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Long-term forecasting of hourly district heating loads in urban areas using hierarchical archetype modeling

机译:使用等级原型建模的城市地区每小时地区加热负荷的长期预测

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This paper demonstrates and validates the application of a recently proposed archetype modeling and calibration framework for setting up 11 stochastic archetype building energy models of Danish detached single-family houses (SFH's). For this task, the municipal district heating system of Aarhus, Denmark, and its associated building stock were employed as case study, together comprising a dataset of 18 475 SFH's with hourly time series heating data for two years (2017-2018). The 11 physics-based archetype models were each calibrated using a training building sample with data from a one-year calibration period (2017) and tested for their ability to forecast the heat load of another building sample in a previously unseen one-year validation period (2018). The calibrated archetype models were further tested for their joint forecasting ability to match the aggregated heat load of six suburban dwelling areas of different composition and location within the city region of Aarhus, and finally for their ability to forecast the entire citywide dataset of 18 475 SFH's. The modeling framework performs very well for the aggregated citywide predictions with a practically non-existent bias of the overall heat load during the validation period (NMBE < 0.5%) and with only moderate inaccuracies present in hourly load predictions (MAPE < 12%). The high forecasting accuracy validates the application of the demonstrated archetype modeling framework for long-term urban-scale predictions; however, analysis of the time series errors indicate that the performance could be further improved by focusing on a better representation of the holiday periods and by ensuring the training data to be adequately informative to enable a good calibration of the model parameters. The simplicity of the archetype models coupled with the applied physics-based model structure makes the framework suitable for general energy planning purposes. By adapting a more dynamic model structure, it would also be possible to apply the framework for more complex analysis of, for instance, the urban-scale demand response and the general heating flexibility of the building stock.
机译:本文演示并验证了最近提出的原型建模和校准框架的应用,用于设置丹麦独立式单家房屋(SFH)的11个随机原型建筑能量模型。对于此任务,采用了Aarhus,丹麦和其相关建筑股票的市政区供暖系统作为案例研究,包括18个475 SFH的数据集,每小时序列加热数据两年(2017-2018)。每个基于物理的原型模型均使用培训建筑物样本校准,其中来自一年校准期(2017)的数据,并测试了他们在以前看不见的一年验证期内预测另一个建筑物样本的热负荷的能力(2018)。进一步测试了校准的原型模型,以便他们的联合预测能力与奥胡斯城市地区不同成分和地点的六个郊区住宅区的聚集热负荷相匹配,最后为他们预测18 475 SFH的整个全市数据集的能力。建模框架对于在验证期间的总热负荷(NMBE <0.5%)的实际上不存在的总体热负荷偏差并且仅在每小时负载预测中存在的中等不准确性(MAPE <12%)的汇总的全部热负荷偏差来表现出非常不存在的预测。高预测精度验证了对长期城市规模预测的证明原型建模框架的应用;然而,时间序列误差的分析表明,通过专注于假期期间的更好的表示以及通过确保训练数据来充分信息,可以进一步提高性能,以便能够良好地校准模型参数。与所应用的物理学模型结构耦合的原型模型的简单性使得适用于通用能量规划目的的框架。通过调整更动态的模型结构,还可以应用框架以获得更复杂的分析,例如,城市规模需求响应和建筑物的一般加热灵活性。

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