机器学习和深度学习驱动的微鳍管热交换器设计模型

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-04-18 DOI:10.1016/j.egyai.2024.100370
Emad Efatinasab , Nima Irannezhad , Mirco Rampazzo , Andrea Diani
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引用次数: 0

摘要

由于复杂的几何形状、传热目标、材料选择和制造挑战,微翅片管热交换器的设计是一项复杂的任务。如今,数学模型提供了宝贵的见解,有助于优化,并使我们能够有效地探索各种设计参数。然而,现有的经验模型由于其有限的准确性、对假设的敏感性和上下文的依赖性,往往无法促进优化设计。在这种情况下,使用机器学习和深度学习(ML 和 DL)方法可以提高准确性、管理非线性、适应不同条件、减少对假设的依赖、自动提取相关特征并提供可扩展性。事实上,ML 和 DL 技术可以从数据集中获得有价值的见解,有助于全面理解。本文通过多种 ML 和 DL 方法,解决了估算微翅片管热交换器关键参数的难题,如传热系数 (HTC) 和摩擦压降 (FPD)。这些方法通过一个实验数据集进行了训练和测试,该数据集由一千多个与流动冷凝相关的数据点组成,涉及各种管子几何形状。在这种情况下,人工神经网络(ANN)在准确估算参数方面表现出色,HTC 和 FPD 的 MAE 均低于 4.5%。最后,本文认识到理解黑盒子人工神经网络模型内部机制的重要性,探讨了其可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Machine and deep learning driven models for the design of heat exchangers with micro-finned tubes

The design of micro-finned tube heat exchangers is a complex task due to intricate geometry, heat transfer goals, material selection, and manufacturing challenges. Nowadays, mathematical models provide valuable insights, aid in optimization, and allow us to explore various design parameters efficiently. However, existing empirical models often fall short in facilitating an optimal design because of their limited accuracy, sensitivity to assumption, and context dependency. In this scenario, the use of Machine and Deep Learning (ML and DL) methods can enhance accuracy, manage nonlinearity, adjust to varying conditions, decrease dependence on assumptions, automatically extract pertinent features, and provide scalability. Indeed, ML and DL techniques can derive valuable insights from datasets, contributing to a comprehensive understanding. By means of multiple ML and DL methods, this paper addresses the challenge of estimating key parameters in micro-finned tube heat exchangers such as the heat transfer coefficient (HTC) and frictional pressure drop (FPD). The methods have been trained and tested using an experimental dataset consisting of over a thousand data points associated with flow condensation, involving various tube geometries. In this context, the Artificial Neural Network (ANN) demonstrates superior performance in accurately estimating parameters with MAEs in the range below 4.5% for both HTC and FPD. Finally, recognizing the importance of comprehending the internal mechanisms of the black-box ANN model, the paper explores its interpretability aspects.

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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
期刊最新文献
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