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Short-term building energy model recommendation system: A meta-learning approach

机译:短期建筑能耗模型推荐系统:一种元学习方法

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High-fidelity and computationally efficient energy forecasting models for building systems are needed to ensure optimal automatic operation, reduce energy consumption, and improve the building's resilience capability to power disturbances. Various models have been developed to forecast building energy consumption. However, given buildings have different characteristics and operating conditions, model performance varies. Existing research has mainly taken a trial-and-error approach by developing multiple models and identifying the best performer for a specific building, or presumed one universal model form which is applied on different building cases. To the best of our knowledge, there does not exist a generalized system framework which can recommend appropriate models to forecast the building energy profiles based on building characteristics. To bridge this research gap, we propose a meta-learning based framework, termed Building Energy Model Recommendation System (BEMR). Based on the building's physical features as well as statistical and time series meta-features extracted from the operational data and energy consumption data, BEMR is able to identify the most appropriate load forecasting model for each unique building. Three sets of experiments on 48 test buildings and one real building were conducted. The first experiment was to test the accuracy of BEMR when the training data and testing data cover the same condition. BEMR correctly identified the best model on 90% of the buildings. The second experiment was to test the robustness of the BEMR when the testing data is only partially covered by the training data. BEMR correctly identified the best model on 83% of the buildings. The third experiment uses a real building case to validate the proposed framework and the result shows promising applicability and extensibility. The experimental results show that BEMR is capable of adapting to a wide variety of building types ranging from a restaurant to a large office, and gives excellent performance in terms of both modeling accuracy and computational efficiency. (C) 2016 Elsevier Ltd. All rights reserved.
机译:需要用于建筑物系统的高保真和计算效率高的能源预测模型,以确保最佳的自动运行,减少能耗并提高建筑物对电力干扰的抵御能力。已经开发出各种模型来预测建筑能耗。但是,由于建筑物具有不同的特性和运行条件,因此模型性能会有所不同。现有的研究主要是通过反复试验的方法来开发多种模型并确定特定建筑物的最佳性能,或者假定一种适用于不同建筑案例的通用模型形式。据我们所知,目前还没有一个通用的系统框架可以推荐合适的模型来根据建筑物的特征预测建筑物的能源分布。为了弥合这一研究差距,我们提出了一种基于元学习的框架,称为建筑能源模型推荐系统(BEMR)。根据建筑物的物理特征以及从运营数据和能耗数据中提取的统计和时间序列元特征,BEMR能够为每个独特的建筑物确定最合适的负荷预测模型。在48座测试建筑物和1座实际建筑物上进行了三组实验。第一个实验是在训练数据和测试数据覆盖相同条件时测试BEMR的准确性。 BEMR在90%的建筑物上正确地确定了最佳模型。第二个实验是在测试数据仅部分被训练数据覆盖时测试BEMR的鲁棒性。 BEMR在83%的建筑物上正确地确定了最佳模型。第三个实验使用一个实际的构建案例来验证所提出的框架,结果显示出可喜的适用性和可扩展性。实验结果表明,BEMR能够适应从餐厅到大型办公室的各种建筑类型,并且在建模准确性和计算效率方面均具有出色的性能。 (C)2016 Elsevier Ltd.保留所有权利。

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