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Predicting the specific heat capacity of alumina/ethylene glycol nanofluids using support vector regression model optimized with Bayesian algorithm

机译:使用贝叶斯算法优化的支持向量回归模型预测氧化铝/乙二醇纳米流体的比热容

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摘要

Nanofluids are now considered the most essential constituent of solar thermal collector due to their superior thermal performance over conventional fluids. An accurate determination of the thermal efficiency of the solar collector depends on the value of the specific heat capacity of the nanofluid. So far, limited attention has been devoted towards accurate modelling of specific heat capacity of nanofluids C-Pnf despite their relevance in many solar energy-related applications. Surprisingly, there are only two main analytic models for estimating the C-Pnf in the literature. In most of the reports, these models have shown considerable inconsistencies for predicting the values of C-Pnf. Moreover, the modelling performance of these models necessitates the need to develop accurate models for the prediction of C-Pnf. Herein, a Bayesian support vector regression (BSVR) model is proposed to estimate the specific heat capacity of Al2O3/ethylene glycol nanofluid. The model proposed was trained on eighty-four (84) experimental dutasets and its predictive accuracy was validated on seventeen (17) new test set. The BSVR model exhibits high accuracy as measured by the values of Pearson's correlation coefficient and the absolute average relative deviation (AARD) of 99.95% and 0.1888, respectively. Remarkably, the accuracy obtained from the proposed BSVR model is an order of magnitude better than existing theoretical models. The proposed technique and model will be useful towards a more reliable and accurate computation of the efficiency of solar collectors.
机译:由于纳米流体比常规流体优越的热性能,现在它们被认为是太阳能集热器的最重要组成部分。太阳能收集器的热效率的准确确定取决于纳米流体的比热容值。迄今为止,尽管纳米流体C-Pnf在许多太阳能相关应用中具有相关性,但对纳米流体C-Pnf的比热容的精确建模的关注仍有限。出人意料的是,文献中仅有两种主要的分析模型来估计C-Pnf。在大多数报告中,这些模型在预测C-Pnf值方面显示出很大的不一致之处。此外,这些模型的建模性能需要开发用于预测C-Pnf的准确模型。在此,提出了贝叶斯支持向量回归(BSVR)模型来估计Al2O3 /乙二醇纳米流体的比热容。提议的模型在八十四(84)个实验数据集上进行了训练,其预测准确性在十七(17)个新的测试集上得到了验证。通过Pearson相关系数和绝对平均相对偏差(AARD)分别测得的99.95%和0.1888的值,BSVR模型具有很高的准确性。值得注意的是,从提出的BSVR模型获得的准确性比现有的理论模型好一个数量级。所提出的技术和模型将有助于更可靠和准确地计算太阳能收集器的效率。

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