Department of Engineering, Payame Noor University, PO Box 19395-3697, Tehran, Iran.
J Environ Radioact. 2013 Jan;115:6-12. doi: 10.1016/j.jenvrad.2012.06.008. Epub 2012 Jul 28.
The distribution (or partition) coefficient (K(d)) is an applicable parameter for modeling contaminant and radionuclide transport as well as risk analysis. Selection of this parameter may cause significant error in predicting the impacts of contaminant migration or site-remediation options. In this regards, various models were presented to predict K(d) values for different contaminants specially heavy metals and radionuclides. In this study, artificial neural network (ANN) is used to present simplified model for predicting K(d) of nickel. The main objective is to develop a more accurate model with a minimal number of parameters, which can be determined experimentally or select by review of different studies. In addition, the effects of training as well as the type of the network are considered. The K(d) values of Ni is strongly dependent on pH of the soil and mathematical relationships were presented between pH and K(d) of nickel recently. In this study, the same database of these presented models was used to verify that neural network may be more useful tools for predicting of K(d). Two different types of ANN, multilayer perceptron and redial basis function, were used to investigate the effect of the network geometry on the results. In addition, each network was trained by 80 and 90% of the data and tested for 20 and 10% of the rest data. Then the results of the networks compared with the results of the mathematical models. Although the networks trained by 80 and 90% of the data the results show that all the networks predict with higher accuracy relative to mathematical models which were derived by 100% of data. More training of a network increases the accuracy of the network. Multilayer perceptron network used in this study predicts better than redial basis function network.
分配(或分区)系数(K(d))是用于模拟污染物和放射性核素迁移以及风险分析的适用参数。选择此参数可能会导致在预测污染物迁移或场地修复方案的影响时产生重大错误。在这方面,已经提出了各种模型来预测不同污染物(特别是重金属和放射性核素)的 K(d)值。在这项研究中,人工神经网络(ANN)用于提出预测镍的 K(d)的简化模型。主要目标是开发一个具有最少数量参数的更准确模型,这些参数可以通过实验确定或通过审查不同的研究来选择。此外,还考虑了训练的效果以及网络的类型。镍的 K(d)值强烈依赖于土壤的 pH 值,最近提出了 pH 值与镍的 K(d)之间的数学关系。在这项研究中,使用了这些提出的模型的相同数据库来验证神经网络可能是预测 K(d)的更有用的工具。使用两种不同类型的神经网络,多层感知器和径向基函数,研究了网络几何形状对结果的影响。此外,每个网络都使用 80%和 90%的数据进行训练,并使用其余数据的 20%和 10%进行测试。然后将网络的结果与数学模型的结果进行比较。尽管网络使用 80%和 90%的数据进行训练,但结果表明,与使用 100%的数据得出的数学模型相比,所有网络的预测结果都具有更高的准确性。网络的更多训练会提高网络的准确性。在这项研究中使用的多层感知器网络比径向基函数网络预测得更好。