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Neural network modeling of air pollution in tunnels according to indirect measurements

机译:根据间接测量的隧道空气污染的神经网络建模

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The article deals with the problem of providing the necessary parameters of air of the working area in dead-end tunnels in the case of ventilation systems powered off. An ill-posed initial-boundary problem for the diffusion equation is used as a mathematical model for a description and analysis of mass transfer processes in the tunnel. The neural network approach is applied to construct an approximate solution (regularization) of the identification problem in the case of the approximate measurement data and the set of interval parameters of the modeled system. Two types of model measurements included binary data are considered. The direct problem solution and the inverse problem regularization for the offered neural network approach are constructed uniformly.
机译:文章涉及在通风系统断电的情况下提供死端隧道中工作区域的必要参数的问题。用于扩散方程的一种不良初界问题用作隧道中传质过程的描述和分析的数学模型。在近似测量数据的情况和建模系统的间隔参数的情况下,应用神经网络方法以构建识别问题的近似解(正则化)。考虑两种类型的模型测量值包括二进制数据。提供的神经网络方法的直接问题解决方案和逆问题正则化由均匀构建。

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