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Research Article

Fast POD method to evaluate infiltration heat recovery in building walls

Alexandra Tallet( )Erwan LibergeChristian Inard
LaSIE UMR CNRS 7356, Université de la Rochelle, Pôle Science et Technologie, Avenue Michel Crépeau, 17042 La Rochelle Cedex 1, France
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Abstract

Air infiltration of buildings has a considerable impact on the energy performance of buildings. Permeability or airflow leakage can be evaluated by introducing the Infiltration Heat Recovery (IHR) factor in the energy balance equation. Conventionally, this factor is computed using a Computational Fluid Dynamics (CFD) software, that is time consuming and not very useful for a fast evaluation of balance energy of a building. This article proposes a Reduced-Order model (ROM) approach to evaluate the effect of the permeability of the energy balance for a building. The ROM, based on the well-known Proper Orthogonal Decomposition (POD) method, is developed in the Modelica modeling language. It is successfully applied to the case study of the air infiltration in the low energy consumption building.

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Building Simulation
Pages 111-121
Cite this article:
Tallet A, Liberge E, Inard C. Fast POD method to evaluate infiltration heat recovery in building walls. Building Simulation, 2017, 10(1): 111-121. https://doi.org/10.1007/s12273-016-0306-3

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Received: 16 February 2016
Revised: 13 June 2016
Accepted: 14 June 2016
Published: 08 July 2016
© Tsinghua University Press and Springer-Verlag Berlin Heidelberg 2016
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