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Numerical and experimental results of a novel and generic methodology for energy performance evaluation of thermal systems using renewable energies

机译:使用可再生能源的热力系统能源性能评估的新颖通用方法的数值和实验结果

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At present there is no reliable approach to model and characterize thermal systems using renewable energy for building applications based on experimental data. The results of the existing approaches are valid only for specific conditions (climate type and thermal building properties). The aim of this paper is to present a generic methodology to evaluate the energy performance of such systems. Artificial neural networks (ANNs) have proved to be suitable to tackle such complex problems, particularly when the system to be modelled is compact and cannot be divided up during the testing stage. Reliable "black box" ANN modelling is able to identify global models of the whole system without any advanced knowledge of its internal operating principles. The knowledge of the system's global inputs and outputs is sufficient. The proposed methodology is applied to evaluate three different Solar Combisystems (SCSs) combined with a gas boiler or a heat pump (HP) as an auxiliary system. The results show that the best ANN models were able to predict with a satisfactory degree of precision, the annual energy consumption of the all systems except the SCS combined with air source HP, in different conditions, based on a learning sequence lasting only 12 days. In fact, the annual energy prediction errors were less than 10% in most cases. The methodology limitations appear in extreme boundary conditions (Barcelona climate) compared to those used during the ANN training process. (C) 2015 Elsevier Ltd. All rights reserved.
机译:目前,尚没有可靠的方法来基于实验数据使用建筑中的可再生能源对热力系统进行建模和表征。现有方法的结果仅对特定条件(气候类型和热建筑特性)有效。本文的目的是提出一种通用方法来评估此类系统的能源性能。事实证明,人工神经网络(ANN)适合解决此类复杂问题,尤其是当要建模的系统紧凑且在测试阶段无法拆分时。可靠的“黑匣子”人工神经网络建模能够识别整个系统的全局模型,而无需对其内部操作原理有任何高级了解。足够了解系统的全局输入和输出。所提出的方法应用于评估三种不同的太阳能组合系统(SCS),并与燃气锅炉或热泵(HP)组合作为辅助系统。结果表明,最佳的人工神经网络模型能够在仅持续12天的学习序列的基础上,以令人满意的精确度进行预测,在不同条件下,除SCS与空气源HP组合外,所有系统的年能耗。实际上,在大多数情况下,年度能源预测误差小于10%。与在ANN训练过程中使用的方法相比,方法的局限性出现在极端边界条件(巴塞罗那气候)下。 (C)2015 Elsevier Ltd.保留所有权利。

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