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An hourly hybrid multi-variate change-point inverse model using short-term monitored data for annual prediction of building energy performance, part II: Methodology (1404-RP)

机译:每小时混合多变量变化点逆模型,使用短期监测数据对建筑能源性能进行年度预测,第二部分:方法论(1404-RP)

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摘要

In this article, the second in a three-article sequence, the methodology of investigating the capabilities and the limits of hybrid inverse models developed from the shortest monitoring periods possible for a reliable and accurate long-term energy performance prediction in large commercial buildings is presented. Hundreds of thousands of test regression models were created using different lengths of short-term hourly data, ranging from 2 weeks to the entire year. The hourly regression models were created using synthetic data from five different building types and eight different climate zones along with actual monitored data from two buildings. Color area plots enabled detailed analysis of the predictive capability of the hourly hybrid inverse models developed from short-term data sets and conclusions on the necessary length and timing of short-term monitoring were able to be drawn from them. Three application areas for research of this nature were identified: detailed audits, green building performance verification, and verification of post-retrofit claims using pre-post monitored data.
机译:在本文中,这是三篇文章的第二篇,它提出了研究混合逆模型的能力和局限性的方法,该模型是从最短的监视周期开发的,从而可以对大型商业建筑进行可靠,准确的长期能源性能预测。使用不同长度的短期每小时数据(从2周到全年)创建了成千上万的测试回归模型。使用来自五种不同建筑物类型和八个不同气候区的综合数据以及来自两座建筑物的实际监测数据,创建了小时回归模型。彩色区域图可以详细分析根据短期数据集开发的每小时混合逆模型的预测能力,并可以从中得出有关必要的长度和短期监测时间的结论。确定了此类研究的三个应用领域:详细审核,绿色建筑性能验证以及使用事前监测数据验证改造后索赔。

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