2023
DOI: 10.1016/j.egyr.2023.03.123
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Thermal conductivity improvement in a green building with Nano insulations using machine learning methods

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Cited by 18 publications
(8 citation statements)
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“…The solids content was calculated using Equation (1): Solids content (wt. %) = ∑ weight (HMDI +PEG+DMPA+TEA+ EDA) ∑ weight (HMDI +PEG+DMPA+TEA+EDA+ water) •100 (1) As can be observed in Figure 3, there is a clear relationship between the solids content and the density of the aerogel samples. Samples with a higher solids content exhibit higher density values than those with a lower solids content.…”
Section: Influence Of Solids Contentmentioning
confidence: 86%
See 1 more Smart Citation
“…The solids content was calculated using Equation (1): Solids content (wt. %) = ∑ weight (HMDI +PEG+DMPA+TEA+ EDA) ∑ weight (HMDI +PEG+DMPA+TEA+EDA+ water) •100 (1) As can be observed in Figure 3, there is a clear relationship between the solids content and the density of the aerogel samples. Samples with a higher solids content exhibit higher density values than those with a lower solids content.…”
Section: Influence Of Solids Contentmentioning
confidence: 86%
“…The current energy situation has promoted the development of different insulating materials for the building sector as one of the main focal points to achieve even greater energy savings. This helps to reduce energy consumption in situations with extreme temperatures and greenhouse gas emissions [ 1 , 2 ]. In this sense, aerogels are presented as an improved alternative to conventional insulating materials used in the construction industry, presenting much lower thermal conductivity values when compared to classic materials such as polyurethane foams.…”
Section: Introductionmentioning
confidence: 99%
“…Random Forest is an ensemble learning method that builds a multitude of decision trees at training time and generates the class that is the fashion of the individual tree classes (Ghalandari et al, 2023). For regression, the Random Forest output is usually the average (mean) of the predictions of all the individual trees, as expressed by Equation 4.…”
Section: Second Step -Models Trainingmentioning
confidence: 99%
“…In addition to using surrogate models, researchers have explored the combination of machine learning (ML) [ 23 , [38] , [39] , [40] , [41] , [42] , [43] ] genetic algorithms (GA) [ 23 , 38 , [43] , [44] , [45] , [46] , [47] ] design of experiments (DoE) [ 13 , 48 ] and computational fluid dynamics (CFD) [ 4 , 5 , 8 , 12 , 27 , 28 , 49 ] in engineering optimisation. Moiz et al [ 43 ] presented an integrated ML and GA approach to optimising internal combustion engines, achieving comparable results to traditional CFD-GA approaches with significant time and cost savings.…”
Section: Related Workmentioning
confidence: 99%
“…The study focuses primarily on comparing the performance of PR and Kriging-based models as surrogate modelling approaches, rather than considering other popular methods such as Support Vector Regression (SVR) [ 23 ], Process Regression (GPR) [ 23 ], Radial Basis Function ( ) [ 24 ] and Artificial Neural Networks ( ) [ 25 , 26 ]. The decision to exclude these alternative methods can be attributed to several factors.…”
Section: Introductionmentioning
confidence: 99%