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Comparative study of surrogate models for uncertainty quantification of building energy model: Gaussian Process Emulator vs. Polynomial Chaos Expansion

机译:建筑能量模型不确定性量化的替代模型的比较研究:高斯过程仿真器与多项式混沌扩展

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Uncertainty Quantification (UQ) employing a Monte Carlo Sampling (MCS) method in a building simulation domain has been widely used to account for risks of predicted outputs for robust decision making. However, the stochastic approach for UQproblems requires significant computational burdens compared to the deterministic approach. This paper addresses two surrogate models (Gaussian Process Emulator (GPE) and Polynomial Chaos Expansion (PCE)) which together can be regarded as a meta-model of a Building Performance Simulation (BPS) tool with a high-fidelity model. In the paper, the developed GPE and PCE with different model structures were compared in terms of a prediction capability under different amount of training data and number of inputs. The aim of the comparative study is to identify the relative prediction abilities and model flexibility of GPE and PCE. It was found that the GPE and PCE produce high performance qualities having fast computation speed compared to the developed basis model if new inputs having identical inputs and probability ranges, were used. In terms of two-sample Kolmogorov-Smirnov (K-S) hypothesis test, mean values of the minimum p-values of the GPE and PCE were 0.999 and 0.569, respectively, if the number of samplings are over 30 cases. Otherwise, the PCE shows significantly reduced performance quality than the GPE. (C) 2016 Published by Elsevier B.V.
机译:在建筑模拟领域中采用蒙特卡洛采样(MCS)方法的不确定性量化(UQ)已被广泛用于说明预测结果的风险,以进行可靠的决策。但是,与确定性方法相比,UQ问题的随机方法需要大量的计算负担。本文介绍了两个替代模型(高斯过程仿真器(GPE)和多项式混沌扩展(PCE)),它们可以一起视为具有高保真模型的建筑性能模拟(BPS)工具的元模型。在本文中,比较了在不同训练数据量和输入数量下具有不同模型结构的已开发GPE和PCE的预测能力。比较研究的目的是确定GPE和PCE的相对预测能力和模型灵活性。已经发现,如果使用具有相同输入和概率范围的新输入,则与已开发的基础模型相比,GPE和PCE会产生具有快速计算速度的高性能质量。就两次抽样的Kolmogorov-Smirnov(K-S)假设检验而言,如果抽样数量超过30例,则GPE和PCE的最小p值的平均值分别为0.999和0.569。否则,PCE的性能质量将大大低于GPE。 (C)2016由Elsevier B.V.发布

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