4.6 Article Proceedings Paper

Using neural network in a model-based predictive control loop to enhance energy performance of buildings

期刊

ENERGY REPORTS
卷 8, 期 -, 页码 1196-1207

出版社

ELSEVIER
DOI: 10.1016/j.egyr.2022.07.125

关键词

MPC; ANN; Modeling; Control; Building energy efficiency; IoT; Intelligent Energy Management; AI

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The control strategies of HVAC systems need to be changed to reduce energy consumption in response to today's environmental, energy, and economic challenges. A detailed description of the building, especially its thermal characteristics, is required to establish an energy model. By using a dynamic thermal simulation tool, a large database of thermal behavior can be created and utilized for training an Artificial Neural Network model to control the thermal comfort of the building.
Today's environmental, energy and economic challenges require changes in the control strategies of HVACs' systems, since they account for more than 60% of the building energy consumption. An optimal control law should be applied to reduce this consumption. To achieve this goal, a detailed description of the building is required, its construction components as well as the description of the occupants' activities. A good knowledge of all building components is essential, especially the thermal characteristics of the building envelope, to build an energy model of the building. The dynamic thermal simulation tool, as EnergyPlus in this case, allows us to set up a huge database of the thermal behavior of our architectural model. This database was used for the training of an Artificial Neural Network model for modeling the thermal behavior of the building, with the aim of controlling the thermal comfort of the occupants, which means maintaining the temperature of the room within a setpoint temperature range. The developed control method, introduced in this work, reduced the energy consumption for cooling and heating, respectively, from 11.834 kWh to 9.025 kWh (27.34%) and from 4.631 kWh to 2.824 kWh (39.02%), compared to the On/Off control, during the 1 day of simulation. (C) 2022 The Author(s). Published by Elsevier Ltd.

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