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A hybrid approach to thermal building modelling using a combination of Gaussian processes and grey-box models

机译:结合高斯过程和灰箱模型进行热建筑建模的混合方法

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This paper presents a hybrid building modelling method with a reduced modelling and calibration effort. The method combines a physics-based model, which describes the general behaviour of the system, with a machine learning algorithm trained to correct the physics-based model's systematic errors. To exemplify the method, a highly simplified grey-box model is used as the physics-based part and a Gaussian process as the machine learning part. It is shown that the hybrid model improves the temperature and energy predictions of the grey-box model while having a lower generalization error than the pure Gaussian process. Specifically, the hybrid approach achieved a day-ahead zone temperature prediction error ca. 0.1 K (RMSE) lower than the grey-box model. As for the energy prediction, the hybrid model obtained an error of 3% compared to 8% for the grey-box model. In comparison to the Gaussian process, the hybrid approach achieved better predictions in all cases. The improvements were especially high when the models were trained with small datasets: 0.7 K in the temperature prediction and 25 percentage points in the energy prediction. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种减少建模和校准工作的混合建筑建模方法。该方法将描述系统一般行为的基于物理的模型与经过训练可纠正基于物理的模型的系统错误的机器学习算法结合在一起。为了举例说明该方法,将高度简化的灰箱模型用作基于物理学的部分,并将高斯过程用作机器学习部分。结果表明,混合模型改善了灰箱模型的温度和能量预测,同时具有比纯高斯过程低的泛化误差。具体地,混合方法实现了日前区域温度预测误差ca。比灰盒型号低0.1 K(RMSE)。至于能量预测,混合模型的误差为3%,而灰盒模型的误差为8%。与高斯过程相比,混合方法在所有情况下均能获得更好的预测。当使用较小的数据集训练模型时,改进尤其明显:温度预测为0.7 K,能量预测为25个百分点。 (C)2018 Elsevier B.V.保留所有权利。

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