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Building Heat Demand Forecasting by Training a Common Machine Learning Model with Physics-Based Simulator

机译:用基于物理的模拟器训练公共机器学习模型的建立热需求预测

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Accurate short-term forecasts of building energy consumption are necessary for profitable demand response. Short-term forecasting methods can be roughly classified into physics-based modelling and data-based modelling. Both of these approaches have their advantages and disadvantages and it would be therefore ideal to combine them. This paper proposes a novel approach that allows us to combine the best parts of physics-based modelling and machine learning while avoiding many of their drawbacks. A key idea in the approach is to provide a variety of building parameters as input for an Artificial Neural Network (ANN) and train the model with data from a large group of simulated buildings. The hypothesis is that this forces the ANN model to learn the underlying simulation model-based physics, and thus enables the ANN model to be used in place of the simulator. The advantages of this type of model is the combination of robustness and accuracy from a high-detail physics-based model with the inference speed, ease of deployment, and support for gradient based optimization provided by the ANN model. To evaluate the approach, an ANN model was developed and trained with simulated data from 900–11,700 buildings, including equal distribution of office buildings, apartment buildings, and detached houses. The performance of the ANN model was evaluated with a test set consisting of 60 buildings (20 buildings for each category). The normalized root mean square errors (NRMSE) were on average 0.050, 0.026, 0.052 for apartment buildings, office buildings, and detached houses, respectively. The results show that the model was able to approximate the simulator with good accuracy also outside of the training data distribution and generalize to new buildings in new geographical locations without any building specific heat demand data.
机译:准确的建筑能源消耗预测是有利可图的需求响应所必需的。短期预测方法可以大致分为基于物理的建模和基于数据的建模。这两种方法都具有它们的优缺点,因此将它们结合起来是理想的。本文提出了一种新的方法,使我们能够将基于物理学建模和机器学习的最佳部分结合在一起,同时避免了许多缺点。该方法中的一个关键思想是提供各种建筑参数作为人工神经网络(ANN)的输入,并将模型与来自一大群模拟建筑物的数据一起训练。该假设是,这强制了ANN模型来学习基于底层的模拟模型的物理学,从而使得能够用于代替模拟器的ANN模型。这种类型的模型的优点是从具有推理速度,易于部署的基于高细节物理的模型的鲁棒性和准确性的组合,以及ANN模型提供的基于梯度优化的支持。为了评估方法,通过900-11,700建筑物的模拟数据开发并培训了ANN模型,包括办公楼,公寓和独立式房屋的平等分配。 ANN模型的性能被评估为由由60个建筑物组成的测试集(每个类别的20个建筑物)。归一化的根均线误差(NRMSE)平均分别为0.050,0.026,0.052,分别用于公寓楼,办公楼和独立式房屋。结果表明,该模型也能够在训练数据分布之外以良好的准确性近似模拟器,并在新地理位置中的新建筑物上概括,没有任何构建特定的热量需求数据。

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