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Heat Rate Predictions in Humid Air-Water Heat Exchangers Using Correlation and Neural Networks
Oleh:
Sen, Mihir
;
Diaz, Gerardo
;
McClain, Rodney L.
;
Pacheco-Vega, Arturo
;
Yang, K. T.
Jenis:
Article from Bulletin/Magazine
Dalam koleksi:
Journal of Heat Transfer vol. 123 no. 2 (Apr. 2001)
,
page 348-354.
Topik:
NEURAL NETWORKS
;
heat rate prediction
;
humid air - water
;
heat exchangers
;
neural networks
Ketersediaan
Perpustakaan Pusat (Semanggi)
Nomor Panggil:
JJ90.4
Non-tandon:
1 (dapat dipinjam: 0)
Tandon:
tidak ada
Lihat Detail Induk
Isi artikel
We consider the flow of humid air over fin - tube multi - row multi - column compact heat exchangers with possible condensation. Previously published experimental data are used to show that a regression analysis for the best - fit correlation of a prescribed form does not provide an unique answer, and that there are small but significant differences between the predictions of the different correlations thus obtained. It is also shown that it is more accurate to predict the heat rate directly rather than through intermediate quantities like the j - factors. The artificial neural network technique is offered as an alternative technique. It is trained with experimental values of the humid - air flow rates, dry - bulb and wet - bulb inlet temperatures, fin spacing, and heat transfer rates. The trained network is then used to make predictions of the heat transfer. Comparison of the results demonstrates that the neural network is more accurate than conventional correlations.
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