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A performance comparison of multi-objective optimization-based approaches for calibrating white-box building energy models

机译:基于多目标优化的校准方法校准校准的性能比较

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Building Energy Model (BEM) calibration is the process of reducing the gap between the simulation outputs and the actual measured data at the same conditions. The literature shows that BEM calibration approaches could lead to a significant error in the model inputs even the calibration has been conducted successfully based on the model outputs (i.e., error functions). This paper compares the performance (i.e., accuracy and robustness) of 60 optimization-based calibration approaches. The approaches have different error functions (individual or combination of NMBE, NME, CV(RMSE), R-2,C chi(2)) to be minimized and different outputs (heating demand, cooling demand, andor indoor temperature for weeks, months, or a year) to be calibrated. The BESTEST600, predefined by ANSI/ASHRAE 140-2001, is selected as a white-box BEM case study for conducting the comparison test. Having the case study inputs and outputs without uncertainty gives a trustworthy comparison between the tested approaches. EnergyPlus is used for conducting the simulation while the Multi-objective optimization algorithm (a variant of NSGA-II) from MATLAB is used to minimize the error function(s) associated to each calibration approach. Among the 60 calibration approaches, eight proved to be the most accurate in predicting all calibration variables with percentage errors lower than 10%. CV(RMSE) was found to be the most robust error function under different calibration datasets. The results also show that the current standard calibration requirements are not proper as stopping criteria for automatic optimization-based calibration. (C) 2020 Elsevier B.V. All rights reserved.
机译:构建能源模型(BEM)校准是在相同条件下降低模拟输出和实际测量数据之间的间隙的过程。文献表明,BEM校准方法可能导致模型输入中的显着误差甚至基于模型输出(即误差函数)成功进行了校准。本文比较了60种优化校准方法的性能(即精度和稳健性)。该方法具有不同的误差功能(NMBE,NME,CV(RMSE),R-2,C CHI(2))的单独或组合,以最小化和不同的输出(加热需求,冷却需求和或室内温度周数,几个月或一年)被校准。由ANSI / ASHRAE 140-2001预定义的BESTEST600,被选为用于进行比较测试的白盒BEM案例研究。在没有不确定性的情况下进行案例研究输入和输出可以在测试的方法之间提供值得信赖的比较。 EnergyPlus用于进行模拟,而来自MATLAB的多目标优化算法(NSGA-II的变型)用于最小化与每个校准方法相关联的误差函数。在60个校准方法中,八个被证明是预测所有校准变量的最准确,百分比误差低于10%。发现CV(RMSE)是不同校准数据集下最强大的错误功能。结果还表明,当前标准校准要求不适用于停止基于自动优化校准的标准。 (c)2020 Elsevier B.v.保留所有权利。

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