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A hybrid optimization technique for developing heat transfer correlations based on transient experiments

机译:基于瞬态实验的传热相关性混合优化技术

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摘要

A new approach for developing a Nusselt number correlation, in terms of relevant non-dimensional parameters, for turbulent forced convection flows in vertical channels using a judicious combination of transient cooling experiments with a hybrid optimization technique is reported. The temperature-time history, during the cooling of a heated plate, idealized as a lumped capacity heat transfer model, is recorded using a PC based data acquisition system. A numerically computed temperature-time history of the plate is then compared with the experimentally known temperature-time history to estimate the residual. The minimization of sum of the squares of the residual is done using a hybrid numerical optimization technique, i.e. a combination of Genetic Algorithm and the Levenberg-Marquardt method, in order to obtain the coefficient and the exponents of the pertinent non-dimensional parameters in the Nusselt number correlation. The parameters in the correlation are also retrieved using another global optimization technique, the Simulated Annealing (SA), for evaluating the consistency in parameter estimation. As a validation exercise, Nusselt number values estimated using the proposed correlation are compared with steady state experimental results and a good agreement of results endorses the efficacy of this approach.
机译:报告了一种新的方法,该方法利用相关的无量纲参数,利用瞬态冷却实验与混合优化技术的明智组合,针对垂直通道中的湍流强迫对流流动建立了Nusselt数相关性。使用基于PC的数据采集系统记录加热板冷却过程中的温度-时间历史记录(理想化为集总容量传热模型)。然后将板的数值计算的温度-时间历史与实验已知的温度-时间历史进行比较,以估计残留量。使用混合数值优化技术(即遗传算法和Levenberg-Marquardt方法的组合)来实现残差平方和的最小化,以便获得相关的无量纲参数的系数和指数。努塞尔数相关性。还使用另一种全局优化技术(模拟退火(SA))来检索相关性中的参数,以评估参数估计中的一致性。作为验证活动,将使用建议的相关性估算的Nusselt数值与稳态实验结果进行比较,结果的很好一致性证明了该方法的有效性。

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