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4-cba Concentration Soft Sensor Based On Modified Back Propagation Algorithm Embedded With Ridge Regression

机译:基于脊回归的修正BP算法的4-cba浓度软传感器

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Considering that there exist many factors having highly nonlinear effects on the concentration of the 4-carboxybenzaldehyde (4-CBA), which is the most important intermediate product of the oxidation of the p-xylene (PX) to terephthalic acid (TA), a modified back propagation algorithm embedded with ridge regression (BP-RR) was proposed to develop a soft sensor of the 4-CBA concentration. To overcome the two main flaws of regular multi-layer neural networks, i.e. the tendency of overfitting and the difficulty to determine the optimal number of neurons for the hidden layer, firstly, a three-layer network is selected and the number of the hidden-layer neurons is determined according to the number of the training samples and the number of the neural network parameters. Then, BP is applied to learn from the training samples. In sequel, the ridge regression is employed to remove the multicollinearity among the hidden-layer-node outputs and obtain the optimal weights (and thresholds) between the hidden layer and the output layer to replace the original values obtained by BP. Thus the neural network model with good prediction ability is developed. In addition, the ridge regression uses heuristic differential evolution algorithm to optimize ridge parameter according to the prediction accuracy of the model. The results show that the optimal value of ridge parameter is adaptively determined according to the degree of multicollinearity among the hidden-layer-node output, and then the good prediction ability model with the robust character is obtained by BP-RR. The best and the mean prediction accuracies of the neural network models developed by BP-RR are higher than those of the neural network models trained by BP alone and obtained by pruning algorithms based on principle component analysis.
机译:考虑到存在许多因素对4-羧基苯甲醛(4-CBA)的浓度具有高度非线性影响,4-羧基苯甲醛是对二甲苯(PX)氧化为对苯二甲酸(TA)的最重要中间产物,提出了一种采用脊回归的改进的反向传播算法(BP-RR)来开发4-CBA浓度的软传感器。为了克服常规多层神经网络的两个主要缺陷,即过度拟合的趋势和为隐藏层确定最佳神经元数量的困难,首先,选择一个三层网络,然后将隐藏层的数目根据训练样本的数量和神经网络参数的数量确定层神经元。然后,将BP应用于从训练样本中学习。随后,采用岭回归来消除隐藏层节点输出之间的多重共线性,并获得隐藏层和输出层之间的最佳权重(和阈值),以替换BP获得的原始值。因此,开发了具有良好预测能力的神经网络模型。此外,岭回归使用启发式差分进化算法根据模型的预测精度优化岭参数。结果表明,根据隐层节点输出之间的多重共线性度,自适应确定岭参数的最优值,然后通过BP-RR获得具有鲁棒性的良好预测能力模型。 BP-RR开发的神经网络模型的最佳和平均预测精度高于仅由BP训练并通过基于主成分分析的修剪算法获得的神经网络模型的最佳和平均预测精度。

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