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Combining Deep Learning and the Heat Flux Method for In-Situ Thermal-Transmittance Measurement Improvement (CROSBI ID 311829)

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Gumbarević, Sanjin ; Milovanović, Bojan ; Dalbelo Bašić, Bojana ; Gaši Mergim Combining Deep Learning and the Heat Flux Method for In-Situ Thermal-Transmittance Measurement Improvement // Energies (Basel), 15 (2022), 14; 5029, 20. doi: 10.3390/en15145029

Podaci o odgovornosti

Gumbarević, Sanjin ; Milovanović, Bojan ; Dalbelo Bašić, Bojana ; Gaši Mergim

engleski

Combining Deep Learning and the Heat Flux Method for In-Situ Thermal-Transmittance Measurement Improvement

Transmission losses through the building envelope account for a large proportion of building energy balance. One of the most important parameters for determining transmission losses is thermal transmittance. Although thermal transmittance does not take into account dynamic parameters, it is traditionally the most commonly used estimation of transmission losses due to its simplicity and efficiency. It is challenging to estimate the thermal transmittance of an existing building element because thermal properties are commonly unknown or not all the layers that make up the element can be found due to technical-drawing information loss. In such cases, experimental methods are essential, the most common of which is the heat-flux method (HFM). One of the main drawbacks of the HFM is the long measurement duration. This research presents the application of deep learning on HFM results by applying long-short term memory units on temperature difference and measured heat flux. This deep-learning regression problem predicts heat flux after the applied model is properly trained on temperature-difference input, which is backpropagated by measured heat flux. The paper shows the performance of the developed procedure on real-size walls under the simulated environmental conditions, while the possibility of practical application is shown in pilot in-situ measurements.

thermal transmittance ; deep learning ; machine learning ; energy efficiency ; building physics

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Podaci o izdanju

15 (14)

2022.

5029

20

objavljeno

1996-1073

10.3390/en15145029

Povezanost rada

nije evidentirano

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