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Investigation of thermal stratification in cisterns using analytical and Artificial Neural Networks methods

机译:利用分析和人工神经网络方法研究水箱中的热分层

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摘要

The thermal characteristics of an underground cold-water reservoir are investigated analytically and using Artificial Neural Networks (ANN). An analytical solution is developed for the temperature distribution in the reservoir by assuming a linearized boundary condition at the water surface. For the general non-linear boundary condition, the temperature distribution is modeled using ANN. Very good agreements between the analytical and ANN results at various times during the withdrawal cycle are observed, ensuring the accuracy of the analytical and ANN procedures. The results show that a stable thermal stratification is preserved in the reservoir throughout the entire course of withdrawal cycle. As one important outcome of this research, two different regions are observed inside the thermally stratified tank during discharge cycle. The bottom region with a linear temperature distribution and the upper one in which a nearly exponential thermal stratification are developed. During withdrawal cycle, the outside temperature reaches as high as 42 ℃, while cool water with the temperature varying from 12 to 13 ℃ is easily available from the underground water reservoir under investigation.
机译:使用人工神经网络(ANN)对地下冷水库的热特性进行了分析研究。通过假设水面的线性边界条件,为水库中的温度分布开发了一种解析解决方案。对于一般的非线性边界条件,使用ANN对温度分布进行建模。在撤回周期的各个时间,分析结果和ANN结果之间观察到非常好的一致性,从而确保了分析过程和ANN程序的准确性。结果表明,在整个抽采周期中,储层中均保持了稳定的热分层。这项研究的重要成果之一是,在排放循环期间,在热分层储罐内观察到两个不同的区域。底部区域具有线性温度分布,上部区域具有近乎指数的热分层。在抽水周期中,外部温度高达42℃,而被调查的地下水库很容易获得温度在12至13℃之间的冷水。

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