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Exploration of the Bayesian Network framework for modelling. window control behaviour

机译:探索贝叶斯网络建模框架。窗口控制行为

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摘要

Extended literature reviews confirm that the accurate evaluation of energy-related occupant behaviour is a key factor for bridging the gap between predicted and actual energy performance of buildings. One of the key energy-related human behaviours is window control behaviour that has been modelled by different probabilistic modelling approaches. In recent years, Bayesian Networks (BNs) have become a popular representation based on graphical models for modelling stochastic processes with consideration of uncertainty in various fields, from computational biology to complex engineering problems. This study investigates the potential applicability of BNs to capture underlying complicated relationships between various influencing factors and energy-related behavioural actions of occupants in buildings: in particular, window opening/closing behaviour of occupants in residential buildings is investigated. This study addresses five key research questions related to modelling window control behaviour: (A) variable selection for identifying key drivers impacting window control behaviour, (B) correlations between key variables for structuring a statistical model, (C) target definition for finding the most suitable target variable, (D) BN model with capabilities to treat mixed data, and (E) validation of a stochastic BN model. A case study on the basis of measured data in one residential apartment located in Copenhagen, Denmark provides key findings associated with the five research questions through the modelling process of developing the BN model.
机译:扩展的文献综述证实,对与能源有关的乘员行为的准确评估是弥合建筑物的预测能源性能与实际能源性能之间差距的关键因素。与能量有关的主要人类行为之一是通过不同概率建模方法进行建模的窗口控制行为。近年来,贝叶斯网络(BNs)已成为基于图形模型的流行表示形式,用于考虑从计算生物学到复杂工程问题等各个领域的不确定性的随机过程建模。这项研究调查了BNs潜在的适用性,以捕获建筑物中居住者的各种影响因素与能源相关的行为之间的潜在复杂关系:特别是,研究了居住建筑中居住者的窗户开/关行为。本研究解决了与建模窗口控制行为有关的五个关键研究问题:(A)变量选择,用于识别影响窗口控制行为的关键驱动器,(B)关键变量之间的相关性,以构建统计模型,(C)寻找最大目标的目标定义合适的目标变量,(D)具有处理混合数据能力的BN模型,以及(E)随机BN模型的验证。通过对位于丹麦哥本哈根的一栋住宅公寓中的测量数据进行的案例研究,通过开发BN模型的建模过程,提供了与五个研究问题相关的关键发现。

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