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Original Articles

Non-linear autoregressive neural network approach for inside air temperature prediction of a pillar cooler

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Pages 141-149 | Received 14 Jan 2016, Accepted 19 Oct 2016, Published online: 17 Jan 2017
 

ABSTRACT

The volcanic plate made pillar cooler system is designed for outdoor spaces as a heat exchanging medium and reduces the outcoming air temperature which flows through the exhaust port. This paper proposes the use of artificial neural networks (ANNs) to predict inside air temperature of a pillar cooler. For this purpose, at first, three statistically significant factors (outside temperature, airing and watering) influencing the inside air temperature of the pillar cooler are identified as input parameters for predicting the output (inside air temperature) and then an ANN was employed to predict the output. In addition, 70%, 15% and 15% data was chosen from a previously obtained data set during the field trial of the pillar cooler for training, testing and validation, respectively, and then an ANN was employed to predict inside air temperature. The training (0.99918), testing (0.99799) and validation errors (0.99432) obtained from the model indicate that the artificial neural network model (NARX) may be used to predict inside air temperature of pillar cooler. This study reveals that, an ANN approach can be used successfully for predicting the performance of pillar cooler.

Acknowledgments

This work is supported by the Grants-in-Aid in Scientific Research from the Japan Society for the Promotion of Science (No. 26450354).

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