Jiao Mengqing, Jacquemin Johan, Zhang Ruixue, Zhao Nan, Liu Honglai
Hebei Key Laboratory of Green Development of Rock and Mineral Materials, Hebei GEO University, Shijiazhuang 050031, China.
Materials Science and Nano-Engineering MSN Department, Mohammed VI Polytechnic University, Lot 660-Hay Moulay Rachid, Ben Guerir 43150, Morocco.
Molecules. 2023 Oct 6;28(19):6957. doi: 10.3390/molecules28196957.
It is very well known that traditional artificial neural networks (ANNs) are prone to falling into local extremes when optimizing model parameters. Herein, to enhance the prediction performance of Cu(II) adsorption capacity, a particle swarm optimized artificial neural network (PSO-ANN) model was developed. Prior to predicting the Cu(II) adsorption capacity of modified pomelo peels (MPP), experimental data collected by our research group were used to build a consistent database. Then, a PSO-ANN model was established to enhance the model performance by optimizing the ANN's weights and biases. Finally, the performances of the developed ANN and PSO-ANN models were deeply evaluated. The results of this investigation revealed that the proposed hybrid method did increase both the generalization ability and the accuracy of the predicted data of the Cu(II) adsorption capacity of MPPs when compared to the conventional ANN model. This PSO-ANN model thus offers an alternative methodology for optimizing the adsorption capacity prediction of heavy metals using agricultural waste biosorbents.
众所周知,传统人工神经网络(ANNs)在优化模型参数时容易陷入局部极值。在此,为提高铜(II)吸附容量的预测性能,开发了一种粒子群优化人工神经网络(PSO - ANN)模型。在预测改性柚子皮(MPP)对铜(II)的吸附容量之前,利用我们研究小组收集的实验数据建立了一个一致的数据库。然后,通过优化人工神经网络的权重和偏差建立了PSO - ANN模型,以提高模型性能。最后,对所开发的人工神经网络和PSO - ANN模型的性能进行了深入评估。本研究结果表明,与传统人工神经网络模型相比,所提出的混合方法确实提高了MPP对铜(II)吸附容量预测数据的泛化能力和准确性。因此,该PSO - ANN模型为利用农业废弃物生物吸附剂优化重金属吸附容量预测提供了一种替代方法。