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Stochastic uncertainty-based optimisation on an aerogel glazing building in China using supervised learning surrogate model and a heuristic optimisation algorithm

机译:基于随机的不确定性在中国利用监督学习替代模型的气凝胶玻璃建筑优化及启发式优化算法

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Scenario parameters of aerogel glazing systems are with uncertainties in the real operation, whereas current literature fails to characterise the thermal and energy responses regarding stochastic scenario uncertainties. Furthermore, multi-level uncertainty-based optimisation has been rarely studied for the robustness improvement. In this study, a general method for stochastic uncertainties-based optimisation is proposed. A machine-learning based surrogate model is developed for uncertainty analysis. Furthermore, a multi-level uncertainty-based optimisation function is characterized and integrated with the heuristic teaching-learning-based algorithm to search for the optimal design. Research results indicated that, in the multi-level uncertainty-based optimal scenario, average values of RoC, thickness of aerogel layer, extinction coefficient and thermal conductivity are 306253.4 J/(K m(3)), 24.5 mm, 0.092, and 0.0214 W/(m K). Compared to the deterministic case, the stochastic uncertainty case can decrease the heat flux from 237.16 to 190 kWh/m(2) .a by 19.9%, and total heat gain from 267.18 to 222.04 kWh/m(2).a by 16.9%. Furthermore, by adopting the multi-level uncertainty-based optimisation, the heat flux can be further reduced to 162.54 kWh/m(2).a by 31.5%, and the total heat gain to 191.56 kWh/m(2).a by 28.3%. The proposed technique can improve the reliability of aerogel glazing systems in green buildings. (C) 2020 Elsevier Ltd. All rights reserved.
机译:Airgel Glazing Systems的场景参数在实际操作中具有不确定性,而当前的文献未能表征关于随机情景不确定性的热量和能量响应。此外,基于多级不确定性的优化已经很少研究稳健性改善。在本研究中,提出了一种用于随机不确定性的优化的一般方法。基于机器学习的代理模型开发用于不确定性分析。此外,基于多级不确定性的优化功能,并与基于启发式教学的算法集成,用于搜索最佳设计。研究结果表明,在基于多级不确定性的最佳场景中,ROC,气凝胶层厚度,消光系数和导热率的平均值为306253.4J /(K m(3)),24.5毫米,0.092和0.0214 w /(m k)。与确定性情况相比,随机的不确定病例可以将来自237.16至190kWh / m(2)的热通量降低19.9%,以及267.18至222.04 kWh / m(2).a的总热量增益为16.9% 。此外,通过采用多级不确定性的优化,热通量可以进一步减少到162.54千瓦时/ m(2).a,将总热量增益和191.56 kWh / m(2).a进一步减少到162.54千瓦/米(2).a。 28.3%。该技术可以提高绿色建筑中气凝胶玻璃系统的可靠性。 (c)2020 elestvier有限公司保留所有权利。

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