于预测和提高生物炭系统对重金属的吸附效率的实际工程中。

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