基于机器学习的纳米流体临界热通量智能估算模型

Shahin Alipour Bonab, M. Yazdani-Asrami
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引用次数: 0

摘要

对先进能源系统日益增长的需求要求加强热管理策略,以最大限度地提高资源利用率和生产率。本研究旨在通过主要关注临界热通量 (CHF),解决工业能源系统对高效传热机制的迫切需求,尤其是那些依赖池沸腾条件的系统。事实上,临界热通量(CHF)是热系统设计中的一个极限,超过这个极限,系统的效率就会下降。最近的研究材料强调了纳米流体优于水等传统纯流体的传热性能,这使其成为改善冷却系统 CHF 的重要替代品。然而,实验结果的广泛差异性给统一预测模型的开发带来了挑战。此外,基于机器学习(ML)的预测已显示出对设计参数(包括 CHF)建模的极大准确性。利用 ML 算法--级联前向神经网络 (CFNN)、极梯度提升 (XGBoost)、 Extra Tree 和轻梯度提升法 (LightGBM)--开发了四个预测模型,基准测试表明 CFNN 的准确性极高,平均拟合优度为 89.32%,明显高于文献中的任何可用模型。此外,迭代稳定性分析表明,该模型的标准偏差为 0.0348,平均绝对偏差为 0.0268,是最稳定、最稳健的方法,其性能随输入数据的变化很小。这项工作的新颖之处主要在于利用这些先进的算法模型对 CHF 进行预测,以提高用于设计的 CHF 预测的可靠性和准确性,这些模型能够考虑许多有效参数,其准确性远远高于数学拟合。这项研究不仅解释了影响 CHF 的纳米流体参数的复杂相互作用,还为设计更高效的热管理系统提供了实际意义,从而为通过创新冷却解决方案增强能源系统这一更广泛的领域做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based model for the intelligent estimation of critical heat flux in nanofluids
The rising demand for advanced energy systems requires enhanced thermal management strategies to maximize resource utilization and productivity. This study intends to address the critical need for efficient heat transfer mechanisms in industrial energy systems, particularly those relying on pool boiling conditions, by mainly focusing on Critical Heat Flux (CHF). In fact, CHF keeps a limit in thermal system design, beyond which the efficiency of the system drops. Recent research materials have highlighted nanofluids' superior heat transfer properties over conventional pure fluids, like water, which makes them a considerable substitution for improving CHF in cooling systems. However, the broad variability in experimental outcomes challenges the development of a unified predictive model. Besides, Machine Learning (ML) based prediction has shown great accuracy for modelling of the designing parameters, including CHF. Utilizing ML algorithms—Cascade Forward Neural Network (CFNN), Extreme Gradient Boosting (XGBoost), Extra Tree, and Light Gradient Boosting Method (LightGBM)— four predictive models have been developed and the benchmark shows CFNN's superior accuracy with an average goodness of fit of 89.32%, significantly higher than any available model in the literature. Also, the iterative stability analysis demonstrated that this model with a 0.0348 standard deviation and 0.0268 mean absolute deviation is the most stable and robust method that its performance minorly changes with input data. The novelty of the work mainly lies in the prediction of CHF with these advanced algorithms models to enhance the reliability and accuracy of CHF prediction for designing purposes, which are capable to consider many effective parameters into account with very higher accuracy than mathematical fittings. This study not only explains the complex interplay of nanofluid parameters affecting CHF, but also offers practical implications for the design of more efficient thermal management systems, thereby contributing to the broader field of energy system enhancement through innovative cooling solutions.
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