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Hybrid Modeling Approach in Chemistry

机译:化学中的混合建模方法

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摘要

A hybrid approach to modeling of chemical processes is proposed. The hybrid model consists of an analytical model and a neural network, connected in parallel. The purpose of a neural network is to improve the prediction accuracy in the domain where enough measured data exist. A radial basis function type neural network is applied for this task due to its local approximation property. A case study "Modeling of the liquid-phase methanol synthesis" is presented where an analytical and a hybrid model are constructed for the prediction of methanol production rate. Significant improvement in the prediction accuracy is demonstrated by using the hybrid modeling approach compared to the analytical one.
机译:提出了一种化学过程建模的混合方法。混合模型由并行连接的分析模型和神经网络组成。神经网络的目的是在存在足够测量数据的领域中提高预测精度。径向基函数型神经网络由于其局部逼近特性而被应用于此任务。提出了一个案例研究“液相甲醇合成模型”,其中建立了用于预测甲醇产率的解析模型和混合模型。与分析方法相比,使用混合建模方法证明了预测准确性的显着提高。

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