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Original Articles

Optimization of thermal performance of the parabolic trough solar collector systems based on GA-BP neural network model

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Pages 819-830 | Published online: 18 Jul 2017
 

ABSTRACT

The aim of this paper is to optimize the thermal performance (system output energy, thermal efficiency, and heat loss of cavity absorber) of parabolic trough solar collector (PTC) systems in order to improve its thermal performance, based on the genetic algorithm-back propagation (GA-BP) neural network model. There are a number of undefined problems, fuzzy or incomplete information and a complex thermal performance of the PTC systems. Therefore, the thermal performance prediction of the PTC systems based on GA-BP neural network model was developed. Subsequently, the metrics performances have been adopted to comprehensively understand the algorithm and evaluate the prediction accuracy. Results revealed that the GA-BP neural network model can be successfully used to predict the complex nonlinear relationship between the input variables and thermal performance of the PTC systems. The cosine effect has a great influence on the thermal performance; thereby the geometrical structure of the PTC systems was optimized. It was found that the optimized geometrical structure was beneficial to improve the thermal performance of the PTC system. In conclusion, the GA-BP neural network model has higher prediction accuracy than the other algorithm and it can be feasible and reliable.

Funding

The present study was supported by the Joint Funds of the National Natural Science Foundation of China under the Contract (No. U1137605), the Collaborative Innovation Center of Research and Development of Renewable Energy in the southwest area in China (No. 05300205020516009) and the International Scientific and Technological Cooperation Projects of China (No. 2011DFA62380).

Additional information

Funding

The present study was supported by the Joint Funds of the National Natural Science Foundation of China under the Contract (No. U1137605), the Collaborative Innovation Center of Research and Development of Renewable Energy in the southwest area in China (No. 05300205020516009) and the International Scientific and Technological Cooperation Projects of China (No. 2011DFA62380).

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