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Sensitivity analysis of probabilistic occupancy prediction model using big data

机译:大数据概率占用预测模型的敏感性分析

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The sustainable development of the building sector relies on having more accurate data pertinent to the different energy aspects of building design and operation phases. One of the accepted methods for estimating building energy consumption is simulation, which requires building parameters and occupancy information as inputs to model the energy performance of buildings. Building energy simulation tools are mature in terms of incorporating proper building parameters in the energy analysis. Some shortcomings are, however, observed regarding occupancy data, which cause large discrepancies in the energy usage even between similar buildings with the same characteristics. In order to improve the performance of energy simulation models, the sources of errors regarding the occupancy input data should be investigated. To this aim, the sensitivity of the occupancy prediction models, which are widely used to represent the occupancy information in energy models, to their input occupancy data needs to be evaluated. Occupancy prediction models exploit real data pertinent to the occupants' locations and behavior to predict the probability of an event and generate the occupancy probabilistic profiles. The data collection period and the resolution level used to analyze the collected data are two crucial factors for developing accurate occupancy prediction models. This study aims to perform a comprehensive sensitivity analysis on these parameters affecting the performance of probabilistic occupancy prediction models. The outcomes of this research are the optimum settings of occupancy prediction models, which result in the generation of the most reliable occupancy information.
机译:建筑行业的可持续发展依赖于与建筑设计和运营阶段的不同能源方面相关的更准确的数据。评估建筑物能耗的一种公认方法是模拟,它需要建筑物参数和占用信息作为对建筑物能源性能进行建模的输入。在将适当的建筑参数纳入能源分析方面,建筑能源模拟工具已经成熟。但是,在占用数据方面存在一些缺陷,即使在具有相同特征的类似建筑物之间,也会导致能源使用方面的巨大差异。为了提高能源模拟模型的性能,应调查与占用输入数据有关的错误源。为此,需要评估被广泛用于表示能源模型中的占用信息的占用预测模型对其输入占用数据的敏感性。占用预测模型利用与占用者的位置和行为有关的真实数据来预测事件的可能性并生成占用概率分布图。数据收集时间和用于分析所收集数据的分辨率级别是开发精确的占用预测模型的两个关键因素。本研究旨在对影响概率占用预测模型性能的这些参数进行全面的敏感性分析。这项研究的结果是占用预测模型的最佳设置,从而可以生成最可靠的占用信息。

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