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Functional nodes in dynamic neural networks for bioprocess modelling

机译:动态神经网络中用于生物过程建模的功能节点

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This contribution presents a novel method for the direct integration of a-priori knowledge in a neural network and its application for the online determination of a secondary metabolite during industrial yeast fermentation. Hereby, existing system knowledge is integrated in an artificial neural network (ANN) by means of 'functional nodes'. A generalized backpropagation algorithm is presented. For illustration, a set of ordinary differential equations describing the diacetyl formation and degradation during the cultivation is incorporated in a functional node and integrated in a dynamic feedforward neural network in a hybrid manner. The results show that a hybrid modelling approach exploiting available a-priori knowledge and experimental data can considerably outperform a pure data-based modelling approach with respect to robustness, generalization and necessary amount of training data. The number of training sets were decreased by 50%, obtaining the same accuracy as in a conventional approach. All incorrect decisions, according to defined cost criteria obtained with the conventional ANN, were avoided.
机译:这一贡献提出了一种将先验知识直接整合到神经网络中的新方法,并将其应用于工业酵母发酵过程中在线确定次级代谢产物。因此,现有的系统知识通过“功能节点”集成在人工神经网络(ANN)中。提出了一种广义的反向传播算法。为了说明,将描述在培养过程中二乙酰基形成和降解的一组常微分方程合并到功能节点中,并以混合方式集成在动态前馈神经网络中。结果表明,在鲁棒性,泛化性和必要数量的训练数据方面,利用现有先验知识和实验数据的混合建模方法可以大大优于纯基于数据的建模方法。训练集的数量减少了50%,获得了与传统方法相同的准确性。避免了根据常规人工神经网络获得的已定义成本标准做出的所有错误决定。

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