Title of article :
Graybox and adaptative dynamic neural network identification models to infer the steady state efficiency of solar thermal collectors starting from the transient condition
Author/Authors :
Baccoli Roberto *، نويسنده , , Carlini Ubaldo، نويسنده , , Mariotti Stefano، نويسنده , , Innamorati Roberto، نويسنده , , Solinas Elisa، نويسنده , , Mura Paolo، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2010
Pages :
20
From page :
1027
To page :
1046
Abstract :
This paper deals with the development of methods for non steady state test of solar thermal collectors. Our goal is to infer performances in steady-state conditions in terms of the efficiency curve when measures in transient conditions are the only ones available. We take into consideration the method of identification of a system in dynamic conditions by applying a Graybox Identification Model and a Dynamic Adaptative Linear Neural Network (ALNN) model. The study targets the solar collector with evacuated pipes, such as Dewar pipes. The mathematical description that supervises the functioning of the solar collector in transient conditions is developed using the equation of the energy balance, with the aim of determining the order and architecture of the two models. The input and output vectors of the two models are constructed, considering the measures of 4 days of solar radiation, flow mass, environment and heat-transfer fluid temperature in the inlet and outlet from the thermal solar collector. The efficiency curves derived from the two models are detected in correspondence to the test and validation points. The two synthetic simulated efficiency curves are compared with the actual efficiency curve certified by the Swiss Institute Solartechnik Pufung Forschung which tested the solar collector performance in steady-state conditions according to the UNI-EN 12975 standard. An acquisition set of measurements of only 4 days in the transient condition was enough to trace through a Graybox State Space Model the efficiency curve of the tested solar thermal collector, with a relative error of synthetic values with respect to efficiency certified by SPF, lower than 0.5%, while with the ALNN model the error is lower than 2.2% with respect to certified one. 2010 Elsevier Ltd. All rights reserved.
Keywords :
Solar collector , Transient test , Graybox model , Artificial neural networks , Solar collector parameters inverse problem
Journal title :
Solar Energy
Serial Year :
2010
Journal title :
Solar Energy
Record number :
940350
Link To Document :
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