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Bayesian calibration of building energy models: Comparison of predictive accuracy using metered utility data of different temporal resolution

机译:建筑能源模型的贝叶斯校准:使用不同时间分辨率的计量实用性数据的预测准确性比较

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Modern smart meters in heating systems offer building energy data of high temporal resolution. Compared to the annually aggregated readings used for conventional billing, the continuous information flow from these smart meters can be made available as time series data containing monthly, daily or even hourly aggregated values. In this paper, the effect of different temporal aggregation levels of commercial smart meter data on building energy model (BEM) calibration is investigated. Four different aggregation levels of a training data set were applied for calibration of six BEM input parameters to set up a Gaussian process emulator of the physical system. The performance of the emulator was subsequently tested on an unseen validation data set. Results reveal a systematic pattern of increasing predictive accuracy as a function of increasing training data resolution.
机译:在加热系统中的现代智能仪表提供高颞分辨率的建筑能量数据。与用于传统计费的每年聚合的读数相比,这些智能电表的连续信息流可以作为包含每月,每日甚至每小时聚合值的时间序列数据提供。本文研究了不同时间聚集水平对建筑能量模型(BEM)校准的不同时间聚合水平的影响。应用训练数据集的四个不同聚合级别用于校准六个BEM输入参数,以建立物理系统的高斯工艺仿真器。随后在看不见的验证数据集上测试仿真器的性能。结果揭示了作为提高训练数据分辨率的功能的提高预测准确性的系统模式。

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