Thermal transmittance prediction based on the application of artificial neural networks on heat flux method results
Sanjin Gumbarevi\'c, Bojan Milovanovi\'c, Mergim Ga\v{s}i, Marina, Bagari\'c

TL;DR
This paper explores using artificial neural networks to predict heat flux in building walls, aiming to reduce the measurement time of the heat flux method for determining thermal transmittance, which is crucial for energy-efficient renovations.
Contribution
It introduces a novel approach applying various neural network models to predict heat flux from temperature data, potentially enabling faster in-situ U-value measurements during building renovations.
Findings
ANN models showed promising prediction accuracy
Parallel measurement approach could reduce measurement duration
Limitations identified suggest directions for future research
Abstract
Deep energy renovation of building stock came more into focus in the European Union due to energy efficiency related directives. Many buildings that must undergo deep energy renovation are old and may lack design/renovation documentation, or possible degradation of materials might have occurred in building elements over time. Thermal transmittance (i.e. U-value) is one of the most important parameters for determining the transmission heat losses through building envelope elements. It depends on the thickness and thermal properties of all the materials that form a building element. In-situ U-value can be determined by ISO 9869-1 standard (Heat Flux Method - HFM). Still, measurement duration is one of the reasons why HFM is not widely used in field testing before the renovation design process commences. This paper analyzes the possibility of reducing the measurement time by conducting…
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