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A meta-model-based optimization approach for fast and reliable calibration of building energy models

机译:基于元模型的优化方法,可快速可靠地校准建筑能耗模型

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Building energy model calibration with optimization aims to bridge the gap between simulated energy consumption and measurement, thus aiding building retrofit and operation. However, the difficulty of the optimization in calibration including both optimization hyperparameter settings and problem complexity (multi-modal and under-determined) make the calibration with optimization approach difficult to be applied in practice with full reliability. Meanwhile, current calibration with optimization treats building calibration as a purely mathematical problem while neglecting the importance of engineering judgment in the calibration practice. In this paper, we introduced meta-models into the calibration with optimization approach with an auto-correction mechanism to improve calibration performance with respect to time and reliability. To better illustrate the approach, we presented a case study with validation. The proposed method was demonstrated to alleviate difficulty of optimization while improving calibration time and reliability in the study. Comparing two types of meta-models, we found that using the GP (Gaussian Process) achieved better performance with less computation time and higher accuracy compared to the MLR (Multiple Linear Regression). To efficiently train emulators, we can start with generating only a small amount of white-box simulation results. It is also important to generate enough initial starts to ensure robustness of calibration. (C) 2019 Elsevier Ltd. All rights reserved.
机译:具有优化功能的建筑能耗模型校准旨在弥合模拟能耗与测量之间的差距,从而帮助建筑改造和运营。但是,包括优化超参数设置和问题复杂性(多模式的和不确定的)在内的校准优化的困难使采用优化方法的校准难以在实践中完全可靠地应用。同时,具有优化功能的当前校准将建筑物校准视为纯粹的数学问题,而在校准实践中却忽略了工程判断的重要性。在本文中,我们将元模型引入具有自动校正机制的优化方法的标定方法中,以在时间和可靠性方面提高标定性能。为了更好地说明该方法,我们提出了一个带有验证的案例研究。所提出的方法在减轻研究难度的同时,还改善了校正时间和可靠性。比较两种类型的元模型,我们发现与MLR(多重线性回归)相比,使用GP(高斯过程)可获得更好的性能,且计算时间更少且准确性更高。为了有效地训练模拟器,我们可以从仅生成少量白盒模拟结果开始。产生足够的初始启动以确保校准的鲁棒性也很重要。 (C)2019 Elsevier Ltd.保留所有权利。

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