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首页> 外文期刊>Journal of Molecular Liquids >A soft computing approach for estimating the specific heat capacity of molten salt-based nanofluids
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A soft computing approach for estimating the specific heat capacity of molten salt-based nanofluids

机译:一种估算熔融盐基纳米流体的比热容的软计算方法

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摘要

Despite the promising potential of nanofluids as heat transfer and energy storage media, determination of their thermal behavior and properties need significant experimentation. Considering the relatively high costs of such fluids and the time-consuming procedures for synthesizing them and measuring their characteristics, machine learning techniques can be powerful tools for simulating their behaviors in the unstudied combinations of operating conditions. In this study, a machine learning model has been developed for the first time in the literature - to simulate and predict the specific heat capacity of a molten nitrate salt mixture seeded with silica, alumina and titania nanoparticles. A multilayer perceptron neural network (ANN) was selected among 1920 ANNs with different architectural features. With a prediction R-2 value of 0.9998, the suggested model was found to provide much superior predictions (and validated against experimental data) as compared to the classic analytical models. The model developed in this study can, therefore, be used for estimating the values of specific heat capacity for nanofluid samples - based on the temperature and mass fraction of the nanoparticles, as well as the average (or nominal size) of the nanoparticles. The soft-computing technique itself was evaluated under extreme training conditions and it was found that the algorithm can adapt to new data sets with maximum MAPE of 2% and can enable excellent quality of predictions (R-2 > 0.95) when trained with <300 data points. (C) 2019 Elsevier B.V. All rights reserved.
机译:尽管纳米流体的有希望的潜力作为传热和能量储存介质,但它们的热行为和特性的测定需要显着的实验。考虑到这种流体的成本相对较高,以及用于合成它们的耗时程序和测量其特性,机器学习技术可以是用于模拟其在不含操作条件的不含有组合中的行为的强大工具。在这项研究中,在文献中首次开发了一种机器学习模型 - 以模拟和预测用二氧化硅,氧化铝和二氧化钛纳米粒子接种的熔融硝酸盐盐混合物的比热容。在1920个ANNS中选择了多层的Perceptron神经网络(ANN),其中包含不同的建筑功能。对于0.9998的预测R-2值,发现与经典分析模型相比,发现建议的模型提供了许多优越的预测(并针对实验数据验证)。因此,本研究开发的模型可用于估计纳米流体样品的特定热容量的值 - 基于纳米颗粒的温度和质量分数,以及纳米颗粒的平均(或标称尺寸)。在极端培训条件下评估软计算技术本身,发现该算法可以适应具有2%的最大MAPE的新数据集,并且在用<300培训时可以实现优异的预测质量(R-2> 0.95)数据点。 (c)2019 Elsevier B.v.保留所有权利。

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