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Prediction of heavy metals removal by polymer inclusion membranes using machine learning techniques

机译:采用机器学习技术预测聚合物包涵体膜除去的重金属

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摘要

This study predicts heavy metals removal from aqueous solution by polymer inclusion membranes (PIMs) process using machine learning (ML) techniques such as multiple layer perceptron neural networks (MLPNN) and multiple linear regression (MLR) after data analysis. The removal efficiency (RE) of the PIMs process is predicted for cobalt (Co), cadmium (Cd) and chromium (Cr) by changing operating conditions including time, carrier type, carrier rate, film thickness, plasticizer type and plasticizer rate. The MLPNN model presents reliable results with lower mean square error (MSE) for an unseen testing dataset, whereas the MLR model shows higher MSE values. The coefficient of determination (R-2) of the MLPNN model for the testing dataset is 0.93, 0.90 and 0.86 for Co, Cd and Cr, respectively, whereas MLR shows poor results. Therefore, the MLPNN model can be a competitive, robust and fast alternate to optimize the PIMs process with minimum experimental work.
机译:该研究预测了通过在数据分析之后使用多层Perceptron神经网络(MLPNN)和多元线性回归(MLR)的机器学习(ML)技术通过聚合物包涵体(PIMS)工艺从水溶液中除去重金属。 通过改变包括时间,载流子速率,膜厚度,增塑剂型和增塑剂速率,预测PIMS过程的去除效率(RE),预测钴(CO),镉(CD)和铬(CR)。 MLPNN模型具有可靠的结果,具有低均线误差(MSE)对于看不见的DISEN测试数据集,而MLR模型显示较高的MSE值。 用于测试数据集的MLPNN模型的测定系数(R-2)分别为CO,CD和Cr的0.93,0.90和0.86,而MLR显示出差的结果。 因此,MLPNN模型可以是竞争,稳健和快速的交替,以优化PIMS过程,具有最小的实验工作。

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