利用优化神经网络和迁移学习估算传统拱顶的太阳辐照度

Mohammed Ayoub
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引用次数: 0

摘要

传统的拱形屋顶形式长期以来一直用于炎热的沙漠气候,以获得更好的室内环境质量。前所未有的是,这项研究调查了机器学习在估计这些屋顶接收的太阳辐照度方面的可能贡献,该研究基于模拟导出的训练和测试数据集,其中使用了两种算法来降低其高维度。然后,建立了普通最小二乘和人工神经网络的四种模型。结果表明,r_2值为95.599 ~ 98.794%,RMSE值为12.437 ~ 23.909 Wh/ m2。应用迁移学习将表现最好的模型存储的知识传递到另一个模型中,以估计新屋顶形式的性能。结果表明,与未迁移模型相比,迁移模型可以提供更好的估计,r2为87.416 ~ 97.889%,RMSE为79.300 ~ 13.971 Wh/ m2。机器学习将重新定义建筑性能的实践,为建筑师提供在早期设计阶段快速做出明智决策的灵活性。
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Estimating the received solar irradiances by traditional vaulted roofs using optimized neural networks and transfer learning
Traditional vaulted roof-forms have long been utilized in hot-desert climate for better indoor environmental quality. Unprecedently, this research investigates the possible contribution of machine learning to estimate the received solar irradiances by those roofs, based on simulation-derived training and testing datasets, where two algorithms were used to reduce their higher-dimensionality. Then, four models of ordinary least-squares and artificial neural networks were developed. Their ability to accurately estimate solar irradiances was confirmed, with R 2 of 95.599–98.794% and RMSE of 12.437–23.909 Wh/m 2 . Transfer Learning was also applied to pass the stored knowledge of the best-performing model into another one for estimating the performance of new roof-forms. The results demonstrated that transferred models could provide better estimations with R 2 of 87.416–97.889% and RMSE of 79.300–13.971 Wh/m 2 , compared to un-transferred models. Machine learning shall redefine the practice of building performance, providing architects with flexibility to rapidly make informed decisions during the early design stages.
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CiteScore
3.20
自引率
17.60%
发文量
44
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