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Sensitivity analysis methods for building energy models: Comparing computational costs and extractable information

机译:建筑能耗模型的灵敏度分析方法:比较计算成本和可提取信息

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摘要

Though sensitivity analysis has been widely applied in the context of building energy models (BEMs), there are few studies that investigate the performance of different sensitivity analysis methods in relation to dynamic, high-order, non-linear behaviour and the level of uncertainty in building energy models. We scrutinise three distinctive sensitivity analysis methods: (a) the computationally efficient Morris method for parameter screening, (b) linear regression analysis (medium computational costs) and (c) Sobol method (high computational costs). It is revealed that the results from Morris method taking the commonly used measure for parameter influence can be unstable, while using the median value yields robust results for evaluations with small sample sizes. For the dominant parameters the results from all three sensitivity analysis methods are in very good agreement. Regarding the evaluation of parameter ranking or the differentiation of influential and negligible parameters, the computationally costly quantitative methods provide the same information for the model in this study as the computational efficient Morris method using the median value. Exploring different methods to investigate higher-order effects and parameter interactions, reveals that correlation of elementary effects and parameter values in Morris method can also provide basic information about parameter interactions. (C) 2016 The Authors. Published by Elsevier B.V.
机译:尽管敏感性分析已广泛应用于建筑能源模型(BEM),但很少有研究针对动态,高阶,非线性行为和不确定性水平来研究不同敏感性分析方法的性能。建筑能源模型。我们仔细研究了三种独特的灵敏度分析方法:(a)用于参数筛选的计算效率高的Morris方法,(b)线性回归分析(中等计算成本)和(c)Sobol方法(高计算成本)。结果表明,采用Morris方法对参数影响进行常用度量的结果可能是不稳定的,而使用中值可得出用于小样本量评估的可靠结果。对于主要参数,所有三种灵敏度分析方法的结果都非常吻合。关于参数等级的评估或有影响力的和可忽略的参数的区分,计算成本高昂的定量方法与使用中值的计算有效莫里斯方法在本研究中为模型提供了相同的信息。探索不同的方法来研究高阶效应和参数相互作用,发现在Morris方法中基本效应和参数值的相关性还可以提供有关参数相互作用的基本信息。 (C)2016作者。由Elsevier B.V.发布

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