采用ANSYS对含保温材料混凝土板进行热分析

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY
P. A, Nagaveni Ch
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引用次数: 0

摘要

本研究旨在通过ANSYS分析不同保温材料对混凝土板进行热分析的效果。提出了用混凝土密度预测导热系数的回归方程。由于这些模拟和回归分析是设计不同密度保温混凝土的重要工具,它们依次减少了相关的时间、精力和成本。设计/方法/方法采用两种等级的混凝土进行热分析。它们的设计是用隔热集料代替天然的细集料:膨胀聚苯乙烯、剥落蛭石和轻膨胀粘土。通过实验测量密度、温差、比热容、导热系数和时间。利用所得数据在ANSYS中对混凝土板进行了数值模拟。通过回归分析得到了密度与导热系数之间的关系。最后,用均方根误差(RMSE)、平均绝对误差(MAE)、积分绝对误差(IAE)和正常效率(NE)评价预测回归方程的质量。发现sansys对混凝土板的分析能准确地估计混凝土的热性能,误差值较小,在0.19 ~ 7.92%之间。此外,所建立的回归方程具有较低的RMSE值(0.013 ~ 0.089)和MAE值(0.009 ~ 0.088);IAE(0.216 ~ 5.828%)和NE(94.16 ~ 99.97%)较高。独创性/价值热分析准确地模拟了混凝土板上热量的实验传递。得到的回归方程对保温混凝土的设计有一定的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermal analysis of concrete slabs with insulating materials using ANSYS
Purpose This study aims to assess the efficacy of thermal analysis of concrete slabs by including different insulation materials using ANSYS. Regression equations were proposed to predict the thermal conductivity using concrete density. As these simulation and regression analyses are essential tools in designing the thermal insulation concretes with various densities, they sequentially reduce the associated time, effort and cost. Design/methodology/approach Two grades of concretes were taken for thermal analysis. They were designed by replacing the natural fine aggregates with thermal insulation aggregates: expanded polystyrene, exfoliated vermiculite and light expanded clay. Density, temperature difference, specific heat capacity, thermal conductivity and time were measured by conducting experiments. This data was used to simulate concrete slabs in ANSYS. Regression analysis was performed to obtain the relation between density and thermal conductivity. Finally, the quality of the predicted regression equations was assessed using root mean square error (RMSE), mean absolute error (MAE), integral absolute error (IAE) and normal efficiency (NE). Findings ANSYS analysis on concrete slabs accurately estimates the thermal behavior of concrete, with lesser error value ranges between 0.19 and 7.92%. Further, the developed regression equations proved accurate with lower values of RMSE (0.013 to 0.089), MAE (0.009 to 0.088); IAE (0.216 to 5.828%) and higher values of NE (94.16 to 99.97%). Originality/value The thermal analysis accurately simulates the experimental transfer of heat across the concrete slab. Obtained regression equations proved helpful while designing the thermal insulation concrete.
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来源期刊
World Journal of Engineering
World Journal of Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.20
自引率
10.50%
发文量
78
期刊介绍: The main focus of the World Journal of Engineering (WJE) is on, but not limited to; Civil Engineering, Material and Mechanical Engineering, Electrical and Electronic Engineering, Geotechnical and Mining Engineering, Nanoengineering and Nanoscience The journal bridges the gap between materials science and materials engineering, and between nano-engineering and nano-science. A distinguished editorial board assists the Editor-in-Chief, Professor Sun. All papers undergo a double-blind peer review process. For a full list of the journal''s esteemed review board, please see below.
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