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Nonlinear and direction-dependent dynamic process modelling using neural networks

机译:基于神经网络的非线性和方向相关的动态过程建模

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The paper discusses several methods of modelling complex nonlinear dynamics using neural networks. Particular reference is made to the problem of modelling direction-dependent relationships. A typical example of this would be top product composition control in a distillation column, where it is easier (i.e. faster) to make the product less pure than it is to make it more pure by an equivalent amount. Recurrent neural networks are identified as a potential method of modelling this type of relationship. The particular architecture chosen for this example is referred to as 'semirecurrent', since only past values of the predictions of the network are fed back to the input layer. This architecture is successfully used to model direction-dependent relationships in both simulated and actual industrial process data.
机译:本文讨论了使用神经网络对复杂非线性动力学建模的几种方法。特别参考了对与方向相关的关系进行建模的问题。一个典型的例子是在蒸馏塔中控制产品的最高组成,在蒸馏塔中,使产品纯度降低的程度要比使其纯度提高等价量要容易(即更快)。递归神经网络被认为是对这种类型的关系进行建模的一种潜在方法。由于仅将网络预测的过去值反馈到输入层,因此为该示例选择的特定体系结构称为“半递归”。该体系结构已成功用于对模拟和实际工业过程数据中的方向相关关系进行建模。

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