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A multiobjective approach in constructing a predictive model for Fischer-Tropsch synthesis

机译:一种多目标方法,构建Fischer-Tropsch合成预测模型

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Fischer-Tropsch synthesis (FTS) is an important chemical process that produces a wide range of hydrocarbons. The exact mechanism of FTS is not yet fully understood, so prediction of the FTS products distribution is a not a trivial task. So far, artificial neural network (ANN) has been successfully applied for modeling varieties of chemical processes whenever sufficient and well-distributed training patterns are available. However, for most chemical processes such as FTS, acquiring such amount of data is very time-consuming and expensive. In such cases, neural network ensemble (NNE) has shown a significant generalization ability. An NNE is a set of diverse and accurate ANNs trained for the same task, and its output is a combination of outputs of these ANNs. This paper proposes a new NNE approach called NNE-NSGA-II that tries to prune this set by a modified nondominated sorting genetic algorithm to achieve an optimum subset according to 2 conflicting objectives, which are minimizing root-mean-square error in training and unseen data sets. Finally, a comparative study is performed on a single best ANN, a regular NNE, NNE-NSGA, and 3 popular ensemble of decision trees called random forest, stochastic gradient boosting, and AdaBoost.R2. The results show that in training data set, stochastic gradient boosting and AdaBoost.R2 have better fitted the samples; however, for the predicted FTS products in unseen data set, NNEs methods specially NNE-NSGA-II have considerably improved the generalization ability in comparison with the other competing approaches.
机译:费托合成(FTS)是一个重要的化学过程,可以生产多种碳氢化合物。FTS的确切机理尚不完全清楚,因此预测FTS产品分布是一项不容易的任务。到目前为止,只要有足够且分布良好的训练模式,人工神经网络(ANN)已经成功地应用于各种化学过程的建模。然而,对于FTS等大多数化学过程而言,获取如此大量的数据非常耗时且昂贵。在这种情况下,神经网络集成(NNE)表现出了显著的泛化能力。NNE是为同一任务训练的一组多样且精确的ANN,其输出是这些ANN输出的组合。本文提出了一种新的NNE方法NNE-NSGA-II,该方法试图通过一种改进的非支配排序遗传算法对该集合进行修剪,以根据两个相互冲突的目标实现最优子集,即最小化训练中的均方根误差和不可见的数据集。最后,对一个最佳人工神经网络、一个常规NNE、NNE-NSGA和三个流行的决策树集合(称为随机森林、随机梯度增强和AdaBoost)进行了比较研究。R2。结果表明,在训练数据集中,随机梯度boosting和adaboosting是有效的。R2更好地拟合了样本;然而,对于未知数据集中的预测FTS产品,与其他竞争方法相比,NNEs方法,特别是NNE-NSGA-II,显著提高了泛化能力。

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