A Sequential Modelling Approach for Indoor Temperature Prediction and
Heating Control in Smart Buildings
- URL: http://arxiv.org/abs/2009.09847v2
- Date: Thu, 26 Nov 2020 18:43:39 GMT
- Title: A Sequential Modelling Approach for Indoor Temperature Prediction and
Heating Control in Smart Buildings
- Authors: Yongchao Huang, Hugh Miles, Pengfei Zhang
- Abstract summary: This paper proposes a learning-based framework for sequentially applying the data-driven statistical methods to predict indoor temperature.
Experiments demonstrate the effectiveness of the modelling approach and control algorithm, and reveal the promising potential of the mixed data-driven approach in smart building applications.
- Score: 4.759925918369102
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The rising availability of large volume data, along with increasing computing
power, has enabled a wide application of statistical Machine Learning (ML)
algorithms in the domains of Cyber-Physical Systems (CPS), Internet of Things
(IoT) and Smart Building Networks (SBN). This paper proposes a learning-based
framework for sequentially applying the data-driven statistical methods to
predict indoor temperature and yields an algorithm for controlling building
heating system accordingly. This framework consists of a two-stage modelling
effort: in the first stage, an univariate time series model (AR) was employed
to predict ambient conditions; together with other control variables, they
served as the input features for a second stage modelling where an multivariate
ML model (XGBoost) was deployed. The models were trained with real world data
from building sensor network measurements, and used to predict future
temperature trajectories. Experimental results demonstrate the effectiveness of
the modelling approach and control algorithm, and reveal the promising
potential of the mixed data-driven approach in smart building applications. By
making wise use of IoT sensory data and ML algorithms, this work contributes to
efficient energy management and sustainability in smart buildings.
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