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首页> 外文期刊>International Journal of Heat and Mass Transfer >A non-linear approach for the analysis and modelling of the dynamics of systems exhibiting Vapotron effect
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A non-linear approach for the analysis and modelling of the dynamics of systems exhibiting Vapotron effect

机译:一种非线性方法,用于分析和建模具有Vapotron效应的系统动力学

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摘要

This study presents a novel approach for the analysis of the experimental dynamical behaviour of a system exhibiting Vapotron effect. This phenomenon occurs as a subcooled boiling of a refrigerant fluid entrapped in the cavities of a non-isothermally heated finned surface. A preliminary characterisation of the experimental time series has been carried out to detect the existence of a low dimensional source of the dynamics, through the adoption of non-linear time series analysis techniques. In this way the existence of chaos has been observed in the system in study, which is therefore non-linear. As a second step, a low-order non-linear model has been developed for the identification of the system dynamics. In particular, the NARMAX (Non-linear Auto-Regressive Moving Average with exogenous inputs) identification strategy has been chosen for its flexibility, and has been implemented and generalised by means of Multilayer Perceptron neural networks. The neural model has been tested with satisfactory performances, showing the suitability of non-linear identification strategies as a reliable predictive tools for the dynamics of such kind of systems.
机译:这项研究提出了一种新的方法来分析表现出Vapotron效应的系统的实验动力学行为。这种现象是由于滞留在非等温加热的翅片表面的腔体中的制冷剂流体过冷沸腾而发生的。通过采用非线性时间序列分析技术,已经对实验时间序列进行了初步表征,以检测低维动力学的存在。这样,在研究的系统中就观察到了混沌的存在,因此是非线性的。第二步,开发了用于识别系统动力学的低阶非线性模型。特别是,NARMAX(带有外源输入的非线性自回归移动平均)识别策略已被选择,因为它具有灵活性,并且已通过多层感知器神经网络进行了实现和推广。该神经模型已经过令人满意的性能测试,显示出非线性识别策略作为此类系统动力学的可靠预测工具的适用性。

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