2017
DOI: 10.23884/ejt.2017.7.1.04
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Experimental and Articial Neural Network Based Studies on Thermal Conductivity of Lightweight Building Materials

Abstract: Abstract:The growing concern about energy consumption of heating

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Cited by 8 publications
(5 citation statements)
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References 17 publications
(17 reference statements)
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“…Where b is bias. The intention of bias entries is to balance the origin of the activation function to provide better learning [36]. Transfer function can have described by the following equation:…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…Where b is bias. The intention of bias entries is to balance the origin of the activation function to provide better learning [36]. Transfer function can have described by the following equation:…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…, the thermal examination was performed, under the suspicion that air in the two holes is still, to decide the impact of cavity perspective proportion. In 2017 DavutSevim, et al [25], an investigational examination is performed to anticipate the thermal protection properties of wall structures of which the mechanical properties are known; by utilizing Levenberg-Marquardt training algorithm based ANN technique for vitality effective buildings. The delivered tests are concrete based and have generally high protection properties for vitality proficient buildings.…”
Section: Thermal Performance Of Building Components Insulating By Polmentioning
confidence: 99%
“…At the point the neural system is encouraged with information in the input layer, the qualities are sent to at least one node in the next layer. This node carries out [25][26] estimations on the values they get, and promote the outcomes to more nodes in the next layer, which rehash the procedure ( figure 2). a) The movement of the input units speaks to the unprocessed data that is encouraged into the network.…”
Section: Training Based Optimal Neural Network (Onn)mentioning
confidence: 99%
“…The increment in the thermal performance of the sample is related to a decrease in unit weight and an increase in porosity with the addition of wastes. The microstructure of a material strongly affects the thermal conductivity [41]. Vimmarova et al [40] investigated the thermal performance of gypsumlimemetakaolin binders and the values changed between 0.198 -0.348 W/mK.…”
Section: Thermal Conductivitymentioning
confidence: 99%