Neural network modeling of heat transfer to liquid particle mixtures in cans subjected to end-over-end processing

被引:34
作者
Sablani, SS [1 ]
Ramaswamy, HS [1 ]
Sreekanth, S [1 ]
Prasher, SO [1 ]
机构
[1] MCGILL UNIV, DEPT AGR & BIOSYST ENGN, ST ANNE DE BELLEVUE, PQ H9X 3V9, CANADA
关键词
neural network modeling; heat transfer; thermal processing; end-over-end agitation;
D O I
10.1016/S0963-9969(97)00029-X
中图分类号
TS2 [食品工业];
学科分类号
0832 ;
摘要
Artificial neural network (ANN) modeling was used for the overall heat transfer coefficient (U) and the fluid to particle heat transfer coefficient (h(fp)) associated with liquid particle mixtures, in cans subjected to end-over-end rotation. Both U and h(fp) are needed for modeling the time-temperature profiles of liquid and particles. Experimental data obtained for U and h(fp) under various test conditions were used for both training and evaluation. Multi-layer neural networks with seven input and two output neurons (for a single particle in a can), and six input and two outputs neuron (for multiple particles in a can) were trained. The optimal network was obtained by the varying number of hidden layers, number of neurons in each hidden layer and learning runs, using a back-propagation algorithm. Heat transfer coefficients were also predicted using dimensionless correlations developed earlier from the same data-set. Prediction errors associated with ANN were less than 3 and 5%, respectively, for U and h(fp), which were about 50% better than those associated with dimensionless number models, indicating that the predictive performance of the ANN was far superior than that of dimensionless correlations. The ANN models were also more versatile than the dimensionless number models for predicting U and h(fp). (C) 1997 Canadian Institute of Food Science and Technology. Published by Elsevier Science Ltd.
引用
收藏
页码:105 / 116
页数:12
相关论文
共 25 条
[1]   Modelling of a fluidized bed drier using artificial neural network [J].
Balasubramanian, A ;
Panda, RC ;
Rao, VSR .
DRYING TECHNOLOGY, 1996, 14 (7-8) :1881-1889
[2]  
Bharath R., 1994, NEURAL NETWORK COMPU
[3]  
BOCHEREAU L, 1992, J AGR ENG RES, V51, P201
[4]  
Choi YS, 1996, T ASAE, V39, P1535, DOI 10.13031/2013.27648
[5]  
DAS K, 1992, T ASAE, V35, P2035, DOI 10.13031/2013.28832
[6]  
DING K, 1994, T ASAE, V37, P1537, DOI 10.13031/2013.28238
[7]  
GALVIN JR, 1990, FOOD TECHNOL-CHICAGO, V44, P95
[8]  
GALVIN JR, 1990, FOOD TECHNOLOGY, V44, P100
[9]   NEURAL NETWORKS VS PRINCIPAL COMPONENT REGRESSION FOR PREDICTION OF WHEAT-FLOUR LOAF VOLUME IN BAKING TESTS [J].
HORIMOTO, Y ;
DURANCE, T ;
NAKAI, S ;
LUKOW, OM .
JOURNAL OF FOOD SCIENCE, 1995, 60 (03) :429-433
[10]  
LIAO K, 1993, T ASAE, V36, P1949, DOI 10.13031/2013.28547