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Graybox and adaptative dynamic neural network identification models to infer the steady state efficiency of solar thermal collectors starting from the transient condition

机译:灰盒和自适应动态神经网络识别模型从瞬态开始推断太阳能集热器的稳态效率

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摘要

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.rnThe 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.rnThe 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.rnAn 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.
机译:本文探讨了太阳能集热器非稳态测试方法的发展。我们的目标是,当仅在瞬态条件下进行测量时,可以根据效率曲线来推断稳态条件下的性能。我们通过应用Graybox辨识模型和动态自适应线性神经网络(ALNN)模型来考虑在动态条件下识别系统的方法。研究针对的是采用真空管(例如杜瓦管)的太阳能集热器。使用能量平衡方程式开发了监督太阳能收集器在瞬态条件下运行的数学描述,目的是确定两个模型的顺序和体系结构。构造了两个模型的输入和输出矢量,其中考虑了太阳集热器入口和出口的4天太阳辐射,流量,环境和传热流体温度的测量值。根据测试点和验证点检测模型。将这两个合成的模拟效率曲线与由瑞士太阳能研究所Pufung Forschung认证的实际效率曲线进行比较,后者根据UNI-EN 12975标准在稳态条件下测试了太阳能收集器的性能。rn仅四天的一组测量值在瞬态条件下足以通过Graybox状态空间模型追踪被测太阳能集热器的效率曲线,相对于SPF认证的效率,合成值的相对误差低于0.5%,而对于ALNN模型,相对于合格证书,误差小于2.2%。

著录项

  • 来源
    《Solar Energy》 |2010年第6期|P.1027-1046|共20页
  • 作者单位

    Institute of Technical Physics of the University of Cagliari, via Marengo 1, 09123 Cagliari, Italy;

    rnInstitute of Technical Physics of the University of Cagliari, via Marengo 1, 09123 Cagliari, Italy;

    rnInstitute of Technical Physics of the University of Cagliari, via Marengo 1, 09123 Cagliari, Italy;

    rnInstitute of Technical Physics of the University of Cagliari, via Marengo 1, 09123 Cagliari, Italy;

    rnInstitute of Technical Physics of the University of Cagliari, via Marengo 1, 09123 Cagliari, Italy;

    rnInstitute of Technical Physics of the University of Cagliari, via Marengo 1, 09123 Cagliari, Italy;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    solar collector; transient test; graybox model; artificial neural networks; solar collector parameters inverse problem;

    机译:太阳能集热器瞬态测试灰箱模型;人工神经网络;太阳能集热器参数反问题;

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