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An applied artificial intelligence approach towards assessing building performance simulation tools

机译:一种用于评估建筑性能模拟工具的应用人工智能方法

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With the development of modern computer technology, a large amount of building energy simulation tools is available in the market. When choosing which simulation tool to use in a project, the user must consider the tool's accuracy and reliability, considering the building information they have at hand, which will serve as input for the tool. This paper presents an approach towards assessing building performance simulation results to actual measurements, using artificial neural networks (ANN) for predicting building energy performance. Training and testing of the ANN were carried out with energy consumption data acquired for 1 week in the case building called the Solar House. The predicted results show a good fitness with the mathematical model with a mean absolute error of 0.9%. Moreover, four building simulation tools were selected in this study in order to compare their results with the ANN predicted energy consumption: Energy_10, Green Building Studio web tool, eQuest and EnergyPlus. The results showed that the more detailed simulation tools have the best simulation performance in terms of heating and cooling electricity consumption within 3% of mean absolute error.
机译:随着现代计算机技术的发展,市场上有大量的建筑能耗模拟工具。在选择要在项目中使用哪种仿真工具时,用户必须考虑到工具的准确性和可靠性,同时要考虑他们手头的建筑信息,这些信息将作为工具的输入。本文提出了一种使用人工神经网络(ANN)来评估建筑能耗模拟的方法,以评估建筑绩效模拟结果到实际测量结果。 ANN的培训和测试是在名为Solar House的案例大楼中使用1周获得的能耗数据进行的。预测结果表明该数学模型具有很好的适应性,平均绝对误差为0.9%。此外,在本研究中选择了四种建筑模拟工具,以便将其结果与ANN预测的能耗进行比较:Energy_10,Green Building Studio网络工具,eQuest和EnergyPlus。结果表明,在供暖和制冷耗电量方面,更详细的仿真工具具有最佳的仿真性能,且平均绝对误差不超过3%。

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