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A comparison of six metamodeling techniques applied to building performance simulations

机译:应用于建筑性能模拟的六种元建模技术的比较

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Building performance simulations (BPS) are used to test different designs and systems with the intention of reducing building costs and energy demand while ensuring a comfortable indoor climate. Unfortunately, software for BPS is computationally intensive. This makes it impractical to run thousands of simulations for sensitivity analysis and optimization. Worse yet, millions of simulations may be necessary for a thorough exploration of the high-dimensional design space formed by the many design parameters. This computational issue may be overcome by the creation of fast metamodels. In this paper, we aim to find suitable metamodeling techniques for diverse outputs from BPS. We consider five indicators of building performance and eight test problems for the comparison six popular metamodeling techniques - linear regression with ordinary least squares (OLS), random forest (RF), support vector regression (SVR), multivariate adaptive regression splines, Gaussian process regression (GPR), and neural network (NN). The methods are compared with respect to accuracy, efficiency, ease-of-use, robustness, and interpretability. To conduct a fair and in-depth comparison, a methodological approach is pursued using exhaustive grid searches for model selection assisted by sensitivity analysis. The comparison shows that GPR produces the most accurate metamodels, followed by NN and MARS. GPR is robust and easy to implement but becomes inefficient for large training sets compared to NN and MARS. A coefficient of determination, R-2, larger than 0.9 have been obtained for the BPS outputs using between 128 and 1024 training points. In contrast, accurate metamodels with R-2 values larger than 0.99 can be achieved for all eight test problems using only 32-256 training points.
机译:建筑性能模拟(BPS)用于测试不同的设计和系统,以降低建筑成本和能源需求,同时确保舒适的室内气候。不幸的是,用于BPS的软件需要大量计算。这使得运行数千个仿真进行灵敏度分析和优化变得不切实际。更糟糕的是,可能需要数百万次模拟才能彻底探索由许多设计参数形成的高维设计空间。通过快速元模型的创建可以解决此计算问题。在本文中,我们旨在为BPS的各种输出找到合适的元建模技术。为了比较六种流行的元建模技术,我们考虑了建筑性能的五个指标和八个测试问题-普通最小二乘法(OLS),随机森林(RF),支持向量回归(SVR),多元自适应回归样条,高斯过程回归(GPR)和神经网络(NN)。比较了这些方法的准确性,效率,易用性,鲁棒性和可解释性。为了进行公平,深入的比较,我们采用了一种方法学方法,即使用详尽的网格搜索进行模型选择,并进行敏感性分析。比较表明,GPR生成最准确的元模型,其次是NN和MARS。 GPR强大且易于实施,但与NN和MARS相比,对于大型训练集而言效率低下。使用128到1024个训练点为BPS输出获得了大于0.9的确定系数R-2。相反,仅使用32-256个训练点就可以针对所有八个测试问题获得R-2值大于0.99的准确元模型。

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