Heat transfer prediction for radiant floor heating/cooling systems using artificial neural network (ANN)

Author:

Verma Vikas1,Nath Ratnadeep2,Tarodiya Rahul3

Affiliation:

1. Department of Energy Tezpur University Tezpur Assam India

2. Department of Mechanical Engineering National Institute of Technology Mizoram Aizawl Mizoram India

3. Department of Mechanical Engineering Visvesvaraya National Institute of Technology (VNIT) Nagpur Nagpur Maharashtra India

Abstract

AbstractRadiant floor cooling and heating systems (RHC) are gaining popularity as compared with conventional space conditioning systems. An understanding of the heat transfer capacity of the radiant system is desirable to design a space conditioning system using RHC technology. In the present work, a simplified heat flux model for RHC is developed for both cooling and heating modes of operation. The Artificial Neural Network (ANN) technique is used for the development of the simplified model. Experimental data from literature covering a wide operating range of the RHC is considered for model development and validation. Operating parameters such as mass flow rate (mf), heat resistance (Rs), mean temperature of water flowing through the pipe (Tm), and operative temperature (Top) are considered independent variables influencing the heat flux (qt). The neural network consists of four input layers, one output layer, and one hidden layer with a feed‐forward‐back‐propagation algorithm. A study on the selection of the optimum number of neurons in the range of 1–9 for the hidden layer is also performed. On the basis of the performance parameters, namely, average‐absolute‐relative‐deviation (AARD = 0.11283) percentage, mean‐square‐error (MSE = 0.00055), and the coefficient of determination (R2 = 0.9984), a hidden layer is modeled with five neurons.

Funder

Tezpur University

Publisher

Wiley

Subject

Fluid Flow and Transfer Processes,Condensed Matter Physics

Reference25 articles.

1. International Energy Agency.Promoting Energy Efficiency Investments—Case Studies in Residential Sector;2008.https://ethz.ch/content/dam/ethz/special-interest/mtec/cepe/cepe-dam/documents/publications/books/promoting-ee-2008.pdf

2. International Energy Agency.IEA Promoting Energy Efficiency Investments—Case Studies in Residential Sector; 2008.

3. Sectorial trends in global energy use GHG emission;Price L;LBNL Rep,2006

4. Flow patterns and thermal comfort in a room with panel, floor and wall heating

5. Comfort and energy consumption analysis in buildings with radiant panels

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