Performance prediction between horizontal and vertical source heat pump systems for greenhouse heating with the use of artificial neural networks

被引:0
作者
Hüseyin Benli
机构
[1] Fırat University,Department of Technical and Vocational Education
来源
Heat and Mass Transfer | 2016年 / 52卷
关键词
Artificial Neural Network; Optimal Topology; Artificial Neural Network Model; Heat Pump; Adaptive Neuro Fuzzy Inference System;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents the suitability of artificial neural networks (ANNs) to predict the performance and comparison between a horizontal and a vertical ground source heat pump system. Performance forecasting is the precondition for the optimal control and energy saving operation of heat pump systems. In this study, performance parameters such as air temperature entering condenser fan-coil unit, air temperature leaving condenser fan-coil unit, and ground temperatures (2 and 60 m) obtained experimental studies are input data; coefficient of performance of system (COPsys) is in output layer. The back propagation learning algorithm with three different variants such as Levenberg–Marguardt, Pola–Ribiere conjugate gradient, and scaled conjugate gradient, and also tangent sigmoid transfer function were used in the network so that the best approach can be found. The results showed that LM with three neurons in the hidden layer is the most suitable algorithm with maximum correlation coefficients R2 of 0.999, minimum root mean square RMS value and low coefficient variance COV. The reported results confirmed that the use of ANN for performance prediction of COPsys,H–V is acceptable in these studies.
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页码:1707 / 1724
页数:17
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[1]  
Kacıra M(2004)Status of greenhouse production in Turkey: focusing on vegetable and floriculture production J Agric Meteorol 60 115-122
[2]  
Sase H(2009)Evaluation of ground-source heat pump combined latent heat storage system performance in greenhouse heating Energy Build 44 220-228
[3]  
Kacıra O(2010)Energetic performance analysis of a ground source heat pump system with latent heat storage for a greenhouse heating Energy Convers Manag 52 581-589
[4]  
Okushima L(2004)Experimental performance analysis of a solar assisted ground-source heat pump greenhouse heating system Renew Energy 37 101-110
[5]  
Ishu M(2005)Exergoeconomic analysis of a solar assisted ground-source heat pump greenhouse heating system Appl Therm Eng 25 1459-1471
[6]  
Kowata H(2007)A comparative study on exergetic assessment of the ground source (geothermal) heat pump systems for residential applications Build Environ 42 2004-2013
[7]  
Moyiyama H(2009)Cooling performance of a vertical ground-coupled heat pump system installed in a school building Renew Energy 34 578-582
[8]  
Benli H(2009)Analysis of ground source heat pumps with horizontal ground heat exchangers for northern Japan Renew Energy 34 127-134
[9]  
Durmus A(2000)Application of artificial neural-networks for energy systems Appl Energy 67 17-35
[10]  
Benli H(2001)New approach to dynamic modelling of vapour-compression liquid chillers: artificial neural networks Appl Therm Eng 21 941-953