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Application of optimized artificial intelligence algorithm to evaluate the heating energy demand of non-residential buildings at European level

机译:优化人工智能算法在评估欧洲非住宅建筑供热需求中的应用

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A reliable preliminary forecast of heating energy demand of a building by using a detailed dynamic simulation software typically requires an in-depth knowledge of the thermal balance, several input data and a very skilled user. The authors will describe how to use Artificial Neural Networks to predict the demand for thermal energy linked to the winter climatization of non-residential buildings. To train the neural network it was necessary to develop an accurate energy database that represents the basis of the training of a specific Artificial Neural Networks. Data came from detailed dynamic simulations performed in the TRNSYS environment. The models were built according to the standards and laws of building energy requirements in seven different European countries, for 3 cities in each country and with 13 different shape factors, obtaining 2184 detailed dynamic simulations of non-residential buildings designed with high energy performances. The authors identified the best ANN topology developing a tool for determining, both quickly and simply, the heating energy demand of a non-residential building, knowing only 12 well-known thermo-physical parameters and without any computational cost or knowledge of the thermal balance. The reliability of this approach is demonstrated by the low standard deviation less than 5 kWh/(m(2).year). (C) 2019 Elsevier Ltd. All rights reserved.
机译:通过使用详细的动态模拟软件对建筑物的热能需求进行可靠的初步预测,通常需要深入了解热平衡,一些输入数据和非常熟练的用户。作者将描述如何使用人工神经网络预测与非住宅建筑物的冬季气候相关的热能需求。为了训练神经网络,有必要建立一个精确的能量数据库,该数据库代表了特定人工神经网络训练的基础。数据来自在TRNSYS环境中执行的详细动态仿真。这些模型是根据七个欧洲国家/地区的建筑能耗要求的标准和法律,针对每个国家/地区的三个城市,具有13种不同的形状因子而构建的,获得了2184项具有高能效设计的非住宅建筑的详细动态模拟。作者确定了最佳的ANN拓扑,开发了一种工具,可以快速,简单地确定非住宅建筑的供热需求,仅了解12个众所周知的热物理参数,而无需任何计算成本或热平衡知识。低于5 kWh /(m(2).year)的低标准偏差证明了这种方法的可靠性。 (C)2019 Elsevier Ltd.保留所有权利。

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