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Development of Artificial Neural Networks with Integrated Conditional Random Fields Capable of Predicting Non-linear Dynamics of the Flow Around Cylinders

机译:具有集成条件随机字段的人工神经网络的开发能够预测气缸周围流动的非线性动力学

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This paper presents a new approach intended to predict flow dynamics based on observed data. The approach uses artificial neural networks extended by an adapted conditional random field. This artificial neural network is trained end-to-end and the embedded conditional random field memorizes previous events and uses this memory for flow predictions. The prediction capability of the proposed method is demonstrated for flows around cylinders which are computed with a Lattice Boltzmann method in order to train the artificial neural network.
机译:本文提出了一种新的方法,旨在基于观察到的数据预测流动动态。该方法使用由适应的条件随机场延伸的人工神经网络。这种人工神经网络训练结束于结束,嵌入的条件随机字段记忆以前的事件并使用此内存进行流预测。所提出的方法的预测能力被证明用于用格子Boltzmann方法计算的圆柱体的流动,以便训练人工神经网络。

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