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Stepwise deterministic and stochastic calibration of an energy simulation model for an existing building

机译:现有建筑物能源模拟模型的逐步确定性和随机性校准

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摘要

Building simulation tools have been widely used for performance assessment. However, many studies [1] have reported that a performance gap exists between the reality and simulation output, mainly caused by unknown simulation inputs. Therefore, model calibration needs to be introduced. Calibration attempts can fail for the following reasons: coarse initial simulation model, long sampling time, uncertainty in the model, and sensor errors. The aim of this paper is to address the abovementioned issues. For this study, an existing office building was selected and two calibration approaches were presented: deterministic vs. stochastic. For stochastic calibration, a Gaussian Process Emulator (GPE) was introduced as a surrogate of the EnergyPlus model. The stochastically calibrated model performs better than the deterministically calibrated model. It is concluded in the paper that (1) the calibration quality is influenced by the degree of the details of the initial model, (2) the accumulated measured data under a sampling time of up to one day (e.g. gas energy consumption) might be unsuitable for calibration work due to the lack of 'time-series trend', and (3) the calibration quality is also influenced by sensor errors and further calibration needs to take these into account. (C) 2016 Elsevier B.V. All rights reserved.
机译:建筑仿真工具已被广泛用于性能评估。但是,许多研究[1]报告说,现实和模拟输出之间存在性能差距,这主要是由未知的模拟输入引起的。因此,需要引入模型校准。校准尝试失败的原因如下:粗略的初始仿真模型,较长的采样时间,模型中的不确定性以及传感器错误。本文的目的是解决上述问题。在本研究中,选择了现有的办公楼,并提出了两种校准方法:确定性与随机性。对于随机校准,引入了高斯过程仿真器(GPE)作为EnergyPlus模型的替代品。随机校准模型的性能优于确定校准模型。本文得出的结论是:(1)校准质量受初始模型详细程度的影响,(2)采样时间最长为一天的累积测量数据(例如气体消耗量)可能为由于缺少“时间序列趋势”,因此不适合进行校准工作;(3)校准质量还受到传感器误差的影响,因此需要进一步校准以考虑这些误差。 (C)2016 Elsevier B.V.保留所有权利。

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