灵敏度(控制系统)
冷负荷
蒙特卡罗方法
不确定度分析
建筑能耗模拟
建筑模型
计算机科学
回归分析
能量(信号处理)
可靠性工程
工程类
模拟
统计
能源性能
数学
空调
机器学习
机械工程
电子工程
作者
Li Zhu,Jiqiang Zhang,Yuzhe Gao,Wenxi Tian,Zhexing Yan,Xueshun Ye,Yong Sun,Cuigu Wu
标识
DOI:10.1016/j.jobe.2021.103440
摘要
It has become crucial to investigate the uncertainty and sensitivity of building loads (peak cooling load, peak heating load, annual cooling demand and annual heating demand) for meeting the risk assessment of building energy planning. Therefore, a new Monte Carlo (MC) method based on building performance simulation (BPS) is proposed to solve the problem of building loads forecasting at planning phase. Furthermore, the sensitivity of building loads is examined using two global sensitivity analysis (GSA) methods, including meta modeling method based on tree Gaussian process (TGP) and regression method based on standard regression coefficient (SRC). Finally, a case study of office building is conducted. The results show that the MC method constructed by the combination of R language platform and EnergyPlus software can generate models rapidly and simulate accurately building loads. Note that it is necessary to assess the stability of results as a function of sample size from uncertainty analysis in applying the MC method into building loads assessment. The TGP-based GSA method is applicable to identify and analyze key variables affecting building loads. It is recommended that at least two inherently different GSA methods should be applied to provide robust sensitivity results. Moreover, this study also provides insight on building energy planning and energy conservation design according to the results of uncertainty and sensitivity analysis for case study.
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