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A novel ensemble learning approach to support building energy use prediction

机译:一种新的集成学习方法来支持建筑能耗预测

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Broadly speaking, building energy use prediction can be classified into two categories based on modeling approaches namely engineering and Artificial Intelligence (AI). While engineering approach requires solving physical equations representing the thermal performance of systems and components that constitute the buildings, the AI-based approach uses historical data to predict future performance. Although engineering approach estimates energy use with greater accuracy, it falls short in the overall complexity of model building and simulation in which detailed data that represent the building geometry, systems, configurations, and occupant schedule is needed. Whereas, the AI-based approach offers a rapid prediction of building energy use and, if appropriately trained and tested, may be used for quick and efficient decision making of energy use reduction. Nevertheless, for robust integration with and to improve automated building systems management and intelligence, the need for consistent, stable, and higher prediction accuracy cannot be understated. To alleviate the instability issue, and to improve prediction accuracy, we have exploited and tested an ensemble learning technique, 'Ensemble Bagging Trees' (EBT), using data obtained from meteorological systems and building-level occupancy and meters Results showed that the proposed EBT model predicted hourly electricity demand of the test building with improved accuracy of Mean Absolute Prediction Error that ranged from 2.97% to 4.63%. Additionally, results showed that proposed variable selection method could reduce the computation time of EBT by 38-41% without sacrificing the prediction accuracy. The proposed ensemble learning model that exemplifies improved prediction accuracy over other AI techniques can be used for real-time applications such as system fault detection and diagnosis. (C) 2017 Elsevier B.V. All rights reserved.
机译:广义地说,基于建模方法,建筑能耗预测可以分为两类,即工程和人工智能(AI)。工程方法需要求解表示构成建筑物的系统和组件的热性能的物理方程式,而基于AI的方法则使用历史数据来预测未来的性能。尽管工程方法可以更准确地估算能源使用量,但在模型构建和仿真的总体复杂性方面却不足,需要代表建筑物几何形状,系统,配置和乘员时间表的详细数据。鉴于基于AI的方法可以快速预测建筑物的能源使用情况,如果经过适当的培训和测试,可以用于快速有效地制定减少能源使用的决策。然而,为了与自动楼宇系统管理和智能功能进行可靠集成并改善其功能,对一致,稳定和更高的预测精度的需求不可低估。为了缓解不稳定性问题并提高预测准确性,我们使用了气象学,建筑物级占用率和仪表所获得的数据,并开发并测试了集成学习技术“整体装袋树”(EBT)。结果表明,拟议的EBT该模型可预测测试建筑物的每小时用电量,其平均绝对预测误差的准确性提高到2.97%至4.63%。此外,结果表明,所提出的变量选择方法可以在不牺牲预测精度的情况下将EBT的计算时间减少38-41%。所提出的集成学习模型可以举例说明与其他AI技术相比提高的预测精度,可用于实时应用,例如系统故障检测和诊断。 (C)2017 Elsevier B.V.保留所有权利。

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