Abstract
Model predictive control is theoretically suitable for optimal control of the building, which provides a framework for optimizing a given cost function (e.g., energy consumption) subject to constraints (e.g., thermal comfort violations and HVAC system limitations) over the prediction horizon. However, due to the buildings’ heterogeneous nature, control-oriented physical models’ development may be cost and time prohibitive. Data-driven predictive control, integration of the “Internet of Things”, provides an attempt to bypass the need for physical modeling. This work presents an innovative study on a data-driven predictive control (DPC) for building energy management under the four-tier building energy Internet of Things architecture. Here, we develop a cloud-based SCADA building energy management system framework for the standardization of communication protocols and data formats, which is favorable for advanced control strategies implementation. Two DPC strategies based on building predictive models using the regression tree (RT) and the least-squares boosting (LSBoost) algorithms are presented, which are highly interpretable and easy for different stakeholders (end-user, building energy manager, and/or operator) to operate. The predictive model’s complexity is reduced by efficient feature selection to decrease the variables’ dimensionality and further alleviate the DPC optimization problem’s complexity. The selection is dependent on the principal component analysis (PCA) and the importance of disturbance variables (IoD). The proposed strategies are demonstrated both in residential and office buildings. The results show that the DPC-LSBoost has outperformed the DPC-RT and other existing control strategies (MPC, TDNN) in performance, scalability, and robustness.
Highlights
One major challenge in today’s society concerns energy savings and CO2 footprint in existing and new buildings
It can be seen from the table that the overall power consumption of the driven predictive control (DPC)-least-squares boosting (LSBoost) is the least, which is reduced by 78.909 kWh compared to the time-delay neural networks (TDNN), and the overall energy consumption is reduced by 11.92% compared to the TDNN
This paper reports an innovative study combining the datadriven predictive control strategy with a complex cloud supervisory control and data acquisition (SCADA)-based building energy management platform, which attempts to standardize communication protocols and data formats and further implement advanced control strategies
Summary
One major challenge in today’s society concerns energy savings and CO2 footprint in existing and new buildings. The building sector has witnessed immense development in the way by which building systems are managed [1, 2],which aimed at alleviating the significant environmental impact of this sector (40% of the world energy consumption and a third of the associated CO2 emissions [3]). Decreasing this impact could be achieved by elegant controlling the resources [4]; building energy management systems (BEMS) provides sustainable and efficient solutions. The dilemma attributes to the usage of supervisory control and data acquisition (SCADA) architecture in existing BEMS [5]
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.