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Modelling a non-stationary single tube heat exchanger using multiple coupled local neural networks

机译:使用多个耦合局部神经网络对非平稳单管热交换器进行建模

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This paper presents the application of an online identification neural technique to a single tube heat exchanger with a constant outer surface temperature. To show the feasibility of such an identification, the response to a sequence of random temperatures at the inlet of the inner fluid is studied. In the first part, the numerical solution is given, showing that the model cannot be a first order model. Then the principles of the neural technique are presented. The standard neural architecture, which normally calculates the output of the system directly from the input, is modified. A large number of local identical networks are used, each of them modelling an elementary module. It is shown that the neural model determined from the study of the first local network is representative of all the local networks (using the actual input data). At last it is shown that, when the networks are coupled, the output of the last network is in good agreement with the values obtained by the numerical model, but in a greatly reduced time.
机译:本文介绍了在线识别神经技术在外表面温度恒定的单管换热器中的应用。为了显示这种识别的可行性,研究了内部流体入口对一系列随机温度的响应。在第一部分中,给出了数值解,表明该模型不能是一阶模型。然后介绍了神经技术的原理。修改了通常直接从输入中计算系统输出的标准神经体系结构。使用了大量的本地相同网络,每个网络都为基本模块建模。结果表明,从对第一个本地网络的研究中确定的神经模型代表了所有本地网络(使用实际输入数据)。最后表明,当网络耦合时,最后一个网络的输出与通过数值模型获得的值非常吻合,但是时间大大减少。

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